Linking Diatom Sensitivity to Herbicides to Phylogeny - American

Jan 6, 2014 - relationship between phylogeny and sensitivity to herbicides in freshwater diatom species. This study was performed on four photosystem ...
0 downloads 0 Views 625KB Size
Subscriber access provided by Brought to you by ST ANDREWS UNIVERSITY LIBRARY

Article

Linking diatom sensitivity to herbicide to phylogeny: A step forward for biomonitoring? Floriane Larras, François Keck, Bernard Montuelle, Frédéric Rimet, and Agnes Bouchez Environ. Sci. Technol., Just Accepted Manuscript • Publication Date (Web): 06 Jan 2014 Downloaded from http://pubs.acs.org on January 12, 2014

Just Accepted “Just Accepted” manuscripts have been peer-reviewed and accepted for publication. They are posted online prior to technical editing, formatting for publication and author proofing. The American Chemical Society provides “Just Accepted” as a free service to the research community to expedite the dissemination of scientific material as soon as possible after acceptance. “Just Accepted” manuscripts appear in full in PDF format accompanied by an HTML abstract. “Just Accepted” manuscripts have been fully peer reviewed, but should not be considered the official version of record. They are accessible to all readers and citable by the Digital Object Identifier (DOI®). “Just Accepted” is an optional service offered to authors. Therefore, the “Just Accepted” Web site may not include all articles that will be published in the journal. After a manuscript is technically edited and formatted, it will be removed from the “Just Accepted” Web site and published as an ASAP article. Note that technical editing may introduce minor changes to the manuscript text and/or graphics which could affect content, and all legal disclaimers and ethical guidelines that apply to the journal pertain. ACS cannot be held responsible for errors or consequences arising from the use of information contained in these “Just Accepted” manuscripts.

Environmental Science & Technology is published by the American Chemical Society. 1155 Sixteenth Street N.W., Washington, DC 20036 Published by American Chemical Society. Copyright © American Chemical Society. However, no copyright claim is made to original U.S. Government works, or works produced by employees of any Commonwealth realm Crown government in the course of their duties.

Page 1 of 32

Environmental Science & Technology

254x190mm (96 x 96 DPI)

ACS Paragon Plus Environment

Environmental Science & Technology

1

Linking diatom sensitivity to herbicide to

2

phylogeny: a step forward for biomonitoring?

3

,‡

Page 2 of 32

,‡

Floriane Larras 1 , François Keck 1 , Bernard Montuelle 1, Frédéric Rimet 1, Agnès Bouchez 1* 1

4 5

INRA, UMR Carrtel, F-74203 Thonon, France

Université de Savoie, UMR Carrtel, F-73011 Chambéry, France

6 7

KEYWORDS: Phylogeny; sensitivity; diatoms; herbicides; bioassessment

8

ABSTRACT

9

Phylogeny has not yet been fully accepted in the field of ecotoxicology, despite studies

10

demonstrating its potential for developing environmental biomonitoring tools, as it can

11

provide an a priori assessment of the sensitivity of several indicator organisms. We therefore

12

investigated the relationship between phylogeny and sensitivity to herbicides in freshwater

13

diatom species. This study was performed on four photosystem II inhibitor herbicides

14

(atrazine, terbutryn, diuron and isoproturon) and 14 diatom species representative of Lake

15

Geneva biofilm diversity. Using recent statistical tools provided by phylogenetics, we

16

observed a strong phylogenetic signal for diatom sensitivity to herbicides. There was a major

17

division in sensitivity to herbicides within the phylogenetic tree. The most sensitive species

18

were mainly centrics and araphid diatoms (in this study, Thalassiosirales and Fragilariales),

19

whereas the most resistant species were mainly pennates (in this study, Cymbellales,

1 ACS Paragon Plus Environment

Page 3 of 32

Environmental Science & Technology

20

Naviculales and Bacillariales). However, there was considerable variability in diatom

21

sensitivity within the raphid clade, which could be explained by differences in trophic

22

preferences (autotrophy or heterotrophy). These traits appeared to be complementary in

23

explaining the differences in sensitivity observed at a refined phylogenetic level. Using

24

phylogeny together with complementary traits, as trophic preferences, may help to predict the

25

sensitivity of communities with a view to protecting their ecosystem.

26 27

Introduction

28

Over the last 40 years, many methods have been developed for monitoring the ecological

29

quality of water bodies1–3. Among these methods, bioindicators constitute a powerful tool to

30

assess the anthropogenic pressures on biota and ecosystem function. Most bioindicators used

31

in freshwaters, such as fish, macroinvertebrates and microalgae, address specific

32

biomonitoring needs4. Microalgae, and especially diatoms, are suitable for monitoring the

33

overall health of the environment. They are particularly used to assess the quality of rivers in

34

terms of organic and nutrient pollution5. Their communities respond rapidly to changes in

35

habitat quality6,7. Diatoms are good biomonitors because they are found in most aquatic

36

habitats and exhibit a huge diversity in terms of taxonomy (over 30000 species)8,

37

morphology9 and ecology10. Despite these advantages, fewer ecological assessments are

38

carried out worldwide using diatoms than using macroinvertebrates or fish11–13. The high

39

sensitivity of diatoms to photosystem II inhibitor (PSII) herbicides has been widely observed

40

at both the single-species14–16 and community levels15,17–19. At these two levels of biological

41

organization, some of these herbicides impair diatoms even at concentrations as low as those

42

regularly found in the environment16,20,21.

43

Ecotoxicological studies, based on toxic exposure in laboratory bioassays, provide the basic

44

information required for developing biomonitoring tools. Studies at a higher complexity level, 2 ACS Paragon Plus Environment

Environmental Science & Technology

Page 4 of 32

45

such as microcosms, provide more environmentally realistic data about toxic impacts, but

46

identifying the environmental effects attributable to herbicides is a rather complex. As a first

47

step, it is important to determine herbicide toxicity under single-species conditions. We

48

therefore performed single-species bioassays, which are useful tools for assessing the

49

physiological sensitivity of a single diatom species to a single herbicide in which confounding

50

factors were excluded and a high degree of reproducibility can be achieved. However,

51

sensitivity data obtained from these tests are only available for relatively few species because

52

generating these data is time consuming and labor intensive. Because diatoms exhibit such a

53

huge diversity, it actually seems inconceivable to assess with bioassays the sensitivity of even

54

a small percentage of these species. Thus, developing methods to predict their sensitivity

55

represents a challenge for using more species sensitivity data to improve their biomonitoring

56

efficiency. The current influx of DNA sequence data allows for establishing robust

57

phylogenies to many species. Connecting sensitivity data to the phylogeny of the tested

58

species is a key tactic that might provide an a priori prediction of the species’ sensitivity to

59

contaminants. Recent studies have investigated the potential of phylogeny to assess the

60

sensitivity of amphibians22, microalgae23,24, fish25, macroinvertebrates26, chironomids, and

61

mayflies27 to various pollutants. Many authors have focused on the detection of a

62

phylogenetic signal, which is the tendency for related species to share similar ecological or

63

biological features. For instance, these studies showed that the phylogenetic signals of

64

sensitivity varied in strength depending on the pollutant considered. However, the use of a

65

phylogenetic framework to improve biomonitoring remains an unexplored field, and no data

66

are available for diatoms. Approaches that integrate phylogeny and ecotoxicology could

67

supply information for bioassessment tools operating at a larger taxonomic scale and could

68

thus increase the effectiveness of biomonitoring. The lack of a quality dataset based on a set

69

of species presenting high diversity and a wide range of sensitivities28 has so far prevented

3 ACS Paragon Plus Environment

Page 5 of 32

Environmental Science & Technology

70

this type of study. However, new statistical methods integrating phylogenies offer a promising

71

avenue for exploring the variability of sensitivity within and between taxonomic levels. For

72

example, Blomberg’s K statistic29 and Pagel’s λ30 are both well-established statistical tools

73

provided by phylogenetics to detect the phylogenetic signal, to measure its strength, and to

74

test its significance. Blomberg’s K statistic has been applied extensively in the context of

75

ecotoxicological studies by Buchwalter et al.26 and Carew et al.27, whereas Pagel’s λ performs

76

well for complex models of trait evolution31. Phylogenetic principal component analysis

77

(pPCA)32 is also a promising new method that allows for working in a multivariate framework

78

to explore the phylogenetic signal and to explore possible correlations among the distributions

79

of sensitivities.

