Literature DB >> 26779295

The Use of Covariates and Random Effects in Evaluating Predictive Biomarkers Under a Potential Outcome Framework.

Zhiwei Zhang1, Lei Nie2, Guoxing Soon2, Aiyi Liu3.   

Abstract

Predictive or treatment selection biomarkers are usually evaluated in a subgroup or regression analysis with focus on the treatment-by-marker interaction. Under a potential outcome framework (Huang, Gilbert and Janes [Biometrics68 (2012) 687-696]), a predictive biomarker is considered a predictor for a desirable treatment benefit (defined by comparing potential outcomes for different treatments) and evaluated using familiar concepts in prediction and classification. However, the desired treatment benefit is un-observable because each patient can receive only one treatment in a typical study. Huang et al. overcome this problem by assuming monotonicity of potential outcomes, with one treatment dominating the other in all patients. Motivated by an HIV example that appears to violate the monotonicity assumption, we propose a different approach based on covariates and random effects for evaluating predictive biomarkers under the potential outcome framework. Under the proposed approach, the parameters of interest can be identified by assuming conditional independence of potential outcomes given observed covariates, and a sensitivity analysis can be performed by incorporating an unobserved random effect that accounts for any residual dependence. Application of this approach to the motivating example shows that baseline viral load and CD4 cell count are both useful as predictive biomarkers for choosing antiretroviral drugs for treatment-naive patients.

Entities:  

Keywords:  Conditional independence; ROC regression; counterfactual; sensitivity analysis; treatment effect heterogeneity; treatment selection

Year:  2014        PMID: 26779295      PMCID: PMC4714717          DOI: 10.1214/14-AOAS773

Source DB:  PubMed          Journal:  Ann Appl Stat        ISSN: 1932-6157            Impact factor:   2.083


  18 in total

1.  Unit-treatment interaction and its practical consequences.

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Authors:  Baqun Zhang; Anastasios A Tsiatis; Eric B Laber; Marie Davidian
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9.  Subgroup analysis, covariate adjustment and baseline comparisons in clinical trial reporting: current practice and problems.

Authors:  Stuart J Pocock; Susan E Assmann; Laura E Enos; Linda E Kasten
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10.  The Use of Covariates and Random Effects in Evaluating Predictive Biomarkers Under a Potential Outcome Framework.

Authors:  Zhiwei Zhang; Lei Nie; Guoxing Soon; Aiyi Liu
Journal:  Ann Appl Stat       Date:  2014-12-19       Impact factor: 2.083

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  3 in total

1.  The Use of Covariates and Random Effects in Evaluating Predictive Biomarkers Under a Potential Outcome Framework.

Authors:  Zhiwei Zhang; Lei Nie; Guoxing Soon; Aiyi Liu
Journal:  Ann Appl Stat       Date:  2014-12-19       Impact factor: 2.083

2.  The Predictive Approaches to Treatment effect Heterogeneity (PATH) Statement: Explanation and Elaboration.

Authors:  David M Kent; David van Klaveren; Jessica K Paulus; Ralph D'Agostino; Steve Goodman; Rodney Hayward; John P A Ioannidis; Bray Patrick-Lake; Sally Morton; Michael Pencina; Gowri Raman; Joseph S Ross; Harry P Selker; Ravi Varadhan; Andrew Vickers; John B Wong; Ewout W Steyerberg
Journal:  Ann Intern Med       Date:  2019-11-12       Impact factor: 25.391

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Journal:  Stat Med       Date:  2021-01-31       Impact factor: 2.497

  3 in total

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