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Towards Better Understanding of EBPR Systems via Linking Raman-Based Phenotypic Profiling with Phylogenetic Diversity Yueyun Li, Helen A. Cope, Sheikh Mokhlesur Rahman, Guangyu Li, Per Halkjær Nielsen, Alistair Philip David Elfick, and April Z Gu Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.8b01388 • Publication Date (Web): 26 Jun 2018 Downloaded from http://pubs.acs.org on June 28, 2018
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Environmental Science & Technology
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Towards Better Understanding of EBPR Systems via Linking
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Raman-Based Phenotypic Profiling with Phylogenetic Diversity
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Yueyun Li1, Helen A. Cope2, Sheikh M. Rahman1, Guangyu Li1, Per Halkjær Nielsen3,
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Alistair Elfick2, and April Z. Gu 1,4*
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1
Civil and Environmental Engineering Department, Northeastern University, Boston, MA 02115, USA
6 7
2
School of Engineering, Institute for Bioengineering, The University of Edinburgh, Edinburgh, UK
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9
Center for Microbial Communities, Department of Chemistry and Bioscience, Aalborg University, Aalborg, Denmark
10 11
4
School of Civil and Environmental Engineering, Cornell University, Ithaca, NY 14853, USA
12 *
Corresponding author, E-mail:
[email protected] 13 14
_____________________________________________________________________
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Abstract
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This study reports a proof-of concept study to demonstrate the novel approach of
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phenotyping microbial communities in enhanced biological phosphorus removal
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(EBPR) systems using single cell Raman microspectroscopy and link it with
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phylogentic structures. We use hierarchical clustering analysis (HCA) of single-cell
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Raman spectral fingerprints and intracellular polymers signatures to separate and
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classify the functionally relevant populations in EBPR systems, namely
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polyphosphate accumulating organisms (PAOs) and glycogen accumulating
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organisms (GAOs), as well as other microbial populations. We then investigated the
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link between Raman-based community phenotyping and 16S rRNA gene-based
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phylogenetic characterization of four lab-scale EBPR systems with varying SRTs to
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gain insights into possible genotype-function relationships. Combined and
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simultaneous phylogenetic and phenotypic evaluation of EBPR ecosystems revealed
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SRT-dependent phylogenetic and phenotypic characteristics of the PAOs and GAOs,
29
and their association with EBPR performance. The phenotypic diversity and plasticity
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of PAO populations, which otherwise could not be obtained with phylogenetic
31
analysis alone, showed complex but potentially crucial association with EBPR
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process stability.
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TOC:
34 EBPR-Wastewater Treatment Anaerobic
Aerobic
System Performance Stability
Microbial Community Structure Functional Groups
Matrix correlation analysis
Hierarchical clustering
Function---Single-cell Raman Fingerprints Raman Intensity
Phylogeny--- Amplicon Sequences
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Introduction The enhanced biological phosphorus removal (EBPR) process has been
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1, 2
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widely applied to remove and recover phosphorus from waste water.
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underlying ecological physiology that governs EBPR performance and stability is still
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not well-understood, which hampers wide and effective applications of EBPR
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systems.
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have been attempted with functional omics approaches (meta-proteomics, meta-
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metabolomics, etc.), stable isotope probing techniques such as secondary ion mass
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spectrometry
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microautoradiography (MAR) and combined Raman-FISH technique.
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the potential of meta-omics to deduce phylogeny-function relationships is still rather
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limited, particularly for high-diversity ecosystems.
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limitations because they target only phylogenetically identified microbial groups.
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Recent studies on EBPR biochemical pathways suggested that metabolic and
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functional diversities within PAOs and GAOs are likely to be greater than is currently
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known.
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methods that can elucidate the phenotypic and metabolic diversity among EBPR
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microbial populations.
3
The
Efforts to link EBPR activities with the microbial population community
12-14,15, 16
(SIMS),
fluorescence in
situ hybridization
10
(FISH)4-9
However,
FISH-based methods also have 11
These challenges and unknowns mandate development of new
58
The rapid development and increasing throughput of next generation
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sequencing (NGS) platforms have facilitated major advances in our understanding of
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taxonomic composition and phylogenetic diversity of microbial communities of
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natural and engineered ecological systems.
