Nucleosome footprinting in plasma cell-free DNA for the pre-surgical diagnosis of ovarian cancer

Author:

Vanderstichele AdriaanORCID,Busschaert Pieter,Landolfo Chiara,Olbrecht Siel,Coosemans AnORCID,Froyman Wouter,Loverix Liselore,Concin Nicole,Braicu Elena Ioana,Wimberger Pauline,Van Nieuwenhuysen Els,Han Sileny N.,Van Gorp ToonORCID,Venken TomORCID,Heremans Ruben,Neven Patrick,Bourne TomORCID,Van Calster Ben,Timmerman Dirk,Lambrechts DietherORCID,Vergote Ignace

Abstract

AbstractFragmentation patterns of plasma cell-free DNA (cfDNA) are known to reflect nucleosome positions of cell types contributing to cfDNA. Based on cfDNA fragmentation patterns, the deviation in nucleosome footprints was quantified between diagnosed ovarian cancer patients and healthy individuals. Multinomial modeling was subsequently applied to capture these deviations in a per sample nucleosome footprint score. Validation was performed in 271 cfDNAs pre-surgically collected from women with an adnexal mass. We confirmed that nucleosome scores were elevated in invasive carcinoma patients, but not in patients with benign or borderline disease. Combining nucleosome scores with chromosomal instability scores assessed in the same cfDNA improved prediction of malignancy. Nucleosome scores were, however, more reliable to predict non-high-grade serous ovarian tumors, which are characterized by low chromosomal instability. These data highlight that compared to chromosomal instability, nucleosome footprinting provides a complementary and more generic read-out for pre-surgical diagnosis of invasive disease in women with adnexal masses.

Publisher

Springer Science and Business Media LLC

Subject

Genetics (clinical),Genetics,Molecular Biology

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