Altered Microbiome Leads to Significant Phenotypic and

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Altered Microbiome Leads to Significant Phenotypic and Transcriptomic Differences in a Lipid Accumulating Chlorophyte Lubna Richter, Cresten B. Mansfeldt, Michael M. Kuan, Alexandra Cesare, Stephen T. Menefee, Ruth E. Richardson, and Beth A Ahner Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.7b06581 • Publication Date (Web): 11 May 2018 Downloaded from http://pubs.acs.org on May 13, 2018

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Altered Microbiome Leads to Significant Phenotypic and Transcriptomic Differences in a Lipid Accumulating Chlorophyte

8

T. Menefee†, Ruth E. Richardson‡, and Beth A. Ahner†*

Lubna V. Richter†§, Cresten B. Mansfeldt‡§, Michael M. Kuan†, Alexandra E. Cesare†, Stephen

9 10 11 12 13 14 15



Department of Biological and Environmental Engineering, Cornell University, Ithaca, NY, USA



School of Civil and Environmental Engineering, Cornell University, Ithaca, NY, USA

16 17

§

Authors contributed equally to this work

18 19 20 21 22 23 24

*Correspondence to: B. A. Ahner Tel: 607- 255- 4677; Fax: 607- 255- 3679 Email: [email protected]

25 26 27 28

Keywords: Microalgae, Bacteria, Symbiosis, 16S rRNA, Lipid, Chlorella, Transcriptome

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ABSTRACT

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Given the challenges facing the economically favorable production of products from

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microalgae, understanding factors that might impact productivity rates including growth rates

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and accumulation of desired products, e.g., triacylglycerols (TAG) for biodiesel feedstock,

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remains critical. Although operational parameters such as media composition and reactor design

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can clearly effect growth rates, the role of microbe-microbe interactions is just beginning to be

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elucidated. In this study an oleaginous marine algae Chlorella spp. C596 culture is shown to be

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better described as a microbial community. Perturbations to this microbial community showed a

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significant impact on phenotypes including sustained differences in growth rate and TAG

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accumulation of 2.4 and 2.5 fold, respectively. Characterization of the associated community

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using Illumina 16S ribosomal RNA amplicon and random shotgun transcriptomic analyses

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showed that the fast growth rate correlated with two specific bacterial species (Ruegeria and

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Rhodobacter spp). The transcriptomic response of the Chlorella species revealed that the slower

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growing algal consortium C596-S1 upregulated genes associated with photosynthesis and

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resource scavenging and decreased the expression of genes associated with transcription and

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translation relative to the initial C596-R1. Our studies advance the appreciation of the effects

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microbiomes can have on algal growth in bioreactors and suggest that symbiotic interactions are

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involved in a range of critical processes including nitrogen, carbon cycling and oxidative stress.

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INTRODUCTION Select

species

of microalgae biosynthesize and

accumulate high

levels

of

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triacylglycerides (TAG) as a means of energy storage in response to particular environmental

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stimuli such as nutrient limitation.1 In particular, members of the green algae Chlorella genus

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have been reported to bioaccumulate high levels of TAG and have therefore been studied for

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biodiesel production.2-4 Use of such algae species for biofuel production is being explored in

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part because they can be cultivated on non-arable land using non-potable or saline water

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resources with high areal productivity.

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production of biodiesel from algae,5-7 ultimate success will require that algae are grown at near

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optimal growth rates and within a microbial community that is stable and conducive to lipid

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production.

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Although challenges remain to achieve sustainable

Bacteria have been shown to be beneficial for algal growth,2,

8

in part via nutrient

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recycling and exchange. Bacteria can also provide algae with essential vitamins, co-factors 2, 9, 10

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or growth hormones,11, 12 participate in signal transduction,13 and may help protect algae from

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pathogens14 in exchange for algae-excreted dissolved organic carbon. Interactions appear to

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involve complex communication mechanisms15, 16 and may involve bacterial colonization of the

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algal cell surface.17,

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communities are structured in nature19 and in photobioreators.17 These studies have focused on

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the identification of prevalent microbial gene families or metabolic pathways as a means to

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identify particular symbiotic relationships. Bacteria belonging to alpha-Proteobacteria, beta-

