Modeling the Effects of Hydrodynamic Regimes on Microbial

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Modelling the effects of hydrodynamic regimes on microbial communities within fluvial biofilms: combining deterministic and stochastic processes Yi Li, Chao Wang, Wenlong Zhang, Peifang Wang, Lihua Niu, Jun Hou, Jing Wang, and Linqiong Wang Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.5b03277 • Publication Date (Web): 05 Oct 2015 Downloaded from http://pubs.acs.org on October 9, 2015

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Modelling the effects of hydrodynamic regimes on microbial communities within

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fluvial biofilms: combining deterministic and stochastic processes

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Yi Li, Chao Wang, Wenlong Zhang*, Peifang Wang*, Lihua Niu, Jun Hou, Jing

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Wang, Linqiong Wang

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Key Laboratory of Integrated Regulation and Resource Development on Shallow

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Lakes, Ministry of Education, College of Environment, Hohai University, Nanjing

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210098, P.R. China

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Keywords: hydrodynamics, stream biofilm, community assembly, modelling, niche, neutral

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* Corresponding authors:

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Dr. Wenlong Zhang

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College of Environment, Hohai University, Nanjing 210098, P.R. China

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Phone: 86-25-83786251. Fax: 86-25-83786090.

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Email: [email protected]

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Prof. Peifang Wang

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College of Environment, Hohai University, Nanjing 210098, P.R. China

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Phone: 86-25-83786251. Fax: 86-25-83786090.

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Email: [email protected]

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Abstract

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To deeply understand the effects of hydrodynamics on microbial community, the

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roles of niche-based and neutral processes must be considered in a mathematical

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model. To this end, a two-dimensional model combining mechanisms of immigration,

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dispersal, and niche differentiation was firstly established to describe the effects of

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hydrodynamics on bacterial communities within fluvial biofilms. Deterministic

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factors of the model were identified via the calculation of Spearman’s rank correlation

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coefficients between parameters of hydrodynamics and bacterial community. It was

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found that turbulent kinetic energy and turbulent intensity were considered as a set of

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reasonable predictors of community composition, whereas flow velocity and turbulent

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intensity can be combined together to predict biofilm bacterial biomass. According to

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the modelling result, bacterial community could get its favorable assembly condition

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with flow velocity ranging from 0.041 to 0.061 m/s. However, the driving force for

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biofilm community assembly changed with the local hydrodynamics. Individuals

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reproduction within biofilm was the main driving force with flow velocity less than

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0.05 m/s, while cells migration played a much more important role with velocity

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larger than 0.05 m/s. The developed model could be considered as a useful tool for

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improving the technologies of water environment protection and remediation.

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Keywords: hydrodynamics; stream biofilm; community assembly; modelling; niche;

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neutral

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Introduction

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Stream biofilm is a complex aggregation of microorganisms embedded in a

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polymer matrix and covers almost every surface in freshwater environments (1). In

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aquatic environments, natural biofilms are able to provide a wide variety of ecosystem

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services, involving organic matter processing and retention, energy flow and nutrients

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cycling (2, 3). Because of their sedentary way of life, microbial communities

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associated with biofilms are affected by past and present environmental conditions

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and therefore constitute potential integrative indicators of stream health (4). Therefore,

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understanding the assembly of microbial communities in biofilms could provide

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important information for water environment protection and remediation.

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Over the past decades, a wide range of studies have been conducted to investigate

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the relationships between biofilm microbial communities and environmental

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parameters using statistical analysis, such as nutrient, temperature, hydrodynamics,

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light, and heavy metal (5-8). Among these environmental parameters, hydrodynamics

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are considered as the major agents of physical forcing on driving dynamics of the

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stream biofilm microbial community since streams are usually characterized by a

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largely unidirectional downstream flow of water which can control the dispersal of

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suspended microorganisms (9), biofilm community composition (8, 10), architecture

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(11, 12), and metabolism (13). Besemer et al. (8) showed that the spatial variation

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induced by hydrodynamics could result in a gradient of bacterial beta diversity. The

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flux of microorganisms from the bulk liquid to biofilms increased with the increasing

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of flow velocity, thereby generating higher richness in these biofilms communities 3

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(10). Battin et al. (11) found that microstructural heterogeneity of biofilm was

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dynamic, and biofilms that developed under slower velocities were thicker and had

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larger surface sinuosity and higher areal densities than their counterparts exposed to

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higher velocities. Surface sinuosity and biofilm fragmentation increased with

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thickness, and these changes could reduce resistance to the mass transfer of solutes

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from the water column into the biofilms. Singer et al. (13) found that the metabolic

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rates for microbial communities within biofilms were controlled by the transfer of

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metabolites in diffusive boundary layer. For example, the uptake of glucose was

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largely driven by physical processes related to flow heterogeneity, whereas

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biodiversity effects, such as complementarity, most likely contributed to the enhanced

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uptake of putatively recalcitrant dissolved organic carbon compounds in the

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streambeds with higher flow heterogeneity. Besides, the drag forces and skin friction

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exerted on the stream biofilm were reported to be increased with the increasing water

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velocity, resulting in a loss of microbial community through the chronic detachment

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process (12). However, until now, all the effects were investigated individually in

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each study, and there has been no research which systematically illuminates the

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cumulative effects of hydrodynamics on biofilm microbial community.

