An explainable machine learning-based phenomapping strategy for adaptive predictive enrichment in randomized clinical trials

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作者
Evangelos K. Oikonomou
Phyllis M. Thangaraj
Deepak L. Bhatt
Joseph S. Ross
Lawrence H. Young
Harlan M. Krumholz
Marc A. Suchard
Rohan Khera
机构
[1] Yale School of Medicine,Section of Cardiovascular Medicine, Department of Internal Medicine
[2] Icahn School of Medicine at Mount Sinai Health System,Mount Sinai Heart
[3] Yale School of Medicine,Section of General Internal Medicine, Department of Internal Medicine
[4] Yale-New Haven Hospital,Center for Outcomes Research and Evaluation
[5] Yale School of Public Health,Department of Health Policy and Management
[6] University of California,Departments of Computational Medicine and Human Genetics, David Geffen School of Medicine at UCLA
[7] Yale School of Public Health,Section of Health Informatics, Department of Biostatistics
[8] Yale School of Public Health,Section of Biomedical Informatics and Data Science
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摘要
Randomized clinical trials (RCT) represent the cornerstone of evidence-based medicine but are resource-intensive. We propose and evaluate a machine learning (ML) strategy of adaptive predictive enrichment through computational trial phenomaps to optimize RCT enrollment. In simulated group sequential analyses of two large cardiovascular outcomes RCTs of (1) a therapeutic drug (pioglitazone versus placebo; Insulin Resistance Intervention after Stroke (IRIS) trial), and (2) a disease management strategy (intensive versus standard systolic blood pressure reduction in the Systolic Blood Pressure Intervention Trial (SPRINT)), we constructed dynamic phenotypic representations to infer response profiles during interim analyses and examined their association with study outcomes. Across three interim timepoints, our strategy learned dynamic phenotypic signatures predictive of individualized cardiovascular benefit. By conditioning a prospective candidate’s probability of enrollment on their predicted benefit, we estimate that our approach would have enabled a reduction in the final trial size across ten simulations (IRIS: −14.8% ± 3.1%, pone-sample t-test = 0.001; SPRINT: −17.6% ± 3.6%, pone-sample t-test < 0.001), while preserving the original average treatment effect (IRIS: hazard ratio of 0.73 ± 0.01 for pioglitazone vs placebo, vs 0.76 in the original trial; SPRINT: hazard ratio of 0.72 ± 0.01 for intensive vs standard systolic blood pressure, vs 0.75 in the original trial; all simulations with Cox regression-derived p value of  < 0.01 for the effect of the intervention on the respective primary outcome). This adaptive framework has the potential to maximize RCT enrollment efficiency.
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