Literature DB >> 34280545

Generalizability of heterogeneous treatment effects based on causal forests applied to two randomized clinical trials of intensive glycemic control.

Sridharan Raghavan1, Kevin Josey2, Gideon Bahn3, Domenic Reda3, Sanjay Basu4, Seth A Berkowitz5, Nicholas Emanuele3, Peter Reaven6, Debashis Ghosh7.   

Abstract

Purpose Machine learning is an attractive tool for identifying heterogeneous treatment effects (HTE) of interventions but generalizability of machine learning derived HTE remains unclear. We examined generalizability of HTE detected using causal forests in two similarly designed randomized trials in type II diabetes patients. Methods We evaluated published HTE of intensive versus standard glycemic control on all-cause mortality from the Action to Control Cardiovascular Risk in Diabetes study (ACCORD) in a second trial, the Veterans Affairs Diabetes Trial (VADT). We then applied causal forests to VADT, ACCORD, and pooled data from both studies and compared variable importance and subgroup effects across samples. Results HTE in ACCORD did not replicate in similar subgroups in VADT, but variable importance was correlated between VADT and ACCORD (Kendall's tau-b 0.75). Applying causal forests to pooled individual-level data yielded seven subgroups with similar HTE across both studies, ranging from risk difference of all-cause mortality of -3.9% (95% CI -7.0, -0.8) to 4.7% (95% CI 1.8, 7.5). Conclusions Machine learning detection of HTE subgroups from randomized trials may not generalize across study samples even when variable importance is correlated. Pooling individual-level data may overcome differences in study populations and/or differences in interventions that limit HTE generalizability.
Copyright © 2021. Published by Elsevier Inc.

Entities:  

Keywords:  BMI, Body mass index; Generalizability, Glycemic control, Causal forests, Heterogeneous treatment effects. Abbreviations: ACCORD, Action to Control Cardiovascular Risk in Diabetes Study; HGI, Hemoglobin glycation index; HTE, Heterogeneous treatment effects; HbA1c, Hemoglobin A1c; VADT, Veterans Affairs Diabetes Trial; eGFR, Estimated glomerular filtration rate

Mesh:

Substances:

Year:  2021        PMID: 34280545      PMCID: PMC8748294          DOI: 10.1016/j.annepidem.2021.07.003

Source DB:  PubMed          Journal:  Ann Epidemiol        ISSN: 1047-2797            Impact factor:   3.797


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