Pulmonary, Critical Care, and Sleep Division, Department of Internal Medicine.
Department of Biomedical Informatics.
J Am Med Inform Assoc. 2021 Jun 12;28(6):1330-1344. doi: 10.1093/jamia/ocaa294.
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.
临床决策基于知识、专业技能和权威,临床医生几乎批准了每一项干预措施——这是实现“所有正确的护理,但只有正确的护理”这一医疗质量改进目标的起点。如果仅基于培训、专业知识和经验做出决策,未得到辅助的临床医生会受到人类认知局限性和偏见的影响。电子健康记录 (EHR) 可以通过强大的决策支持工具来改善医疗保健,这些工具可以减少临床医生决策和行动的不必要差异。当前的 EHR 侧重于结果审查、文档记录和核算,使用起来既繁琐又耗时,还会增加临床医生的压力和疲惫感。决策支持工具可以减轻临床医生的负担,并实现可复制的临床医生决策和行动,从而实现个性化的患者护理。目前大多数临床决策支持工具或辅助工具缺乏细节,既不能减轻负担,也不能实现可复制的行动。临床医生必须提供主观解释和缺失的逻辑,从而引入个人偏见和盲目、不必要的、脱离循证实践的决策。当不同的临床医生使用相同的患者信息和背景得出相同的决策和行动时,就会出现可复制性。我们提出了一组基于可靠临床结果证据的可行治疗决策支持工具子集:导致可复制临床行动 (eActions) 的计算机方案。eActions 使不同的临床医生在面对相同的患者输入数据时能够做出一致的决策和行动。eActions 采用循证、经验、EHR 数据和个体患者状况来指导日常决策。eActions 可以减少不必要的差异,提高临床护理和研究质量,减少 EHR 噪音,并能够实现学习型医疗保健系统。