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Proteobacteria, and Bacteroidia classes (including members of the Flavobacteriales and

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Sphingomonadales orders) have been found to be associated with green algae.20

18

Genomic tools are enabling us to learn more about how these

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Although positive interactions between phototrophic microorganisms and some bacteria

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are well established, and we are only beginning to understand how specific metabolic pathways

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change in algae

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attributes of the algae cell, in particular those of interest for biofuel production. Recent “omics”

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studies have revealed significant changes in key metabolic pathways when bacteria are

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introduced or re-introduced to pure cultures of photosynthetic cyanobacteria.21-23 For example,

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in the presence of the bacterium Alteromonas macleodii, algal (Prochlorococcus) cells

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upregulated components of their photosynthetic apparatus to increase the export of reduced

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carbon compounds for use by its heterotrophic partner.23

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(Synechococcus) expressed membrane transport proteins increased, and vitamin metabolism

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related proteins decreased in the presence of the bacterium Roseobacter, suggestive of metabolite

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provision by the bacteria.21

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in response to variable microbial communities and how this may affect key

In a separate study, algal

Strain C596 is a subtropical marine Chlorella spp. that accumulates lipids (up to 45%

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TAG by weight) under nitrogen and phosphorous limiting conditions.3,

24

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versatile growth conditions including across a range of salinities and has the ability to utilize a

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wide range of carbon substrates for growth in the dark.3 Stock cultures of C596 were not axenic,

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and during attempts to create axenic stocks, algal cells exhibited lower growth rates that we

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hypothesized resulted from an altered microbiome in the new consortium. In this study, we

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created and studied a set of C596 consortia to understand how changes in community structure

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affect Chlorella growth and lipid accumulation.

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metatranscriptomic analysis on two consortia with distinct microbiomes to better understand

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their synergistic roles during co-culture with Chlorella C596.

C596 tolerates

We also conducted a comparative

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METHODS

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Chlorella consortia growth and plating. Chlorella spp. “SAG 211-18” strain C596 with its

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initial microbial community3 (designated C596-R1 hereafter) was grown in the synthetic

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seawater medium Aquil25 under constant illumination (80 µmol photon m-2 s -1, GE Ecolux Cool

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White bulbs, East Cleveland, OH, USA) at 25˚C.

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fluorescence (10-AU Fluorometer, Turner Designs, San Jose, CA, USA) and cell counts using a

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Neubauer hemacytometer (Spencer Bright Line) at 40× magnification with an optical microscope

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(IX83, Olympus Corp., Center Valley, PA, USA). Various C596 consortia were plated/streaked

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on solid Aquil medium, and isolated algal colonies were returned to liquid medium as above

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yielding new consortia (e.g., C596-S1 and C596-S2). To isolate bacterial strains associated with

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Chlorella, C596-R1 was plated/streaked on solid Aquil medium supplemented with 2, 5, 10 or

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20 mM of either acetate, sucrose or glycerol. Colony PCR using universal 16S primers (8F: 5’-

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AGAGTTTGATCCTGGCTCAG- ‘3, 1496R: 5’ -GGCTACCTTGTTACGACTT- ‘3) followed

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by sequencing were conducted to screen bacterial colonies.

Growth was monitored via chloroplast

111 112

Resuspension experiments. In one set of experiments, C596-R1 was grown till late-exponential

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phase and harvested by filtration using a 3-µm membrane filter to separate the algae (~5 µm)

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from the bulk of the bacterial community. Filtrates were then passed through 0.2-µm membrane

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filters to capture bacteria. These 0.2-µm filters were added to separate mid-exponential phase

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C596-R1 and -S1 cultures as well as to fresh Aquil media tubes (filter control C596-F1).

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Membrane filters were removed with sterile forceps after 24 hours, and cultures were monitored

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for growth thereafter.

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exponential phase and spent media was filtered through a 0.2-µm membrane. Filtrates were

In a parallel experimental set, C596-R1 culture was grown to late-

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divided in half, one half was autoclaved for 35 minutes. Both halves were then amended with

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300 µM NaNO3, 10 µM NaH2PO4, trace metals and vitamins stock solutions to final

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concentrations as recommended for Aquil medium, and pH was verified. Autoclaved filtrate,

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non-autoclaved filtrate and fresh Aquil media were used to re-suspend pelleted C596-R1 and -S1

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consortia harvested at mid-exponential phase.