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In order to deeply understand the effects of hydrodynamics on the assembly of

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biofilm microbial community, a mathematical model considering the mechanisms of

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ecology succession is required. Recently, microbial community is thought to be

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shaped mainly by two types of processes, i.e. deterministic process and stochastic

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process (14-16). The former such as competition and niche differentiation came from 4

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the assumption of traditional niche-based theory (17). However, such theories struggle

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to explain very diverse environments where many rare taxa can coexist (18). The later

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was proposed according to a neutral theory which considers birth, death, dispersal,

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and speciation and disregards the differences between species at the same trophic

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level (19). However, the mechanisms of neutral models are just plain “too simple” to

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represent biological reality. Moreover, small deviations from neutrality would have

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large repercussions for the predicted patterns (20). It is now more generally accepted

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that deterministic and stochastic processes occur simultaneously during the assembly

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of biofilm communities (14, 21). According to the theory, models including both

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deterministic and stochastic elements were established. Mouquet and Loreau (22)

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presented a model to describe community patterns in source-sink metacommunities

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though introducing some stochastic elements to niche model. Ofiţeru et al. (14)

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examined the microbial communities in a wastewater treatment plant by incorporating

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environmental influences on the reproduction (or birth) rate of individual taxa.

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And yet for all that, the related research on modeling the effects of

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hydrodynamics on the assembly of biofilm microbial communities is very limited.

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Only recently, Woodcock et al. (23) used a one-dimensional neutral model to present

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the spatial correlation between local microbial community assembly and immigration

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from remote community and dispersal between environmentally similar landscape

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patches. Drummond et al. (24) developed a stochastic model to assess the transport,

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retention, and inactivation of Escherichia coli in a small stream. Although

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hydrodynamics were reported to play important roles in the assembly of microbial 5

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community by controlling the transfer of metabolites in the diffusive boundary layer

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(i.e. the hydrodynamics driving deterministic process), it has not yet been seriously

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considered in the one-dimensional neutral/stochastic model.

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Therefore, our hypothesis is that hydrodynamics act not only as deterministic

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factors but also stochastic factors during the assembly of microbial communities

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within fluvial biofilm. To test the hypothesis, this study was conducted in the

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following three steps: 1) identifying the deterministic factors through studying the

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correlation between local hydrodynamics and microbial community within biofilm

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using statistical analysis, 2) studying the effect of local hydrodynamics on biofilm

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community succession (i.e. community diversity, composition, and biomass), and 3)

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developing a two-dimensional model considering the mechanisms of immigration,

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dispersal, and niche differentiation to describe the effects of hydrodynamics on the

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assembly of microbial community within fluvial biofilm. The obtained results would

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not only be helpful for understanding the multitudinous consequences explaining the

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relationship between microbial communities and hydrodynamics using statistical

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analysis, but also play very important roles in water environment protection and

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remediation.

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2. Material and Methods

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2.1 Experimental procedure

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The experiment was conducted in an indoor flume located on the right bank of the

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Qinhuai River at Nanjing, China. The sketch of the experimental system is shown in

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Figure 1. Two pumps were used in the experimental system. One continuously

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supplied water from the river to the downstream tank. The other ran water to the

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upstream tank through a 80 cm main. Large particles were eliminated by the filtration

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before river water was supplied into river tank. The upstream tank fed the downstream

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tank by gravity with the constant flow of 10 L/s. Three flumes were operated parallel

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during the experiment. Each flume was built with the length of 27 m, entrance width

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of 2 m, outlet width of 0.2 m, depth of 0.2 m, and slope of 10-3. The flow conditions

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of the flume were shaped by the diminishing width. A monolayer of clean stream

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gravel was used to cover the flumes and mimic the benthic layer of a streambed.

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Sterile unglazed ceramic coupons (1 by 2 cm) were placed on the gravel serving as a

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near-natural substratum for biofilm growth (8).

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The experiment was performed in two stages. The first stage lasted three week for

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biofilm seeding. In this stage, the water was re-circulated in the flumes and renewed

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weekly. After that, the flumes changed to open water circulation to allow the free

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growth of biofilm. Two weeks later, hydrodynamic and biological measurements were

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performed along the horizontal centerline of each flume with 1 m intervals from

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downstream to upstream. After sampling, the samples were transferred into sealable

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plastic bags and placed on ice until delivery to the laboratory within 1 h and then

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stored at -80 oC in lab. The concentrations of inorganic nutrients and dissolved

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organic carbon in the upstream tank were measured twice a week.

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2.2 Biological measurements

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2.2.1 Microbial biomass 7

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For each sampling, four coupons were selected randomly for biofilms detachment.

