Methods for capturing and analyzing adaptations: implications for implementation research.

Jodi Summers Holtrop, Dennis Gurfinkel, Andrea Nederveld, Phoutdavone Phimphasone-Brady, Patrick Hosokawa, Claude Rubinson, Jeanette A Waxmonsky, Bethany M Kwan
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引用次数: 11

Abstract

Background: Interventions are often adapted; some adaptations may provoke more favorable outcomes, whereas some may not. A better understanding of the adaptations and their intended goals may elucidate which adaptations produce better outcomes. Improved methods are needed to better capture and characterize the impact of intervention adaptations.

Methods: We used multiple data collection and analytic methods to characterize adaptations made by practices participating in a hybrid effectiveness-implementation study of a complex, multicomponent diabetes intervention. Data collection methods to identify adaptations included interviews, observations, and facilitator sessions resulting in transcripts, templated notes, and field notes. Adaptations gleaned from these sources were reduced and combined; then, their components were cataloged according to the framework for reporting adaptations and modifications to evidence-based interventions (FRAME). Analytic methods to characterize adaptations included a co-occurrence table, statistically based k-means clustering, and a taxonomic analysis.

Results: We found that (1) different data collection methods elicited more overall adaptations, (2) multiple data collection methods provided understanding of the components of and reasons for adaptation, and (3) analytic methods revealed ways that adaptation components cluster together in unique patterns producing adaptation "types." These types may be useful for understanding how the "who, what, how, and why" of adaptations may fit together and for analyzing with outcome data to determine if the adaptations produce more favorable outcomes rather than by adaptation components individually.

Conclusion: Adaptations were prevalent and discoverable through different methods. Enhancing methods to describe adaptations may better illuminate what works in providing improved intervention fit within context.

Trial registration: This trial is registered on clinicaltrials.gov under Trial number NCT03590041 , posted July 18, 2018.

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获取和分析适应的方法:对实施研究的影响。
背景:干预措施往往经过调整;有些适应可能会带来更有利的结果,而有些则可能不会。更好地了解适应及其预期目标可能会阐明哪些适应产生更好的结果。需要改进方法来更好地捕捉和描述干预措施适应的影响。方法:我们使用多种数据收集和分析方法来描述参与一项复杂、多组分糖尿病干预的混合有效性-实施研究的实践所产生的适应性。识别适应性的数据收集方法包括访谈、观察和促成文稿、模板笔记和现场笔记的主持人会议。从这些来源收集的适应性被减少和合并;然后,根据报告基于证据的干预措施的适应和修改框架(FRAME)对其组成部分进行编目。分析方法包括共现表、基于统计的k-均值聚类和分类分析。结果:研究发现:(1)不同的数据收集方法可以引出更多的整体适应;(2)多种数据收集方法有助于理解适应的组成部分和原因;(3)分析方法揭示了适应成分以独特的模式聚集在一起产生适应“类型”的方式。这些类型可能有助于理解适应的“谁、什么、如何和为什么”如何组合在一起,并有助于分析结果数据,以确定适应是否产生更有利的结果,而不是单独使用适应组成部分。结论:适应性普遍存在,可通过不同的方法发现。改进描述适应的方法可能会更好地阐明,在提供符合环境的改进干预措施方面,什么是有效的。试验注册:该试验已在clinicaltrials.gov上注册,试验号为NCT03590041,发布于2018年7月18日。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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