80

This study is a preliminary exploration of the potential use of phylogenetic signals to

81

investigate the sensitivity of freshwater diatoms to herbicides. The first aim was to explore the

82

sensitivity patterns of diatoms to 4 PSII inhibitor herbicides within the phylogeny. These

83

herbicides were chosen for their high level of phytotoxicity and because they are often

84

detected in French surface waters33. We performed single-species laboratory bioassays of a set

85

of 14 diatom species exposed to four PSII inhibitor herbicides (atrazine, terbutryn, diuron, and

86

isoproturon). This species set is representative of the biofilm diversity in Lake Geneva and,

87

was developed in the context of biomonitoring this lake. We also provide a phylogeny of

88

these 14 diatom species reconstructed from the 18S and rbcL markers.

89

Second, we wanted to determine whether the phylogeny of these diatoms was significantly

90

linked to their herbicide sensitivities. We explored the phylogenetic signal for herbicide

91

sensitivity using Blomberg’s K statistic and Pagel’s λ. We also applied the pPCA to our data

92

as a tool to detect biologically meaningful combinations of herbicide sensitivities that are

93

phylogenetically structured. Because we had sensitivity data for four different herbicides and

94

few possible explanatory factors, the pPCA allowed us to uncover the underlying

4 ACS Paragon Plus Environment

Environmental Science & Technology

Page 6 of 32

95

phylogenetic trends and patterns and to thus reveal the ecotoxicological evolutionary

96

strategies of diatoms. The ability to explore the phylogenetic signal in a multivariate

97

framework is also important in ecotoxicology to consider the multiple environmental

98

stressors.

99

Finally, the results are discussed in light of diatom ecology and provide useful insights into

100

diatom biomonitoring. Traditional and phylogenetically-based regression analyses were used

101

to assess the relationships between herbicide sensitivities and commonly used biomonitoring

102

indices. We wanted to determine whether the link between phylogeny and sensitivity should

103

be considered for inclusion in the development of biomonitoring tools intended to protect

104

environmental diatom communities against these herbicides.

105 106

Materials and methods

107

Diatom species

108

Fourteen freshwater benthic diatom species were selected to represent the diversity found in

109

the Lake Geneva biofilm. Each species was maintained in culture and is registered at the

110

Thonon Culture Collection (http://www.inra.fr/carrtel-collection). The selected species

111

included Achnanthidium minutissimum (Kützing) Czarnecki (TCC-746), Craticula accomoda

112

(Hustedt) D.G. Mann (TCC-107), Cyclotella meneghiniana Kützing (TCC-755), Encyonema

113

silesiacum (Bleisch) D.G. Mann (TCC-678), Fistulifera saprophila (Lange-Bertalot & Bonik)

114

Lange-Bertalot (TCC-535), Fragilaria capucina var. vaucheriae (Grunow) Lange-Bertalot

115

(TCC-752), F. crotonensis Kitton (TCC-301), F. rumpens (Kützing) G.W.F. Carlson (TCC-

116

666), Gomphonema parvulum (Kützing) Kützing (TCC-653), G. clavatum Ehrenberg (TCC-

117

527), Mayamaea fossalis (Krasske) Lange-Bertalot (TCC-366), Nitzschia palea (Kützing) W.

118

Smith (TCC-139-2), Sellaphora minima (Grunow) Mann (TCC-524) and Ulnaria ulna (C.L.

119

Nitzsch) Compère (TCC-635). Photographs of the strains are available on the barcoding

5 ACS Paragon Plus Environment

Page 7 of 32

Environmental Science & Technology

120

website of the INRA institute (http://www.rsyst.inra.fr/?q=fr/content/micro-algues). The

121

cultures

122

collection_eng/Culture-media/Composition-of-the-culture-media) that had been filtered at

123

0.22 µm (Millipore, Germany) and were grown in a 300 mL Erlenmeyer flask at 21±2°C with

124

a 16:8 h light:dark cycle at 66 µmol.m-2.s-1.

were

maintained

in

DV

culture

medium

(http://www6.inra.fr/carrtel-

125

Herbicide solutions

126

We tested four herbicides, namely atrazine, terbutryn, diuron and isoproturon from Sigma-

127

Aldrich (St Louis, MO 63103, USA, purity over 99.5%). For the bioassays, stock solutions

128

were prepared in DV media. Due to the low solubility of atrazine and diuron, we added 0.05%

129

of the solvent dimethyl sulfoxide (DMSO) to the stock solutions and sonicated the mixture for

130

30 minutes. Previous research (unpublished data) has confirmed that this concentration has no

131

adverse effects on benthic diatoms. Moreover, no interaction between DMSO and

132

Photosystem II inhibitor herbicide was observed below 0.5% of DMSO34.

133 134

Sensitivity dataset

135

The effective concentrations that reduce the population growth rate by 10 (EC10,

136

Supporting information Table S1) and 50% (EC50, Supporting information Table S2) were

137

available from Larras et al.35 for Fragilaria. capucina var. vaucheriae, F. rumpens, Ulnaria

138

ulna, Craticula accomoda, Mayamaea fossalis, Sellaphora minima, Nitzschia palea,

139

Achnanthidium minutissimum, Cyclotella meneghiniana, Encyonema silesiacum and

140

Gomphonema parvulum. To increase the diversity of the tested species, we performed

141

additional single-species bioassays on G. clavatum, F. saprophila and F. crotonensis for these

142

four herbicides as described by Larras et al.35. We worked at two levels of sensitivity so that

143

our data could be generalized; EC50 and EC10 are both relevant in the environmental

144

regulatory framework36.

6 ACS Paragon Plus Environment

Environmental Science & Technology

Page 8 of 32

145 146

Mixture toxicity prediction

147

We predicted the sensitivity of each species at both the EC10 and EC50 levels to equitoxic

148

mixtures of 1) all four selected herbicides (EC10-Mix and EC50-Mix); 2) the two herbicides

149

belonging to the phenylurea family (EC10-Mixp and EC50-Mixp); 3) the two herbicides

150

belonging to the triazine family (EC10-Mixt and EC50-Mixt). The compositions of the

151

equitoxic mixtures were determined using the concentration addition model (CA, Eq. 131),

152

because many studies have already shown that this model can predict the toxicity of mixtures

153

of photosystem II inhibitors37–39.

154

Pi −1 ) i =1 ECxi n

155

Equation 1:

ECx mix = ( ∑

156 157

where ECX mix is the total concentration of the mixture that elicits a total effect of x%, Pi is

158

the relative proportion of each substance within the mixture, and ECxi is the individual

159

concentration of each substance that induces the effect x.

160 161

Phylogenetic analyses

162

The diatom strains used in this study were genetically characterized by Sanger sequencing

163

using two markers (18S and rbcL) as described in Kermarrec et al.40. Genbank accession

164

numbers are provided for each sequence as supporting information (Table S3). The sequences

165

were aligned using the Muscle algorithm41 provided in the SeaView graphical user interface42.

166

The 18S and rbcL markers were first aligned separately and then combined. The resulting

167

contig spanned 2457 bp. We used the Maximum Likelihood (ML) and Bayesian Inference

168

(BI) methods in parallel to compute and assess the tree topology from the aligned contig.

169

Each tree was rooted using Bolidomonas pacifica L.Guillou & M.-J.Chrétiennot-Dinet, an

7 ACS Paragon Plus Environment

Page 9 of 32

Environmental Science & Technology

170

algal species closely related to diatoms43. We used the MrAIC software44 to select the best

171

substitution model. Because rbcL is a plastid gene and 18S is a nuclear gene, these genes may

172

be subject to different evolutionary constraints. We carried out partitioned analyses to

173

independently estimate the model parameters for each gene. Moreover, we constructed trees

174

for the 18S and the rbcL genes separately to ensure that these trees both reflected the same

175

evolutionary history. We used RAxML 7.2.845 to identify the most likely tree topology for the

176

ML method. The branch support was assessed by 1000 bootstrap replicates. Finally, we ran an

177

analysis for the BI method with MRBAYES 3.1.246. The analysis consisted of two runs, three

178

heated chains, 1,000,000 generations and 2000 samplings from the posterior probability

179

distribution.

180 181

Sensitivity-phylogeny relationships

182

The phylogenetic data (i.e., tree topology with branch lengths) and trait-related data

183

(sensitivity to herbicides) were jointly analyzed to assess the phylogenetic signal of diatom

184

sensitivity. All of the analyses were performed after a square-root transformation of EC10 and

185

EC50 values for single substances and mixtures to stabilize the variances. To ensure that our

186

results were not an artifact of a particular sensitivity level, we performed phylogenetic signal

187

analyses on both EC10 and EC50. However, only the EC50 values were used for the

188

complementary analyses because there is less uncertainty for these values.

