A prediction model for response to immune checkpoint inhibition in advanced melanoma

Author:

van Duin Isabella A. J.1ORCID,Verheijden Rik J.1,van Diest Paul J.1ORCID,Blokx Willeke A. M.1,El‐Sharouni Mary‐Ann1,Verhoeff Joost J. C.1,Leiner Tim12,van den Eertwegh Alfonsus J. M.3,de Groot Jan Willem B.4,van Not Olivier J.15,Aarts Maureen J. B.6,van den Berkmortel Franchette W. P. J.7,Blank Christian U.8,Haanen John B. A. G.8,Hospers Geke A. P.9,Piersma Djura10,van Rijn Rozemarijn S.11,van der Veldt Astrid A. M.12,Vreugdenhil Gerard13,Wouters Michel W. J. M.51415,Stevense‐den Boer Marion A. M.16,Boers‐Sonderen Marye J.17,Kapiteijn Ellen18,Suijkerbuijk Karijn P. M.1,Elias Sjoerd G.19

Affiliation:

1. Department of Medical Oncology University Medical Center Utrecht, Utrecht University Utrecht The Netherlands

2. Department of Radiology Mayo Clinic Rochester Minnesota USA

3. Department of Medical Oncology Amsterdam UMC, VU University Medical Center, Cancer Center Amsterdam Amsterdam The Netherlands

4. Isala Oncology Center Zwolle The Netherlands

5. Scientific Bureau, Dutch Institute for Clinical Auditing Leiden The Netherlands

6. Department of Medical Oncology GROW‐School for Oncology and Reproduction, Maastricht University Medical Centre+ Maastricht The Netherlands

7. Department of Medical Oncology Zuyderland Medical Centre Sittard Sittard‐Geleen The Netherlands

8. Department of Molecular Oncology & Immunology Netherlands Cancer Institute Amsterdam The Netherlands

9. Department of Medical Oncology University Medical Centre Groningen, University of Groningen Groningen The Netherlands

10. Department of Internal Medicine Medisch Spectrum Twente Enschede The Netherlands

11. Department of Internal Medicine Medical Centre Leeuwarden Leeuwarden The Netherlands

12. Department of Medical Oncology and Radiology & Nuclear Medicine Erasmus Medical Centre Rotterdam The Netherlands

13. Department of Internal Medicine Maxima Medical Centre Eindhoven The Netherlands

14. Department of Biomedical Data Sciences Leiden University Medical Centre Leiden The Netherlands

15. Department of Surgical Oncology Netherlands Cancer Institute Amsterdam The Netherlands

16. Department of Internal Medicine Amphia Hospital Breda The Netherlands

17. Department of Medical Oncology Radboud University Medical Centre Nijmegen The Netherlands

18. Department of Medical Oncology Leiden University Medical Centre Leiden The Netherlands

19. Department of Epidemiology, Julius Center for Health Sciences and Primary Care University Medical Center Utrecht, Utrecht University Utrecht The Netherlands

Abstract

AbstractPredicting who will benefit from treatment with immune checkpoint inhibition (ICI) in patients with advanced melanoma is challenging. We developed a multivariable prediction model for response to ICI, using routinely available clinical data including primary melanoma characteristics. We used a population‐based cohort of 3525 patients with advanced cutaneous melanoma treated with anti‐PD‐1‐based therapy. Our prediction model for predicting response within 6 months after ICI initiation was internally validated with bootstrap resampling. Performance evaluation included calibration, discrimination and internal–external cross‐validation. Included patients received anti‐PD‐1 monotherapy (n = 2366) or ipilimumab plus nivolumab (n = 1159) in any treatment line. The model included serum lactate dehydrogenase, World Health Organization performance score, type and line of ICI, disease stage and time to first distant recurrence—all at start of ICI—, and location and type of primary melanoma, the presence of satellites and/or in‐transit metastases at primary diagnosis and sex. The over‐optimism adjusted area under the receiver operating characteristic was 0.66 (95% CI: 0.64–0.66). The range of predicted response probabilities was 7%–81%. Based on these probabilities, patients were categorized into quartiles. Compared to the lowest response quartile, patients in the highest quartile had a significantly longer median progression‐free survival (20.0 vs 2.8 months; P < .001) and median overall survival (62.0 vs 8.0 months; P < .001). Our prediction model, based on routinely available clinical variables and primary melanoma characteristics, predicts response to ICI in patients with advanced melanoma and discriminates well between treated patients with a very good and very poor prognosis.

Funder

Philips

ZonMw

Hanarth Fonds

Publisher

Wiley

Subject

Cancer Research,Oncology

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