Ovarian cancer (OC) is the fifth leading cause of cancer-related deaths among women. Most patients are diagnosed at late-stage (III/IV), resulting in a five-year survival rate below 30%. This is driven by the presentation of vague abdominal symptoms (VAS) that confound diagnosis at early stages (I/II) and a shortage of robust biomarkers. We are taking a novel approach for earlier OC detection, leveraging lipids as biomarkers. We utilized untargeted UHPLC-MS to analyze sera from two large, independent cohorts (N=433, N=399) designed to reflect the symptomatic population, including: individuals with benign adnexal masses, early- and late-stage OC, gastrointestinal disorders, and otherwise healthy women seeking care for symptoms. We identified a significantly altered lipid profile in OC and early-stage OC specifically across both cohorts, compared with controls. We also profiled select protein biomarkers (CA125, HE4, FOLR1, MUC1) and, utilizing machine learning-based modeling, identified a proof-of-concept multi-omic model consisting of less than 20 top-performing lipid and protein features. This model was trained on Cohort 1 and tested on Cohort 2, achieving AUCs of 92% (95% CI: 87-95%) for distinguishing OC from controls and 88% (95% CI: 83-93%) for distinguishing early-stage OC from controls. These findings demonstrate the clinical utility and robustness of lipids as proof-of-concept diagnostic biomarkers for early OC within the clinically complex symptomatic population, particularly when applied in a multi-omic approach.
Giles et al. (Wed,) studied this question.