Machine-learning of complex evolutionary signals improves classification of SNVs

Author:

Labes Sapir1ORCID,Stupp Doron1ORCID,Wagner Naama2,Bloch Idit1,Lotem Michal3,L. Lahad Ephrat45,Polak Paz6ORCID,Pupko Tal2ORCID,Tabach Yuval1ORCID

Affiliation:

1. Department of Developmental Biology and Cancer Research, Institute for Medical Research Israel-Canada, Faculty of Medicine, and Hadassah University Medical School, The Hebrew University of Jerusalem, Jerusalem9112001, Israel

2. The Shmunis School of Biomedicine and Cancer Research, George S. Wise Faculty of Life Sciences, Tel Aviv University, Tel Aviv 6997801, Israel

3. Sharett Institute of Oncology, Hadassah University Medical Center, The Hebrew University of Jerusalem, Jerusalem9112001, Israel

4. Medical Genetics Institute, Shaare Zedek Medical Center, Jerusalem9103102, Israel

5. Faculty of Medicine, The Hebrew University of Jerusalem, Jerusalem9112001, Israel

6. Oncological Sciences, Icahn School of Medicine at Mount Sinai, NY10029, USA

Abstract

Abstract Conservation is a strong predictor for the pathogenicity of single-nucleotide variants (SNVs). However, some positions that present complex conservation patterns across vertebrates stray from this paradigm. Here, we analyzed the association between complex conservation patterns and the pathogenicity of SNVs in the 115 disease-genes that had sufficient variant data. We show that conservation is not a one-rule-fits-all solution since its accuracy highly depends on the analyzed set of species and genes. For example, pairwise comparisons between the human and 99 vertebrate species showed that species differ in their ability to predict the clinical outcomes of variants among different genes using conservation. Furthermore, certain genes were less amenable for conservation-based variant prediction, while others demonstrated species that optimize prediction. These insights led to developing EvoDiagnostics, which uses the conservation against each species as a feature within a random-forest machine-learning classification algorithm. EvoDiagnostics outperformed traditional conservation algorithms, deep-learning based methods and most ensemble tools in every prediction-task, highlighting the strength of optimizing conservation analysis per-species and per-gene. Overall, we suggest a new and a more biologically relevant approach for analyzing conservation, which improves prediction of variant pathogenicity.

Funder

Israel Innovation Authority

Israel Science Foundation

The Alex U Soyka Pancreatic Cancer Research Project

Tel Aviv University

Ariane de Rothschild Woman Doctoral Program

Publisher

Oxford University Press (OUP)

Subject

General Medicine

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