Bayesian modeling of microbial physiology

dc.contributor.advisor

Schmid, Amy K

dc.contributor.author

Tonner, Peter

dc.date.accessioned

2018-03-20T17:57:13Z

dc.date.available

2019-12-18T09:17:10Z

dc.date.issued

2017

dc.department

Computational Biology and Bioinformatics

dc.description.abstract

Microbial population growth measurements are widespread in the study of microorganisms, providing insight into areas including genetics, physiology, and engineering. The most common models of microbial population growth data are parametric, and are derived from specific assumptions about the underlying growth process. While useful in cases where these assumptions are valid, these models are inadequate in many cases typically found in microbial growth studies, including presence of significant population death and the presence of multiple growth phases (e.g. diauxie). Here, we explore the use of the Bayesian non-parametric model Gaussian processes on microbial population growth. We first develop a general hypothesis-test using Gaussian process regression and false-discovery rate corrected Bayes factor scores. We then explore a fully Bayesian model with Gaussian process priors that can capture the latent growth processes of many population measurements under a single model. Finally, we develop hierarchical Bayesian model with GP priors in order to capture random effects in microbial population growth data.

dc.identifier.uri

https://hdl.handle.net/10161/16378

dc.subject

Bioinformatics

dc.subject

Microbiology

dc.subject

Genetics

dc.title

Bayesian modeling of microbial physiology

dc.type

Dissertation

duke.embargo.months

21

Files

Original bundle

Now showing 1 - 5 of 14
Loading...
Thumbnail Image
Name:
Tonner_duke_0066D_14342.pdf
Size:
12.97 MB
Format:
Adobe Portable Document Format
Loading...
Thumbnail Image
Name:
Tonner_duke_0066D_17/Supplemental_Material.pdf
Size:
13.48 MB
Format:
Adobe Portable Document Format
No Thumbnail Available
Name:
Tonner_duke_0066D_17/Supplemental_Table_S1.xls
Size:
488.5 KB
Format:
Microsoft Excel
No Thumbnail Available
Name:
Tonner_duke_0066D_17/Supplemental_Table_S2.xlsx
Size:
11.07 KB
Format:
Microsoft Excel
No Thumbnail Available
Name:
Tonner_duke_0066D_17/inline-supplementary-material-1.xlsx
Size:
43.18 KB
Format:
Microsoft Excel

Collections