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Optimized detection of allelic imbalances specific for homologous recombination deficiency improves the prediction of clinical outcomes in cancer

Authors :
Fernando Perez-Villatoro
Jaana Oikkonen
Julia Casado
Anastasiya Chernenko
Doga C. Gulhan
Manuela Tumiati
Yilin Li
Kari Lavikka
Sakari Hietanen
Johanna Hynninen
Ulla-Maija Haltia
Jaakko S. Tyrmi
Hannele Laivuori
Panagiotis A. Konstantinopoulos
Sampsa Hautaniemi
Liisa Kauppi
Anniina Färkkilä
Publication Year :
2021
Publisher :
Cold Spring Harbor Laboratory, 2021.

Abstract

Homologous recombination DNA-repair deficiency (HRD) is a common driver of genomic instability and confers a therapeutic vulnerability in cancer. The accurate detection of somatic allelic imbalances (AIs) has been limited by methods focused onBRCA1/2mutations and using mixtures of cancer types. Using pan-cancer data, we revealed distinct patterns of AIs in high-grade serous ovarian cancer (HGSC). We used machine learning and statistics to generate improved criteria to identify HRD in HGSC (ovaHRDscar). ovaHRDscar significantly predicted clinical outcomes in three independent patient cohorts with higher precision than previous methods. Characterization of 98 spatiotemporally distinct metastatic samples revealed low intra-patient variation and indicated the primary tumor as the preferred site for clinical sampling in HGSC. Further, our approach improved the prediction of clinical outcomes in triple-negative breast cancer (tnbcHRDscar), validated in two independent patient cohorts. In conclusion, our tumor-specific, systematic approach has the potential to improve patient selection for HR-targeted therapies.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........e1cd54f7cea89a7e02467a78e3f77af8