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florescence measurements.

Growth was monitored via chlorophyll

126 127

Nile red fluorescence. Nile red stain was dissolved in dimethyl sulfoxide (HPLC grade, Sigma

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Aldrich, St. Louis, MO, USA) to a final concentration of 1 mg/mL, and stored at -20°C in the

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dark.

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fluorescence was measured utilizing filters with excitation/ emission wavelengths of 530 ± 25/

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590 ± 20 nm, respectively. Resulting measurements were used to quantify the relative cellular

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lipid content26 which was subsequently normalized by the cell concentration (determined

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microscopically) to determine cellular lipid content. Triplicate measurements were taken at late

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exponential, early stationary and senescent growth stages.

Algae were stained in 96-well plates as previously reported,26 and the Nile red

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16S rRNA sequencing and microbial community analysis. Biological triplicates of algal

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consortia were harvested at mid-exponential growth by passing through 0.2-µm membrane filters

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(Whatman Nuclepore Track-Etch membrane, Sigma-Aldrich). Total RNA was extracted and

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purified using the RNeasy Plant Mini Kit (Qiagen, Germantown, MD, USA),3 and its integrity

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and concentration were evaluated using a RNA 6000 Nano Kit on an Agilent Bioanalyzer 2100

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(Agilent Technologies, Santa Clara, CA, USA). Complimentary DNA (cDNA) was generated

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using an iScript reverse transcriptase and a blend of olig(dt) and random hexamer primers

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(iScript cDNA Synthesis Kit; Bio-Rad, Hercules, CA, USA). The 16S rRNA gene was amplified

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using the universal bacterial primers 341F (5’- CCTACGGGNGGCWGCAG -3’) and 805R (5’-

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GACTACHVGGGTATCTAATCC -3’), with overhang sequences compatible for index

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attachment as described elsewhere.27 PRIME HotMasterMix (5 PRIME Inc., Gaithersburg, MD,

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USA) was used in PCR reactions, and cycle conditions were set as previously described.28 The

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16S rRNA gene amplicon pool was sequenced on an Illumina MiSeq (Cornell Genomics

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Facility, Ithaca, NY) using a 600-cycle MiSeq Reagent Kit v.3 (Illumina, San Diego, CA, USA).

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Sequences were processed using the Brazilian Microbiome Project pipeline with modifications

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as described by Howard et al.28 Briefly, paired-end sequences were merged, primers trimmed,

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and singleton sequences removed using Mothur v.1.36.1.

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Taxonomic Units (OTUs) and chimera removal were performed using USEARCH v.7 (Edgar

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2010). Representative OTU sequences were classified (classify.seqs, cutoff = 80) using the

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GreenGenes v.13.8 database for 16S rRNA gene sequences, and OTUs that were suspected to

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not be of bacterial origin were removed. All fastq sequences are available at the NCBI’s

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Sequence Read Archive (SRA) under the BioProgect PRJNA397076. Statistical analysis were

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performed using R (v.3.2.1). OTUs were first randomly subsampled to yield an equal number of

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sequences for all samples (rarefaction curves are shown in Figure S1). Heatmaps were generated

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via the gplots package in R29 to display the OTU relative abundances. OTUs were clustered

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hierarchically (average linkage) based on the Bray-Curtis dissimilarity index.

Clustering of 97% Operational

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Random shotgun metatranscriptome sequencing and analyses. For the C596-R1 and -S1

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consortia, an additional rRNA depletion step was performed on the resulting RNA from the

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extraction and purification methods described.

This step employed the GeneRead rRNA

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Depletion Kit (Qiagen) specific for eukaryotic rRNA following the manufacturer’s instructions

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to enhance the sequencing coverage of mRNA.

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bacterial rRNA.

