We have developed a method, called Meta-STEPP (Subpopulation Treatment Effect Pattern Plot for Meta- Analysis), to explore treatment effect heterogeneity across covariate values in the meta-analysis setting for time-to-event data when the covariate of interest is continuous. Meta-STEPP forms overlapping subpopulations from individual patient data containing similar numbers of events with increasing covariate values, estimates subpopulation treatment effects using standard fixed-effects meta-analysis methodology, displays the estimated subpopulation treatment effect as a function of the covariate values, and provides a statistical test to detect possibly complex treatment-covariate interactions. Simulation studies show that this test has adequate type-I error rate recovery as well as power when reasonable window sizes are chosen. When applied to eight breast cancer trials, Meta-STEPP suggests that chemotherapy is less effective for tumors with high estrogen receptor expression compared to those with low expression.

Meta-STEPP: subpopulation treatment effect pattern plot for individual patient data meta-analysis

BONETTI, MARCO;
2016

Abstract

We have developed a method, called Meta-STEPP (Subpopulation Treatment Effect Pattern Plot for Meta- Analysis), to explore treatment effect heterogeneity across covariate values in the meta-analysis setting for time-to-event data when the covariate of interest is continuous. Meta-STEPP forms overlapping subpopulations from individual patient data containing similar numbers of events with increasing covariate values, estimates subpopulation treatment effects using standard fixed-effects meta-analysis methodology, displays the estimated subpopulation treatment effect as a function of the covariate values, and provides a statistical test to detect possibly complex treatment-covariate interactions. Simulation studies show that this test has adequate type-I error rate recovery as well as power when reasonable window sizes are chosen. When applied to eight breast cancer trials, Meta-STEPP suggests that chemotherapy is less effective for tumors with high estrogen receptor expression compared to those with low expression.
2016
2016
Wang, Xin Victoria; Cole, Bernard; Bonetti, Marco; Gelber, Richard D.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11565/3986385
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