Machine learning framework for assessment of microbial factory performance

PLoS One. 2019 Jan 15;14(1):e0210558. doi: 10.1371/journal.pone.0210558. eCollection 2019.

Abstract

Metabolic models can estimate intrinsic product yields for microbial factories, but such frameworks struggle to predict cell performance (including product titer or rate) under suboptimal metabolism and complex bioprocess conditions. On the other hand, machine learning, complementary to metabolic modeling necessitates large amounts of data. Building such a database for metabolic engineering designs requires significant manpower and is prone to human errors and bias. We propose an approach to integrate data-driven methods with genome scale metabolic model for assessment of microbial bio-production (yield, titer and rate). Using engineered E. coli as an example, we manually extracted and curated a data set comprising about 1200 experimentally realized cell factories from ~100 papers. We furthermore augmented the key design features (e.g., genetic modifications and bioprocess variables) extracted from literature with additional features derived from running the genome-scale metabolic model iML1515 simulations with constraints that match the experimental data. Then, data augmentation and ensemble learning (e.g., support vector machines, gradient boosted trees, and neural networks in a stacked regressor model) are employed to alleviate the challenges of sparse, non-standardized, and incomplete data sets, while multiple correspondence analysis/principal component analysis are used to rank influential factors on bio-production. The hybrid framework demonstrates a reasonably high cross-validation accuracy for prediction of E.coli factory performance metrics under presumed bioprocess and pathway conditions (Pearson correlation coefficients between 0.8 and 0.93 on new data not seen by the model).

Publication types

  • Research Support, U.S. Gov't, Non-P.H.S.

MeSH terms

  • Algorithms*
  • Computer Simulation
  • Databases, Factual
  • Escherichia coli / genetics*
  • Escherichia coli / metabolism
  • Machine Learning*
  • Metabolic Engineering / methods*
  • Models, Biological*
  • Reproducibility of Results

Grants and funding

This work was supported by a Department of Energy grant (DESC0018324) and a National Science Foundation grant (MCB 1616619) to YT. The funder had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.