There is a potential cross reactivity with

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Random-hexamer based RNA sequencing, transcript assembly, and analyses that resulted

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in a total of 7,557 C596-annotated transcripts were performed as described elsewhere.3 All raw

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and processed data files are freely available (NCBI’s Sequence Read Archive accessions

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SRX1282877 and SRX1281663 under the BioProject ID PRJNA294811). The SortMeRNA

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program30 was used to bin the reads as either of potential rRNA or mRNA origin by comparing

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the reads to the SILVA Eukaryotic (18S and 28S), SILVA Bacteria (16S and 23S), SILVA

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Archaea (16S and 23S), and RFAM (5S and 5.8S) databases. The rRNA sequences were then

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filtered from the processed files using the SILVA RNA databases and assigned to an Operational

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Taxonomic Unit (OTU).

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Reads assigned to mRNA transcripts annotated as of Chlorella were analyzed using

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edgeR31 in the R software suite (v 3.1.2) to determine transcripts that were differentially

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regulated using the exactTest function. A fold-ratio change of greater than 4.0 or less than 0.25

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with a multiple-testing corrected p-value of 6.6 x 10-6 (Bonferroni-Holm established corrected

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threshold) was set to select for the statistically-significant differentially-expressed genes. A

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looser ratio cutoff (fold ratio greater than 2.0 or less than 0.5 with an uncorrected p-value < 0.05)

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was established to select a subset of genes for a bulk profile analysis. These genes were assigned

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to KEGG categories32 using a tblast search against the protein database for Chlorella variabilis

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(BLAST e-value of 10-10), and then the binned transcripts were enumerated to compare relative

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expression in -S1 and -R1 cells.

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RESULTS AND DISCUSSION

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Algal culture variability appears modulated by associated microbiome.

As part of a

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previous study, we noted that algal cultures generated by inoculation of algal colonies from a

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plate appeared to be phenotypically different and we hypothesized an altered microbial

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consortium was responsible.

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consortium, generated from the initial consortium C596-R1, exhibited a significant decrease in

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growth rate, 0.7 ± 0.08 d-1 versus 1.3 ± 0.12 d-1 respectively (Figure 1). This difference was

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maintained in subsequent culture transfers for over one year.

One of the algal cultures, hereafter designated the C596-S1

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Further modification of the microbial background in Chlorella culture. Our attempts to

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isolate individual bacteria from the C596-R1 consortium using various carbon sources (see

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Methods) led to the repeated isolation of only one Ruegeria species as confirmed with 16S rRNA

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gene sequencing. Addition of this Ruegeria strain to cultures of C596-S1 did not stimulate

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growth (Figure S2). Because only a small fraction of bacteria from an environmental sample can

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be isolated and cultivated in a laboratory under a single set of growth conditions,33 we next filter-

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separated the planktonic microbial community (i.e., 0.2 µm < cell size < 3 µm) from the C596-

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R1 consortium and added the microbial-laden filters to C596-S1 and -R1 consortia (Figure 2A).

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The addition of the collected community marginally increased the growth rates of both cultures

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(Figure 2 B & 2C). Triplicate biological controls comprised solely of the filters (collected from

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500 mL of C596-R1 medium) placed in Aquil media exhibited no measurable algal growth over

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the period during which we measured increased growth rates in the aforementioned C596-S1 and

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-R1 cultures. After four days however, the few algae that were present on the filter grew to a

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sufficient density to be observed, and their growth rate was quantified (Figure 2B). These newly

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generated triplicate Chlorella consortia, designated C596-F1, exhibited a 39% increase in algal

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growth relative to -R1 (1.67 ± 0.07 d-1 vs. 1.35 ± 0.04 d-1 for C596-R1) and maintained this rate

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for over six months of subsequent culturing (Figure 2C).