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Bacterial abundance was estimated by direct microscopic counts (11, 25). The

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detached biofilms were treated with 0.1 mM sterile tetrasodium pyrophosphate for 10

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min, and sonicated 60 s for cells removal. Samples (1 mL) were then transferred into

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sterile vials containing 1 mL of tetrasodium pyrophosphate, thoroughly vortexed, and

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sonicated 30 s again. After that, samples were mixed with sterile glycerol (30 %),

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vortexed, and spun to pellet particles that likely cause background fluorescence. After

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staining with propidium iodide, bacterial cells in the supernatant were enumerated on

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a black 0.2 µm pore size GTBP Millipore filter in 10 to 30 randomly selected fields to

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account for 300 to 500 cells. Two filters were counted per ceramic coupon.

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Chlorophyll a was extracted with acetone for 12 h at 4 °C in dark. Samples were

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vortexed,

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(EX435/EM675) using spinach (Sigma) as a standard (11). The detached matter was

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weighed after combustion (500 °C, overnight) to determine ash free dry mass (AFDM)

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(26).

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2.2.2 Microbial community composition

and

the

supernatant

was filtered

and

assayed

fluorometrically

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Genomic DNA of samples was extracted using an E.Z.N.A® soil DNA kit

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(Omega Bio-Tek Inc., USA). The concentration and purity of DNA were checked by

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Nanodrop ND-1000 Spectrophotometer (Witec-AG, Switzerland). The bacterial

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community was detected using the T-RFLP method (23). 16S rRNA genes of bacteria

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were amplified from DNA extract using the primer pair 27F and 1492R. Primer 27F

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was labeled using dye 5-carboxyflurescein (FAM). PCR products were digested in 8

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duplicates using Hae III and Hinf I restriction endonucleases (TaKaRa, Japan) at 37

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o

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on an automated DNA sequencer (ABI Prism TM 3730). T-RF sizes and peak areas

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were measured using GeneMarker.

C for 3 h. The fluorescently labeled terminal restriction fragments (T-RFs) were run

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For the identity of bacterial phylogenetic affiliation, clone library of 16S rRNA

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genes from the pooled samples was constructed. A total of 100 positive clones were

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selected randomly for the subsequent sequencing of inserted DNA fragments with

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bacterial library. The phylogenetic affiliation of these 16S rRNA gene sequences were

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determined by Ribosomal Database Project and BALSTN online.

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Given the potential discrepancy between in silico-determined T-RF length and

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actual T-RF length determined by sequencing, the origins of T-RFs were identified

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according to the T-RFLP profiles of cloned 16S rRNA genes (27). The T-RFLP

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analysis of cloned 16S rRNA genes was the same as above. The phylogenetic

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affiliation of each peak was determined by the cloned 16S rRNA gene sequences with

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the same T-RF size. The T-RFLP profiles of the same sample digested by Hae III and

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Hinf I separately, presented a good agreement in the microbial community

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compositions. However, the T-RFLP profiles corresponding to Hae III generated more

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detailed T-RFLP profiles and were used for further analysis. All T-RFLP profiles

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digested by Hae III were pooled and standardized into a T-RFLP abundance matrix

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for the following analysis. The diversity indices (Gini-simpson coefficient and

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evenness) based on the T-RFLP abundance matrix were calculated by PAST 4.0. Each

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T-RF size was defined as an operational taxonomic unit (OTU) in this study. 9

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2.3 Hydrodynamic measurements

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The hydrodynamic parameters over the substratum (5 mm above streambed) were

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measured with a high-resolution acoustic Doppler velocimeter (ADV) (Nortek

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Vectrion, Norway) (8). Data for each sections were collected at a sampling rate of 50

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Hz (1 min), yielding a time series (n = 3000). Three-dimensional vector of flow

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velocity (Vxyz), turbulent intensity (TI), turbulent kinetic energy (TKE), and

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roughness Reynolds number (k+) were calculated by the equations from (1) to (4) (8,

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26):

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TI = 205

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x2 + y 2 + z 2

Vxyz =

SD R xyz R xyz

(2)

1 n −1 ρ ( SD x2 + SD y2 + SD z2 ) 2 n

TK E = k+ =

(1)

(3)

V xy z k s

ν

(4)

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where x, y, and z are velocity components as Cartesian coordinates, SDRxyz is the

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standard deviation of the three-dimensional velocity, ρ is the density of water, ν is

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water kinetic viscosity, ks is the Nikuradse’s equivalent sand roughness

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(approximately equal to 1.03 ± 0.07 cm) (26). SDx, SDy, and SDz, are the respective

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standard deviations (from 3000 measurements) of the velocity components.

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2.4 Data analysis

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After

the

measurements,

all

of

the

hydrodynamic

parameters

were

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log-transformed for further statistical analysis. Correlation coefficients between

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hydrodynamic parameters (i.e. flow velocity, turbulent intensity, turbulent kinetic

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energy, and roughness Reynolds number) and biological parameters (i.e. numbers of 10

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OTUs, Gini-Simpson coefficient, evenness, bacterial abundance, Chlorophyll a, and

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AFDM) were measured by the calculations of Spearman’s rank correlation

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coefficients using SPSS 20.0 as previously described (28). To control the effect of

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hydrodynamics, the values of bacterial diversity and biomass of the samples with the

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same hydrodynamic parameters were averaged, log-transformed, and then used for the

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statistical analysis.

