Litcius/Paper detail

Integration of deep learning with Ramachandran plot molecular dynamics simulation for genetic variant classification

Benjamin Tam, Zixin Qin, Bojin Zhao, San Ming Wang, Chon Lok Lei

2023iScience17 citationsDOIOpen Access PDF

Abstract

Functional classification of genetic variants is a key for their clinical applications in patient care. However, abundant variant data generated by the next-generation DNA sequencing technologies limit the use of experimental methods for their classification. Here, we developed a protein structure and deep learning (DL)-based system for genetic variant classification, DL-RP-MDS, which comprises two principles: 1) Extracting protein structural and thermodynamics information using the Ramachandran plot-molecular dynamics simulation (RP-MDS) method, 2) combining those data with an unsupervised learning model of auto-encoder and a neural network classifier to identify the statistical significance patterns of the structural changes. We observed that DL-RP-MDS provided higher specificity than over 20 widely used in silico methods in classifying the variants of three DNA damage repair genes: TP53 , MLH1 , and MSH2 . DL-RP-MDS offers a powerful platform for high-throughput genetic variant classification. The software and online application are available at https://genemutation.fhs.um.edu.mo/DL-RP-MDS/.

Topics & Concepts

Ramachandran plotArtificial intelligenceComputer scienceDeep learningPreprocessorClassifier (UML)Artificial neural networkComputational biologyMachine learningPattern recognition (psychology)BiologyProtein structureBiochemistryGenomics and Phylogenetic StudiesGenetics, Bioinformatics, and Biomedical ResearchGene expression and cancer classification