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of new phylotypes that are classified based on their molecular signatures alone,
17, 18 19, 20
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There are an increasing number
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however, many of these have no cultured representatives available yet for further
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physiological characterization. 21 To elucidate the functions of uncultured phylotypes,
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various culture-independent technologies have been demonstrated, including
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functional
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metaproteomics) and stable isotope probing.
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methods, such as nuclear magnetic resonance (NMR), Fourier Transform Infrared
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(FTIR) and Raman microspectroscopy, have also shown great potential in assisting
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the exploration of cellular functional characteristics in complex environmental
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ecosystems. 24, 25
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gene-based
microarrays,
meta-omics 21-23
(e.g.
metametabolomics,
Alternatively, spectroscopic
Raman-based phenotypic analysis has been successfully applied as a powerful 26, 27
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tool for single-cell microbial identification with minimum sample preparation.
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Early works with Raman spectroscopy to discriminate specific microbial populations
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were based on small numbers of selected and identified peaks to analyze targeted
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cellular functional groups such as polymers (glycogen, PolyP, etc.), and proteins. 28, 29
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Recent studies have focused on the use of multivariate statistics (e.g. hierarchical
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clustering analysis (HCA)) to evaluate the full Raman spectral signature across all
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collected wavenumbers (cm-1) since this offers high discrimination power.
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spectra yield fingerprint-like information about all chemical components within one
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cell and, in combination with multivariate methods, offer the potential to reveal
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physiological diversity of microbes in complex environmental ecosystems. In
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addition, the ability to differentiate and classify organisms down to species or even
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strain level has been demonstrated. 31, 32
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Raman
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Our group has previously developed methods for identification and
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quantification of PAOs and GAOs via simultaneous detection of the PolyP,
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polyhydroxyalkanoate (PHA) and glycogen peaks in single-cell Raman spectra.
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based phenotypic characterization. In this study, we explored the capacity of single-
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cell Raman fingerprinting for phenotypic characterization of an EBPR community.
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We then investigated the link between Raman-based community phenotyping and
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16S rRNA gene-based phylogenetic characterization of four lab-scale EBPR systems
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to gain insights into possible genotype-function relationships. Phenotypic diversity
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among EBPR microorganisms was successfully revealed from the multivariate
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analysis of single-cell Raman signatures. The congruence of the phenotypic and
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phylogenetic diversity was, for the first time, probed to demonstrate how
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phylogenetic and phenotypic diversity together could provide more comprehensive
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insights than each alone and, therefore contributes to the better understanding of
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important engineered microbial ecosystems such as EBPR.
28, 33,
This makes EBPR an ideal system for further exploration of the single-cell Raman
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Materials and Methods
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Lab-scale EBPR systems
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Four lab-scale sequencing batch reactor (SBR) EBPR systems, originally inoculated
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at the same time with activated sludge from a facility in US, were operated in parallel
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with solid retention times (SRTs) of 5, 10, 20 and 30 days, respectively. The details
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of SBRs operation was as described in previous publications.
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controlled at room temperature of 20-22ºC and operated with HRT of 12 hours, with
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four 6-hour cycles per day and each cycle consisted of: 7 minutes fill followed by
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110 minutes of anaerobic phase, 180 minutes of aerobic phase, 58 minutes of settling
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The SBRs were
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and then 5 minutes of withdrawing. Phosphorus was added as sodium phosphate
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monobasic (NaH2PO4 • 2H2O) to 8 mg-P/L. A total chemical oxygen demand (COD)
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of 200 mg/L was added to each cycle, containing 312 mg/L sodium acetate
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(CH3COONa • 3H2O) with supplement of 30 mg/L of casamino acids and 8 mg/L
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yeast extract.28, 33-35 The influent feed COD (chemical oxygen demand) / bioavailable
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phosphorus P mass ratio was kept at 25 mg COD/mg P. Inorganic nitrogen (8 mg/L)
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was added as ammonium chloride (NH4Cl). Allylthiourea was added at 4 mg/L of
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feeding to inhibit nitrification.36 Each SBR was operated for at least three times the
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SRT length to achieve steady-state prior to performance and population analysis.
