TY - JOUR
T1 - Methanogenic Potential of Sewer Microbiomes and Its Implications for Methane Emission
AU - Yan, Yuqing
AU - Zhu, Jun Jie
AU - May, Harold D.
AU - Song, Cuihong
AU - Jiang, Jinyue
AU - Du, Lin
AU - Ren, Zhiyong Jason
N1 - Publisher Copyright:
© 2024 American Chemical Society.
PY - 2024/11/12
Y1 - 2024/11/12
N2 - The sewer system, despite being a significant source of methane emissions, has often been overlooked in current greenhouse gas inventories due to the limited availability of quantitative data. Direct monitoring in sewers can be expensive or biased due to access limitations and internal heterogeneity of sewer networks. Fortunately, since methane is almost exclusively biogenic in sewers, we demonstrate in this study that the methanogenic potential can be estimated using known sewer microbiome data. By combining data mining techniques and bioinformatics databases, we developed the first data-driven method to analyze methanogenic potentials using a data set containing 633 observations of 53 variables obtained from literature mining. The methanogenic potential in the sewer sediment was around 250-870% higher than that in the wet biofilm on the pipe and sewage water. Additionally, k-means clustering and principal component analysis linked higher methane emission rates (9.72 ± 51.3 kgCO2 eq m-3 d-1) with smaller pipe size, higher water level, and higher potentials of sulfate reduction in the wetted pipe biofilm. These findings exhibit the possibility of connecting microbiome data with biogenic greenhouse gases, further offering insights into new approaches for understanding greenhouse gas emissions from understudied sources.
AB - The sewer system, despite being a significant source of methane emissions, has often been overlooked in current greenhouse gas inventories due to the limited availability of quantitative data. Direct monitoring in sewers can be expensive or biased due to access limitations and internal heterogeneity of sewer networks. Fortunately, since methane is almost exclusively biogenic in sewers, we demonstrate in this study that the methanogenic potential can be estimated using known sewer microbiome data. By combining data mining techniques and bioinformatics databases, we developed the first data-driven method to analyze methanogenic potentials using a data set containing 633 observations of 53 variables obtained from literature mining. The methanogenic potential in the sewer sediment was around 250-870% higher than that in the wet biofilm on the pipe and sewage water. Additionally, k-means clustering and principal component analysis linked higher methane emission rates (9.72 ± 51.3 kgCO2 eq m-3 d-1) with smaller pipe size, higher water level, and higher potentials of sulfate reduction in the wetted pipe biofilm. These findings exhibit the possibility of connecting microbiome data with biogenic greenhouse gases, further offering insights into new approaches for understanding greenhouse gas emissions from understudied sources.
KW - data-driven analysis
KW - greenhouse gas emission
KW - k-means clustering
KW - methanogenic microbial community
KW - sewer methane
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U2 - 10.1021/acs.est.4c04005
DO - 10.1021/acs.est.4c04005
M3 - Article
C2 - 39283956
AN - SCOPUS:85204101304
SN - 0013-936X
VL - 58
SP - 19990
EP - 19998
JO - Environmental Science and Technology
JF - Environmental Science and Technology
IS - 45
ER -