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Inferring the shape of global epistasis

Jakub Otwinowski, David M. McCandlish, Joshua B. Plotkin
doi: https://doi.org/10.1101/278630
Jakub Otwinowski
1University of Pennsylvania, Biology Department,
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  • For correspondence: jakubo@sas.upenn.edu
David M. McCandlish
2Cold Spring Harbor Laboratory, Simons Center for Quantitative Biology,
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  • For correspondence: mccandlish@cshl.edu
Joshua B. Plotkin
3University of Pennsylvania, Biology Department,
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  • For correspondence: jplotkin@sas.upenn.edu
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Abstract

Genotype-phenotype relationships are notoriously complicated. Idiosyncratic interactions between specific combinations of mutations occur, and are difficult to predict. Yet it is increasingly clear that many interactions can be understood in terms of global epistasis. That is, mutations may act additively on some underlying, unobserved trait, and this trait is then transformed via a nonlinear function to the observed phenotype as a result of subsequent biophysical and cellular processes. Here we infer the shape of such global epistasis in three proteins, based on published high-throughput mutagenesis data. To do so, we develop a maximum-likelihood inference procedure using a flexible family of monotonic nonlinear functions spanned by an I-spline basis. Our analysis uncovers dramatic nonlinearities in all three proteins; in some proteins a model with global epistasis accounts for virtually all the measured variation, whereas in others we find substantial local epistasis as well. This method allows us to test hypotheses about the form of global epistasis and to distinguish variance components attributable to global epistasis, local epistasis, and measurement error.

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Posted March 08, 2018.
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Inferring the shape of global epistasis
Jakub Otwinowski, David M. McCandlish, Joshua B. Plotkin
bioRxiv 278630; doi: https://doi.org/10.1101/278630
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Inferring the shape of global epistasis
Jakub Otwinowski, David M. McCandlish, Joshua B. Plotkin
bioRxiv 278630; doi: https://doi.org/10.1101/278630

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