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Yongdong Ouyang
Assistant Professor

Curriculum vitae


Biostatistics and Bioinformatics

Roswell Park Comprehensive Cancer Center

RSC 424, Elm & Carlton St, Buffalo, New York, USA



Who benefits? Uncovering hidden heterogeneity of treatment effects in adaptive trials using Bayesian methods: a systematic review


Journal article


Rachel Giblon, Chengyang Gao, Kuan Liu, Yongdong Ouyang, Jessie Cunningham, Allen L. Pimienta, E. Goligher, Anna Heath
Trials, 2025

Semantic Scholar DOI PubMedCentral PubMed
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APA   Click to copy
Giblon, R., Gao, C., Liu, K., Ouyang, Y., Cunningham, J., Pimienta, A. L., … Heath, A. (2025). Who benefits? Uncovering hidden heterogeneity of treatment effects in adaptive trials using Bayesian methods: a systematic review. Trials.


Chicago/Turabian   Click to copy
Giblon, Rachel, Chengyang Gao, Kuan Liu, Yongdong Ouyang, Jessie Cunningham, Allen L. Pimienta, E. Goligher, and Anna Heath. “Who Benefits? Uncovering Hidden Heterogeneity of Treatment Effects in Adaptive Trials Using Bayesian Methods: a Systematic Review.” Trials (2025).


MLA   Click to copy
Giblon, Rachel, et al. “Who Benefits? Uncovering Hidden Heterogeneity of Treatment Effects in Adaptive Trials Using Bayesian Methods: a Systematic Review.” Trials, 2025.


BibTeX   Click to copy

@article{rachel2025a,
  title = {Who benefits? Uncovering hidden heterogeneity of treatment effects in adaptive trials using Bayesian methods: a systematic review},
  year = {2025},
  journal = {Trials},
  author = {Giblon, Rachel and Gao, Chengyang and Liu, Kuan and Ouyang, Yongdong and Cunningham, Jessie and Pimienta, Allen L. and Goligher, E. and Heath, Anna}
}

Abstract

Adaptive clinical trials increasingly aim to detect heterogeneity of treatment effect (HTE) to guide personalized care. However, most adaptive designs rely on predefined subgroups and are limited in their ability to uncover unknown or complex sources of HTE. Bayesian statistical methods offer a flexible alternative, enabling real-time learning and adaptation within trials. This review evaluates Bayesian methods used to detect hidden HTE in adaptive clinical trials, with attention to their methodological innovations, operating characteristics, and consideration of equity and inclusion in trial design. We conducted a systematic search of MEDLINE, Embase, and other databases to identify original studies that developed Bayesian methods for detecting unknown HTE within adaptive clinical trial designs. Eligible studies were reviewed and synthesized based on design features, statistical methodology, operating characteristics, reproducibility, and whether equity-related factors were explicitly considered. Equity considerations included whether studies incorporated variables related to underrepresented populations—such as age, sex, race/ethnicity, or geography—examined intersectional subgroup effects, or explicitly framed their methods as tools to address health disparities. Of 2826 screened records, seven studies met inclusion criteria. Bayesian methods included random partition models, spatial models, logistic regression with dimension reduction, adaptive randomization using machine learning classifiers, and adaptive enrichment or platform designs incorporating model averaging or latent subgroup estimation. In simulation studies, these methods often showed improvements in subgroup detection, efficiency, or power relative to non-Bayesian comparators. None were tested using real-world trial data. Reproducibility was limited overall, with analytic code only available for the three most recent studies. Notably, none explicitly framed their methods as tools to address inequities in treatment outcomes across population subgroups. The small number of simulation-based studies illustrates preliminary but promising directions for applying Bayesian methods to detect HTE in adaptive clinical trials. While these approaches demonstrate potential to enhance trial adaptability, scalability, and inclusiveness, current evidence remains limited and largely conceptual. Incorporating an equity lens into future methodological development, alongside greater emphasis on empirical validation and open science practices, will be essential to determine their practical value in advancing equitable clinical research.



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