189 190

Phylogenetic signal for herbicide sensitivity

191

To measure the phylogenetic signal (i.e. the tendency for related species to be similar to

192

each other) of the herbicide sensitivity of a species we used the K statistic to quantify the

193

strength of the phylogenetic signal for a given trait (EC values for a given herbicide or

194

mixture) using randomization-based procedures. We calculated a K value for each trait and

8 ACS Paragon Plus Environment

Environmental Science & Technology

Page 10 of 32

195

used a randomization test based on the phylogenetically independent contrast (PIC) method29

196

with 10,000 repetitions. Because our sample size was low (14 species), this test is slightly

197

underpowered, and we may expect Type II errors to be inflated. As an alternative to the K

198

statistic, intercept-only GLS models that assume no covariance among species (i.e., a star

199

phylogeny) can be fitted and compared with intercept-only GLS models that assume a Pagel’s

200

λ correlation structure30. Pagel’s λ is a coefficient estimated from trait-related data that

201

weights the Brownian model correlation structure. The models can be compared directly using

202

the Akaike information criterion (AIC)47. As a rule of thumb, if the difference between the

203

AIC values of two models exceeds 2 units, then the model with the lowest AIC is considered

204

to best fit the data.

205

Phylogenetic Principal Component Analysis

206

Phylogenetic principal component analysis (pPCA) is a multivariate method constraining

207

traditional PCA to exhibit phylogenetic autocorrelation32. This approach reveals the main

208

phylogenetic structures of a set of traits. We used pPCA to highlight patterns among pesticide

209

sensitivities in the diatom phylogeny. Jombart et al.32 defined two types of phylogenetic

210

structures that can occur in biological features. First, global structures are strongly linked to

211

the idea of a phylogenetic signal and result from global patterns of sensitivity similarity in

212

phylogenetically related taxa. Second, local structures express the overdispersion of

213

sensitivity values that occurs for closely related species in specific parts of the phylogenetic

214

tree. Both global and local structures are detected and extracted by pPCA in the form of

215

synthetic variables known as the global principal component and the local principal

216

component, respectively.

217

We performed the pPCA on the EC50 values of each species for each herbicide and for

218

mixtures of these herbicides, and retained only the first global principal component (GPC1)

219

and the first local principal component (LPC1), which correspond to the highest positive and

9 ACS Paragon Plus Environment

Page 11 of 32

Environmental Science & Technology

220

the highest negative Eigenvalues, respectively. Screeplot inspection allowed us visually to

221

check that the selected components were sufficient to summarize our data.

222

Ancestral character estimations

223

We estimated ancestral character (sensitivity) values for the EC50-Mix to visualize the

224

order of sensitivity of several diatom species to a mixture of herbicides within the

225

phylogenetic tree. We estimated the ancestral characters for each node assuming a Brownian

226

motion model of evolution for the examined traits using a restricted maximum likelihood

227

method47,48. Finally, we transformed our quantitative trait values (i.e., ancestral and current)

228

into a categorical variable with two levels, which can be interpreted as a sensitive/resistant

229

classification. The threshold between these two levels was selected as the mean of the square

230

roots of the current EC50-Mix values (34.78). The values for sensitive species ranged

231

between 8.18 and 20.20 (mean = 16.14), while those for resistant species ranged between

232

36.46 and 79.27 (mean = 53.42).

233

Phylogenetic regressions

234

Phylogenetic Generalized Least Squares (PGLS) and traditional regressions (with a star

235

phylogeny) were used to assess and rank the explanatory power of two biomonitoring indices

236

(VDAM-NH10 and IPSS49, Table 1) for herbicide sensitivities. For each herbicide, we

237

compared the set of PGLS and traditional regressions for both indices using AIC as an

238

indicator of the relative support. Ecological guilds50 (Table 1) and multiple regressions

239

including both VDAM-NH and IPSS as explanatory variables were not tested here because

240

these models require much more data. Our dataset would have led to convergence errors or

241

misleading results. The PGLS models were fitted by log-likelihood maximization.

242

Statistical packages

243

All of the statistical analyses were performed using R 3.0.0 software51. The phylogenetic

244

data handling, Pagel’s λ correlation structure and ancestral character estimations were

10 ACS Paragon Plus Environment

Environmental Science & Technology

Page 12 of 32

245

performed using the ape package52. The PGLS were adjusted using the nlme package53. The

246

phylogenetic multivariate analyses were performed using the adephylo package54, and

247

Blomberg’s K statistics were computed using the picante package55.

248 249

Results

250

Phylogenetic tree analysis

251

The two methods (ML and BI) used to reconstruct the phylogeny produced very similar

252

topologies. Similarly, using 18S, rbcL or 18S + rbcL contigs produced similar topologies with

253

minor variations in the branch lengths. These small topological differences did not affect the

254

methods used here (results not shown). Phylogenetic trees computed with every combination

255

of methods and markers are provided as supporting information (Figure S4). The topologies

256

were well supported overall by bootstraps and Bayesian posterior probabilities. The tree

257

computed from the 18S + rbcL contig using the ML method with branch support values for

258

each method and its agreement with other references are presented in Figure 1. The diatom

259

species clearly fell into three different groups: the centric, araphid, and pennate raphid

260

diatoms. The centric diatom (Cyclotella meneghiniana) was placed near to the pennate

261

diatoms. The araphid pennate diatoms (Ulnaria ulna and Fragilariales species) were sister

262

species to the nine raphid pennate diatom species in our dataset. The raphid diatoms were

263

divided into two clades: one clade has a raphe canal (Nitzschia palea) and the other does not

264

(Naviculales, Achnanthales and Cymbellales). Subsequent clades included taxa belonging to

265

the Cymbellales, freshwater Achnanthales, and Naviculales species, which were well

266

supported. The nodes that separate these important groups were robust with Bayesian support

267

values close to 100 (Figure 1). The support values computed by ML were lower, especially in

268

the case of the node that separates the raphid and araphid diatoms (67). The deepest node of

11 ACS Paragon Plus Environment

Page 13 of 32

Environmental Science & Technology

269

Naviculales was poorly supported by ML and was unresolved by BI. This convergent tree was

270

used in all of the subsequent phylogenetic analyses.

271

Diatom sensitivity to herbicides

272

An overview of diatom sensitivity to herbicides is presented in Figure 2. Species

273

sensitivities show similar patterns for both the EC10 and EC50 (Figure 2). The complete

274

dataset of untransformed EC10 and EC50 values for each herbicide and each species is

275

provided as supporting information (Tables S1 and S2). Cyclotella meneghiniana and

276

Fragilariales species were the most sensitive to the four herbicides under both single and

277

mixture conditions. More resistant species, such as Nitzschia palea and Sellaphora minima,

278

showed different patterns depending on the herbicide family tested. Nitzschia palea was more

279

resistant to the triazines, while Sellaphora minima was more resistant to the phenylurea

280

herbicides, especially at the EC10 level. Fistulifera saprophila tended to be more resistant to

281

the triazines, especially at the EC50 level. The opposite was observed for all of the herbicides

282

for Gomphonema clavatum. As a general trend, Encyonema silesiacum, Achnanthidium

283

minutissimum and Mayamaea fossalis tended to have medium sensitivities compared to those

284

of other species.

285

Phylogenetic signal for herbicide sensitivity

286

The phylogenetic signal tested with Blomberg’s K was significant (alpha < 5%) at the EC10

287

and EC50 levels for atrazine, Mixt and Mix (Table 2). Mixp was found to be significant only at

288

the EC10 level. We found that Pagel’s λ was closely correlated to Blomberg’s K (Pearson

289

correlation = 0.76, p-value = 0.002) and that both values led to similar conclusions.

290

Interestingly, EC10 appeared to reveal a stronger phylogenetic signal than did EC50 for the

291

phenylurea compounds, especially for diuron. Blomberg’s K statistic ranged from 0.401 for

292

EC10-terbutryn to 0.862 for EC10-Mixt. We found no statistically significant differences in K

293

values between the EC10 or EC50 groups of traits (Wilcoxon paired test; p-value = 0.438).

