Prediction of survival rate and effect of drugs on cancer patients with somatic mutations of genes: an AI-based approach

TitlePrediction of survival rate and effect of drugs on cancer patients with somatic mutations of genes: an AI-based approach
Publication TypeJournal Article
Year of Publication2020
AuthorsSaurabh, R, Nandi, S, Sinha, N, Shukla, M, Sarkar, RRup
JournalChemical Biology & Drug Design
Volume96
Issue3
Pagination1005-1019
Date PublishedSEP
Type of ArticleArticle
ISSN1747-0277
Keywordsgene expression and copy number variation, gliomas, grade and survival prediction, machine learning strategy, significant gene prediction and effect of drugs, somatic mutation
Abstract

The causal role of somatic mutation and its interrelationship with gene expression profile during tumor development has already been observed, which plays a major role to decide the cancer grades and overall survival. Accurate and robust prediction of tumor grades and patients' overall survival are important for prognosis, risk factors identification and betterment of the treatment strategy, especially for highly lethal tumors, like gliomas. Here, with the help of more accurate and widely used machine learning-based approaches, we propose an integrative computational pipeline that incorporates somatic mutations and gene expression profile for survival and grade prediction of glioma patients and simultaneously relates it to the drugs to be administered. This study gives us a clear understanding that the same drug is not effective for the treatment of same grade of cancer if the gene mutations are different. The alteration in a specific gene plays a very important role in tumor progression and should also be considered for the selection of appropriate drugs. This proposed framework includes all the necessary factors required for enhancement of therapeutic designs and could be useful for clinicians in determining an accurate and personalized treatment strategy for individual patients suffering from different life threatening diseases.

DOI10.1111/cbdd.13668
Type of Journal (Indian or Foreign)

Foreign

Impact Factor (IF)

2.548

Divison category: 
Chemical Engineering & Process Development

Add new comment