Systematic Missing-At-Random (SMAR) Design and Analysis for Translational Research Studies

Ilana Belitskaya-Levy, New York University School of Medicine
Yongzhao Shao, Iowa State University
Judith D. Goldberg, New York University School of Medicine

Abstract

Translational research studies often involve a central study (e.g. clinical trial, cohort of patients, etc.) and multiple investigators who are each interested in addressing different research questions using the same patient population. However, it is often impossible for the investigators to include all patients in all of the ancillary translational research substudies that are part of the main study. This arises due to time and budgetary constraints and other logistical considerations. In this paper, we propose a prospective Systematic Missing-At-Random study design (SMAR) with planned partially missing covariates collected using a nested random sampling scheme that allows an integrated statistical analysis across all domains of data. We propose an algorithm for data analysis that incorporates the features of the design. We show that the SMAR design is computationally and statistically efficient as well as cost effective using simulation studies and a published data example. An extension to a two-stage prospective-retrospective design is discussed.

Recommended Citation

Belitskaya-Levy, Ilana; Shao, Yongzhao; and Goldberg, Judith D. (2008) "Systematic Missing-At-Random (SMAR) Design and Analysis for Translational Research Studies," The International Journal of Biostatistics: Vol. 4 : Iss. 1, Article 15.
Available at: http://www.bepress.com/ijb/vol4/iss1/15

 
 
 
 

ISSN: 1557-4679 ©1999-2008 The Berkeley Electronic Press™ All rights reserved.

To submit, subscribe, recommend this journal to your library, or sign up for email alerts, please visit: http://www.bepress.com/ijb