| Literature DB >> 35953549 |
Aayushi Mittal1, Sanjay Kumar Mohanty1, Vishakha Gautam1, Sakshi Arora1, Sheetanshu Saproo2, Ria Gupta1, Roshan Sivakumar1, Prakriti Garg1, Anmol Aggarwal1, Padmasini Raghavachary1, Nilesh Kumar Dixit1, Vijay Pal Singh3, Anurag Mehta4, Juhi Tayal4, Srivatsava Naidu2, Debarka Sengupta5, Gaurav Ahuja6.
Abstract
The genome of a eukaryotic cell is often vulnerable to both intrinsic and extrinsic threats owing to its constant exposure to a myriad of heterogeneous compounds. Despite the availability of innate DNA damage responses, some genomic lesions trigger malignant transformation of cells. Accurate prediction of carcinogens is an ever-challenging task owing to the limited information about bona fide (non-)carcinogens. We developed Metabokiller, an ensemble classifier that accurately recognizes carcinogens by quantitatively assessing their electrophilicity, their potential to induce proliferation, oxidative stress, genomic instability, epigenome alterations, and anti-apoptotic response. Concomitant with the carcinogenicity prediction, Metabokiller is fully interpretable and outperforms existing best-practice methods for carcinogenicity prediction. Metabokiller unraveled potential carcinogenic human metabolites. To cross-validate Metabokiller predictions, we performed multiple functional assays using Saccharomyces cerevisiae and human cells with two Metabokiller-flagged human metabolites, namely 4-nitrocatechol and 3,4-dihydroxyphenylacetic acid, and observed high synergy between Metabokiller predictions and experimental validations.Entities:
Year: 2022 PMID: 35953549 DOI: 10.1038/s41589-022-01110-7
Source DB: PubMed Journal: Nat Chem Biol ISSN: 1552-4450 Impact factor: 16.174