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To investigate this apparent Chlorella-bacteria symbioses further, triplicate C596-S1 and

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-R1 consortia pellets were resuspended in nutrient-amended C596-R1 filtrate (Figure 2D) which

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increased algal growth rates relative to the original C596-S1 and -R1 by 29% and 10%,

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respectively (Figure 2E & 2F). Resuspension in autoclaved nutrient-amended filtrate or fresh

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Aquil medium had no effect on Chlorella growth (Figure 2 E & 2F). Both C596-S1 and -R1

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algal cells benefitted from some growth-promoting factor or factors present in the -R1 filtrate

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that were destroyed by autoclaving. Importantly, two subsequent transfers of the resulting C596-

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S1 consortium to Aquil media retained the elevated growth rate (data not shown). It is possible

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that yet another change in microbial community was generated via resuspension and

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recombination with small biological agents in subsequent transfers (viruses and/or small

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bacteria) that passed through the 0.2-µm filters or there was the persistence of a dilute chemical

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factor(s).34

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Microbial community influences Chlorella cellular lipid content. To investigate whether the

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composition of the microbial community has an influence on C596 lipid accumulation, Nile red

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assays were conducted on C596-R1, -S1 and -F1. In all consortia, the cellular lipid content

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profile was coupled to decreasing nutrient availability over time in the medium, with no

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measurable lipid accumulation at mid exponential phase (data not shown), detectable levels

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emerging at late exponential phase and maximum levels in senescence (Figure 3). Algal cells in

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the C596-S1 consortium, however, displayed the lowest cellular lipid content in all three stages

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relative to -R1 and -F1 cells. Conversely, C596-F1 cells outperformed -R1 and -S1 at each time

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point; levels were 36% and 58% higher in -F1 cells respectively (p < 0.05) in senescence (Figure

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3).

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Microbiota analysis reveals pattern of microbial changes that alter phenotype.

To

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investigate the particular microbial changes in our C596 cultures, extracted RNA was reverse

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transcribed and 16S rRNA gene sequencing using bacteria-specific primers was employed. Five

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consortia of C596 were tested: the parent C596-R1, C596-S1 (Figure 1), C596-S2 (a colony

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culture that maintained the parent growth rate, 1.34 ± 0.03 d-1), C596-F1 (Figure 2A-C) and

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C596-FS1 (a colony culture of C596-F1 that exhibited a reduced growth rate of 0.84 ± 0.15 d-1).

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We collected 2,502,720 paired reads ranging from 88,088 to 179,118 reads per sample. The

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sequencing were then processed for merging and removal of low quality sequencing and

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singletons. The resulting number of reads after the following elimination of chimeras and non-

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bacterial OTUs ranged from 30,840 to 1,447 reads per sample with a median OUTs of 7,665. In

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total, we observed 103 operational taxonomic units (OTUs) from high quality sequence reads,

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among them 20 OTUs were determined to be of non-bacterial origin. Of the 83 bacterial OTUs,

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17 OTUs were found to exceed a relative abundance of 1% in one or more of the three biological

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replicates, of which 14 OTUs belong to the Proteobacteria phylum. Those 17 OTUs were

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hierarchically grouped based on the average relative abundance of sequencing reads across the

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tested samples (Figure 4).

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Higher algal growth rate appears to be linked to the presence of two particular microbes,

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with the presence of each being important. Both C596-R1 and -S2, which have comparable

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growth rates (Figure 4), contain an abundant Ruegeria spp. Type 2 (OTU 670577169) and a

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Rhodobacter spp. (Figures 4 and S3). The consortium with the highest algal growth rate, C596-

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F1, also displays both of these microbes in high abundance, but the relative abundance of the

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Rhodobacter spp. is greater compared to C596-R1 and -S2 (Figures 4 and S3). In contrast, the

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microbiome of C596-FS1, which had a lower algal growth rate than all three of these consortia,

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was predominantly Rhodobacter spp. (99.8% abundance). C596-S1, which was slowest of all,

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had neither of these OTUs. Notably, both Ruegeria spp. (Type 1: OTU 169121548 and Type 2)

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were detected among the abundant OTUs, but in the fast growing C596 cultures, only Type 2

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was present in high abundance. The previously discussed laboratory Ruegeria isolate which did

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not improve Chlorella growth (Figure S2) was closely related to the less abundant Ruegeria spp.

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Type 1.

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Metatranscriptome supports the 16S gene-amplicon sequencing results. Random shotgun

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transcriptomic analyses of the C596-R1 and -S1 algae were conducted via Illumina sequencing

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of RNA samples harvested at mid-logarithmic phase.

