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Detecting differential growth of microbial populations with Gaussian process regression.

Publication ,  Journal Article
Tonner, PD; Darnell, CL; Engelhardt, BE; Schmid, AK
Published in: Genome research
February 2017

Microbial growth curves are used to study differential effects of media, genetics, and stress on microbial population growth. Consequently, many modeling frameworks exist to capture microbial population growth measurements. However, current models are designed to quantify growth under conditions for which growth has a specific functional form. Extensions to these models are required to quantify the effects of perturbations, which often exhibit nonstandard growth curves. Rather than assume specific functional forms for experimental perturbations, we developed a general and robust model of microbial population growth curves using Gaussian process (GP) regression. GP regression modeling of high-resolution time-series growth data enables accurate quantification of population growth and allows explicit control of effects from other covariates such as genetic background. This framework substantially outperforms commonly used microbial population growth models, particularly when modeling growth data from environmentally stressed populations. We apply the GP growth model and develop statistical tests to quantify the differential effects of environmental perturbations on microbial growth across a large compendium of genotypes in archaea and yeast. This method accurately identifies known transcriptional regulators and implicates novel regulators of growth under standard and stress conditions in the model archaeal organism Halobacterium salinarum For yeast, our method correctly identifies known phenotypes for a diversity of genetic backgrounds under cyclohexamide stress and also detects previously unidentified oxidative stress sensitivity across a subset of strains. Together, these results demonstrate that the GP models are interpretable, recapitulating biological knowledge of growth response while providing new insights into the relevant parameters affecting microbial population growth.

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Published In

Genome research

DOI

EISSN

1549-5469

ISSN

1088-9051

Publication Date

February 2017

Volume

27

Issue

2

Start / End Page

320 / 333

Related Subject Headings

  • Yeasts
  • Phenotype
  • Normal Distribution
  • Models, Biological
  • Halobacterium salinarum
  • Bioinformatics
  • 3105 Genetics
  • 11 Medical and Health Sciences
  • 06 Biological Sciences
 

Citation

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Tonner, P. D., Darnell, C. L., Engelhardt, B. E., & Schmid, A. K. (2017). Detecting differential growth of microbial populations with Gaussian process regression. Genome Research, 27(2), 320–333. https://doi.org/10.1101/gr.210286.116
Tonner, Peter D., Cynthia L. Darnell, Barbara E. Engelhardt, and Amy K. Schmid. “Detecting differential growth of microbial populations with Gaussian process regression.Genome Research 27, no. 2 (February 2017): 320–33. https://doi.org/10.1101/gr.210286.116.
Tonner PD, Darnell CL, Engelhardt BE, Schmid AK. Detecting differential growth of microbial populations with Gaussian process regression. Genome research. 2017 Feb;27(2):320–33.
Tonner, Peter D., et al. “Detecting differential growth of microbial populations with Gaussian process regression.Genome Research, vol. 27, no. 2, Feb. 2017, pp. 320–33. Epmc, doi:10.1101/gr.210286.116.
Tonner PD, Darnell CL, Engelhardt BE, Schmid AK. Detecting differential growth of microbial populations with Gaussian process regression. Genome research. 2017 Feb;27(2):320–333.

Published In

Genome research

DOI

EISSN

1549-5469

ISSN

1088-9051

Publication Date

February 2017

Volume

27

Issue

2

Start / End Page

320 / 333

Related Subject Headings

  • Yeasts
  • Phenotype
  • Normal Distribution
  • Models, Biological
  • Halobacterium salinarum
  • Bioinformatics
  • 3105 Genetics
  • 11 Medical and Health Sciences
  • 06 Biological Sciences