Process Evaluations of Diabetes Self-Management Programs: A Systematic Review of the Literature

Chinelo Nsobundu, Yeka W. Nmadu,Nikita Sandeep Wagle, Margaret J. Foster, Ellisa Lisako Jones Mckyer,Ledric Sherman,Marcia G. Ory,James (Jim) N. Burdine

AMERICAN JOURNAL OF HEALTH PROMOTION(2024)

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摘要
Objective To conduct a systematic review of process evaluations (PEs) of diabetes self-management programs (DSMPs).Data Source An electronic search using Medline (Ovid), Embase (Ovid), CINAHL (Ensco), Academic Search (Ebsco), and APA PsycInfo (Ebsco).Study Inclusion and Exclusion Criteria Peer-reviewed, empirical quantitative, qualitative, or mixed-method studies were included if they (1) were a traditional, group-based DSMP, (2) involved adults at least 18 years with T1DM or T2DM, (3) were a stand-alone or embedded PE, and (4) published in English.Data Extraction The following process evaluation outcomes were extracted: fidelity, dose delivered, dose received, reach, recruitment, retention, and context. Additional items were extracted, (eg, process evaluation type, data collection methods; theories; frameworks or conceptual models used to guide the process evaluation, and etc).Data Synthesis Due to heterogeneity across studies, studies were synthesized qualitatively (narratively).Results Sixty-eight studies (k) in 78 articles (n) (k = 68; n = 78) were included. Most were mixed methods of low quality. Studies were typically integrated into outcome evaluations vs being stand-alone, lacked theoretical approaches to guide them, and incorporated limited outcomes such as dose received, reach, and retention.Conclusion Future research should 1) implement stand-alone theoretically grounded PE studies and 2) provide a shared understanding of standardized guidelines to conduct PEs. This will allow public health practitioners and researchers to assess and compare the quality of different programs to be implemented.
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关键词
diabetes,self-management,process evaluation,implementation,traditional,group-based programs
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