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2.5 Modeling the effects of hydrodynamics on microbial communities

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The two-dimensional model was developed by incorporating the deterministic

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factors on the reproduction (or birth) rate of individual taxa. The basic neutral model

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is that of Hubbell (19) formulated and extended for microbial communities into a

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continuous format that permits the inclusion of environmental effects (29). In a

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community saturated with NT individuals, an individual must die or leave the system

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for the assemblage to change. The dead individual would be replaced via one of three

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different mechanisms. With probability mn, its place is taken by the offspring of one

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of the individuals in the neighboring patches. With probability ms, an individual

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migrates into the system from the source community. The alternative, which occurs

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with probability ml (ml = 1-mn-ms), is that it is replaced by a duplicate of a randomly

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selected member of the same patch. The parameters ms, ml and mn are used to

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describe stochastic processes during the assembly of biofilm communities. The

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parameter

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advantage/disadvantage factors on the reproduction (or birth) rate of individual taxa.

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For species A in patch i comprising Ni individuals, the probability that the abundance

α

is

set

as

the

deterministic

factor

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increases or decreases during any given time step, are given in formulas (5) and (6),

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where p is the relative abundance of the species in the source community (23).

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I ( Ni ) =

D( Ni ) =

NT − Ni Ni m [(1+ α )ml + n ( Ni−1 + Ni+1 ) + ms p] NT NT −1 2NT

(5)

Ni N − Ni mn [(1− α )ml T + (2NT − Ni−1 − Ni+1 ) + ms (1 − p)] NT NT −1 2NT

(6)

The expected changes in the abundance and covariance of the species A in the i patch are given in formulas (7) and (8).

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dE ( N i ) = m n [ E ( N i +1 ) + E ( N i −1 ) − 2 E ( N i )] + m s [ N T p − ( N i )] + 2α E ( N i ) m l dt (7)

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dU k dE ( N i N i + k ) dE ( N i ) dE ( N i + k ) = − E ( N i+ k ) − E(Ni ) dt dt dt dt

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= mn (Uk +1 +Uk−1 − 2Uk ) − 2mU s k + 2mlαUk

(8)

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Where E(Ni) is the expected abundance of the species A in the ith patch. E(Ni+1) and

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E(Ni-1) are the expected abundance of the species A in the (i+1)th and (i-1)th patches,

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respectively. Uk is the covariance between two sides of the ith patch at a distance of k.

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Uk+1 and Uk-1 are the covariances between two sides a distance (k+1) and (k-1) apart,

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respectively. When the system reaches a stable equilibrium (i.e. dE(Ni)/dt = 0, dUk /dt

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= 0), the solutions for E(Ni) and Uk could be expressed as formulas (9) and (10),

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respectively.

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E ( Ni) = µ (a − a2 − 1)i −1 + τ (a + a 2 − 1)i−1 −η

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log(Uk ) = k log(ω1) + log(C1)

(9) (10)

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Where E(N2) is the expected abundance of the species A in the 2th patch. The symbols

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µ, τ, η, a, b, and ω1 are used to simplify the formulas (9) and (10). Detailed

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expressions are shown in the formulas (11) to (16). 12

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µ = [(a + a 2 − 1) NT − b / (a − 1 + a 2 − 1) − E ( N 2 )] / 2 a 2 − 1

(11)

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τ = NT −µ +η

(12)

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η = b / (a − 1 + a2 − 1)2

(13)

ms m +α l mn mn

(14)

a = 1+ 264

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b = −2

ms NT p mn

ω1 = (1 +

(15)

m s α ml m α ml 2 m α ml + )− ( s + ) + 2( s + ) mn mn mn mn mn mn

(16)

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In the developed model, the parameters ms/mn and ml/mn are used to describe

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stochastic processes during the assembly of biofilm communities. The parameter α is

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set as the deterministic factor which confers advantage (α > 0) or disadvantage (α < 0)

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in the birth rate of the ith taxon, and assumed to depend on external factors (e.g.

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environmental factors), thereby breaking the neutrality assumption. A different α can

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be used for each taxon and hence the model allows for differential birth rates but is

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not specific about the biological mechanisms that convey the advantage. When α = 0,

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the model describes purely neutral dynamics, same as that reported by Woodcock et al.

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(23). Moreover, if we allow a nonzero advantage, then the effects of environment

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factors on the birth-death process in the community could be expressed by performing

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the linear least-squares analysis to incorporate these independent variables (e.g.

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environmental factors). In this study, it was hypothesized that hydrodynamics act not

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only as deterministic factors but also stochastic factors during the assembly of

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microbial communities within fluvial biofilm. Thus, the parameters ms/mn and αml/mn

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could be considered as the linear functions of the measured hydrodynamic parameters 13

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(i.e. flow velocity, turbulent intensity, turbulent kinetic energy, and roughness

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Reynolds number).