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EBPR performance monitoring and methods for chemical analysis of soluble
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orthophosphate (ortho-P) as P (PO43--P), acetate, nitrate (NO3-), nitrite (NO2-) and
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ammonium as N (NH4+-N) concentrations were described previously
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summarized in supporting information. Total suspended solids (TSS) and volatile
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suspended solids (VSS) were determined weekly according to Standard Methods
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(methods 2540B and 2540E, respectively).37
28
and
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Long-term stability of EBPR performance was measured by the median P
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removal efficiency and the cumulative frequency of effluent ortho-P being below 1
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mg P/L (Table S1), since most wastewater treatment plants in the U.S. need to meet
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an effluent P limit of 1 mg P/L.38
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Raman Spectra Acquisition and Data Pre-processing
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From each SBR, mixed sludge samples were collected from the end of aerobic phase
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at one time point during stable operation, diluted and homogenized by a 26 gauge
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syringe needle and then dried on optically polished CaF2 windows (Crystran Ltd,
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Dorset, UK) as described previously.
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Raman microscope (Renishaw plc, UK) equipped with a 100x/0.9 NA objective
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(11566202, Leica Microsystems, Germany). Excitation (50 mW at the sample) was
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provided by a 785 nm diode laser (Toptica, Germany). Spectra were collected from
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400 to 1800 cm-1in extended scan mode, with a dwell time of 200 seconds and a 1200
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line/mm diffraction grating. A total of 168 Raman spectra with 40-50 single cells
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(from ~10 microscopic fields of well-dispersed cells) from each of the four reactors
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were analyzed. The statistical sufficiency of the sampling size was evaluated with
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radial based function kernel and Eigen-decomposition method
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sample size is sufficient for assessing the Raman-based phenotypic diversity in our
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lab-scale EBPR reactors
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recommended by He et al.
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variability arising from cosmic rays using the Renishaw software (WiRE™ 2.0),
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smooth background substrate signal using a Savitzky-Golay filter and subsequently
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vector correction according to Maquelin et al. 41 and remove the baseline via Small-
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Window Moving Average (SWiMA) method described by Schulze et al. 42
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Multivariate Analysis of Pre-processed Raman Spectra
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The whole wavenumber region, 400 to 1800 cm-1, of each pre-processed Raman
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spectrum as described above was used for the multivariate analysis.
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multivariate analysis procedure consisted of two steps: spectral transformation and
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classification. To ensure comparability between the spectra, and to correct for
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potential minor variation in spectral resolution and quality, each pre-processed
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spectrum was transformed by binning the Raman intensity over regions of size 5 cm-1,
28
40
Raman spectra were acquired with an InVia
40
(Figure S1-a). The
(Figure S1-b), and is consistent with what has been Each spectrum was pre-processed to remove unwanted
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as suggested by Webb-Robertson et al.
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analysis, HCA, using correlation coefficient as the distance measuring criteria, was
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performed on all of the single-cell Raman spectra collected from the four EBPR
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systems to classify these Raman spectra, based on intra-spectral similarities. A
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dendrogram was derived from the HCA that depicts different groups of Raman
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spectra with similar features. Here we defined the major Raman-classified groups as
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the operational phenotypic units (OPUs) (Figure 1a), which could be further broken
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down into sub-OPUs. The OPU is defined based on cluster analysis of Raman
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spectra, using the same rationale as that of the widely accepted OTU, where OTU is
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defined based on similarities between nucleotide sequences and OPU is defined based
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on similarities of single-cell Raman spectra. The cut-off distance for sub-OPUs was
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set at 0.7.
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MATLAB 2014a (Statistics and Machine Learning Toolbox).
