| Literature DB >> 27356993 |
Shrikant I Bangdiwala1,2, Alok Bhargava3, Daniel P O'Connor4, Thomas N Robinson5, Susan Michie6, David M Murray7, June Stevens8, Steven H Belle9, Thomas N Templin10, Charlotte A Pratt11.
Abstract
Combining and analyzing data from heterogeneous randomized controlled trials of complex multiple-component intervention studies, or discussing them in a systematic review, is not straightforward. The present article describes certain issues to be considered when combining data across studies, based on discussions in an NIH-sponsored workshop on pooling issues across studies in consortia (see Belle et al. in Psychol Aging, 18(3):396-405, 2003). Several statistical methodologies are described and their advantages and limitations are explored. Whether weighting the different studies data differently, or via employing random effects, one must recognize that different pooling methodologies may yield different results. Pooling can be used for comprehensive exploratory analyses of data from RCTs and should not be viewed as replacing the standard analysis plan for each study. Pooling may help to identify intervention components that may be more effective especially for subsets of participants with certain behavioral characteristics. Pooling, when supported by statistical tests, can allow exploratory investigation of potential hypotheses and for the design of future interventions.Entities:
Keywords: Multilevel meta-regression; Multilevel structural models; Random-effects meta-analysis; Statistical pooling of studies; Study-level meta-regression
Mesh:
Year: 2016 PMID: 27356993 PMCID: PMC4927450 DOI: 10.1007/s13142-016-0386-8
Source DB: PubMed Journal: Transl Behav Med ISSN: 1613-9860 Impact factor: 3.046