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3. Results and Discussion

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3.1 Variations of community diversity, composition, and biomass with flow regime

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The flow regime over the substratum varied significantly along the flumes (as shown

287

in Figure 1b). Flow velocity and roughness Reynolds number generally increased with

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the diminished width. Turbulent kinetic energy increased accordingly and accelerated

289

rapidly at the end of the flumes, whereas a slight decrease was found for turbulent

290

intensity (from 6.6 % to 5.4 %). The variations of bacterial diversity, composition, and

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biomass were shown in Figure 2. In order to minimize the influences of random errors

292

on community analyses, the data collected from all the flumes were analyzed together.

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3.1.1 Linkage between hydrodynamics and bacterial communities.

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Links between the measured hydrodynamic parameters and biological parameters

295

were initially explored via calculation of Spearman’s rank correlation coefficient,

296

which is a non-parametric measure of correlation and thus makes no assumption about

297

the frequency distribution of variables (28). As shown in Table S1, Gini-simpson

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coefficient and evenness were significantly negatively correlated (P < 0.01) to

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turbulent kinetic energy, but positively correlated (P < 0.01) to turbulent intensity.

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AFDM and chlorophyll a were significantly positively correlated (P < 0.01) to

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turbulent intensity, but negatively correlated (P < 0.01) flow velocity. Moreover, the

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bacterial abundance showed strong positive correlations (P < 0.01) to turbulent

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intensity, strong negative correlation (P < 0.01) to turbulent kinetic energy and flow 14

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velocity, as well as moderate but significant (P < 0.01) correlation to roughness

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Reynolds number. Moreover, it was also found that the correlations between bacterial

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diversity (i.e. numbers of OTUs, Gini-Simpson coefficient and evenness) and biomass

307

(i.e. bacterial abundance, Chlorophyll a, and AFDM) were few (less than 0.1) and

308

weak (P < 0.1).

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According to the statistical analysis, it could be deduced that the hydrodynamics

310

driving deterministic processes (i.e. niche differentiation) played an important role in

311

the assembly of bacterial community within fluvial biofilm. Niche differentiation, as a

312

model of biofilm metacommunity dynamics, could explain community composition

313

from local abiotic factors, dispersal remains restricted to colonization, and is predicted

314

to occur in the ecosystems with extended residence times (30). Therefore, the

315

hydrodynamics induced deterministic factors could be identified and the results

316

showed that turbulent kinetic energy and turbulent intensity could be considered as a

317

set of reasonable predictors of community composition, whereas flow velocity and

318

turbulent intensity could work together to predict the biomass of mature biofilm.

319

3.1.2 Bacterial diversity

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A total of 104 OTUs were found in the biofilm located at the entrance of the

321

flume with an average of 16 ± 8 (mean ± SD). The Gini-Simpson coefficient firstly

322

increased from 0.854 to 0.915 and then decreased to 0.509 with the increasing flow

323

velocity, in accordance with the variation trend of OTUs (Figure 2a and 2b). In this

324

experimental system, hydrodynamic regime could be considered as the sole influence

325

factor during the assembly of bacterial community since the other environmental 15

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parameters (such as temperature, inorganic nutrients and dissolved organic carbon) in

327

the flumes remain almost unchanged (data not shown). Therefore, from the

328

perspective of ecology succession, the hydrodynamics driving deterministic processes

329

played an important role in controlling the assembly of the biofilm microbial

330

community, in agreement with the results reported in previous studies (10, 31).

331

According to those reported in previous studies, bacterial diversity dynamic could

332

be speculated to be related to the transfer dynamics of biofilms, including niche

333

diversification within biofilms, cells immigration from source and neighbor

334

community, as well as biofilms detachment process (10, 26, 32). Firstly, it can be

335

found that the bacterial diversity were generally greater in flow water than those in

336

still water. For example, the numbers of OTUs and the corresponding Gini-Simpson

337

coefficients of the samples located at the entrance of the flume were significantly

338

larger in the second stage of the experiment than those in the first stage (i.e. OTUs:

339

104 > 76, Gini-Simpson coefficient: 0.854 > 0.633). This may due to the fact that, in

340

laminar flow, biofilms could grow thicker and establish internal material cycling and

341

chemical gradients through extending boundary layer, facilitating niche diversification

342

and bacterial diversity (33). Moreover, the cells immigration rate is, in fact, a function

343

of propagule abundance, which is the same in all treatments, and of advective delivery,

344

which increases with flow velocity (8). Therefore, bacterial diversity firstly increased

345

with water flow in laminar flow.

346

After that, with the increasing of rough Reynolds number (from 1256 to 5779),

347

the filamentous buildings in biofilms become detached (26). The variation of bacterial 16

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diversity was decided by the trade-off between niche diversification and detachment

349

process. The increase of bacterial diversity in the flow water with rough Reynolds

350

number ranging from 1256 to 1885 indicated that niche diversification played a much

351

more important role than the detachment process, while the decreased bacterial

352

diversity with rough Reynolds number larger than 1885 suggested that the detachment

353

process was the main driving force during the assembly of biofilms. Moreover, the

354

decreased bacterial diversity at high flow velocity also indicated that the cells

355

immigration was too small to eliminate the influence of niche diversification (e.g.