12 ACS Paragon Plus Environment

Environmental Science & Technology

Page 14 of 32

294

To illustrate the phylogenetic signal, we mapped the EC50-Mix values and the estimated

295

ancestral character values for EC50-Mix onto the phylogenetic tree (Figure 1). The ancestral

296

character estimation showed a clear phylogenetic segregation between the sensitive

297

(Thalassiosirales and Fragilariales species) and resistant (Cymbellales, Naviculales and

298

Bacillariales species) species. Moreover, the trophic mode index VDAM-NH10, the ecological

299

guild50 and the values of the specific pollution sensitivity index of the IPSS biotic diatom

300

index49 of each species are given (Figure 1). From traditional and phylogenetic regressions

301

(Supporting information Table S4), it was clear that VDAM-NH offers better explanatory

302

power for herbicide sensitivities than does IPSS. Terbutryn sensitivity was an exception, as it

303

was equally well explained by both IPSS and VDAM-NH. The trophic mode appeared to

304

match both the sensitivity and phylogeny, as demonstrated statistically (p-value < 0.05). It is

305

also interesting to note that for isoproturon, the Mixp and Mix phylogenetic models performed

306

substantially better than did the traditional models. For diuron, atrazine and Mixt, the

307

traditional and phylogenetic models offered similar performances. Terbutryn is the exception

308

for which traditional models performed better than did phylogenetic models.

309

The ecological guilds were closely related to the phylogeny but were not clearly linked to

310

species’ sensitivity to herbicides. Most of the sensitive species (centric/araphids) belonged to

311

the high-profile guild, which also included some resistant species in the raphid group.

312

Moreover, species belonging to the motile guild displayed various levels of sensitivity, similar

313

to or lower than those of many of the high-profile species.

314

The pPCA on EC50 highlighted a strong global structure and a weak local structure (Figure

315

2 - Screeplot), which support the presence of a phylogenetic signal as demonstrated by

316

statistical analyses. Species’ scores on the first global axis (Figure 2 – Global PC) highlight

317

groups of closely related species that share the same range of herbicide sensitivities. These

318

scores also reveal contrast between sensitive species, such as the Fragilariales and the centric

13 ACS Paragon Plus Environment

Page 15 of 32

Environmental Science & Technology

319

species (Cyclotella meneghiniana), and resistant species, such as Nitzschia palea and

320

Sellaphora minima. Species scores on the LPC1 reveal a marked contrast between Nitzschia

321

palea and both Fistulifera saprophila and Gomphonema parvulum (Figure 2 – Local PC).

322

These species are closely related, but their responses to the different pesticide families are

323

different: Gomphonema parvulum is sensitive to triazine and resistant to phenylurea, whereas

324

Fistulifera saprophila and Nitzschia palea are sensitive to phenylurea and resistant to triazine

325

(Figure 2 – EC values).

326

All four herbicides were negatively correlated with the first global component (Figure 3,

327

Global PC), suggesting the existence of a general pattern of sensitivities within the phylogeny

328

that is independent of the herbicide. However, the first local component (Figure 3, Local PC)

329

seemed to oppose the two groups of herbicides, even if it involved only three species (Figure

330

2, Local PC: N. palea, Fistulifera saprophila, and Gomphonema parvulum).

331 332

Discussion

333

Does phylogeny reflect herbicide sensitivity?

334

Interactions between phylogeny and ecology are often studied because they provide

335

complementary information that can help to explain patterns of species occurence56 or

336

extinction over time57. Nevertheless, studies relating the phylogeny of freshwater organisms

337

to their sensitivity to pesticides are less common, even if they could provide very useful data

338

for monitoring purposes. Among these few studies, Hammond et al.22 found a phylogenetic

339

signal of sensitivity for many amphibians to the insecticide endosulfan, implying that large

340

ranids were the most sensitive frogs. Similarly, Wängberg and Blanck23 found phylogeny and

341

sensitivity to be linked for a wide range of phototrophic organisms. Cyanophyta and

342

Chlorococcales exhibited different levels of sensitivity toward many chemicals. These first

343

studies gave promising results regarding the potential use of phylogeny in ecotoxicology22,23,28

14 ACS Paragon Plus Environment

Environmental Science & Technology

Page 16 of 32

344

for these specific taxonomic groups and chemicals. To enhance the reliability of these results,

345

studies must be conducted on datasets with wide ranges of both species diversity and species

346

sensitivity28. The lack of such a sensitivity dataset in the literature makes it currently

347

impossible to carry out this type of study, especially on organisms of interest for

348

biomonitoring. Diatoms appear to be appropriate organisms due to their high degree of

349

diversity, their varying sensitivities to herbicides and their critical importance in river

350

bioassessment. These organisms are already being successfully used as indicators to assess the

351

ecological level of aquatic ecosystems1,2, which is required for regulatory monitoring, such as

352

for the European Water Framework Directory58. However, it may be difficult to identify

353

diatoms at the species-level, due to their great diversity and the fact that they require highly

354

qualified personnel and resources50,59.

355

In our study, we worked with a set of 14 taxa. These species were chosen based on their

356

presence in Lake Geneva in order to work with a wide range of taxonomic diversity in

357

diatoms. Therefore, this species set is representative of biofilm diversity in Lake Geneva; the

358

sensitivity of the species toward various pesticides has already been explored in mesocosm

359

studies in the context of this particular lake60. Moreover, the chosen taxa belong to various

360

clades that include the main freshwater orders. Diatom phylogeny has been explored on the

361

basis of various different markers, such as 18S, rbcL, psbC, cox1, ITS, and LSU, by several

362

authors61–67. The two methods (ML and BI) used to reconstruct the phylogeny produced

363

exactly the same topology, which was statistically well supported and was consistent with

364

previously published results68–70.

365

We observed a phylogenetic signal of the sensitivity of benthic diatoms to PSII herbicides

366

at both the EC10 and EC50 levels. Blomberg’s K and Pagel’s lambda statistics, which were

367

used to detect this signal, were underpowered in this study. Simulations showed that with 14

368

species, Blomberg’s K detects 80% of true-positives and Pagel’s lambda detects 75% of true-

15 ACS Paragon Plus Environment

Page 17 of 32

Environmental Science & Technology

369

positives. This result suggests that the phylogenetic signal was most likely more pronounced

370

than is shown here. Therefore, a relationship likely exists between diatom phylogeny and

371

herbicide sensitivity. Possible explanatory hypotheses are discussed in the following section.

372 373

Sensitivity patterns in phylogeny: explanatory hypotheses

374

According to the phylogeny and the first axis of the global axis of the pPCA, two groups of

375

sensitivity toward PSII inhibitors were observed: a) one including the sole centric diatom

376

species (Thalassiosirales) and the araphid pennate diatoms (Fragilariales), which were

377

generally more sensitive than b) the pennate raphid species (Bacillariales, Naviculales,

378

Achnantales and Cymbellales). C. meneghiniana was the only centric diatom we included.

379

Moreover, this species displayed mixotrophic capabilities10, which are rare among centric

380

diatoms, indicating that no generalization could be made regarding the sensitivities of centric

381

diatoms. In our study, ancestral character estimation demonstrates that the resistant state

382

emerged very early in the tree. The main difference between these two groups is the presence

383

of the raphe, which is present only in raphid diatoms65,71,9. Raphe played an important role in

384

benthic habitat colonization, principally by enabling diatoms to move and to secrete an

385

exopolysaccharide matrix71. Nevertheless, it is hardly conceivable that the advent of the raphe

386

in diatom evolution led directly to the changes in lowered sensitivity to herbicides. Rather, we

387

hypothesize that during evolution, species that developed a raphe structure simultaneously

388

developed other characteristics (genetic, physiological or cellular traits) that enhanced their

389

resistance to PSII inhibitors. Raphid and araphid pennate diatoms are both characteristic of

390

benthic communities18,60,72. Under low light conditions, some of these diatoms can evolve

391

heterotrophic capacities, and can metabolize other organic substrates, making them less

392

dependent on photosynthesis10,73. In particular, genera such as Craticula, Encyonema,

393

Fistulifera, Gomphonema, Nitzschia and Sellaphora, most of which display motile and/or

16 ACS Paragon Plus Environment

Environmental Science & Technology

Page 18 of 32

394

raphid characteristics, are known to be better adapted to coping with higher organic matter

395

concentrations than most centrics (e.g., Cyclotella) or araphid diatoms (e.g., Fragilariales)74.

