Doubly adaptive biased coin design (DBCD), a response-adaptive randomization scheme, aims to skew subject assignment probabilities based on accrued responses for ethical considerations. Recent years have seen substantial advances in understanding DBCD's theoretical properties, assuming correct model specification for the responses. However, concerns have been raised about the impact of model misspecification on its design and analysis. In this paper, we assess the robustness to both design model misspecification and analysis model misspecification under DBCD. On one hand, we confirm that the consistency and asymptotic normality of the allocation proportions can be preserved, even when the responses follow a distribution other than the one imposed by the design model during the implementation of DBCD. On the other hand, we extensively investigate three commonly used linear regression models for estimating and inferring the treatment effect, namely difference-in-means, analysis of covariance (ANCOVA) I, and ANCOVA II. By allowing these regression models to be arbitrarily misspecified, thereby not reflecting the true data generating process, we derive the consistency and asymptotic normality of the treatment effect estimators evaluated from the three models. The asymptotic properties show that the ANCOVA II model, which takes covariate-by-treatment interaction terms into account, yields the most efficient estimator. These results can provide theoretical support for using DBCD in scenarios involving model misspecification, thereby promoting the widespread application of this randomization procedure.
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http://dx.doi.org/10.1093/biomtc/ujae049 | DOI Listing |
J Trauma Acute Care Surg
January 2025
From the Department of Surgery (T.G.) and Department of Biostatistics and Epidemiology (T.G.), University of Oklahoma Health Sciences Center, Oklahoma City, Oklahoma; and Comparative Effectiveness and Clinical Outcomes Center (CECORC) (Z.L.B.), Riverside University Health Systems, Moreno Valley, CA.
Observational studies assessing causal effects of interventions are subject to indication (selection) bias, which may be difficult to eliminate using traditional multivariable techniques. When properly specified, propensity score-adjusted analysis may offer an advantage traditional regression by ensuring that investigators explicitly assess comparability of baseline prognostic factors between the treated and untreated. However, it is important to note that the effectiveness of a propensity score-adjusted analysis depends on the variables selected for the model and the analytic approach.
View Article and Find Full Text PDFBiometrics
January 2025
Department of Population and Quantitative Health Sciences, Case Western Reserve University School of Medicine, Cleveland, OH 44106, United States.
In the era of big data, increasing availability of data makes combining different data sources to obtain more accurate estimations a popular topic. However, the development of data integration is often hindered by the heterogeneity in data forms across studies. In this paper, we focus on a case in survival analysis where we have primary study data with a continuous time-to-event outcome and complete covariate measurements, while the data from an external study contain an outcome observed at regular intervals, and only a subset of covariates is measured.
View Article and Find Full Text PDFMultivariate Behav Res
January 2025
Wake Forest University, Winston-Salem, NC, USA.
Interest in identifying latent growth profiles to support the psychological and social-emotional development of individuals has translated into the widespread use of growth mixture models (GMMs). In most cases, GMMs are based on scores from item responses collected using survey scales or other measures. Research already shows that GMMs can be sensitive to departures from ideal modeling conditions and that growth model results outside of GMMs are sensitive to decisions about how item responses are scored, but the impact of scoring decisions on GMMs has never been investigated.
View Article and Find Full Text PDFJ R Stat Soc Ser A Stat Soc
January 2025
Biostatistics, University of Michigan, 1415 Washington Heights, Michigan 48109, USA.
Model integration refers to the process of incorporating a fitted historical model into the estimation of a current study to increase statistical efficiency. Integration can be challenging when the current model includes new covariates, leading to potential model misspecification. We present and evaluate seven existing and novel model integration techniques, which employ both likelihood constraints and Bayesian informative priors.
View Article and Find Full Text PDFAm J Epidemiol
January 2025
Department of Mathematics and Statistics, University of Victoria, Victoria, British Columbia, Canada.
Two-sample capture-recapture studies are commonly used in the epidemiological and ecological literature. Most of these studies have been limited to analysis using the Lincoln-Petersen estimator, especially in epidemiological studies. We examine the use of the Lincoln-Petersen estimator and two alternative closed-population methods: Huggins' conditional likelihood method and Pledger's likelihood method with mixtures.
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