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performed to enhance the coverage of the mRNA and samples were reverse transcribed using

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random-hexamer primers. Nevertheless, approximately 85% of the reads for each sample were

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of rRNA origin which enabled us to screen for 16S rRNA sequences as an additional means to

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compare the microbial communities of these two isolates.

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sequences from potential bacterial community members (Figure S4) were separated from those

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of algal origin (Figure S4). Reads from Rhodobacterales, Rhizobiales, Caulobacterales, and

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Cytophagales orders were less abundant in the C596-S1 consortium, whereas those from the

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order Bacillales were greater in -S1 (Figure S4B). Other orders were relatively unchanged as a

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percent of reads between the two cultures.

Eukaryotic rRNA depletion was

Reads that mapped to rRNA

Consistent with the 16S rRNA gene-amplicon

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sequencing results, the active presence of members of the Rhodobacterales order (which includes

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Ruegeria spp. and Rhodobacter spp.) is linked to higher growth rates.

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Differential regulation of Chlorella transcripts in response to changes in microbial

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community. An edgeR analysis with an uncorrected p-value cutoff of < 0.05 and a fold change

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cutoff of > 2 or < 0.5 was performed to broadly compare transcript expression differences

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between algal cells from C596-S1 and C596-R1 consortia.

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differentially expressed, 449 of which fell within standard KEGG categories (Figure 5). Genes

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encoding for proteins in pathways within the Transcription and Translation categories are less

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transcribed in C596-S1 relative to -R1 (21 higher in -S1 vs. 48 higher in -R1 and 36 vs. 86 genes

291

respectively), suggesting less active protein biosynthesis in -S1 relative to -R1, which is

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consistent with a slower growth rate. In particular, genes encoding for proteins in pathways

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involving RNA degradation, spliceosome activity, ribosome biogenesis, and RNA transport were

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less abundant in the C596-S1 cells. Consistent with this observation, there was overall lower

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transcription of genes encoding for proteins involved in amino acid biosynthesis in -S1 compared

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to -R1, and although DNA replication was generally increased in expression in -S1, gene

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expression specifically involved in purine metabolism was greater in -R1. Additionally, C596-

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S1 cells exhibited substantially more expression of genes encoding for proteins within

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Replication and Repair (24 vs. 15), perhaps reflecting more stress in -S1.

A total of 1878 genes were

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The potential roles of the bacteria consortia were also explored with this analysis. Within

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broad metabolism categories, Energy Metabolism (42 higher in -S1 vs. 15 higher in R1) and

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Lipid Metabolism (32 vs. 6) related genes were more likely to be expressed at a higher level in

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the slower-growing -S1, suggesting an investment required by -S1 to compensate for metabolites

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no longer provided by the bacterial symbionts. Within the category of Metabolism of Co-factors

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and Vitamins, the genes involved in the biosynthesis of thiamine (vitamin B1) and biotin

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(vitamin B7) metabolism were more expressed in -S1, although we include both of these co-

307

factors in our growth medium. We also include cobalamin (vitamin B12), a co-factor known to

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be provided to algae by bacteria, in our medium. We see no evidence of cobalamin deficiency in

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either consortium as there is low expression in both -S1 and -R1 of the metE gene (c12716_g1,

310

Table S1), the B12- independent isoform of methionine synthase in C. reinhardtii that is

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upregulated when B12 is absent.35

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The application of a more stringent cutoff in the edgeR analysis of significant

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differentially regulated genes (a fold ratio > 4 or < 0.25; a multiple-testing Bonferroni-Holm

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corrected p-value < 0.05 which is equivalent to a raw p-value < 6.6 x 10-6) resulted in a subset

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143 transcripts, 73 of which were “highly” upregulated in C596-S1 (Table S1). Nineteen of

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these genes displayed significant BLASTx hits (e-value < 10-10 for all hits) to proteins encoded

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on the C. variabilis NC64A chloroplast or mitochondria,36 whereas only 2 of this type (out of a

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total of 70 “highly” downregulated gene transcripts) were downregulated in -S1. Consistent with

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the previous analysis, of those gene transcripts “highly” upregulated in C596-S1, genes encoding

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photosystem-related proteins are overrepresented (n = 10; Table S2).

