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Enabling a Learning Healthcare System with Automated Computer Protocols That Produce Replicable and Personalized Clinician Actions

Journal of the American Medical Informatics Association JAMIA(2021)

1978 Quail Estates Way | Intermt Healthcare | Univ Utah | Univ Utah Hosp & Clin | Univ Texas Hlth Sci Ctr Houston | SYNCRONYS | Univ Nevada | ASST Monza San Gerardo Hosp | Osped Desio ASST Monza | Brigham & Womens Hosp | Harvard Med Sch | Vanderbilt Univ Sch Med | Tennessee Valley Vet Affairs Geriatr Res Educ Cli | Med Coll Wisconsin | Johns Hopkins Univ | Univ Cincinnati | Virginia Commonwealth Univ | Univ Washington | Univ Penn | Univ Southern Calif | Gleneagles Hosp | Louisiana State Univ | Ann & Robert H Lurie Childrens Hosp Chicago | Univ Toronto | NYU | Mayo Clin | Yale Univ | Case Western Reserve Univ | Kaiser Permanente Northwest Ctr Hlth Res | Univ Paris | Natl Jewish Hlth | Univ Pittsburgh | Stanford Univ | Inst Healthcare Improvement

Cited 29|Views77
Abstract
Clinical decision-making is based on knowledge, expertise, and authority, with clinicians approving almost every intervention-the starting point for delivery of "All the right care, but only the right care," an unachieved healthcare quality improvement goal. Unaided clinicians suffer from human cognitive limitations and biases when decisions are based only on their training, expertise, and experience. Electronic health records (EHRs) could improve healthcare with robust decision-support tools that reduce unwarranted variation of clinician decisions and actions. Current EHRs, focused on results review, documentation, and accounting, are awkward, time-consuming, and contribute to clinician stress and burnout. Decision-support tools could reduce clinician burden and enable replicable clinician decisions and actions that personalize patient care. Most current clinical decision-support tools or aids lack detail and neither reduce burden nor enable replicable actions. Clinicians must provide subjective interpretation and missing logic, thus introducing personal biases and mindless, unwarranted, variation from evidence-based practice. Replicability occurs when different clinicians, with the same patient information and context, come to the same decision and action. We propose a feasible subset of therapeutic decision-support tools based on credible clinical outcome evidence: computer protocols leading to replicable clinician actions (eActions). eActions enable different clinicians to make consistent decisions and actions when faced with the same patient input data. eActions embrace good everyday decision-making informed by evidence, experience, EHR data, and individual patient status. eActions can reduce unwarranted variation, increase quality of clinical care and research, reduce EHR noise, and could enable a learning healthcare system.
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Clinical Decision Support Systems,Electronic Health Records,Clinical Event Prediction
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要点】:本文提出了一种基于计算机协议的自动化决策支持工具(eActions),旨在减少临床决策中的主观偏差和变异,提高医疗质量并促进学习型医疗系统的构建。

方法】:作者通过整合临床证据、经验、电子病历(EHR)数据以及患者个体状况,设计了一套可复制且个性化的临床决策支持工具(eActions)。

实验】:论文未提供具体实验细节,但提及了eActions在提高临床决策一致性、减少不必要的变异、提升医疗质量方面的潜力,以及其在构建学习型医疗系统中的应用。未提及具体的数据集名称。