Diagnostic potential for a serum miRNA neural network for detection of ovarian cancer

Kevin M. Elias(Boston University), Wojciech Fendler(Boston University), Konrad Stawiski(Medical University of Lodz), Stephen Fiascone(Boston University), Allison F. Vitonis(Boston University), Ross S. Berkowitz(Boston University), György Frendl(Boston University), Panagiotis A. Konstantinopoulos(Boston University), Christopher P. Crum(Boston University), Magdalena Kędzierska(Medical University of Lodz), Daniel W. Cramer(Boston University), Dipanjan Chowdhury(Boston University)
eLife
October 30, 2017
Cited by 146Open Access
Full Text

Abstract

Recent studies posit a role for non-coding RNAs in epithelial ovarian cancer (EOC). Combining small RNA sequencing from 179 human serum samples with a neural network analysis produced a miRNA algorithm for diagnosis of EOC (AUC 0.90; 95% CI: 0.81-0.99). The model significantly outperformed CA125 and functioned well regardless of patient age, histology, or stage. Among 454 patients with various diagnoses, the miRNA neural network had 100% specificity for ovarian cancer. After using 325 samples to adapt the neural network to qPCR measurements, the model was validated using 51 independent clinical samples, with a positive predictive value of 91.3% (95% CI: 73.3-97.6%) and negative predictive value of 78.6% (95% CI: 64.2-88.2%). Finally, biologic relevance was tested using in situ hybridization on 30 pre-metastatic lesions, showing intratumoral concentration of relevant miRNAs. These data suggest circulating miRNAs have potential to develop a non-invasive diagnostic test for ovarian cancer.


Related Papers

No related papers found

Powered by citation graph analysis