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      A General Statistical Framework for Subgroup Identification and Comparative Treatment Scoring

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          Summary

          Many statistical methods have recently been developed for identifying subgroups of patients who may benefit from different available treatments. Compared with the traditional outcome-modeling approaches, these methods focus on modeling interactions between the treatments and covariates while by-pass or minimize modeling the main effects of covariates because the subgroup identification only depends on the sign of the interaction. However these methods are scattered and often narrow in scope. In this paper, we propose a general framework, by weighting and A-learning, for subgroup identification in both randomized clinical trials and observational studies. Our framework involves minimum modeling for the relationship between the outcome and covariates pertinent to the subgroup identification. Under the proposed framework, we may also estimate the magnitude of the interaction, which leads to the construction of scoring system measuring the individualized treatment effect. The proposed methods are quite flexible and include many recently proposed estimators as special cases. As a result, some estimators originally proposed for randomized clinical trials can be extended to observational studies, and procedures based on the weighting method can be converted to an A-learning method and vice versa. Our approaches also allow straightforward incorporation of regularization methods for high-dimensional data, as well as possible efficiency augmentation and generalization to multiple treatments. We examine the empirical performance of several procedures belonging to the proposed framework through extensive numerical studies.

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          Author and article information

          Journal
          0370625
          1170
          Biometrics
          Biometrics
          Biometrics
          0006-341X
          1541-0420
          7 February 2017
          17 February 2017
          December 2017
          28 December 2017
          : 73
          : 4
          : 1199-1209
          Affiliations
          [1 ]Department of Biostatistics and Medical Informatics, University of Wisconsin, Madison, WI 53792, U.S.A
          [2 ]Department of Biomedical Data Science, Stanford University, Palo Alto, CA 94305, U.S.A
          [3 ]Department of Biostatistics, Harvard School of Public Health, Boston, MA 02115, U.S.A
          Author notes
          Article
          PMC5561419 PMC5561419 5561419 nihpa848569
          10.1111/biom.12676
          5561419
          28211943
          01fb7244-a0f6-4957-bfc9-73953d235517
          History
          Categories
          Article

          Regularization,A-learning,Individualized treatment rules,Observational studies,Propensity score

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