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.
CITATION STYLE
Gupta, A., Sagar, G., Siddiqui, Z., Rao, K. V. S., Nayak, S., Saquib, N., & Anand, R. (2022). A non-invasive method for concurrent detection of early-stage women-specific cancers. Scientific Reports, 12(1). https://doi.org/10.1038/s41598-022-06274-9
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