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Also among the restricted list of genes “highly” upregulated in -S1 are several

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homologues of genes that are known components of a CO2 concentrating mechanism (CCM) in

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Chlamydomonas reinhardtii. These include the low-CO2 inducible protein LCIC (c94329_g1)

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and the ABC transporter HLA3 (c10889_g1) (Table S2). In C. reinhardtii, the LCIC gene is

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expressed under limiting CO2 conditions but their exact function is unknown.37 HLA3, an ATP-

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binding cassette ABC transporter associated with the HCO3- uptake system, is also upregulated

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under low CO2 concentrations.38,

39

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CAH3 (c5724_g1), the enzyme in C. reinhardtii known to catalyze the conversion of HCO3- to

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CO2 in the thylakoid lumen, did not vary between the transcriptomes of C596-R1 and -S1 (data

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not shown). However this enzyme is known to be regulated at the post-translational level via

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phosphorylation.40

Transcript levels of the carbonic anhydrase homologue

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With respect to nitrogen metabolism, genes encoding for proteins involved in the nitrate

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assimilation pathway such as nitrate (NO3-) reductase (c11833_g1_i1) and nitrite (NO2-)

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reductase (c6958_g1_i2) are similarly highly expressed in both C596-R1 and -S1 cells (data not

335

shown). This result is not surprising since our medium contains nitrate that is plentiful during

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exponential growth. However, we note that a glutamine synthetase gene (c12245_g1) and

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several genes encoding for proteins involved in secondary nitrogen metabolism, such as an urea

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active transporter-like protein41 (c13324_g1) and a carbon-nitrogen family hydrolase42

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(c11710_g1), are upregulated by 4.9, 5.5 and 4.2 fold respectively in the C596-S1 cells (Table

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S2). This suggests less efficient N recycling by the microbial community in -S1.

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In addition to facilitating carbonic and nitrogen exchange via the degradation and

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recycling of carbohydrates, fatty acids and other biomolecules on or near the surface of algal

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cells, bacteria also consume dissolved oxygen which decreases oxidative stress in the algae.22, 23

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Transcriptomic evidence of greater oxidative stress in the -S1 cells includes higher expression

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(5.8 fold) of transcripts encoding for the glutathione reductase43 (c13123_g1, Table S2) and

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proteins involved in thiamine (vitamin B1) biosynthesis (Figure 5). 44 Increased gene expression

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in DNA replication and repair in -S1, as well as increased processing of lipids (in the absence of

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greater TAG accumulation, Figure 5) are also consistent with more oxidative stress in -S1.

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Similar patterns were observed in cyanobacteria with and without added bacteria, suggesting that

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the bacterial community can assist the growth of algae by reducing oxidative stress.22

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Algal cells are known to use chemical signals to recruit bacteria to colonize their

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surfaces.45, 46 The osmolyte dimethylsulphoniopropionate (DMSP), which is released from algal

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cells, has recently been shown to serve as a chemoattractant for members of the Roseobacter

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clade of the Rhodobacterales order, and high concentrations of DMSP can induce a non-motile

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state in bacteria facilitating biofilm formation.47 Although the final catalytic steps in DMSP

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production are not characterized,48 it is known that cysteine and methionine are required for the

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synthesis of DMSP.49

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upregulation of both the cysteine and methionine metabolism pathways (Figure 5). We speculate

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that DMSP levels, although typically low in Chlorophytes,50 may be elevated in the -S1 cells in

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response to the loss of important microbial species from the consortium. Previous studies have

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noted increased levels of cellular DMSP under nutrient-limiting conditions such as nitrogen, and

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to a lesser extent CO2 limitation.51

We note in our transcriptome that the C596-S1 cells exhibit an

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Algal cells may also attempt to recruit bacteria by increasing production of signaling

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molecules that are anchored in the cell envelope. We see an upregulation of transcripts encoding

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for general lipid metabolism proteins as well as glycan and carbohydrate metabolism proteins in

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C596-S1 (Figure 5). Within these broader categories, we note a substantial number of transcripts

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predicted to be involved in the metabolism of polar lipids are upregulated.

