Toward Identification of Functional Sequences and Variants in Noncoding DNA

Posted: 12 Sep 2023

See all articles by Remo Monti

Remo Monti

Humboldt University of Berlin - Department of Biology; University of Potsdam

Uwe Ohler

Humboldt Universität zu Berlin - Department of Biology

Date Written: August 1, 2023

Abstract

Understanding the noncoding part of the genome, which encodes gene regulation, is necessary to identify genetic mechanisms of disease and translate findings from genome-wide association studies into actionable results for treatments and personalized care. Here we provide an overview of the computational analysis of noncoding regions, starting from gene-regulatory mechanisms and their representation in data. Deep learning methods, when applied to these data, highlight important regulatory sequence elements and predict the functional effects of genetic variants. These and other algorithms are used to predict damaging sequence variants. Finally, we introduce rare-variant association tests that incorporate functional annotations and predictions in order to increase interpretability and statistical power.

Suggested Citation

Monti, Remo and Ohler, Uwe, Toward Identification of Functional Sequences and Variants in Noncoding DNA (August 1, 2023). Annual Review of Biomedical Data Science, Vol. 6, pp. 191-210, 2023, Available at SSRN: https://ssrn.com/abstract=4556813 or http://dx.doi.org/10.1146/annurev-biodatasci-122120-110102

Remo Monti

Humboldt University of Berlin - Department of Biology

University of Potsdam

August-Bebel Strasse 89
Potsdam, 14482
Germany

Uwe Ohler (Contact Author)

Humboldt Universität zu Berlin - Department of Biology ( email )

Germany

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