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Rapid Prediction of Bacterial Heterotrophic Fluxomics Using Machine Learning and Constraint Programming.

Authors :
Wu, Stephen Gang
Wang, Yuxuan
Jiang, Wu
Oyetunde, Tolutola
Yao, Ruilian
Zhang, Xuehong
Shimizu, Kazuyuki
Tang, Yinjie J.
Bao, Forrest Sheng
Source :
PLoS Computational Biology; 4/19/2016, Vol. 12 Issue 4, p1-22, 22p, 3 Diagrams, 1 Chart, 7 Graphs
Publication Year :
2016

Abstract

<superscript>13</superscript>C metabolic flux analysis (<superscript>13</superscript>C-MFA) has been widely used to measure in vivo enzyme reaction rates (i.e., metabolic flux) in microorganisms. Mining the relationship between environmental and genetic factors and metabolic fluxes hidden in existing fluxomic data will lead to predictive models that can significantly accelerate flux quantification. In this paper, we present a web-based platform MFlux () that predicts the bacterial central metabolism via machine learning, leveraging data from approximately 100 <superscript>13</superscript>C-MFA papers on heterotrophic bacterial metabolisms. Three machine learning methods, namely Support Vector Machine (SVM), k-Nearest Neighbors (k-NN), and Decision Tree, were employed to study the sophisticated relationship between influential factors and metabolic fluxes. We performed a grid search of the best parameter set for each algorithm and verified their performance through 10-fold cross validations. SVM yields the highest accuracy among all three algorithms. Further, we employed quadratic programming to adjust flux profiles to satisfy stoichiometric constraints. Multiple case studies have shown that MFlux can reasonably predict fluxomes as a function of bacterial species, substrate types, growth rate, oxygen conditions, and cultivation methods. Due to the interest of studying model organism under particular carbon sources, bias of fluxome in the dataset may limit the applicability of machine learning models. This problem can be resolved after more papers on <superscript>13</superscript>C-MFA are published for non-model species. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
1553734X
Volume :
12
Issue :
4
Database :
Complementary Index
Journal :
PLoS Computational Biology
Publication Type :
Academic Journal
Accession number :
114635649
Full Text :
https://doi.org/10.1371/journal.pcbi.1004838