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phosphoglycerolipids are best known to influence cell membrane structure, they are also known

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to play a role in plant hormone signal transduction, as are sphingolipids, which can also serve as

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signal molecules directly.52 Notably, sphingolipids are involved as specific recognition sites for

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bacterial attachment in animal cells.53 Further work will be needed to determine whether these

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lipids are also important in symbiotic interactions involving algae.

373 374

IMPLICATIONS

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Microalgae, in particular lipid-accumulating Chlorella species potentially viable for

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biofuel feedstock, are well known to have both positive and negative interactions with microbes.

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Algae are unlikely to remain in pure cultures at the growth scale that will be required for biofuel

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feedstock production (in open pond or even photobioreactor systems). Particular algae-microbial

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consortia therefore will exhibit measurable and relevant phenotypic differences. In this study we

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utilized next-generation sequencing and bioinformatics tools to characterize the algal

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microbiomes of consortia exhibiting significant differences in algal growth rate and lipid

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accumulation. We also performed a comparative analysis on algal transcriptomes derived from

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two of these consortia, the original C596-R13 and the slower growing C596-S1.

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hypothesized that the expression of genes in various metabolic pathways would help us to

385

identify more precisely which synergistic bacterial interactions have been disrupted in -S1.

We

386

Our work reveals a complex symbiotic relationship between Chlorella C596 cells and its

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microbiota. Algal cells appear to be carbon limited and stressed when they lose beneficial

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bacterial partners. Transcriptomic data suggest that cells likely use multiple strategies to recruit

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bacteria back into a consortium. Our data demonstrate that particular shifts in the microbial

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community can lead to lower growth rates and less lipid accumulation, which could equate to

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highly variable productivity and yields for large-scale cultivation facilities.

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underscores that the performance of axenic algae will not be relevant to production facilities.

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Clearly, any characterization of lipid-producing algae and/or elucidation of strain-specific

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differences in phenotype must be performed with the recognition that microbial consortium are

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critical to the outcome.

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phenotype and metabolic activity will also lead to a better understanding of natural ecosystems

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and may enable future practitioners to manipulate algal phenotypes necessary for the robust large

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scale algal cultivation required for biofuel feedstocks, including managing the overall growth

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rate and lipid accumulation.

Understanding how particular microbiological interactions impact

400 401

ACKNOWLEDGMENTS

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We thank Jenny Kao-Kniffin at Cornell University for providing material for 16S rRNA sample

403

preparation. We also thank Catherine Spirito and Terrence Bell for help in 16S rRNA sample

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preparation and sequencing analysis. This work was supported by the Department of Energy

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(DE-EE0003371).

406 407

ASSOCIATED CONTENT

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Supporting Information

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Figure S1. Rarefaction curves of the Operational Taxonomic Units (OTUs) detected in MiSeq

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sequencing of the 16S rRNA of C596-R1, -S1, -S2, -F1, and -FS1 consortia.

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Figure S2. Effect of one Ruegeria strain isolate on growth of C596-S1. Ruegeria spp. Type 1

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(OTU169121548) was isolated on solid Aquil medium supplemented with 20 mM acetate. Two

413

colony isolates (A and B) were confirmed by sequencing and independently tested for growth

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recovery of the C596-S1. Error bars represent the standard error of the mean from triplicate

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growth experiments.

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Figure S3. Relative abundance (%) of Rhodobacter spp. and Ruegeria spp. Type 2 (OTU

417

670577169) in C596-F1, -R1, -S2, -FS1, and -S1 cultures. Error bars represent the standard error

418

of the means from triplicate samples.

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Figure S4. (A) Bar chart displaying the percent of 16S rRNA sequences in the transcriptomes

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mapping to the chloroplast and mitochondria of Chlorella for the C596-R1 and -S1 cultures;

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error bars represent the 95% confidence interval based on the biological duplicates. (B) Bar

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chart displaying 16S rRNA sequences mapping to individual bacterial orders (that represent

423

greater than 0.1% of the total 16S rRNA in either sample); error bars represent the 95%

424

confidence interval based on replicate cultures.

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Table S1. The identifiers, assembled nucleic acid sequences, annotation descriptions, raw counts

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and normalized fold changes ratios of all detected algal transcripts with a Bonferonni-Holm

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adjusted p-value