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MicroRNome analysis generates a blood-based signature for endometriosis

Sofiane Bendifallah, Yohann Dabi, Stéphane Suisse, Ludmila Jornéa, Delphine Bouteiller, Cyril Touboul, Anne Puchar, Émile Daraï

2022Scientific Reports57 citationsDOIOpen Access PDF

Abstract

Endometriosis, characterized by endometrial-like tissue outside the uterus, is thought to affect 2-10% of women of reproductive age: representing about 190 million women worldwide. Numerous studies have evaluated the diagnostic value of blood biomarkers but with disappointing results. Thus, the gold standard for diagnosing endometriosis remains laparoscopy. We performed a prospective trial, the ENDO-miRNA study, using both Artificial Intelligence (AI) and Machine Learning (ML), to analyze the current human miRNome to differentiate between patients with and without endometriosis, and to develop a blood-based microRNA (miRNA) diagnostic signature for endometriosis. Here, we present the first blood-based diagnostic signature obtained from a combination of two robust and disruptive technologies merging the intrinsic quality of miRNAs to condense the endometriosis phenotype (and its heterogeneity) with the modeling power of AI. The most accurate signature provides a sensitivity, specificity, and Area Under the Curve (AUC) of 96.8%, 100%, and 98.4%, respectively, and is sufficiently robust and reproducible to replace the gold standard of diagnostic surgery. Such a diagnostic approach for this debilitating disorder could impact recommendations from national and international learned societies.

Topics & Concepts

EndometriosisGold standard (test)MedicineDiagnostic accuracyGynecologyBioinformaticsOncologyInternal medicineBiologyEndometriosis Research and TreatmentEndometrial and Cervical Cancer TreatmentsReproductive System and Pregnancy
MicroRNome analysis generates a blood-based signature for endometriosis | Litcius