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Raman-based PAOs and GAOs identification
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As described in our previous study28, candidate PAOs and GAOs were identified by
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the expected intracellular polymers Raman spectra, based on the detection of PolyP,
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glycogen and PHA signature peaks (Table 1). Briefly, cells with the two PolyP
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signature peaks, 690-700 cm-1 for P-O-P vibrations and 1168-1177 cm-1 for PO2-
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stretching band, were assigned as candidate PAOs, and cells with intracellular
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glycogen (480 cm-1, ~852 cm-1 and ~937cm-1 34) but no PolyP peaks, were assigned as
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candidate GAOs. 28 The presence of PHA in PAO or GAO cells was identified by the
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three signature peaks at ~433 cm-1, 830 cm-1, and 1730 cm-1.
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glycogen and PHA peaks, Raman peaks for other biochemical cellular constituents
44
An unsupervised multivariate statistics
Clustering analysis and dendrogram plotting were performed in
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Besides PolyP,
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(i.e. fatty acids, saccharides, DNA/RNA, proteins and primary/ other metabolites)
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were also identified according to literature. 43
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Table 1. Raman wavenumber assignments of PolyP, glycogen, PHA signature
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peaks based on literature. 43 PolyP
Glycogen
PHA
Signature Peaks
690-700 cm-1,
480 cm-1, ~852
~433 cm-1, 830 cm-1,
Position, cm-1
1168-1177 cm-1
cm-1 and ~937cm-1
and 1730 cm-1
182 183
Phylogenetic Analysis with 16S rRNA Gene Targeted Amplicon Sequencing
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Genomic DNA was extracted using the Fast-DNA Spin kit for Soil (Bio101, Vista,
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CA, USA). Amplicon sequencing on the variable region 1 to 3 (V1-3) of the bacterial
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16S rRNA gene was conducted with the V1-3 primer pair (27F: 5’-
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AGAGTTTGATCCTGGCTCAG-3’,
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3’) using the following procedures:
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in duplicate with Platinum High Fidelity Taq Polymerase (Invitrogen), with an initial
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denaturation step for 2 minutes at 95°C followed by 30 cycles of denaturing (95°C for
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20 seconds), annealing (56°C for 30 seconds), and elongation (72°C for 60 seconds)
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steps, ending with 5 minutes of final extension at 72°C. DNA concentrations were
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measured using the Quant-iT HS DNA Assay Kit (Molecular Probes); then the
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barcoded amplicons were pooled in equimolar amounts and paired-end sequenced on
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an Illumina MiSeq (Illumina Inc.) using a MiSeq Reagent Kit v3 (2 × 300 paired
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end).
45
534R:
5’-ATTACCGCGGCTGCTGG-
First, the PCR amplifications were carried out
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The raw 16S rRNA gene sequence data (NCBI accession number of 45
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SRP077653) was processed using QIIME v.1.4.0
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check quality, remove singletons and cluster merged reads into unique operational
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taxonomic units (OTUs) (97% similarity) level. Default parameters were used in all
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cases except that to assign taxonomy, for which the Ribosomal Database Project
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(RDP) classifier 46 was used with the SILVA database (http://www.arb-silva.de/).
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PolyP-DAPI Staining for PAO Quantification
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The differential staining of PAOs and non-PAOs was performed with 4',6-Diamidino-
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2-phenylindole (DAPI) at 50 µg/mL for 1 min.
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distributions was carried out using the software DAIME version 2.0. 48 Around 20-25
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separate randomly chosen images were evaluated to reflect the cumulative
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biovolumetric fractions of total PAOs among all cells.
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FISH Analysis
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To visualize and quantify the abundance of the identified candidate PAO/GAO
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groups, sludge samples were fixed and hybridized with FISH probes as described
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previously (Table S2).38, 49 After hybridization, the slides were counterstained with 1
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µg/mL of DAPI solution for 3 min to quantify total cells. DAPI counterstain instead
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of EUB mix probe was employed to quantify the total cells, to be consistent with the
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total PAO quantification with PolyP-DAPI staining. 20-25 separate randomly chosen
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images were observed with an epifluorescent microscope (Zeiss Axioplan 2, Zeiss,
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Oberkochen, Germany). Quantification of population distributions were carried out
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using the software DAIME version 2.0. 48
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to demultiplex the sequences,
Quantification of population
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Correlation Analysis between Phenotypic and Phylogenetic Profiles of EBPR
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Communities
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Principal component analysis (PCA) with MATLAB 2014a (Statistics and Machine
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Learning Toolbox) was performed on the relative abundances of the 12 Raman-based
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sub-OPUs in the four EBPR ecosystems to reduce dimensionality and to reveal the
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phenotypic profiling pattern among these four EBPR ecosystems. A parallel PCA
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analysis was also performed on the relative abundances of each 16S rRNA gene
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based OTUs retrieved from the four EBPR ecosystems to reveal the phylogenetic
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separation patterns of the four EBPR communities. To statistically quantify the
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relationship between the phenotypic and phylogenetic separations among the four
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EBPR ecosystems, we applied a statistical analysis described by Fierer et al.
