Circulating tumor DNA reveals complex biological features with clinical relevance in metastatic breast cancer
Author
Date
2023-03-01Permanent link
https://hdl.handle.net/11351/9986DOI
10.1038/s41467-023-36801-9
ISSN
2041-1723
WOS
000980806000013
PMID
36859416
Abstract
Liquid biopsy has proven valuable in identifying individual genetic alterations; however, the ability of plasma ctDNA to capture complex tumor phenotypes with clinical value is unknown. To address this question, we have performed 0.5X shallow whole-genome sequencing in plasma from 459 patients with metastatic breast cancer, including 245 patients treated with endocrine therapy and a CDK4/6 inhibitor (ET + CDK4/6i) from 2 independent cohorts. We demonstrate that machine learning multi-gene signatures, obtained from ctDNA, identify complex biological features, including measures of tumor proliferation and estrogen receptor signaling, similar to what is accomplished using direct tumor tissue DNA or RNA profiling. More importantly, 4 DNA-based subtypes, and a ctDNA-based genomic signature tracking retinoblastoma loss-of-heterozygosity, are significantly associated with poor response and survival outcome following ET + CDK4/6i, independently of plasma tumor fraction. Our approach opens opportunities for the discovery of additional multi-feature genomic predictors coming from ctDNA in breast cancer and other cancer-types.
Keywords
Cancer; Predictive markersBibliographic citation
Prat A, Brasó-Maristany F, Martínez-Sáez O, Sanfeliu E, Xia Y, Bellet M, et al. Circulating tumor DNA reveals complex biological features with clinical relevance in metastatic breast cancer. Nat Commun. 2023 Mar 1;14:1157.
Audience
Professionals
This item appears in following collections
- HVH - Articles científics [4471]
- VHIO - Articles científics [1250]
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