Artificial intelligence uncovers carcinogenic human metabolites.
Aayushi MittalSanjay Kumar MohantyVishakha GautamSakshi AroraSheetanshu SaprooRia GuptaRoshan SivakumarPrakriti GargAnmol AggarwalPadmasini RaghavacharyNilesh Kumar DixitVijay Pal SinghAnurag MehtaJuhi TayalSrivatsava NaiduDebarka SenguptaGaurav AhujaPublished in: Nature chemical biology (2022)
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.
Keyphrases
- artificial intelligence
- endothelial cells
- dna damage
- oxidative stress
- ms ms
- saccharomyces cerevisiae
- induced pluripotent stem cells
- induced apoptosis
- immune response
- machine learning
- healthcare
- primary care
- dna methylation
- big data
- single cell
- deep learning
- risk assessment
- gene expression
- stem cells
- human health
- health information
- endoplasmic reticulum stress
- diabetic rats