Literature DB >> 24954640

Data compatibility in the addiction sciences: an examination of measure commonality.

Kevin P Conway1, Genevieve C Vullo2, Ashley P Kennedy3, Matthew S Finger4, Arpana Agrawal5, James M Bjork6, Lindsay A Farrer7, Dana B Hancock8, Andrea Hussong9, Paul Wakim10, Wayne Huggins8, Tabitha Hendershot8, Destiney S Nettles8, Joseph Pratt8, Deborah Maiese8, Heather A Junkins11, Erin M Ramos11, Lisa C Strader8, Carol M Hamilton8, Kenneth J Sher12.   

Abstract

The need for comprehensive analysis to compare and combine data across multiple studies in order to validate and extend results is widely recognized. This paper aims to assess the extent of data compatibility in the substance abuse and addiction (SAA) sciences through an examination of measure commonality, defined as the use of similar measures, across grants funded by the National Institute on Drug Abuse (NIDA) and the National Institute on Alcohol Abuse and Alcoholism (NIAAA). Data were extracted from applications of funded, active grants involving human-subjects research in four scientific areas (epidemiology, prevention, services, and treatment) and six frequently assessed scientific domains. A total of 548 distinct measures were cited across 141 randomly sampled applications. Commonality, as assessed by density (range of 0-1) of shared measurement, was examined. Results showed that commonality was low and varied by domain/area. Commonality was most prominent for (1) diagnostic interviews (structured and semi-structured) for substance use disorders and psychopathology (density of 0.88), followed by (2) scales to assess dimensions of substance use problems and disorders (0.70), (3) scales to assess dimensions of affect and psychopathology (0.69), (4) measures of substance use quantity and frequency (0.62), (5) measures of personality traits (0.40), and (6) assessments of cognitive/neurologic ability (0.22). The areas of prevention (density of 0.41) and treatment (0.42) had greater commonality than epidemiology (0.36) and services (0.32). To address the lack of measure commonality, NIDA and its scientific partners recommend and provide common measures for SAA researchers within the PhenX Toolkit. Published by Elsevier Ireland Ltd.

Entities:  

Keywords:  Data harmonization; Gene–environment interactions; Measure commonality; Standard measures; Substance use, abuse, and addiction

Mesh:

Year:  2014        PMID: 24954640      PMCID: PMC4096981          DOI: 10.1016/j.drugalcdep.2014.04.029

Source DB:  PubMed          Journal:  Drug Alcohol Depend        ISSN: 0376-8716            Impact factor:   4.492


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