396

The sensitivity levels of the different species are generally constant within the

397

araphid/centric diatoms clade, whereas they are variable within the raphid clade, which

398

encompasses a greater diversity of genera. Several species from this latter clade, such as

399

Mayamaea fossalis, Achnanthidium minutissimum and Encyonema silesiacum, were more

400

sensitive than were other raphid species. We observed variability within the raphid clade, but

401

more sensitivity data per genus would be required to develop a firm hypothesis regarding the

402

variation of sensitivity within the raphid clade in relation to phylogeny. However, we suggest

403

that the trophic mode may play a role in the greater sensitivity observed for these three

404

autotrophic species within the raphid clade. Our main hypothesis is that the trophic mode of

405

diatoms, defined by Van Dam et al.10, is partly related to phylogeny and indirectly influences

406

the sensitivity of species to PSII inhibitors. The results of traditional and phylogenetic

407

regressions both suggest that phylogeny provides a first general level of sensitivity to these

408

herbicides. Moreover, the trophic mode of species may help to refine the level of sensitivity

409

within clades characterized by species with a wide diversity of ecological and physiological

410

characteristics. Diatoms with higher heterotrophic capacities are less susceptible to PSII

411

inhibitors because they are able to shift to organic nutrition to sustain themselves. Moreover,

412

the mixotrophic capacities of diatoms vary greatly between species. Several studies seem to

413

confirm this hypothesis: heterotrophic diatom species are less sensitive to herbicides than are

414

autotrophic diatoms species 15–17,19,75, such as the highly sensitive araphid diatoms. Within the

415

raphid clade, species exhibit various trophic modes, and some may be heterotrophic, which

416

may explain the different levels of sensitivity found for the small number of species tested in

417

our study.

17 ACS Paragon Plus Environment

Page 19 of 32

Environmental Science & Technology

418

Finally, we observed another level of variation among most resistant species of the raphid

419

group. As highlighted by the first local axis of the pPCA, there is greater variation in

420

sensitivity to the different herbicide families (triazine vs phenylurea) for Gomphonema

421

parvulum, Encyonema silesiacum, Fistulifera saprophila, and Nitzschia palea, especially at

422

the EC10 level. Triazine and phenylurea herbicides both inhibit photosynthesis by preventing

423

the electron flow within thylakoid membranes76. However, these two herbicide families are

424

characterized by different chemical structures77. Moreover, within each chemical family,

425

specific and different parameters influence herbicide toxicity77. The fact that herbicides

426

exhibit a range of different chemical structures may influence their uptake by algae and/or

427

their binding to the binding site and finally modulate their toxicity78.

428 429

Use of phylogeny in the context of biomonitoring

430

Our results suggest that an a priori assessment of the sensitivity of benthic diatoms to PSII

431

inhibitors can be made from both their phylogeny, which discriminates two major patterns of

432

sensitivity, and their trophic mode, which refines the sensitivity level of diatom species,

433

especially in the raphid clade, indicating that 1) phylogeny has a considerable potential for use

434

in ecotoxicological studies involving diatoms and PSII inhibitor herbicides, and 2) phylogeny

435

provides promising results to predict bioindicator sensitivity, which may be used for the

436

environmental bioassessment of herbicide impacts. Obviously, this study is a first step, and

437

more studies are needed (e.g., within clades and on other diatoms species) before an

438

operational biomonitoring tool for herbicide contamination can be proposed. In our study and

439

as a general trend, araphids and autotrophic species remain the most sensitive. Even

440

Cyclotella meneghiniana, which is defined as mixotrophic and planktonic, was characterized

441

as sensitive. This species is considered as an exception because most of the mixotrophic

442

diatoms species present in the environment are pennate10. Centric and mixotrophic species are

18 ACS Paragon Plus Environment

Environmental Science & Technology

Page 20 of 32

443

rare. Moreover, centric diatoms are rarely found in benthic habitats, and little information is

444

available from micro-mesocosm studies. Pérès et al.17 have shown that centric (Melosira

445

varians) and araphid diatoms (Staurosira venter) tend to disappear under pressure from

446

isoproturon, whereas raphid species (Cymbella mesiana and Sellaphora minima) tend to be

447

favored. Similarly, Schmitt-Jansen and Altenburger18 observed a decrease in the relative

448

abundance of araphid species (Fragilaria sp., F. capucina var. gracilis) after exposure to

449

atrazine and isoproturon. In an agricultural watershed, the relative abundance of Fragilaria

450

capucina (araphid) tended to decrease, while that of Navicula lanceolata, Nitzschia linearis

451

and

452

IPSS (used to assess the water quality from diatom species abundance) and for ecological

453

guilds, no relevant link was observed between the ranking of species’ sensitivity and their

454

phylogeny. Indices relevant for monitoring a specific stressor cannot easily be transposed to

455

monitor another stressor. In our study, we observed that although the IPSS index is relevant in

456

the context of global pollution, it does not seem to be appropriate for herbicide risk

457

assessment, highlighting the need to develop specific biomonitoring indices for herbicide

458

contamination. In the context of risk assessment and bioassessment, integrating phylogeny

459

into ecotoxicological studies seems to offer a promising way to assess the order of species’

460

sensitivity toward PSII inhibitor herbicides. Moreover, the predicted order of species’

461

sensitivity has been supported by other experiments that integrate higher levels of complexity,

462

such as mesocosm60 and in-situ studies79. In such studies, diatoms are exposed to numerous

463

biotic and abiotic environmental factors (turbulence, light, grazing, etc.) where herbicide

464

contamination accounted only for part of the stress on the diatom assemblage. Ecotoxicology

465

is a discipline in which it is necessary to conduct studies of varying complexity, ranging from

466

molecules to ecosystems80, to provide a solid foundation for biomonitoring. Environmental

467

monitoring aims 1) at connecting pressures and impacts for a posteriori assessment, and 2) at

Nitzschia

palea

(raphids)

tended

to

increase15.

For

19 ACS Paragon Plus Environment

Page 21 of 32

Environmental Science & Technology

468

predicting the a priori risk of contaminants. Both approaches rely on basic sensitivity data

469

that are generally too few and heterogeneous, and are obtained from model species

470

unrepresentative of the ecosystems. Using the link between phylogeny and sensitivity offers

471

the prospect of extending these data and increasing their environmental representativeness,

472

thereby improving biomonitoring tools.

473 474 475 476

ACKNOWLEDGMENTS The authors thank Sylvain Guyot and Alain Franc for their scientific assistance. This program was funded by ONEMA (French national office for water and aquatic ecosystems).

477 478

SUPPORTING INFORMATION AVAILABLE

479

Table S1: Sensitivity data (EC10 in µg.L-1) of each diatom species for each herbicide.

480

Table S2: Sensitivity data (EC50 in µg.L-1) of each diatom species for each herbicide.

481

Table S3: GenBank accession numbers for 18S and rbcL markers.

482

Figure S1: Phylogenetic trees computed with all of the combinations of methods and markers.

483

Table S5: Results of traditional and phylogenetic regressions.

484

This information is available free of charge via the Internet at http://pubs.acs.org/

485

FIGURES

486

Figure 1: Phylogenetic tree of 14 diatom species inferred from the 18S and rbcL DNA

487

sequences and their related ecological guild50, global pollution sensitivity (IPSS49), and

488

trophic mode (VDAM-NH10). The branch lengths were computed using the maximum

489

likelihood method. Statistical support (as a percentage) is provided at each node for the two

490

methods (ML bootstraps/BI posterior probabilities). The clades are replaced in their

491

bibliographic context with a superscript number corresponding to the index reference number.

20 ACS Paragon Plus Environment

Environmental Science & Technology

Page 22 of 32

492

For the ancestral characters, the herbicide sensitivity of the diatoms was based on EC50-Mix

493

data. Black and white symbols represent sensitive and non-sensitive species, respectively.

494

Circles represent current characteristics, and diamonds represent inferred ancestral characters.

495

Ecological guilds: P= planktonic, LP= low profile, HP= high profile, M= motile; IPSS: from 1

496

(species in poor quality water) to 5 (species in good quality water); VDAM-NH: 1=

497

autotrophic, sensitive to low organic N concentrations; 2= autotrophic, tolerant to high

498

organic N concentrations; 3= facultative heterotrophic; 4= obligatory heterotrophic.

499

Figure 2: EC50, EC10 and pPCA species scores of the 14 diatom species mapped onto the

500

phylogenetic tree. The EC values are centered and scaled by their standard deviation within

501

the treatment. The scores are centered and scaled by their standard deviation for each

502

component. The larger the circle, the higher (black circle) or the lower (white circle) the

503

value. The bar plots represent the Eigenvalues for the four principal components of the pPCA.

