Prediction of whole-cell transcriptional response with machine learning
Author(s)
Eslami, Mohammed; Borujeni, Amin Espah; Eramian, Hamed; Weston, Mark; Zheng, George; Urrutia, Joshua; Corbet, Carolyn; Becker, Diveena; Maschhoff, Paul; Clowers, Katie; Cristofaro, Alexander; Hosseini, Hamid Doost; Gordon, D Benjamin; Dorfan, Yuval; Singer, Jedediah; Vaughn, Matthew; Gaffney, Niall; Fonner, John; Stubbs, Joe; Voigt, Christopher A; Yeung, Enoch; ... Show more Show less
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<jats:title>Abstract</jats:title>
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<jats:title>Motivation</jats:title>
<jats:p>Applications in synthetic and systems biology can benefit from measuring whole-cell response to biochemical perturbations. Execution of experiments to cover all possible combinations of perturbations is infeasible. In this paper, we present the host response model (HRM), a machine learning approach that maps response of single perturbations to transcriptional response of the combination of perturbations.</jats:p>
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<jats:title>Results</jats:title>
<jats:p>The HRM combines high-throughput sequencing with machine learning to infer links between experimental context, prior knowledge of cell regulatory networks, and RNASeq data to predict a gene’s dysregulation. We find that the HRM can predict the directionality of dysregulation to a combination of inducers with an accuracy of &gt;90% using data from single inducers. We further find that the use of prior, known cell regulatory networks doubles the predictive performance of the HRM (an R2 from 0.3 to 0.65). The model was validated in two organisms, Escherichia coli and Bacillus subtilis, using new experiments conducted after training. Finally, while the HRM is trained with gene expression data, the direct prediction of differential expression makes it possible to also conduct enrichment analyses using its predictions. We show that the HRM can accurately classify &gt;95% of the pathway regulations. The HRM reduces the number of RNASeq experiments needed as responses can be tested in silico prior to the experiment.</jats:p>
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<jats:title>Availability and implementation</jats:title>
<jats:p>The HRM software and tutorial are available at https://github.com/sd2e/CDM and the configurable differential expression analysis tools and tutorials are available at https://github.com/SD2E/omics_tools.</jats:p>
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<jats:title>Supplementary information</jats:title>
<jats:p>Supplementary data are available at Bioinformatics online.</jats:p>
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Date issued
2022Department
Massachusetts Institute of Technology. Department of Biological EngineeringJournal
Bioinformatics
Publisher
Oxford University Press (OUP)
Citation
Eslami, Mohammed, Borujeni, Amin Espah, Eramian, Hamed, Weston, Mark, Zheng, George et al. 2022. "Prediction of whole-cell transcriptional response with machine learning." Bioinformatics, 38 (2).
Version: Original manuscript