4.4 Article

Overcoming stochastic variations in culture variables to quantify and compare growth curve data

Journal

BIOESSAYS
Volume 43, Issue 8, Pages -

Publisher

WILEY
DOI: 10.1002/bies.202100108

Keywords

growth curve; microbe; Saccharomyces cerevisiae

Funding

  1. National Institute of General Medical Sciences [1R35GM133437]
  2. American Cancer Society [RSG-16-180-01-DMC]

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Comparing growth is a classic microbiological technique that can provide various types of information. While collecting growth curve data can circumvent certain issues, the growth curves themselves are subject to stochastic variation in several variables. Hence, it is necessary to compile growth curve data into a quantitative format for statistical comparisons.
The comparison of growth, whether it is between different strains or under different growth conditions, is a classic microbiological technique that can provide genetic, epigenetic, cell biological, and chemical biological information depending on how the assay is used. When employing solid growth media, this technique is limited by being largely qualitative and low throughput. Collecting data in the form of growth curves, especially automated data collection in multi-well plates, circumvents these issues. However, the growth curves themselves are subject to stochastic variation in several variables, most notably the length of the lag phase, the doubling rate, and the maximum expansion of the culture. Thus, growth curves are indicative of trends but cannot always be conveniently averaged and statistically compared. Here, we summarize a simple method to compile growth curve data into a quantitative format that is amenable to statistical comparisons and easy to graph and display.

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