Uterine Cavity Lavage Mutation Analysis in Lithuanian Ovarian Cancer Patients

Author:

Žilovič Diana123,Vaicekauskaitė Ieva14ORCID,Čiurlienė Rūta3,Sabaliauskaitė Rasa4ORCID,Jarmalaitė Sonata15

Affiliation:

1. Institute of Biosciences, Vilnius University, Sauletekio Avenue 7, LT-10222 Vilnius, Lithuania

2. Laboratory of Clinical Oncology, National Cancer Institute, Santariškių 1, LT-08406 Vilnius, Lithuania

3. Oncogynaecology Department, National Cancer Institute, Santariškių 1, LT-08406 Vilnius, Lithuania

4. Laboratory of Genetic Diagnostic, National Cancer Institute, Santariškių 1, LT-08406 Vilnius, Lithuania

5. National Cancer Institute, Santariškių 1, LT-08406 Vilnius, Lithuania

Abstract

Background: Type II ovarian cancer (OC) is generally diagnosed at an advanced stage, translating into a poor survival rate. Current screening methods for OC have failed to demonstrate a reduction in mortality. The uterine lavage technique has been used to detect tumor-specific TP53 mutations from cells presumably shed from high-grade serous ovarian cancer (HGSOC). We aimed to pilot whether the detection of TP53 mutation in uterine cavity lavage can be used as a diagnostic method for HGSOC using an expanded gene panel. Methods: In this study 90, uterine lavage and 46 paired biopsy samples were analyzed using next-generation sequencing (NGS) targeting TP53 as well as five additional OC-related genes: BRCA1, BRCA2, PI3KCA, PTEN, and KRAS. Results: Uterine lavage was successfully applied to all patients, and 56 mutations were detected overall. TP53 mutations were detected in 27% (10/37) of cases of type HGSOC; BRCA1 and BRCA2 mutations were also frequent in this group (46%; 17/37). Overall concordance between tissue and liquid biopsy samples was 65.2%. Conclusion: Uterine lavage TP53 mutations in combination with other biomarkers could be a useful tool for the detection of lowly invasive HGSOC.

Funder

Lithuanian National Cancer Institute Research Fund

Publisher

MDPI AG

Subject

Cancer Research,Oncology

Reference25 articles.

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