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correlating two distribution matrixes (i.e. two PCA plots here). Pearson correlation
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was assessed between scores on the first principal components that explained the
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greatest variance for each distribution matrix.
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Results and Discussion
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Raman-based Phenotypic Classification of Microorganisms in EBPR
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Single cell Raman spectra captured features from key functionally-relevant
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intracellular polymers to EBPR (PolyP, glycogen, PHA) and from other biochemical
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cellular constituents (i.e. fatty acids, saccharides, DNA/RNA, proteins and primary/
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other metabolites) allowed for cellular phenotypic profiling and clustering. HCA
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analysis of all single cell Raman spectra retrieved from the four EBPR reactors
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yielded 4 major groups, namely OPU1 to OPU4, and 12 sub-OPUs (Figure 1a, 1b).
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The Raman-based relative abundance quantification of PAOs (58-71% by cell count)
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in the four EBPR systems showed similar trends but with higher abundance than
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those determined from DAPI-PolyP staining (35-57% by biovolumetric fractions,
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Figure S2). The discrepancy could also be explained by possible ignorance of hardly
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distinguishable cells for Raman analysis, sensitivity and specificity limits of DAPI
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staining method.51 The Raman-based quantification of candidate GAOs (2-17% by
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cell count) could not be verified independently because there is currently no other
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phenotype-based method available for total GAO quantification. 28
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Most (91%) Raman-identified PAOs clustered into four groups, namely
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OPU1, OPU2g, OPU3 and OPU4 (Figure 1b). Most candidate GAOs clustered in
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OPU2d. The sub-OPUs 2a, 2b and 2c were composed mostly of non-PAO and non-
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GAO cells, since no PolyP or glycogen characteristic peaks were detected in their
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Raman spectra. OPU2e and OPU2f included mixtures of PAOs, GAOs, non-PAOs
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and non-GAOs (Figure 1a, b). The phenotypic diversities within PAOs/GAOs were
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revealed by comparing the mean spectra calculated from single-cell spectra within
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each sub-OPU (Figure 2a, 2b).
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a)12000
Glycogen
Glycogen PolyP
PolyP
OPU4a
6000 0 12000
OPU4b
6000 0 12000
OPU3a
6000 0 12000
OPU3b 6000 0 12000
OPU2a
6000
CCDCounts
0 12000
OPU2b
6000 0 12000
OPU2c
6000 0 12000
OPU2d
6000 0 12000
OPU2e
6000 0 12000
OPU2f 6000 0 12000
OPU2g 6000 0 12000
OPU1
6000 0
400
258 259 260 261 262
600
800
1000
1200
1400
1600
1800
Wavenumbers (cm-1)
Figure 1a) Pre-processed single-cell Raman spectra collected from the four lab scale EBPR systems, clustered by HCA into each subOPUs, with the signature peaks for glycogen and PolyP labelled. b) Dendrogram from HCA of single-cell Raman spectra, with major and sub-OPUs labeled. The spectra and dendrogram are color-coded based on Raman analysis as follows: pink – candidate PAOs; blue – candidate GAOs; black – other cells).
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Phenotypic diversity among PAOs sub-OPUs: We further compared and
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tentatively characterized the different sub-OPUs of PAOs, based on the predominant
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and functionally relevant intracellular polymers, namely PolyP, glycogen, and PHA
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peaks (Table 1). The results implied great phenotypic diversity among PAO sub-
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groups.
