Publication | Open Access
How to Deal with Interval-Censored Data Practically while Assessing the Progression-Free Survival: A Step-by-Step Guide Using SAS and R Software
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Citations
25
References
2016
Year
Progression-free SurvivalDisease ProgressionCancer ManagementPrognosisCancer RegistrationOncologyLongevityR SoftwareBiostatisticsInterval-censored Data PracticallyLife ExpectancyStatisticsSurvival CurveCancer ResearchRadiologyCensoring IntervalLung CancerTime-varying ConfoundingMedicine
We describe how to estimate progression-free survival while dealing with interval-censored data in the setting of clinical trials in oncology. Three procedures with SAS and R statistical software are described: one allowing for a nonparametric maximum likelihood estimation of the survival curve using the EM-ICM (Expectation and Maximization-Iterative Convex Minorant) algorithm as described by Wellner and Zhan in 1997; a sensitivity analysis procedure in which the progression time is assigned (i) at the midpoint, (ii) at the upper limit (reflecting the standard analysis when the progression time is assigned at the first radiologic exam showing progressive disease), or (iii) at the lower limit of the censoring interval; and finally, two multiple imputations are described considering a uniform or the nonparametric maximum likelihood estimation (NPMLE) distribution. Clin Cancer Res; 22(23); 5629-35. ©2016 AACR.
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