A joint model of longitudinal pharmacokinetic and time-to-event data to study exposure-response relationships: a proof-of-concept study with alectinib

Publication date

2024-09

Authors

Lin, Lishi
van der Noort, Vincent
Steeghs, Neeltje
Ruiter, Gerrina
Beijnen, JosISNI 0000000140305595
Huitema, Alwin D. R.

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Advisors

Supervisors

Document Type

Article

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License

taverne

Abstract

PurposeIn exposure-response analyses of oral targeted anticancer agents, longitudinal plasma trough concentrations are often aggregated into a single value even though plasma trough concentrations can vary over time due to dose adaptations, for example. The aim of this study was to compare joint models to conventional exposure-response analyses methods with the application of alectinib as proof-of-concept.MethodsJoint models combine longitudinal pharmacokinetic data and progression-free survival data to infer the dependency and association between the two datatypes. The results from the best joint model and the standard and time-dependent cox proportional hazards models were compared. To normalize the data, alectinib trough concentrations were normalized using a sigmoidal transformation to transformed trough concentrations (TTC) before entering the models.ResultsNo statistically significant exposure-response relationship was observed in the different Cox models. In contrast, the joint model with the current value of TTC in combination with the average TTC over time did show an exposure-response relationship for alectinib. A one unit increase in the average TTC corresponded to an 11% reduction in progression (HR, 0.891; 95% confidence interval, 0.805-0.988).ConclusionJoint models are able to give insights in the association structure between plasma trough concentrations and survival outcomes that would otherwise not be possible using Cox models. Therefore, joint models should be used more often in exposure-response analyses of oral targeted anticancer agents.

Keywords

Alectinib, Exposure response, Mixed effects models, Survival analysis, SDG 3 - Good Health and Well-being

Citation

Lin, L, van der Noort, V, Steeghs, N, Ruiter, G, Beijnen, J H & Huitema, A D R 2024, 'A joint model of longitudinal pharmacokinetic and time-to-event data to study exposure-response relationships : a proof-of-concept study with alectinib', Cancer Chemotherapy and Pharmacology, vol. 94, no. 3, pp. 453-459. https://doi.org/10.1007/s00280-024-04698-w