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The Raman intensities of the two PolyP signature peaks in each individual
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PAO cells could be used as an indication of the cellular PolyP storage content, which
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was found to vary greatly among PAO sub-OPUs. The highest mean PolyP peak
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intensities were observed in OPU4-PAOs, followed by OPU1-PAOs, OPU3-PAOs,
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and the lowest intensities in PAOs within OPU2. Further investigation would be
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needed to determine whether our observation of the PolyP level heterogeneity
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resulted from external (e.g. different life histories, flow hydraulics etc.) or internal
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(e.g. phylogeny, metabolism etc.) mechanisms. 52
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Figure 2 Mean spectra calculated from pre-processed single-cell spectra of a) PAOs and b) GAOs in each sub-OPU. Spectra are vertically shifted for clarity. The tentative assignments of vibrational modes (stretches: υ; deformations: δ/def) for the EBPRfunctionally relevant peaks (PolyP, glycogen), as well as the general characteristic regions for structural/metabolic characteristic peaks (i.e. fatty acids, saccharides, DNA/RNA, proteins and primary or other metabolites) are labelled 43. The following peaks were used for PolyP, glycogen and PHA identification: PolyP – 690-700 cm-1 and 1168-1177 cm-1, 33 glycogen – 480 cm-1, ~852 cm-1 and ~937cm-13;4 PHA- ~433 cm-1, 830 cm-1, and 1730 cm-134. The sub-OPUs (2a, 2b and 2c) that do not contain any candidate PAOs or GAOs are not shown.
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Table 2 Summarized possible phenotypic variations among different sub-OPUs of PAOs, indicated by PolyP peaks intensities, PolyP peak position shift and glycogen peak intensities.
PAO sub-OPU
4a
4b
293 294
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Phenotypic characteristics1 High PolyP content; Short PolyP length; No glycogen
High PolyP content; Long PolyP length; No glycogen
3a
Medium PolyP content; Medium PolyP length; Medium glycogen
3b
Medium PolyP content; Medium PolyP length; High-Medium glycogen
2d
Low PolyP content; Long PolyP length; High glycogen
2e
Low PolyP content; Long PolyP length; Low glycogen
2g
Median PolyP content; Long PolyP length; Low glycogen
1
Median PolyP content; Median PolyP length; No glycogen
PolyP content 2
High (4359, 5436)
High (4253, 5841)
Medium (1681, 2142)
Medium (2002, 2488)
Medium (1496, 2108)
Low (883, 1189)
Medium (1714, 2502) Medium (2205, 2888)
1
PolyP length3 Short (458)
Long (477)
Glycogen content4
BD5
BD5
Medium (466)
Medium (449)
Medium (463)
Medium (636)
Long (474)
Long (476)
Long (479)
Medium (468)
High (1031)
Low (187)
Low (206)
BD5
Summarized phenotypic characteristics indicated from PolyP peak intensities, PolyP peak position shift and glycogen peak intensities.
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295 296 297 298 299 300 301 302 303 304
2
Mean PolyP intensities (CCD counts) at ~690 cm-1 for P-O-P vibrations and ~1170 cm-1 for PO2- stretching bands are shown in parenthesis: (Intensity for P-O-P vibrations, Intensity for PO2- stretching bands). See detailed PolyP intensity ranging data in Table S3. 3 Larger PolyP peak position distance potentially indicates longer PolyP chain length. Mean distance between PolyP peak position (cm-1) for P-O-P vibrations and for PO2- stretching bands are shown in parenthesis. See detailed PolyP position ranging data in Table S3. 4 Increased ranking number for higher glycogen intensity. Mean glycogen intensity (CCD counts) at 480 cm-1 are shown in parenthesis. Please see detailed glycogen intensity ranging data in Table S3. 5 BD: below detection limit.
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In addition to the intensity of PolyP signature peaks, the distance between the
306
two PolyP peaks has been suggested to be associated with PolyP structural changes
307
such as variation in the length of PolyP chains
308
with other molecules, such as proteins.
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reported to be associated with EBPR performance and stability,
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linked with different mechanisms and enzymes involved in PolyP metabolism.
