Serial Analysis of Circulating Tumor Cells in Metastatic Breast Cancer Receiving First-Line Chemotherapy

Mark Jesus M. Magbanua(University of California, San Francisco), Laura H. Hendrix(Duke University), Terry Hyslop(Duke University), William T. Barry(CancerCare), Eric P. Winer(CancerCare), Clifford A. Hudis(Memorial Sloan Kettering Cancer Center), Deborah Toppmeyer(Rutgers, The State University of New Jersey), Lisa A. Carey(UNC Lineberger Comprehensive Cancer Center), Ann H. Partridge(CancerCare), Jean‐Yves Pierga(Université Paris Sciences et Lettres), Tanja Fehm(Heinrich Heine University Düsseldorf), José Vidal-Martínez(Hospital Arnau de Vilanova), Dimitriοs Mavroudis(University of Crete), José Á. García-Sáenz(Centro de Investigación Biomédica en Red de Cáncer), Justin Stebbing(Imperial College London), Paola Gazzaniga(Sapienza University of Rome), Luís Manso(Research Institute Hospital 12 de Octubre), Rita Zamarchi(Istituto Oncologico Veneto), María Luisa Antelo(Complejo Hospitalario de Navarra), Leticia De Mattos‐Arruda(Universitat Autònoma de Barcelona), Daniele Generali(University of Trieste), Carlos Caldas(University of Cambridge), Elisabetta Munzone(Istituti di Ricovero e Cura a Carattere Scientifico), Luc Dirix(University of Antwerp), Amy L. Delson(University of California, San Francisco), Harold J. Burstein(CancerCare), Misbah Qadir(UNC Lineberger Comprehensive Cancer Center), X. Cynthia(Washington University in St. Louis), Janet H. Scott(University of California, San Francisco), François‐Clément Bidard(Université Paris Sciences et Lettres), John W. Park(University of California, San Francisco), Hope S. Rugo(University of California, San Francisco)
JNCI Journal of the National Cancer Institute
August 4, 2020
Cited by 48Open Access
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Abstract

BACKGROUND: We examined the prognostic significance of circulating tumor cell (CTC) dynamics during treatment in metastatic breast cancer (MBC) patients receiving first-line chemotherapy. METHODS: Serial CTC data from 469 patients (2202 samples) were used to build a novel latent mixture model to identify groups with similar CTC trajectory (tCTC) patterns during the course of treatment. Cox regression was used to estimate hazard ratios for progression-free survival (PFS) and overall survival (OS) in groups based on baseline CTCs, combined CTC status at baseline to the end of cycle 1, and tCTC. Akaike information criterion was used to select the model that best predicted PFS and OS. RESULTS: Latent mixture modeling revealed 4 distinct tCTC patterns: undetectable CTCs (56.9% ), low (23.7%), intermediate (14.5%), or high (4.9%). Patients with low, intermediate, and high tCTC patterns had statistically significant inferior PFS and OS compared with those with undetectable CTCs (P < .001). Akaike Information Criterion indicated that the tCTC model best predicted PFS and OS compared with baseline CTCs and combined CTC status at baseline to the end of cycle 1 models. Validation studies in an independent cohort of 1856 MBC patients confirmed these findings. Further validation using only a single pretreatment CTC measurement confirmed prognostic performance of the tCTC model. CONCLUSIONS: We identified 4 novel prognostic groups in MBC based on similarities in tCTC patterns during chemotherapy. Prognostic groups included patients with very poor outcome (intermediate + high CTCs, 19.4%) who could benefit from more effective treatment. Our novel prognostic classification approach may be used for fine-tuning of CTC-based risk stratification strategies to guide future prospective clinical trials in MBC.


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