Litcius/Paper detail

A non-invasive method for concurrent detection of early-stage women-specific cancers

Ankur Gupta, Ganga Sagar, Zaved Siddiqui, Kanury V. S. Rao, Sujata Nayak, Najmuddin Saquib, Rajat Anand

2022Scientific Reports21 citationsDOIOpen Access PDF

Abstract

We integrated untargeted serum metabolomics using high-resolution mass spectrometry with data analysis using machine learning algorithms to accurately detect early stages of the women specific cancers of breast, endometrium, cervix, and ovary across diverse age-groups and ethnicities. A two-step approach was employed wherein cancer-positive samples were first identified as a group. A second multi-class algorithm then helped to distinguish between the individual cancers of the group. The approach yielded high detection sensitivity and specificity, highlighting its utility for the development of multi-cancer detection tests especially for early-stage cancers.

Topics & Concepts

Stage (stratigraphy)Computer scienceOncologyMedicineBioinformaticsInternal medicineBiologyPaleontologyCancer Genomics and DiagnosticsOvarian cancer diagnosis and treatmentGene expression and cancer classification