Litcius/Paper detail

Assessing heterogeneity of treatment effect in multiple sclerosis trials

Maria Pia Sormani, Jeremy Chataway, David M. Kent, Ruth Ann Marrie

2023Multiple Sclerosis Journal10 citationsDOIOpen Access PDF

Abstract

Multiple sclerosis (MS) is heterogeneous with respect to outcomes, and evaluating possible heterogeneity of treatment effect (HTE) is of high interest. HTE is non-random variation in the magnitude of a treatment effect on a clinical outcome across levels of a covariate (i.e. a patient attribute or set of attributes). Multiple statistical techniques can evaluate HTE. The simplest but most bias-prone is conventional one variable-at-a-time subgroup analysis. Recently, multivariable predictive approaches have been promoted to provide more patient-centered results, by accounting for multiple relevant attributes simultaneously. We review approaches used to estimate HTE in clinical trials of MS.

Topics & Concepts

CovariateMultiple sclerosisClinical trialTreatment effectMedicineRandom effects modelSet (abstract data type)StatisticsComputer scienceMeta-analysisMathematicsInternal medicineTraditional medicinePsychiatryProgramming languageStatistical Methods in Clinical TrialsMultiple Sclerosis Research StudiesOptimal Experimental Design Methods