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Requirements and validation of a prototype learning health system for clinical diagnosis

机译:用于临床诊断的原型学习健康系统的要求和验证

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IntroductionDiagnostic error is a major threat to patient safety in the context of family practice. The patient safety implications are severe for both patient and clinician. Traditional approaches to diagnostic decision support have lacked broad acceptance for a number of well-documented reasons: poor integration with electronic health records and clinician workflow, static evidence that lacks transparency and trust, and use of proprietary technical standards hindering wider interoperability. The learning health system (LHS) provides a suitable infrastructure for development of a new breed of learning decision support tools. These tools exploit the potential for appropriate use of the growing volumes of aggregated sources of electronic health records. MethodsWe describe the experiences of the TRANSFoRm project developing a diagnostic decision support infrastructure consistent with the wider goals of the LHS. We describe an architecture that is model driven, service oriented, constructed using open standards, and supports evidence derived from electronic sources of patient data. We describe the architecture and implementation of 2 critical aspects for a successful LHS: the model representation and translation of clinical evidence into effective practice and the generation of curated clinical evidence that can be used to populate those models, thus closing the LHS loop. Results/ConclusionsSix core design requirements for implementing a diagnostic LHS are identified and successfully implemented as part of this research work. A number of significant technical and policy challenges are identified for the LHS community to consider, and these are discussed in the context of evaluating this work: medico-legal responsibility for generated diagnostic evidence, developing trust in the LHS (particularly important from the perspective of decision support), and constraints imposed by clinical terminologies on evidence generation.
机译:简介在家庭实践中,诊断错误是对患者安全的主要威胁。对患者和临床医生而言,患者安全隐患严重。由于许多有据可查的原因,传统的诊断决策支持方法尚未得到广泛接受:与电子病历和临床医生工作流程的集成不良,缺乏透明度和信任的静态证据以及专有技术标准的使用阻碍了广泛的互操作性。学习健康系统(LHS)为开发新型学习决策支持工具提供了合适的基础架构。这些工具充分利用了不断增长的电子病历汇总源的潜力。方法我们描述了TRANSFoRm项目开发与LHS的更广泛目标一致的诊断决策支持基础结构的经验。我们描述了一种基于模型的,面向服务的,使用开放标准构建的体系结构,并支持从患者数据的电子来源获得的证据。我们描述了成功的LHS的两个关键方面的体系结构和实现:模型表示和将临床证据转换为有效实践以及生成可用于填充这些模型的精选临床证据,从而封闭了LHS循环。结果/结论确定了实施诊断LHS的六项核心设计要求,并将其成功实施为这项研究工作的一部分。确定了LHS社区要考虑的许多重大技术和政策挑战,并在评估这项工作的背景下进行了讨论:产生诊断证据的法律法律责任,对LHS的信任(从决策支持),以及临床术语对证据产生的限制。

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