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Single-cell level Raman-based phenotyping revealed possibly varying PolyP chain
312
lengths among PAO sub-OPUs (Figure 2a)
313
concentrations of cellular PolyP content, such as those in OPU-4a and 4b, exhibited
314
varied PolyP chain length and/or structure, therefore implying possibly distinct
315
effects on EBPR performance.
53
33
and complexation of PolyP chains
The PolyP chain length in PAOs has been 54
and might be 53
The PAOs that contained similar
316
In addition to PolyP intensity, the varying amount of intracellular glycogen
317
among PAOs belonging to different sub-OPU clusters was also revealed (Figure 2a).
318
The intracellular glycogen content (measured at the end of aerobic phase) has been
319
suggested to be an indicator for the extent of involvement of the glycolysis pathway
320
during the EBPR anaerobic phase for energy and reducing power supply with
321
implications for EBPR performance.
322
OPU2d was found with a detectable level of PHA) as expected and noticed in our
28,55
PHA level was low (only one cell from
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previous study
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internal PHA storage.
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because PAOs at the end of aerobic phase would have utilized the
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In addition to the EBPR functionally-relevant polymers discussed above, the
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information-rich Raman fingerprints over the whole spectral region allows for high-
327
resolution phenotypic separation and classification in consideration of cellular
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metabolic features, which may be directly or indirectly associated with EBPR
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function. In addition to EBPR function-relevant intracellular polymers peaks, the
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cellular fatty acid profile revealed from Raman spectra, could potentially be used as a
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biomarker for detecting rapid microbial populations changes.56 The previously
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identified Raman signatures for DNA/RNA (600-800 cm-1), saccharides (1000-1200
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cm-1), proteins (1200-1800 cm-1) and primary (intermediates of TCA cycle etc.) /other
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metabolites (700-800 cm-1) 43, although overlapping with the two intense PolyP peaks
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(690, 1170 cm-1) of PAO cells, could still represent other cellular phenotypic features.
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For example, OPU4a-PAOs were distinct from all the other PAOs, partly by their
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higher intensities at 970cm-1 and 1043 cm-1 (Figure 2a), which might be possibly
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corresponding to the asymmetric υ(POC) stretch of phosphate functional group,
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and pseudosymmetric υ(C=C=O) stretch, 34 respectively.
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Phenotypic diversity among GAO sub-OPUs: Compared to PAOs, the analyzed
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GAO cells from our EBPR systems showed more conserved phenotypic
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characteristics based on our Raman signature analysis. This was indicated by the
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considerably less variations among GAO spectra (Figure 2b) compared with PAO
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spectra (Figure 2b). PAO phenotypes clustered in 8 sub-OPUs whereas there were
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only two sub-OPUs containing GAOs: OPU2d and OPU2f. OPU2d-GAOs were
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found to have higher glycogen content than OPU2f-GAO (Figure 2b). In addition,
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variation in other spectral regions were observed between the two sub-OPUs of
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GAOs.
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Phylogenetic Characterization of EBPR Microorganisms
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Phylogenetic characterization of the four EBPR systems were performed with both
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FISH and 16S rRNA gene based amplicon sequencing (Figure 3). In our EBPR
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systems, the most dominant phylum was Proteobacteria (54-91%), followed by
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Bacteroidetes (5-20%), and within Proteobacteria, Betaproteobacteria was the
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dominant class (Figure 3a). Note that these are relative abundances based on the 16S
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rRNA gene counts, which could be affected by extraction bias, PCR bias as well as
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the bacterial rRNA operon copy number
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equivalent to microbial cell abundance.
57
, therefore they are not necessarily
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a) 100 80 60 40 20 0
Relative Abundance (%)
b)100
5
10
20
30
5 days 10 days 20 days 30 days
80 60 40 20 0
c) 20
c__Alphaproteobacteria c__Betaproteobacteria c__Epsilonproteobacteria c__Deltaproteobacteria c__Gammaproteobacteria unclassified proteobacteria p__Candidate division TM7 p__Bacteroidetes p__Actinobacteria sum of minor phyla(