Predicting Survival for Chimeric Antigen Receptor T-Cell Therapy: A Validation of Survival Models Using Follow-Up Data From ZUMA-1

Survival extrapolation for chimeric antigen receptor T-cell therapies is challenging, owing to their unique mechanistic properties that translate to complex hazard functions. Axicabtagene ciloleucel is indicated for the treatment of relapse or refractory diffuse large B-cell lymphoma after 2 or more...

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Veröffentlicht in:Value in health 2022-06, Vol.25 (6), p.1010-1017
Hauptverfasser: Vadgama, Sachin, Mann, Jess, Bashir, Zahid, Spooner, Clare, Collins, Graham P., Bullement, Ash
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Sprache:eng
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Zusammenfassung:Survival extrapolation for chimeric antigen receptor T-cell therapies is challenging, owing to their unique mechanistic properties that translate to complex hazard functions. Axicabtagene ciloleucel is indicated for the treatment of relapse or refractory diffuse large B-cell lymphoma after 2 or more lines of therapy based on the ZUMA-1 trial. Four data snapshots are available, with minimum follow-up of 12, 24, 36, and 48 months. This analysis explores how survival extrapolations for axicabtagene ciloleucel using ZUMA-1 data can be validated and compared. Three different parametric modeling approaches were applied: standard parametric, spline-based, and cure-based models. Models were compared using a range of metrics, across the 4 data snapshot, including visual fit, plausibility of long-term estimates, statistical goodness of fit, inspection of hazard plots, point-estimate accuracy, and conditional survival estimates. Standard and spline-based parametric extrapolations were generally incapable of fitting the ZUMA-1 data well. Cure-based models provided the best fit based on the earliest data snapshot, with extrapolations remaining consistent as data matured. At 48 months, the maximum survival overestimate was 8.3% (Gompertz mixture-cure model) versus the maximum underestimate of 33.5% (Weibull standard parametric model). Where a plateau in the survival curve is clinically plausible, cure-based models may be helpful in making accurate predictions based on immature data. The ability to reliably extrapolate from maturing data may reduce delays in patient access to potentially lifesaving treatments. Additional research is required to understand how models compare in broader contexts, including different treatments and therapeutic areas. •Cure-based models were able to produce consistent and accurate extrapolations of longer-term survival for patients treated with axicabtagene ciloleucel, even with limited follow-up data.•Models without a cure fraction may provide reasonable fits to the Kaplan-Meier estimate but did not seem to extrapolate well in our study, particularly standard parametric models.•Cure-based models provide a useful tool to allow for the estimation of plausible survival extrapolations based on limited follow-up data and inform timely and accurate decision making.
ISSN:1098-3015
1524-4733
DOI:10.1016/j.jval.2021.10.015