| Literature DB >> 33578729 |
Kelechi Njoku1,2,3, Amy E Campbell3, Bethany Geary3, Michelle L MacKintosh1,2, Abigail E Derbyshire1,2, Sarah J Kitson1,2, Vanitha N Sivalingam1,2, Andrew Pierce4, Anthony D Whetton3,4, Emma J Crosbie1,2.
Abstract
Endometrial cancer is the most common malignancy of the female genital tract and a major cause of morbidity and mortality in women. Early detection is key to ensuring good outcomes but a lack of minimally invasive screening tools is a significant barrier. Most endometrial cancers are obesity-driven and develop in the context of severe metabolomic dysfunction. Blood-derived metabolites may therefore provide clinically relevant biomarkers for endometrial cancer detection. In this study, we analysed plasma samples of women with body mass index (BMI) ≥30kg/m2 and endometrioid endometrial cancer (cases, n = 67) or histologically normal endometrium (controls, n = 69), using a mass spectrometry-based metabolomics approach. Eighty percent of the samples were randomly selected to serve as a training set and the remaining 20% were used to qualify test performance. Robust predictive models (AUC > 0.9) for endometrial cancer detection based on artificial intelligence algorithms were developed and validated. Phospholipids were of significance as biomarkers of endometrial cancer, with sphingolipids (sphingomyelins) discriminatory in post-menopausal women. An algorithm combining the top ten performing metabolites showed 92.6% prediction accuracy (AUC of 0.95) for endometrial cancer detection. These results suggest that a simple blood test could enable the early detection of endometrial cancer and provide the basis for a minimally invasive screening tool for women with a BMI ≥ 30 kg/m2.Entities:
Keywords: artificial intelligence; endometrial cancer; liquid biopsy; mass spectrometry; metabolomics; obesity; plasma biomarkers
Year: 2021 PMID: 33578729 PMCID: PMC7916512 DOI: 10.3390/cancers13040718
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.575