Modeling the Prognostic Impact of Circulating Tumor Cells Enumeration in Metastatic Breast Cancer for Clinical Trial Design Simulation

Author:

Gerratana Lorenzo1ORCID,Pierga Jean-Yves2,Reuben James M3,Davis Andrew A45,Wehbe Firas H4,Dirix Luc6,Fehm Tanja7,Nolé Franco8,Gisbert-Criado Rafael9,Mavroudis Dimitrios1011,Grisanti Salvatore12,Garcia-Saenz Jose A13,Stebbing Justin14ORCID,Caldas Carlos15ORCID,Gazzaniga Paola16,Manso Luis17,Zamarchi Rita18ORCID,Bonotto Marta19,Fernandez de Lascoiti Angela20,De Mattos-Arruda Leticia21ORCID,Ignatiadis Michail22,Sandri Maria-Teresa23,Generali Daniele2425,De Angelis Carmine2627,Dawson Sarah-Jane28ORCID,Janni Wolfgang29,Carañana Vicente30,Riethdorf Sabine31,Solomayer Erich-Franz32,Puglisi Fabio133ORCID,Giuliano Mario26ORCID,Pantel Klaus31,Bidard François-Clément2ORCID,Cristofanilli Massimo434ORCID

Affiliation:

1. Department of Medical Oncology, Centro di Riferimento Oncologico (CRO), IRCCS , Aviano (PN) , Italy

2. Department of Medical Oncology, Institut Curie, Paris & Saint-Cloud, Paris University , Paris , France

3. Department of Hematopathology, The University of Texas MD Anderson Cancer Center , Houston, TX , USA

4. Division of Hematology and Oncology, Department of Medicine, Northwestern University Feinberg School of Medicine , Chicago, IL , USA

5. Department of Medicine, Division of Oncology, Washington University School of Medicine in St. Louis , MO , USA

6. Translational Cancer Research Unit, GZA Hospitals Sint-Augustinus , Antwerp , Belgium

7. Department of Gynecology and Obstetrics, Heinrich Heine University Düsseldorf , Düsseldorf , Germany

8. Medical Oncology Division of Urogenital and Head & Neck Tumours IEO, European Institute of Oncology IRCCS , Milan , Italy

9. Clinical Laboratory, Hospital Arnau de Vilanova , Valencia , Spain

10. Laboratory of Translational Oncology, School of Medicine, University of Crete , Heraklion , Greece

11. Department of Medical Oncology, University Hospital of Heraklion , Greece

12. epartment of Transfusion Medicine, Laboratory for Stem Cells Manipulation and Cryopreservation, AO Spedali Civili di Brescia , Brescia , Italy

13. Instituto de Investigación Sanitaria Hospital Clinico San Carlos (IdISSC), CIBERONC , Madrid , Spain

14. Division of Cancer, Department of Surgery and Cancer, Imperial College London , London , UK

15. Cancer Research UK Cambridge Institute and Department of Oncology Li Ka Shing Centre, University of Cambridge , Cambridge , UK

16. Department of Molecular Medicine, Sapienza University of Rome , Rome , Italy

17. Hospital 12 de Octubre , Madrid , Spain

18. Veneto Institute of Oncology IOV - IRCCS , Padua , Italy

19. Department of Oncology, ASUFC University Hospital , Udine , Italy

20. Hospital de Navarra , Pamplona , Spain

21. Val d’Hebron Institute of Oncology, Val d’Hebron University Hospital, and Universitat Autònoma de Barcelona , Barcelona , Spain

22. Department of Medical Oncology and Breast Cancer Translational Research Laboratory, Institut Jules Bordet, Université Libre de Bruxelles , Brussels , Belgium

23. Division of Laboratory Medicine, Humanitas Reseach Hospital, Rozzano , Milan , Italy

24. Women Cancer Center, Azienda Socio-Sanitaria Territoriale di Cremona , Cremona , Italy

25. University of Trieste , Trieste , Italy

26. Department of Clinical Medicine and Surgery, University Federico II , Naples , Italy

27. Lester and Sue Smith Breast Center, Baylor College of Medicine , Houston, TX , USA

28. Centre for Cancer Research and Sir Peter MacCallum Department of Oncology, The University of Melbourne, VIC , Australia

29. Frauenklinik, University of Ulm , Ulm , Germany

30. Clinical Oncology, Hospital Arnau de Vilanova , Valencia , Spain

31. Department of Tumor Biology, Center of Experimental Medicine, University Cancer Center Hamburg, University Medical Center Hamburg-Eppendorf , Hamburg , Germany

32. Saarland University , Homburg , Germany

33. Department of Medicine, University of Udine , Udine, UD , Italy

34. Department of Medicine, Division of Hematology-Oncology, Weill Cornell Medicine/New York-Presbyterian Hospital , New York, NY, USA

Abstract

Abstract Despite the strong prognostic stratification of circulating tumor cells (CTCs) enumeration in metastatic breast cancer (MBC), current clinical trials usually do not include a baseline CTCs in their design. This study aimed to generate a classifier for CTCs prognostic simulation in existing datasets for hypothesis generation in patients with MBC. A K-nearest neighbor machine learning algorithm was trained on a pooled dataset comprising 2436 individual MBC patients from the European Pooled Analysis Consortium and the MD Anderson Cancer Center to identify patients likely to have CTCs ≥ 5/7 mL blood (StageIVaggressive vs StageIVindolent). The model had a 65.1% accuracy and its prognostic impact resulted in a hazard ratio (HR) of 1.89 (Simulatedaggressive vs SimulatedindolentP < .001), similar to patients with actual CTCs enumeration (HR 2.76; P < .001). The classifier’s performance was then tested on an independent retrospective database comprising 446 consecutive hormone receptor (HR)-positive HER2-negative MBC patients. The model further stratified clinical subgroups usually considered prognostically homogeneous such as patients with bone-only or liver metastases. Bone-only disease classified as Simulatedaggressive had a significantly worse overall survival (OS; P < .0001), while patients with liver metastases classified as Simulatedindolent had a significantly better prognosis (P < .0001). Consistent results were observed for patients who had undergone CTCs enumeration in the pooled population. The differential prognostic impact of endocrine- (ET) and chemotherapy (CT) was explored across the simulated subgroups. No significant differences were observed between ET and CT in the overall population, both in terms of progression-free survival (PFS) and OS. In contrast, a statistically significant difference, favoring CT over ET was observed among Simulatedaggressive patients (HR: 0.62; P = .030 and HR: 0.60; P = .037, respectively, for PFS and OS).

Publisher

Oxford University Press (OUP)

Subject

Cancer Research,Oncology

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