356

mass transfer of solutes from the water column into the biofilms) in turbulent flow

357

(32).

358

3.1.3 Community composition

359

The biofilm OTUs were allocated to 25 classes belonging to 16 phyla. The shifts

360

of phylogeny along the flumes were shown in Figure 3. Beta-, Alpha-, Gamma-, and

361

Delta-Proteobacteria were the most abundant subphyla of Proteobacteria. The relative

362

abundance of each bacterial phylum ranged from 0.12 to 37.65 % along the flume.

363

Four of the sixteen bacterial phyla/subphyla (i.e. Beta-, Alpha-, Gamma-, and Delta-

364

Proteobacteria) presented significantly positive correlations in relative abundance

365

with flow velocity, while the remaining phyla decreased more or less. Moreover, the

366

significantly bipolarized trends in bacterial phyla should be the direct reason for the

367

declined pattern in bacterial community evenness (Figure 2c).

368

According to the ecological theory, the interplay of niche diversification and

369

neutral assembly has been suggested to drive the patterns of bacterial biodiversity in 17

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biofilms and would result in different relative abundances of dominant taxa and in the

371

presence/absence of rare taxa (34, 35). The increase in relative abundance observed

372

for individual bacterial taxa might be due to their specialized functions in microbial

373

communities. Betaproteobacteria, for example, could attach more easily to surfaces

374

during biofilm formation than other groups of bacteria and, thus, dominate biofilm

375

assembly (36). Moreover, as the deterministic factors, local hydrodynamics may

376

select for filamentous or chain-building bacteria that can contribute to the formation

377

of streamers in high-shear microhabitats (8). However, as reported in previous study,

378

it is difficult to identify “typical” bacteria for different hydrodynamics since some

379

bacteria which colonized biofilms during the less-dynamic growth phase persisted

380

throughout the entire experiment, such as Hydrogenophaga and Herbaspirillum

381

specie (36). These genera are known for their diverse metabolic phenotypes and

382

ability to use a wide range of low-molecular-weight organic matter (36).

383

3.1.4 Biomass

384

The bacterial abundance, Chlorophyll a, and AFDM were used to determine

385

bacterial biomass, algal biomass, and bulk biofilm accumulations, respectively. The

386

variations of the biomass were shown in Figure 2d, 2e, and 2f. Flow velocity had a

387

significant influence on the values of bacterial abundance, Chlorophyll a, and AFDM.

388

The increased biomass in laminar flow water than that in still water could be

389

explained by the fact that the transfer of nutrient substance into biofilms dominated in

390

high-energy ecosystems with low residence time and continuous mixing, resulting in a

391

high-level niche diversification. The decreased biomass in the high flow velocity may 18

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be due to detachment of biofilms. On one hand, biofilm detachment can result in a

393

loss of biomass. On the other hand, compared with the biofilms with filamentous

394

buildings, the biofilms without filamentous buildings exert a lower efficiency of

395

nutrient substance transfer from overlying water into biofilms, resulting in a low-level

396

niche diversification (13, 37).

397

3.2 Modeling the effects of hydrodynamics on bacterial communities

398

Our analysis began with a test of our first hypothesis that hydrodynamics act not only

399

as deterministic factors but also stochastic factors during the assembly of microbial

400

communities within fluvial biofilm. It assumed that cells invasion from the source

401

community, migration of individuals both up- and downstream, and niche

402

differentiation within the biofilm were taken as the driving forces for community

403

assembly. A purely neutral model incorporating the deterministic factors on the

404

reproduction (or birth) rate of individual taxa was used to describe the observed

405

community abundance patterns. In this study, bacterial abundance (i.e. the number of

406

individuals in all OTUs), rather than each OTU, was selected as the modeled object

407

since there is no significant difference between each OTU in the birth, death, and

408

dispersal. Moreover, all the bacteria were taken as the same trophic level during the

409

simulation. About two-thirds of the data set was used for parameters fitting and the

410

remaining third was used to test the model. The fitting and testing data points were

411

selected randomly from all the data collected in the three flumes.

412

3.2.1 Estimation of the parameters of

413

The parameter

ms / mn and αml / mn

ms / mn indicates the ratio of probabilities of the dead individual 19

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414

replaced by an individual from source community to that from neighboring patches.

415

The parameter

416

replaced by a duplicate of a member from the same patch to that from neighboring

417

patches. The parameter α is set to describe the advantage/disadvantage factors on the

418

reproduction (or birth) rate of individual taxa. The parameters

419

can be fitted at each data point by considering its nearest two neighboring

420

observations. This piecewise fitting gives estimates of the parameters at all except the

421

first and last spatial observation, since there are no adjacent neighbors for them. The

422

variations of the fitted parameters

423

roughness Reynolds number, turbulent intensity, and turbulent kinetic energy in the

424

experimental flumes are shown in Figure 4 and Figure S1. In the piecewise fitting, it

425

was found that

426

0.028 to 0.045 m/s (i.e. 1260 < rough Reynolds number < 1885), and remained more

427

or less flat after that. The result was in agreement with that reported in previous study

428

that immigration rate is a function of advective delivery, which increases with flow

429

velocity (8). The probability of an individual to migrate into the system from the

430

source community in the flume was almost constant (i.e. The parameter ms/mn was

431

approximately equal to 117 ± 5) when the roughness Reynolds number became larger

432

than 1885.

