1. The interplay between chromosome stability and cell cycle control explored through gene–gene interaction and computational simulation
- Author
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Kumkum Ganguly, Stephanie Yoon, Jesse P. Frumkin, Animesh Ray, Molly B. Schmid, Anthony W. Sevold, Chaya Patel, and Biranchi N. Patra
- Subjects
0301 basic medicine ,Time Factors ,Cell division ,DNA repair ,Saccharomyces cerevisiae ,Genes, Fungal ,Mitosis ,Computational biology ,Biology ,03 medical and health sciences ,0302 clinical medicine ,Gene interaction ,Chromosome instability ,Chromosomal Instability ,Genetics ,Computer Simulation ,Gene ,Models, Genetic ,Computational Biology ,Epistasis, Genetic ,Cell Cycle Checkpoints ,Cell cycle ,biology.organism_classification ,Flow Cytometry ,030104 developmental biology ,Chromosomes, Fungal ,030217 neurology & neurosurgery - Abstract
Chromosome stability models are usually qualitative models derived from molecular-genetic mechanisms for DNA repair, DNA synthesis, and cell division. While qualitative models are informative, they are also challenging to reformulate as precise quantitative models. In this report we explore how (A) laboratory experiments, (B) quantitative simulation, and (C) seriation algorithms can inform models of chromosome stability. Laboratory experiments were used to identify 19 genes that when over-expressed cause chromosome instability in the yeast Saccharomyces cerevisiae To better understand the molecular mechanisms by which these genes act, we explored their genetic interactions with 18 deletion mutations known to cause chromosome instability. Quantitative simulations based on a mathematical model of the cell cycle were used to predict the consequences of several genetic interactions. These simulations lead us to suspect that the chromosome instability genes cause cell-cycle perturbations. Cell-cycle involvement was confirmed using a seriation algorithm, which was used to analyze the genetic interaction matrix to reveal an underlying cyclical pattern. The seriation algorithm searched over 10(14) possible arrangements of rows and columns to find one optimal arrangement, which correctly reflects events during cell cycle phases. To conclude, we illustrate how the molecular mechanisms behind these cell cycle events are consistent with established molecular interaction maps.
- Published
- 2016