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Assessment of the microbial interplay during anaerobic co-digestion of wastewater sludge using common components analysis.


ABSTRACT: Anaerobic digestion (AD) is used to minimize solid waste while producing biogas by the action of microorganisms. To give an insight into the underlying microbial dynamics in anaerobic digesters, we investigated two different AD systems (wastewater sludge mixed with either fish or grass waste). The microbial activity was characterized by 16S RNA sequencing. 16S data is sparse and dispersed, and existent data analysis methods do not take into account this complexity nor the potential microbial interactions. In this line, we proposed a data pre-processing pipeline addressing these issues while not restricting only to the most abundant microorganisms. The data were analyzed by Common Components Analysis (CCA) to decipher the effect of substrate composition on the microorganisms. CCA results hinted the relationships between the microorganisms responding similarly to the AD physicochemical parameters. Thus, in overall, CCA allowed a better understanding of the inter-species interactions within microbial communities.

SUBMITTER: Puig-Castellvi F 

PROVIDER: S-EPMC7194399 | biostudies-literature | 2020

REPOSITORIES: biostudies-literature

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Assessment of the microbial interplay during anaerobic co-digestion of wastewater sludge using common components analysis.

Puig-Castellví Francesc F   Cardona Laëtitia L   Jouan-Rimbaud Bouveresse Delphine D   Cordella Christophe B Y CBY   Mazéas Laurent L   Rutledge Douglas N DN   Chapleur Olivier O  

PloS one 20200501 5


Anaerobic digestion (AD) is used to minimize solid waste while producing biogas by the action of microorganisms. To give an insight into the underlying microbial dynamics in anaerobic digesters, we investigated two different AD systems (wastewater sludge mixed with either fish or grass waste). The microbial activity was characterized by 16S RNA sequencing. 16S data is sparse and dispersed, and existent data analysis methods do not take into account this complexity nor the potential microbial int  ...[more]

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