433

For

ml / mn describes the ratio of probabilities of the dead individual

ms / mn and αml / mn

ms / mn and αml / mn with flow velocity,

ms / mn slightly increased with the increasing flow velocity from

αml / mn ,

the parameter firstly increased from 48.2 to 78.9 with the

434

increasing flow velocity, and then rapidly decreased from 78.9 to 1.1 when the flow

435

velocity became larger than 0.045 m/s (i.e. rough Reynolds number = 1885). 20

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According to the result, the biofilms grew thicker and established internal material

437

cycling and chemical gradients in the flow water with velocity less than 0.05 m/s (i.e.

438

roughness Reynolds number = 2000), where niche differentiation played an

439

increasingly important role, resulting in an increase of

440

detachment process played a much more important role than the niche diversification

441

during the assembly of biofilms. The destroyed filamentous buildings in biofilms

442

would make against the efficiency of solutes transfer from overlying water into

443

biofilms (13, 37), and the parameter

444

Moreover, it should be noticed that the fitted parameter was exceptionally low

445

( αml / mn < 10) when the flow velocity became larger than 0.15 m/s (i.e. roughness

446

Reynolds number > 4325). It suggested that in that hydrodynamic regime individual

447

migration played much more important role than cells reproduction for biofilm

448

community assembly.

αml / mn

αml / mn .

After that, the

rapidly decreased accordingly.

449

It has been revealed that turbulent kinetic energy and turbulent intensity could be

450

considered as a set of reasonable predictors of community composition, whereas flow

451

velocity and turbulent intensity could work together to predict the biomass of mature

452

biofilm. Therefore, the linkage between hydrodynamics and biofilm community

453

assembly could be further explained by matching the linear models between

454

hydrodynamic parameters and

455

estimators, respectively (14). A series of linear models that included each of

456

hydrodynamic parameters individually and combinations of these parameters were

457

tested and only the models that explained the most variance over and-above the purely

ms / mn and αml / mn using statistically significant

21

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458

neutral model were included (as shown in Figure S2). For all the bacteria, the models

459

which best met the criteria were shown in equations (17) and (18).

460

ms / mn = f (TKE, TI ) = −0.75TKE + 3543.36TI + 327.38(R2 = 0.538)

(17)

461

αml / mn = f (Vxyz , TI ) = 9120.28TI +145.21Vxyz − 525.73(R2 = 0.755)

(18)

462

3.2.2 Modeling the effects of hydrodynamics on bacterial abundance

463

The simulation of the effects of hydrodynamics on bacterial abundance was

464

shown in Figure 5. As shown in Figure 5a, it could be found that the model performed

465

well for modeling the effects of hydrodynamics on bacterial abundance with the

466

correlation coefficient (CC) and root mean square error (RMSE) 0.61 and 7.79,

467

respectively. The model was able to clearly differentiate the driving force for

468

community assembly, where two clusters of data were formed along the ideal

469

prediction line. The outer loose cluster was present to represent the section where

470

cells migration is the main driving force during community assembly. The inner tight

471

cluster implied that cells reproduction within the biofilm played more important role

472

during community assembly, since the niche differentiation driving cells reproduction

473

is easier to be simulated compared to the migration. Therefore, it could be concluded

474

that cells reproduction within the biofilm is the main driving force during community

475

assembly in the flow water with the velocity less than 0.05 m/s (i.e. roughness

476

Reynolds number = 2000), while cells migration from the source community plays

477

much more important role in the flow water with the velocity larger than 0.05 m/s.

478

As shown in Figure 5b, the effects of hydrodynamics on community assembly

479

could clearly be divided into three scenarios. In scenario a (flow velocity < 0.041 m/s, 22

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roughness Reynolds number < 1750), bacterial abundance began to increase with the

481

increasing flow velocity due to the increased probabilities of cells migration and

482

reproduction. In scenario b (0.041 m/s < flow velocity < 0.061 m/s, 1750 < roughness

483

Reynolds number < 2400), the hydrodynamic regimes provided a favorable condition

484

for biofilm community assembly, where the bacterial abundance was no less than 90 %

485

of its maximum. In scenario c (flow velocity > 0.061 m/s, roughness Reynolds

486

number > 2400), the bacterial abundance started to decrease with the increasing flow

487

velocity due to the detachment of biofilms.

488

3.2.3 Implications for water environment protection and remediation

489

Streams are characterized by a largely unidirectional downstream flow of water

490

which could control the assembly of biofilm community. Biofilm bacterial abundance,

491

which is significantly affected by the local hydrodynamics, is closed related to the

492

biodegradability of organic maters in stream. However, the variation of bacterial

493

abundance is usually not considered during the prediction of fates of organic matters

494

in stream due to lack of supportable model. Therefore, from an engineer perspective,

495

quantifying the effects of hydrodynamics on biofilm community assembly may

496

change the way for us to make planning of water environment protection.

