期刊论文详细信息
BMC Medical Research Methodology
Integrating and extending cohort studies: lessons from the eXtending Treatments, Education and Networks in Depression (xTEND) study
Brian J Kelly5  Trevor Hazell3  Amanda L Baker5  Frances J Kay-Lambkin1  John R Attia4  Terry J Lewin5  Kerry J Inder2  Joanne Allen5 
[1] National Drug and Alcohol Research Centre, University of New South Wales, Sydney, NSW, Australia;Hunter Medical Research Institute, Newcastle, NSW, Australia;Hunter Institute of Mental Health, Newcastle, NSW, Australia;Centre for Clinical Epidemiology and Biostatistics, University of Newcastle and Hunter New England Health, Newcastle, NSW, Australia;Centre for Translational Neuroscience and Mental Health, University of Newcastle and Hunter New England Health, Newcastle, NSW, Australia
关键词: Research methods;    Individual participant data analysis;    Mental health;    Remoteness;    Cohort studies;   
Others  :  866661
DOI  :  10.1186/1471-2288-13-122
 received in 2012-12-18, accepted in 2013-09-25,  发布年份 2013
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【 摘 要 】

Background

Epidemiologic studies often struggle to adequately represent populations and outcomes of interest. Differences in methodology, data analysis and research questions often mean that reviews and synthesis of the existing literature have significant limitations. The current paper details our experiences in combining individual participant data from two existing cohort studies to address questions about the influence of social factors on health outcomes within a representative sample of urban to remote areas of Australia. The eXtending Treatments, Education and Networks in Depression study involved pooling individual participant data from the Australian Rural Mental Health Study (T0 N = 2639) and the Hunter Community Study (T0 N = 3253) as well as conducting a common three-year follow-up phase (T1 N = 3513). Pooling these data extended the capacity of these studies by: enabling research questions of common interest to be addressed; facilitating the harmonization of baseline measures; permitting investigation of a range of psychosocial, physical and contextual factors over time; and contributing to the development and implementation of targeted interventions for persons experiencing depression and alcohol issues.

Discussion

The current paper describes the rationale, challenges encountered, and solutions devised by a project aiming to maximise the benefits derived from existing cohort studies. We also highlight opportunities for such individual participant data analyses to assess common assumptions in research synthesis, such as measurement invariance, and opportunities for extending ongoing cohorts by conducting a common follow-up phase.

Summary

Pooling individual participant data can be a worthwhile venture, particularly where adequate representation is beyond the scope of existing research, where the effects of interest are small though important, where events are of relatively low frequency or rarely observed, and where issues are of immediate regional or national interest. Benefits such as these can enhance the utility of existing projects and strengthen requests for further research funding.

【 授权许可】

   
2013 Allen et al.; licensee BioMed Central Ltd.

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