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Inferring Models of Bacterial Dynamics toward Point Sources. | LitMetric

Inferring Models of Bacterial Dynamics toward Point Sources.

PLoS One

Physics Dept., Indiana Univ. - Purdue Univ. Indianapolis, Indianapolis, IN, 46202, United States of America; Dept. of Cell and Integrative Physiology, Indiana Univ. School of Medicine, Indianapolis, IN 46202, United States of America.

Published: June 2016

Experiments have shown that bacteria can be sensitive to small variations in chemoattractant (CA) concentrations. Motivated by these findings, our focus here is on a regime rarely studied in experiments: bacteria tracking point CA sources (such as food patches or even prey). In tracking point sources, the CA detected by bacteria may show very large spatiotemporal fluctuations which vary with distance from the source. We present a general statistical model to describe how bacteria locate point sources of food on the basis of stochastic event detection, rather than CA gradient information. We show how all model parameters can be directly inferred from single cell tracking data even in the limit of high detection noise. Once parameterized, our model recapitulates bacterial behavior around point sources such as the "volcano effect". In addition, while the search by bacteria for point sources such as prey may appear random, our model identifies key statistical signatures of a targeted search for a point source given any arbitrary source configuration.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4605597PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0140428PLOS

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