Literature DB >> 15606407

Evaluating markers for selecting a patient's treatment.

Xiao Song1, Margaret Sullivan Pepe.   

Abstract

Selecting the best treatment for a patient's disease may be facilitated by evaluating clinical characteristics or biomarker measurements at diagnosis. We consider how to evaluate the potential impact of such measurements on treatment selection algorithms. For example, magnetic resonance neurographic imaging is potentially useful for deciding whether a patient should be treated surgically for Carpal Tunnel Syndrome or should receive less-invasive conservative therapy. We propose a graphical display, the selection impact (SI) curve that shows the population response rate as a function of treatment selection criteria based on the marker. The curve can be useful for choosing a treatment policy that incorporates information on the patient's marker value exceeding a threshold. The SI curve can be estimated using data from a comparative randomized trial conducted in the population as long as treatment assignment in the trial is independent of the predictive marker. Estimating the SI curve is therefore part of a post hoc analysis to determine whether the marker identifies patients that are more likely to benefit from one treatment over another. Nonparametric and parametric estimates of the SI curve are proposed in this article. Asymptotic distribution theory is used to evaluate the relative efficiencies of the estimators. Simulation studies show that inference is straightforward with realistic sample sizes. We illustrate the SI curve and statistical inference for it with data motivated by an ongoing trial of surgery versus conservative therapy for Carpal Tunnel Syndrome.

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Year:  2004        PMID: 15606407     DOI: 10.1111/j.0006-341X.2004.00242.x

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  51 in total

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2.  Simple subgroup approximations to optimal treatment regimes from randomized clinical trial data.

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Journal:  Biostatistics       Date:  2014-11-13       Impact factor: 5.899

3.  Change-Plane Analysis for Subgroup Detection and Sample Size Calculation.

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Journal:  J Am Stat Assoc       Date:  2017-04-13       Impact factor: 5.033

4.  Treatment selections using risk-benefit profiles based on data from comparative randomized clinical trials with multiple endpoints.

Authors:  Brian Claggett; Lu Tian; Davide Castagno; Lee-Jen Wei
Journal:  Biostatistics       Date:  2014-08-12       Impact factor: 5.899

5.  Identifying optimal biomarker combinations for treatment selection via a robust kernel method.

Authors:  Ying Huang; Youyi Fong
Journal:  Biometrics       Date:  2014-08-14       Impact factor: 2.571

6.  Detecting moderator effects using subgroup analyses.

Authors:  Rui Wang; James H Ware
Journal:  Prev Sci       Date:  2013-04

7.  Estimation of treatment policies based on functional predictors.

Authors:  Ian W McKeague; Min Qian
Journal:  Stat Sin       Date:  2014-07       Impact factor: 1.261

8.  Evaluating marker-guided treatment selection strategies.

Authors:  Roland A Matsouaka; Junlong Li; Tianxi Cai
Journal:  Biometrics       Date:  2014-04-29       Impact factor: 2.571

9.  Bayesian predictive modeling for genomic based personalized treatment selection.

Authors:  Junsheng Ma; Francesco C Stingo; Brian P Hobbs
Journal:  Biometrics       Date:  2015-11-17       Impact factor: 2.571

Review 10.  Publication of tumor marker research results: the necessity for complete and transparent reporting.

Authors:  Lisa M McShane; Daniel F Hayes
Journal:  J Clin Oncol       Date:  2012-10-15       Impact factor: 44.544

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