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

Publication date

2024-05-15

Authors

van Duin, Isabella A J
Verheijden, Rik JORCID 0000-0003-1966-1063
van Diest, P. J.ORCID 0000-0003-0658-2745ISNI 000000004213151X
Blokx, Willeke A MORCID 0000-0002-4647-8830
El Sharouni, Mary-Ann
Verhoeff, J. J.C.ORCID 0000-0001-9673-0793ISNI 0000000393929005
Leiner, TimORCID 0000-0003-1885-5499ISNI 0000000390698205
van den Eertwegh, Alfonsus J M
de Groot, Jan Willem B
van Not, Olivier J

Editors

Advisors

Supervisors

Document Type

Article

Collections

Open Access logo

License

cc_by_nc_nd

Abstract

Predicting 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.

Keywords

immune checkpoint inhibition, immunotherapy, melanoma, prediction model, response prediction, Oncology, Cancer Research, Journal Article

Citation

van Duin, I A J, Verheijden, R J, van Diest, P J, Blokx, W A M, El-Sharouni, M-A, Verhoeff, J J C, Leiner, T, van den Eertwegh, A J M, de Groot, J W B, van Not, O J, Aarts, M J B, van den Berkmortel, F W P J, Blank, C U, Haanen, J B A G, Hospers, G A P, Piersma, D, van Rijn, R S, van der Veldt, A A M, Vreugdenhil, G, Wouters, M W J M, Stevense-den Boer, M A M, Boers-Sonderen, M J, Kapiteijn, E, Suijkerbuijk, K P M & Elias, S G 2024, 'A prediction model for response to immune checkpoint inhibition in advanced melanoma', International Journal of Cancer, vol. 154, no. 10, pp. 1760-1771. https://doi.org/10.1002/ijc.34853