504

The first Global and Local principal component Eigenvalues are indicated by the letters “G”

505

and “L”, respectively.

506

Figure 3: Loadings of herbicide treatments for the first Global and Local principal

507

components of the EC50 pPCA. The black triangles represent single substances and the

508

binary mixture of phenylurea compounds, black circles represent single substances and the

509

binary mixture of triazine compounds, and white diamonds represent the quaternary mixture.

510

21 ACS Paragon Plus Environment

Page 23 of 32

Environmental Science & Technology

511

TABLE

512

Table 1: Ecological and biological metrics of diatoms considered for regression analysis.

513 Metrics Specific index49 (IPSS)

Pollution

Values/Codes

Classes

From 1 to 5

From bad toward best water quality media

sensitivity

1 2 Nitrogen uptake metabolism (VDAM-NH defined here as 3 trophic mode) 4

N-autotrophic, tolerate very low organic [N] N-autotrophic , tolerate high organic [N] Facultative N-heterotrophic, need periodically high organic [N] Obligatory N-heterotrophic, need continuously high organic [N]

10

Ecological guild50

LP (Low Profile) HP (High Profile) M (Motile) P (Planktonic)

Small species that can tolerate physical disturbance and low levels of resources Taller species, that do not resist to physical disturbance, and tolerate high nutrient levels Species that can move, and tolerate high nutrient levels Species that evolve freely in the water column

514 515

Table 2: Results of statistical analysis for phylogenetic signal of the toxicity of herbicides

516

alone and mixtures.

EC50

EC10

K

K p-value

Pagel's λ

∆AIC

0.602

0.103

1.018

0.150

Isoproturon 0.517

0.399

0.233

-1.708

Mixp

0.535

0.258

0.279

-1.561

Atrazine

0.691

0.032

1.000

3.578

Terbutryn

0.638

0.062

1.030

0.452

Mixt

0.717

0.027

1.011

4.041

Mix

0.680

0.031

0.844

1.146

Diuron

0.624

0.083

1.057

0.867

Isoproturon 0.460

0.195

0.675

-1.022

Mixp

0.627

0.054

NA

NA

Atrazine

0.860

0.007

1.062

7.448

Diuron

22 ACS Paragon Plus Environment

Environmental Science & Technology

Terbutryn

0.401

0.178

0.290

-1.655

Mixt

0.862

0.008

1.053

5.882

Mix

0.834

0.008

1.058

5.768

Page 24 of 32

517 518

∆AIC corresponds to the difference between the AIC of the ‘star’ model and that of the

519

‘Pagel’s λ’ model. ∆AIC > 2 indicates the presence of a phylogenetic signal. NA values are

520

produced if the PGLS values are not convergent.

521

AUTHOR INFORMATION

522

Corresponding Author

523

* [email protected]

524

Tel: +33 4 50 26 78 32; Fax: + 33 4 50 26 07 60

525

Author Contributions

526

The manuscript reflects contributions from all the authors. All authors have approved the final

527

version of the manuscript. ‡ These authors contributed equally.

528

Funding Sources

529

This research was financially supported by ONEMA in the context of the 2011-2012

530

“Phylogeny and Bioassessment” program.

531 532

ABBREVIATIONS

533

CA, concentration addition

534

EC, effective concentration

535

TCC, Thonon culture collection

536

PSII, photosystem II

537

IPSS, specific polluosensitivity index

538

PPCA, phylogenetic principal component analysis 23 ACS Paragon Plus Environment

Page 25 of 32

539

Environmental Science & Technology

GLS, generalized least squares

540 541

REFERENCES

542 543 544 545 546 547 548 549 550 551 552 553 554 555 556 557 558 559 560 561 562 563 564 565 566 567 568 569 570 571 572 573 574 575 576 577 578 579 580 581 582 583 584 585 586

(1)

(2)

(3)

(4) (5) (6)

(7)

(8) (9) (10)

(11)

(12)

(13)

(14) (15)

Lenoir, A.; Coste, M. Development of a practical diatom index of overall water quality applicable to the French National Water Board Network. In Use of Algae for Monitoring Rivers II; Whitton, B.A., Rott, E., Eds.: Universität Innsbruck, 1996; pp. 29–43. Schaumburg, J.; Schranz, C.; Hofmann, G.; Stelzer, D.; Schneider, S.; Schmedtje, U. Macrophytes and phytobenthos as indicators of ecological status in German lakes — a contribution to the implementation of the water framework directive. Limnologica 2004, 34, 302–314. Liess, M.; Schäfer, R. B.; Schriever, C. A. The footprint of pesticide stress in communities—Species traits reveal community effects of toxicants. Sci. Total Environ. 2008, 406, 484–490. Resh, V. H. Which group is best? Attributes of different biological assemblages used in freshwater biomonitoring programs. Environ. Monit. Assess. 2008, 138, 131–138. Rimet, F. Recent views on river pollution and diatoms. Hydrobiologia 2012, 683, 1–24. Lowe, R. L.; Pan, Y. Benthic algal communities as biological monitors. In Algal Ecology: Freshwater Benthic Ecosystems; Stevenson R. J., Bothwell M. L., Lowe R. L., Eds.: San Diego, California, USA, 1996; pp. 705–739. Stevenson, R. J.; Smol, J. P. Use of algae in environmental assessments. In Freshwater Algae in North America: Ecology and Classification; Wehr J. D., Sheath R. G., Eds.: San Diego, California, USA, 2003; pp. 775–804. Mann, D. G.; Vanormelingen, P. An inordinate fondness? The number, distributions, and origins of diatom species. J. Eukaryotic Microbiol. 2013, 60, 414–420. Round, F. E.; Crawford, R. M.; Mann, D. G. The diatoms: biology and morphology of the genera; Cambridge, UK, 1990. Van Dam, H.; Mertens, A.; Sinkeldam, J. A coded checklist and ecological indicator values of freshwater diatoms from the Netherlands. Neth. J. Aquat. Ecol. 1994, 28, 117–133. Carter, J. L.; Resh, V. H.; Rosenberg, D. M.; Reynoldson, T. B. Biomonitoring in North American rivers: a comparison of methods used for benthic macroinvertebrates in Canada and the United States. In Biological Monitoring of Rivers: Applications and Perspectives; Ziglio G., Siligardi M., Flaim G., Eds.: Chichester, England, 2006; pp. 203–228. Gallacher, D. The application of rapid bioassessment techniques based on benthic macroinvertebrates in East Asian rivers (a review). In Proceedings of the International Association of Theoretical and Applied Limnology; Williams W. D., Ed., 2002; Vol. 27, pp. 3503–3509. Resh, V. H. Multinational, freshwater biomonitoring programs in the developing world: Lessons learned from African and Southeast Asian river surveys. Environ. Manage. 2007, 39, 737–748. Lockert, C. K.; Hoagland, K. D.; Siegfried, B. D. Comparative sensitivity of freshwater algae to atrazine. Bull. Environ. Contam. Toxicol. 2006, 76, 73–79. Roubeix, V.; Mazzella, N.; Schouler, L.; Fauvelle, V.; Morin, S.; Coste, M.; Delmas, F.; Margoum, C. Variations of periphytic diatom sensitivity to the herbicide diuron and relation to species distribution in a contamination gradient: implications for biomonitoring. J. Environ. Monit. 2011, 13, 1768–1774. 24 ACS Paragon Plus Environment

Environmental Science & Technology

587 588 589 590 591 592 593 594 595 596 597 598 599 600 601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624 625 626 627 628 629 630 631 632 633 634 635

