ON TESTING CONDITIONAL QUALITATIVE TREATMENT EFFECTS.

TitleON TESTING CONDITIONAL QUALITATIVE TREATMENT EFFECTS.
Publication TypeJournal Article
Year of Publication2019
AuthorsShi, Chengchun, Rui Song, and Wenbin Lu
JournalAnn Stat
Volume47
Issue4
Pagination2348-2377
Date Published2019 Aug
ISSN0090-5364
Abstract

Precision medicine is an emerging medical paradigm that focuses on finding the most effective treatment strategy tailored for individual patients. In the literature, most of the existing works focused on estimating the optimal treatment regime. However, there has been less attention devoted to hypothesis testing regarding the optimal treatment regime. In this paper, we first introduce the notion of conditional qualitative treatment effects (CQTE) of a set of variables given another set of variables and provide a class of equivalent representations for the null hypothesis of no CQTE. The proposed definition of CQTE does not assume any parametric form for the optimal treatment rule and plays an important role for assessing the incremental value of a set of new variables in optimal treatment decision making conditional on an existing set of prescriptive variables. We then propose novel testing procedures for no CQTE based on kernel estimation of the conditional contrast functions. We show that our test statistics have asymptotically correct size and non-negligible power against some nonstandard local alternatives. The empirical performance of the proposed tests are evaluated by simulations and an application to an AIDS data set.

DOI10.1214/18-AOS1750
Alternate JournalAnn Stat
Original PublicationOn testing conditional qualitative treatment effects.
PubMed ID31190690
PubMed Central IDPMC6561732
Grant ListP01 CA142538 / CA / NCI NIH HHS / United States