Machine Learning Techniques for Classifying the Mutagenic Origins of Point Mutations

Author:

Zhu Yicheng1,Ong Cheng Soon23,Huttley Gavin A1

Affiliation:

1. Research School of Biology, The Australian National University, Canberra, Australian Capital Territory 2601, Australia

2. Data61, CSIRO, Black Mountain Campus, Canberra, Australian Capital Territory 2601, Australia

3. Research School of Computer Science, The Australian National University, Canberra, Australian Capital Territory 2601, Australia

Abstract

Abstract Mutations contribute significantly to developing diversity in biological capabilities. Mutagenesis is an adaptive feature of normal development, e.g. generating diversity in immune cells... There is increasing interest in developing diagnostics that discriminate individual mutagenic mechanisms in a range of applications that include identifying population-specific mutagenesis and resolving distinct mutation signatures in cancer samples. Analyses for these applications assume that mutagenic mechanisms have a distinct relationship with neighboring bases that allows them to be distinguished. Direct support for this assumption is limited to a small number of simple cases, e.g., CpG hypermutability. We have evaluated whether the mechanistic origin of a point mutation can be resolved using only sequence context for a more complicated case. We contrasted single nucleotide variants originating from the multitude of mutagenic processes that normally operate in the mouse germline with those induced by the potent mutagen N-ethyl-N-nitrosourea (ENU). The considerable overlap in the mutation spectra of these two samples make this a challenging problem. Employing a new, robust log-linear modeling method, we demonstrate that neighboring bases contain information regarding point mutation direction that differs between the ENU-induced and spontaneous mutation variant classes. A logistic regression classifier exhibited strong performance at discriminating between the different mutation classes. Concordance between the feature set of the best classifier and information content analyses suggest our results can be generalized to other mutation classification problems. We conclude that machine learning can be used to build a practical classification tool to identify the mutation mechanism for individual genetic variants. Software implementing our approach is freely available under an open-source license.

Publisher

Oxford University Press (OUP)

Subject

Genetics

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