Page 26 of 32

(16) Larras, F.; Bouchez, A.; Rimet, F.; Montuelle, B. Using bioassays and species sensitivity distributions to assess herbicide toxicity towards benthic diatoms. PloS One 2012, 7, e44458. (17) Pérès, F.; Florin, D.; Grollier, T.; Feurtet-Mazel, A.; Coste, M.; Ribeyre, F.; Ricard, M.; Boudou, A. Effects of the phenylurea herbicide isoproturon on periphytic diatom communities in freshwater indoor microcosms. Environ. Pollut. (Oxford, U. K.) 1996, 94, 141–152. (18) Schmitt-Jansen, M.; Altenburger, R. Predicting and observing responses of algal communities to photosystem ii-herbicide exposure using pollution-induced community tolerance and species-sensitivity distributions. Environ. Toxicol. Chem. 2005, 24, 304– 312. (19) Debenest, T.; Pinelli, E.; Coste, M.; Silvestre, J.; Mazzella, N.; Madigou, C.; Delmas, F. Sensitivity of freshwater periphytic diatoms to agricultural herbicides. Aquat. Toxicol. 2009, 93, 11–17. (20) Gilliom, R. J. Pesticides in US streams and groundwater. Environ. Sci. Technol. 2007, 41, 3408–3414. (21) Loos, R.; Gawlik, B. M.; Locoro, G.; Rimaviciute, E.; Contini, S.; Bidoglio, G. EUwide survey of polar organic persistent pollutants in European river waters. Environ. Pollut. (Oxford, U. K.) 2009, 157, 561–568. (22) Hammond, J. I.; Jones, D. K.; Stephens, P. R.; Relyea, R. A. Phylogeny meets ecotoxicology: evolutionary patterns of sensitivity to a common insecticide. Evol. Appl. 2012, 5, 593–606. (23) Wängberg, S.-Å.; Blanck, H. Multivariate patterns of algal sensitivity to chemicals in relation to phylogeny. Ecotoxicol. Environ. Saf. 1988, 16, 72–82. (24) Eriksson, K. M.; Antonelli, A.; Nilsson, R. H.; Clarke, A. K.; Blanck, H. A phylogenetic approach to detect selection on the target site of the antifouling compound irgarol in tolerant periphyton communities. Environ. Microbiol. 2009, 11, 2065–2077. (25) Jeffree, R. A.; Oberhansli, F.; Teyssie, J.-L. Phylogenetic consistencies among chondrichthyan and teleost fishes in their bioaccumulation of multiple trace elements from seawater. Sci. Total Environ. 2010, 408, 3200–3210. (26) Buchwalter, D. B.; Cain, D. J.; Martin, C. A.; Xie, L.; Luoma, S. N.; Garland Jr, T. Aquatic insect ecophysiological traits reveal phylogenetically based differences in dissolved cadmium susceptibility. Proc. Natl. Acad. Sci. U. S. A. 2008, 105, 8321– 8326. (27) Carew, M. E.; Miller, A. D.; Hoffmann, A. A. Phylogenetic signals and ecotoxicological responses: potential implications for aquatic biomonitoring. Ecotoxicology 2011, 20, 595–606. (28) Guénard, G.; Ohe, P. C. von der; de Zwart, D.; Legendre, P.; Lek, S. Using phylogenetic information to predict species tolerances to toxic chemicals. Ecological Applications 2011, 21, 3178–3190. (29) Blomberg, S. P.; Garland Jr, T.; Ives, A. R. Testing for phylogenetic signal in comparative data: behavioral traits are more labile. Evolution 2003, 57, 717–745. (30) Pagel, M. Inferring the historical patterns of biological evolution. Nature 1999, 401, 877–884. (31) Münkemüller, T.; Lavergne, S.; Bzeznik, B.; Dray, S.; Jombart, T.; Schiffers, K.; Thuiller, W. How to measure and test phylogenetic signal. Methods in Ecology and Evolution 2012, 3, 743–756. (32) Jombart, T.; Pavoine, S.; Devillard, S.; Pontier, D. Putting phylogeny into the analysis of biological traits: a methodological approach. J. Theor. Biol. 2010, 264, 693–701.

25 ACS Paragon Plus Environment

Page 27 of 32

636 637 638 639 640 641 642 643 644 645 646 647 648 649 650 651 652 653 654 655 656 657 658 659 660 661 662 663 664 665 666 667 668 669 670 671 672 673 674 675 676 677 678 679 680 681 682 683 684

Environmental Science & Technology

(33) Dubois, A.; Lacouture, L. Bilan de présence des micropolluants dans les milieux aquatiques continentaux Période 2007 - 2009; Commissariat général au développement durable. Service de l’observation et des statistiques, 2011; pp. 59–71. (34) El Jay, A. Effects of organic solvents and solvent-atrazine interactions on two algae, Chlorella vulgaris and Selenastrum capricornutum. Arch. Environ. Contam. Toxicol. 1996, 31, 84–90. (35) Larras, F.; Montuelle, B.; Bouchez, A. Assessment of toxicity thresholds in aquatic environments: does benthic growth of diatoms affect their exposure and sensitivity to herbicides? Sci. Total Environ. 2013, 463-464, 469–477. (36) Technical Guidance Document on Risk Assessment. Part II; European Commission Joint Research Centre: Luxembourg, 2003; p. 328. (37) Faust, M.; Altenburger, R.; Backhaus, T.; Blanck, H.; Boedeker, W.; Gramatica, P.; Hamer, V.; Scholze, M.; Vighi, M.; Grimme, L. H. Predicting the joint algal toxicity of multi-component s-triazine mixtures at low-effect concentrations of individual toxicants. Aquat. Toxicol. 2001, 56, 13–32. (38) Arrhenius, Åsa; Grönvall, F.; Scholze, M.; Backhaus, T.; Blanck, H. Predictability of the mixture toxicity of 12 similarly acting congeneric inhibitors of photosystem II in marine periphyton and epipsammon communities. Aquat. Toxicol. 2004, 68, 351–367. (39) Porsbring, T.; Backhaus, T.; Johansson, P.; Kuylenstierna, M.; Blanck, H. Mixture toxicity from photosystem II inhibitors on microalgal community succession is predictable by concentration addition. Environ. Toxicol. Chem. 2010, 29, 2806–2813. (40) Kermarrec, L.; Franc, A.; Rimet, F.; Chaumeil, P.; Humbert, J. F.; Bouchez, A. Nextgeneration sequencing to inventory taxonomic diversity in eukaryotic communities: a test for freshwater diatoms. Mol. Ecol. Resour. 2013, 13, 607–619. (41) Edgar, R. C. MUSCLE: multiple sequence alignment with high accuracy and high throughput. Nucleic Acids Res. 2004, 32, 1792–1797. (42) Gouy, M.; Guindon, S.; Gascuel, O. SeaView version 4: A multiplatform graphical user interface for sequence alignment and phylogenetic tree building. Mol. Biol. Evol. 2010, 27, 221–224. (43) Guillou, L.; Chrétiennot-Dinet, M.-J.; Medlin, L. K.; Claustre, H.; Goër, S. L.; Vaulot, D. Bolidomonas: A new genus with two species belonging to a new algal class, the Bolidophyceae (heterokonta). J. Phycol. 1999, 35, 368–381. (44) Nylander, J. A. A. MrAIC.pl; Evolutionary Biology Centre: Uppsala University, 2004. (45) Stamatakis, A. RAxML-VI-HPC: maximum likelihood-based phylogenetic analyses with thousands of taxa and mixed models. Bioinformatics 2006, 22, 2688–2690. (46) Ronquist, F.; Teslenko, M.; van der Mark, P.; Ayres, D. L.; Darling, A.; Höhna, S.; Larget, B.; Liu, L.; Suchard, M. A.; Huelsenbeck, J. P. MrBayes 3.2: efficient Bayesian phylogenetic inference and model choice across a large model space. Syst. Biol. 2012, 61, 539–542. (47) Paradis, E. Analysis of Phylogenetics and Evolution with R; UseR!; 2nd ed. 2012.; New York, USA, 2011. (48) Schluter, D.; Price, T.; Mooers, A. Ø.; Ludwig, D. Likelihood of ancestor states in adaptive radiation. Evolution 1997, 51, 1699–1711. (49) Cemagref. Étude des méthodes biologiques d’appréciation quantitative de la qualité des eaux; 1982; p. 218. (50) Rimet, F.; Bouchez, A. Biomonitoring river diatoms: Implications of taxonomic resolution. Ecol. Indic. 2012, 15, 92–99. (51) R Development Core Team. R: A Language and Environment for Statistical Computing; Vienna, Austria, 2013.

