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Health Information Technologies—Academic and Commercial Evaluation (HIT-ACE) methodology: description and application to clinical feedback systems

机译:健康信息技术 - 学术和商业评估(命中率)方法:描述和应用于临床反馈系统

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Background Health information technologies (HIT) have become nearly ubiquitous in the contemporary healthcare landscape, but information about HIT development, functionality, and implementation readiness is frequently siloed. Theory-driven methods of compiling, evaluating, and integrating information from the academic and commercial sectors are necessary to guide stakeholder decision-making surrounding HIT adoption and to develop pragmatic HIT research agendas. This article presents the Health Information Technologies—Academic and Commercial Evaluation (HIT-ACE) methodology, a structured, theory-driven method for compiling and evaluating information from multiple sectors. As an example demonstration of the methodology, we apply HIT-ACE to mental and behavioral health measurement feedback systems (MFS). MFS are a specific class of HIT that support the implementation of routine outcome monitoring, an evidence-based practice. Results HIT-ACE is guided by theories and frameworks related to user-centered design and implementation science. The methodology involves four phases: (1) coding academic and commercial materials, (2) developer/purveyor interviews, (3) linking putative implementation mechanisms to hit capabilities, and (4) experimental testing of capabilities and mechanisms. In the current demonstration, phase 1 included a systematic process to identify MFS in mental and behavioral health using academic literature and commercial websites. Using user-centered design, implementation science, and feedback frameworks, the HIT-ACE coding system was developed, piloted, and used to review each identified system for the presence of 38 capabilities and 18 additional characteristics via a consensus coding process. Bibliometic data were also collected to examine the representation of the systems in the scientific literature. As an example, results are presented for the application of HIT-ACE phase 1 to MFS wherein 49 separate MFS were identified, reflecting a diverse array of characteristics and capabilities. Conclusions Preliminary findings demonstrate the utility of HIT-ACE to represent the scope and diversity of a given class of HIT beyond what can be identified in the academic literature. Phase 2 data collection is expected to confirm and expand the information presented and phases 3 and 4 will provide more nuanced information about the impact of specific HIT capabilities. In all, HIT-ACE is expected to support adoption decisions and additional HIT development and implementation research.
机译:背景技术健康信息技术(命中)在当代医疗景观中变得几乎普遍存在,但有关击中开发,功能和实施准备的信息经常享受。理论驱动的编制,评估和整合学术和商业部门信息的方法,是指导利益攸关方决策的周围袭击采纳,并开发务实的打击研究议程。本文介绍了健康信息技术 - 学术和商业评估(命中率)方法,结构化,理论驱动方法,用于编译和评估来自多个扇区的信息。作为方法的示例演示,我们将Hit-Ace应用于心理和行为健康测量反馈系统(MFS)。 MFS是一类特定的击中,支持执行常规结果监测,以证据为基础的实践。结果命中率由与用户以用户为中心的设计和实现科学有关的理论和框架为指导。该方法涉及四个阶段:(1)编码学术和商业材料,(2)开发人员/供应商访谈,(3)将推定的实施机制联系起来击中能力,(4)能力和机制的实验测试。在目前的演示中,第1阶段包括使用学术文献和商业网站识别心理和行为健康的MFS的系统过程。使用以用户为中心的设计,实现科学和反馈框架,开发了,驾驶,并用于通过共识编码过程检查38个能力和18个额外特征的每个识别的系统。还收集了书法数​​据以检查科学文献中系统的代表。作为示例,呈现出用于施加HIT-ACE阶段1至MFS的结果,其中识别49个单独的MFS,反映了各种特性和能力。结论初步调查结果表明,命中率代表特定一类击中的范围和多样性超出了在学术文献中可以识别的内容。阶段2数据收集预计将确认和扩展所提出的信息和阶段3和4将提供有关特定命中能力影响的更细微的信息。总而言之,预计Hit-Ace将支持采用决策和额外的打击发展和实施研究。

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