Hungarian Brain Research Program(2017-1.2.1-NKP-2017-00002) Funder: NRDIO
Purpose: Homologous recombination (HR) deficiency (HRD) is one of the key determinants
of PARP inhibitor response in ovarian cancer, and its accurate detection in tumor
biopsies is expected to improve the efficacy of this therapy. Because HRD induces
a wide array of genomic aberrations, mutational signatures may serve as a companion
diagnostic to identify PARP inhibitor-responsive cases. Experimental Design: From
the The Cancer Genome Atlas (TCGA) whole-exome sequencing (WES) data, we extracted
different types of mutational signature-based HRD measures, such as the HRD score,
genome-wide LOH, and HRDetect trained on ovarian and breast cancer-specific sequencing
data. We compared their performance to identify BRCA1/2-deficient cases in the TCGA
ovarian cancer cohort and predict survival benefit in platinum-treated, BRCA1/2 wild-type
ovarian cancer. Results: We found that the HRD score, which is based on large chromosomal
alterations alone, performed similarly well to an ovarian cancer-specific HRDetect,
which incorporates mutations on a finer scale as well (AUC = 0.823 vs. AUC = 0.837).
In an independent cohort these two methods were equally accurate predicting long-
term survival after platinum treatment (AUC = 0.787 vs. AUC = 0.823). We also found
that HRDetect trained on ovarian cancer was more accurate than HRDetect trained on
breast cancer data (AUC = 0.837 vs. AUC = 0.795; P = 0.0072). Conclusions: When WES
data are available, methods that quantify only large chromosomal alterations such
as the HRD score and HRDetect that captures a wider array of HRD-induced genomic aberrations
are equally efficient identifying HRD ovarian cancer cases.