Abstract

Simple SummaryCancer is caused by the accumulation of somatic mutations, some of which are responsible for the disease’s progression (drivers) while others are functionally neutral (passengers). Although several methods have been developed to distinguish between the two classes of mutations, very few have concentrated on using the neighborhood nucleotide sequences as potential discrimination features. In this study, we show that driver mutations’ neighborhood is significantly different from that of passengers. We further develop a novel machine learning tool, NBDriver, which is highly efficient at identifying pathogenic variants from multiple independent test datasets. Efficient and accurate identification of novel pathogenic variants from sequenced cancer genomes would help facilitate more effective therapies tailored to patients’ mutational profiles.Identifying cancer-causing mutations from sequenced cancer genomes hold much promise for targeted therapy and precision medicine. “Driver” mutations are primarily responsible for cancer progression, while “passengers” are functionally neutral. Although several computational approaches have been developed for distinguishing between driver and passenger mutations, very few have concentrated on using the raw nucleotide sequences surrounding a particular mutation as potential features for building predictive models. Using experimentally validated cancer mutation data in this study, we explored various string-based feature representation techniques to incorporate information on the neighborhood bases immediately 5′ and 3′ from each mutated position. Density estimation methods showed significant distributional differences between the neighborhood bases surrounding driver and passenger mutations. Binary classification models derived using repeated cross-validation experiments provided comparable performances across all window sizes. Integrating sequence features derived from raw nucleotide sequences with other genomic, structural, and evolutionary features resulted in the development of a pan-cancer mutation effect prediction tool, NBDriver, which was highly efficient in identifying pathogenic variants from five independent validation datasets. An ensemble predictor obtained by combining the predictions from NBDriver with three other commonly used driver prediction tools (FATHMM (cancer), CONDEL, and MutationTaster) significantly outperformed existing pan-cancer models in prioritizing a literature-curated list of driver and passenger mutations. Using the list of true positive mutation predictions derived from NBDriver, we identified a list of 138 known driver genes with functional evidence from various sources. Overall, our study underscores the efficacy of using raw nucleotide sequences as features to distinguish between driver and passenger mutations from sequenced cancer genomes.

Highlights

  • Cancer is caused due to the accumulation of somatic mutations during an individual’s lifetime [1]

  • DNA replication or exogenous factors such as substantial exposure to mutagens such as tobacco smoking, UV light, and radon gas [2,3,4]. These somatic mutations can be of different types, ranging from single-nucleotide variants (SNVs) to insertions and deletions of a few nucleotides, copy-number aberrations (CNAs), and large-scale rearrangements known as structural variants (SVs) [5]

  • Using missense mutation data with experimentally validated functional impacts compiled from various studies, we show that the underlying probability distributions of driver and passenger mutations’ neighborhoods are significantly different from one another

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Summary

Introduction

Cancer is caused due to the accumulation of somatic mutations during an individual’s lifetime [1]. DNA replication or exogenous factors such as substantial exposure to mutagens such as tobacco smoking, UV light, and radon gas [2,3,4] These somatic mutations can be of different types, ranging from single-nucleotide variants (SNVs) to insertions and deletions of a few nucleotides, copy-number aberrations (CNAs), and large-scale rearrangements known as structural variants (SVs) [5]. Several open-access resources to analyze and visualize large cancer genomics datasets, such as the cBio Cancer Genomics Portal [9] and the Database of Curated Mutations in cancer (DoCM) [10], have been developed These resources aggregate functionally relevant cancer variants from different studies and help researchers gain easy access to expert-curated lists of pathogenic somatic variants

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