497

Moreover, biofilm community, which is an important indicator of river health, is

498

significantly affected by various environmental factors, especially by the pollutants

499

discharged into rivers. Reducing the discharged pollutants and protecting integrity of

500

the ecological system are the core contents of water ecological restoration. Therefore,

501

defining pollutants rational control level is one of the core technologies for water 23

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ecological restoration. The parameter α, which was set to describe the

503

advantage/disadvantage factors on the reproduction (or birth) rate individual taxa, was

504

known as the real parameter characterizing the relationship between the growth

505

bacteria in biofilm and the environmental factors. According to the model, the critical

506

thresholds of indexes (including all kinds of environmental factors) which affect the

507

stream biofilm bacterial abundance could be deduced by fitting parameter α.

508

Moreover, the behaviors of specific degradation bacteria and indicative bacteria of

509

stream health could also be predicted by modelling the number of individuals in

510

specific OTUs. The obtained results could be provided as useful information for

511

improving the theories and technologies of water ecological restoration.

512

Acknowledgements

513

The study was financially supported by the National Natural Science Foundation of

514

China (51322901 and 51479066), the Foundation for Innovative Research Groups of

515

the National Natural Science Foundation of China (51421006), the Fundamental

516

Research Funds for the Central Universities (2015B02114 and 2014B07614), and the

517

Priority Academic Program Development of Jiangsu Higher Education Institutions.

518

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Figure captions

640

Figure 1 (a) Sketch of the principal laboratory flume and (b) the mean values of

641

measured hydrodynamic parameters along the horizontal centerline of each flume

642

with 1 m intervals. V: Three-dimensional vector of flow velocity, TI: turbulent

643

intensity, TKE: turbulent kinetic energy, k+: roughness Reynolds number.

644 645

Figure 2 Variations of (a) numbers of OTUs, (b) Gini-simpson coefficient, (c)

646

evenness, (d) bacterial abundance, (e) chlorophyll a, and (f) ash free dry mass (AFDM)

647

with flow velocity in the experimental flumes.

648 649

Figure 3 Variations of the relative abundance of each bacterial phylum/subphyla with

650

flow velocity in the experimental flumes.

651

ms / mn and (b) αml / mn with flow

652

Figure 4 Variations of the fitted parameters (a)

653

velocity. The parameters ms, mn and ml describe the probabilities of dead individual

654

replaced by an individual from source community, an individuals from neighboring

655

patches, and a duplicate of a randomly selected member of the same patch. The

656

parameter α was used to describe the advantage/disadvantage factors on the

657

reproduction (or birth) rate individual taxa.

658 659

Figure 5 Modelling the effects of flow velocity on bacterial abundance within fluvial

660

biofilms. (a) The x-axis includes the measured value and the y-axis exhibits the

661

corresponding values predicted by the model. The dashed line through the plot shows

662

the ideal “y = x” line along which the points would lie for a model that perfectly fit

663

the data set. (b) Simulation of the variation of bacterial abundance with flow velocity.

664

Scenario a: flow velocity < 0.041; Scenario b: 0.041 < flow velocity < 0.061; Scenario

665

c: flow velocity > 0.061.

666 667 668 669

31

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a

670

b

671 672

Figure 1 (a) Sketch of the principal laboratory flume and (b) the mean values of

673

measured hydrodynamic parameters along the horizontal centerline of each flume

674

with 1 m intervals. Vxyz: Three-dimensional vector of flow velocity, TI: turbulent

675

intensity, TKE: turbulent kinetic energy, k+: roughness Reynolds number.

676

32

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677 678

Figure 2 Variations of (a) numbers of OTUs, (b) Gini-simpson coefficient, (c)

679

evenness, (d) bacterial abundance, (e) chlorophyll a, and (f) ash free dry mass (AFDM)

680

with flow velocity in the experimental flumes.

681

33

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682 683

Figure 3 Variations of the relative abundance of each bacterial phylum/subphyla with

684

flow velocity in the experimental flumes.

685 686

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687

688

ms / mn and (b) αml / mn with flow

689

Figure 4 Variations of the fitted parameters (a)

690

velocity. The parameters ms, mn and ml describe the probabilities of dead individual

691

replaced by an individual from source community, an individuals from neighboring

692

patches, and a duplicate of a randomly selected member of the same patch. The

693

parameter α is used to describe the advantage/disadvantage factors on the

694

reproduction (or birth) rate individual taxa.

695 35

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696

697 698

Figure 5 Modelling the effects of flow velocity on bacterial abundance within fluvial

699

biofilms. (a) The x-axis includes the measured value and the y-axis exhibits the

700

corresponding values predicted by the model. The dashed line through the plot shows

701

the ideal “y = x” line along which the points would lie for a model that perfectly fit

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the data set. (b) Simulation of the variation of bacterial abundance with flow velocity.

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Scenario a: flow velocity < 0.041; Scenario b: 0.041 < flow velocity < 0.061; Scenario

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c: flow velocity > 0.061. 36

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Environmental Science & Technology

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Table of Contents graphic

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