26 ACS Paragon Plus Environment

Environmental Science & Technology

685 686 687 688 689 690 691 692 693 694 695 696 697 698 699 700 701 702 703 704 705 706 707 708 709 710 711 712 713 714 715 716 717 718 719 720 721 722 723 724 725 726 727 728 729 730 731 732 733 734

Page 28 of 32

(52) Paradis, E.; Claude, J.; Strimmer, K. APE: analyses of phylogenetics and evolution in R language. Bioinformatics 2004, 20, 289–290. (53) Pinheiro, J.; Bates, D.; DebRoy, S. nlme: Linear and Nonlinear Mixed Effects Models; 2013. (54) Jombart, T.; Balloux, F.; Dray, S. adephylo: new tools for investigating the phylogenetic signal in biological traits. Bioinformatics 2010, 26, 1907–1909. (55) Kembel, S. W.; Cowan, P. D.; Helmus, M. R.; Cornwell, W. K.; Morlon, H.; Ackerly, D. D.; Blomberg, S. P.; Webb, C. O. Picante: R tools for integrating phylogenies and ecology. Bioinformatics 2010, 26, 1463–1464. (56) Pavoine, S.; Vela, E.; Gachet, S.; De Bélair, G.; Bonsall, M. B. Linking patterns in phylogeny, traits, abiotic variables and space: a novel approach to linking environmental filtering and plant community assembly. J. Ecol. 2011, 99, 165–175. (57) Green, W. A.; Hunt, G.; Wing, S. L.; DiMichele, W. A. Does extinction wield an axe or pruning shears? How interactions between phylogeny and ecology affect patterns of extinction. Paleobiology 2011, 37, 72–91. (58) Directive 2000/60/EC of the European parliament and of the council of 23 October 2000 establishing a framework for Community action in the field of water policy; 2000; p. 72. (59) Kelly, M. G.; Penny, C. J.; Whitton, B. A. Comparative performance of benthic diatom indices used to assess river water quality. Hydrobiologia 1995, 302, 179–188. (60) Rimet, F.; Bouchez, A. Use of diatom life-forms and ecological guilds to assess pesticide contamination in rivers: Lotic mesocosm approaches. Ecol. Indic. 2011, 11, 489–499. (61) Medlin, L. K.; Kaczmarska, I. Evolution of the diatoms: V. Morphological and cytological support for the major clades and a taxonomic revision. Phycologia 2004, 43, 245–270. (62) Medlin, L. K.; Kooistra, W. H.; Gersonde, R.; Wellbrock, U. Evolution of the diatoms (Bacillariophyta). II. Nuclear-encoded small-subunit rRNA sequence comparisons confirm a paraphyletic origin for the centric diatoms. Mol. Biol. Evol. 1996, 13, 67–75. (63) Beszteri, B.; Acs, È.; Makk, J.; Kovács, G.; Márialigeti, K.; Kiss, K. T. Phylogeny of six naviculoid diatoms based on 18S rDNA sequences. Int. J. Syst. Evol. Microbiol. 2001, 51, 1581–1586. (64) Ruck, E. C.; Theriot, E. C. Origin and evolution of the canal raphe system in diatoms. Protist 2011, 162, 723–737. (65) Theriot, E. C.; Ashworth, M.; Ruck, E.; Nakov, T.; Jansen, R. K. A preliminary multigene phylogeny of the diatoms (Bacillariophyta): challenges for future research. Plant Ecology and Evolution 2010, 143, 278–296. (66) Zechman, F. W.; Zimmer, E. A.; Theriot, E. C. Use of ribosomal DNA internal transcribed spacers for phylogenetic studies in diatoms. J. Phycol. 1994, 30, 507–512. (67) Lundholm, N.; Daugbjerg, N.; Moestrup, Ø. Phylogeny of the Bacillariaceae with emphasis on the genus Pseudo-nitzschia (Bacillariophyceae) based on partial LSU rDNA. Eur. J. Phycol. 2002, 37, 115–134. (68) Kermarrec, L.; Ector, L.; Bouchez, A.; Rimet, F.; Hoffmann, L. A preliminary phylogenetic analysis of the Cymbellales based on 18S rDNA gene sequencing. Diatom Research 2011, 26, 305–315. (69) Medlin, L. K. A review of the evolution of the diatoms from the origin of the lineage to their populations. In The Diatom World; Seckbach, J., Kociolek, P., Eds.: New York, USA, 2011; pp. 93–118. (70) Theriot, E. C.; Ruck, E.; Ashworth, M.; Nakov, T.; Jansen, R. K. Status of the pursuit of the diatom phylogeny: Are traditional views and new molecular paradigms really 27 ACS Paragon Plus Environment

Page 29 of 32

735 736 737 738 739 740 741 742 743 744 745 746 747 748 749 750 751 752 753 754 755 756 757 758 759 760

Environmental Science & Technology

(71) (72) (73)

(74)

(75) (76) (77)

(78) (79) (80)

that different? In The Diatom World; Seckbach, J., Kociolek, P., Eds.: New York, USA, 2011; pp. 119–142. Sims, P. A.; Mann, D. G.; Medlin, L. K. Evolution of the diatoms: insights from fossil, biological and molecular data. Phycologia 2006, 45, 361–402. Brown, S. D.; Austin, A. P. Diatom Succession and Interaction in Littoral Periphyton and Plankton. Hydrobiologia 1973, 43, 333–356. Hellebust, J. A.; Lewin, J. Heterotrophic nutrition. In The Biology of Diatoms; Botanical Monographs; Werner D., Ed.: Berkeley and Los Angeles, California, 1977; pp. 169–197. Berthon, V.; Bouchez, A.; Rimet, F. Using diatom life-forms and ecological guilds to assess organic pollution and trophic level in rivers: a case study of rivers in southeastern France. Hydrobiologia 2011, 673, 259–271. Berard, A.; Pelte, T. The impact of photo system II (PS II) inhibitors on algae communities and dynamics. Sci. Eau 1999, 12, 333–361. Moreland, D. E.; Hill, K. L. Interference of Herbicides with the Hill Reaction of Isolated Chloroplasts. Weeds 1962, 10, 229–236. Gramatica, P.; Vighi, M.; Consolaro, F.; Todeschini, R.; Finizio, A.; Faust, M. QSAR approach for the selection of congeneric compounds with a similar toxicological mode of action. Chemosphere 2001, 42, 873–883. Oettmeier, W. Herbicide resistance and supersensitivity in photosystem II. Cell. Mol. Life Sci. 1999, 55, 1255–1277. Marcel, R.; Bouchez, A.; Rimet, F. Influence of herbicide contamination on diversity and ecological guilds of river diatoms. Cryptogamy Algology 2013, 34, 169–183. Boudou, A.; Ribeyre, F. Aquatic ecotoxicology: from the ecosystem to the cellular and molecular levels. Environ. Health Perspect. 1997, 105, 21–35.

28 ACS Paragon Plus Environment

Gu

VD AM -N H

HP 5

2

Gomphonema clavatum HP 5

1

il

ds IP SS

Environmental Science & Technology Page 30 of 32 Figure 1

100/100

100/100 91/100

Achnanthidium minutissimum

LP 5

2

M

3

3

Mayamaea fossalis

M

3

2

Craticula accomoda

M

1

4

Fistulifera saprophila

M

2

3

Nitzschia palea

M

1

4

Ulnaria ulna

HP 3

2

4

2

HP 4

2

96/100

Sellaphora minima 75/99

36/− 91/100 100/100

67/99

Bacillariales (61, 70)

3

Naviculales sensu lato

HP 2

Freshwater Achnanthales (69)

Gomphonema parvulum

Cymbellales (68, 69)

Encyonema silesiacum

95/100

Fragilaria rumpens

100/100

Fragilaria capucina

HP 3.4 2

P

2

ACS Paragon Plus Environment Bolidomonas pacifica (outgroup) 0.05

3

Thalassiosirales (61, 70)

Cyclotella meneghiniana

P

Fragilariales (69)

Fragilaria crotonensis

75/98

Figure 2 of 32 Page 31

Environmental Science & Technology

G.clavatum G.parvulum E.silesiacum A.minutissimum S.minima M.fossalis C.accomoda F.saprophila N.palea U.ulna F.crotonensis F.rumpens F.capucina

Sensitivity (EC50)

ACS Paragon Plus Environment Sensitivity (EC10)

Global PC Local PC

Mix

Mix Triazines

Atrazine Terbutryne

Mix Ureases

Diuron Isoproturon

Mix

Mix Triazines

Atrazine Terbutryne

Mix Ureases

-2 -1 1 2

Diuron Isoproturon

C.meneghiniana

PPCA scores

300 200

G

100 0 −100

L

Figure 3 Environmental Science & Technology Page 32 of 32 Global PC EC50Diuron EC50Isoproturon EC50MixUr EC50Atrazine EC50Terbutryne EC50MixTri EC50Mix Local PC EC50Diuron EC50Isoproturon EC50MixUr EC50Atrazine EC50Terbutryne EC50MixTri EC50Mix

ACS Paragon Plus Environment −0.6

−0.2

0.2