人工智能促进病人流动

Cadth Horizon, Scan
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AI-driven tools can leverage big data and digital information systems (e.g., electronic health records) to facilitate effective patient flow. \nAI-based patient appointment scheduling tools, which can help improve patient flow, are created to automate appointment scheduling and optimize it by minimizing wait times and matching the demand for health services and hospital capacity. \n \nWhat Is the Potential Impact? \n \nAI tools for patient flow management can support volume forecasting of patients with various conditions, especially those experiencing chronic conditions that require different types of treatment or care in different settings over a long period of time. \nThese AI tools can predict admissions, patient movement from the emergency department to inpatient beds, discharge, and transfers to different health care settings. 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引用次数: 0

摘要

为什么这是一个问题? 病人流动效率低下会导致医疗机构过度拥挤,并给下游临床治疗结果和病人体验带来负面影响。患者流管理旨在实现患者在医疗保健系统、急诊和长期医疗机构之间的无缝流动,确保患者及时获得优质护理。 技术是什么? 基于人工智能(AI)的患者流程管理工具是一种干预措施,旨在预测和监控患者从入院到出院期间在不同护理环境中的流动情况。人工智能驱动的工具可以利用大数据和数字信息系统(如电子健康记录)来促进有效的患者流动。基于人工智能的患者预约安排工具可以帮助改善患者流,其创建目的是通过最大限度地减少等待时间并使医疗服务需求与医院能力相匹配来实现预约安排的自动化和优化。 潜在影响是什么? 用于患者流管理的人工智能工具可以支持对各种病情的患者进行数量预测,尤其是那些需要在不同环境中长期接受不同类型治疗或护理的慢性病患者。这些人工智能工具可以预测入院情况、病人从急诊科到住院床位的流动情况、出院情况以及转到不同医疗机构的情况。有证据表明,这些工具对急诊入院患者、转入三级和四级医疗机构的患者以及普通科室、心脏科和精神卫生科的住院患者都很有效。此外,有证据表明,人工智能工具可以优化普通门诊和手术室的预约安排。在加拿大的医疗保健系统中,正在使用或研究人工智能工具,通过预测急诊入院、转入其他级别的护理和普通住院病人出院情况,以及优化接受肿瘤护理的病人的容量规划,来提高病人流量。目前,加拿大各地的一些肿瘤护理机构和手术室正在使用人工智能预约安排工具。人工智能系统的实施通常需要时间和其他资源的前期投入,此外还需要系统本身的设置、集成和人员培训等财务成本。从长远来看,这些系统的目标是提高效率,节省资金、时间和人力资源。 我们还需要了解什么? 在电子健康记录系统和患者数据集上训练的人工智能工具的广泛应用会涉及患者隐私和数据安全问题。在缺乏充分代表所有相关患者的数据集上训练的人工智能算法可能无法准确预测患者的流量。包含所有相关患者群体充足数据的训练数据集可确保算法的输入和输出准确反映患者的护理需求,并减少潜在的偏差。为了准确预测本地患者的护理需求,人工智能算法一旦部署,就应该在特定地点的数据集上进行再训练,这些数据集包含了正在使用这些算法的医院或医疗系统中具有代表性的患者群体的数据。并非所有机构都拥有可用于充分或高效处理这些人工智能系统所需的大量数据的硬件或计算能力,也并非所有机构都拥有使用大数据(如来自电子健康记录的数据)所需的基础设施,因此可能需要额外的资源来实施以及持续维护和更新系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence for Patient Flow
Why Is This an issue? Inefficient patient flow contributes to the overcrowding of health care settings and negative clinical outcomes and patient experiences downstream. Patient flow management aims to achieve seamless patient movement through the health care system and between acute and long-term settings, ensuring timely access to quality care. What Is the Technology? Artificial intelligence (AI)-based patient flow management tools are interventions designed to forecast and monitor patient movement from admission to discharge as they progress through different care settings. AI-driven tools can leverage big data and digital information systems (e.g., electronic health records) to facilitate effective patient flow. AI-based patient appointment scheduling tools, which can help improve patient flow, are created to automate appointment scheduling and optimize it by minimizing wait times and matching the demand for health services and hospital capacity. What Is the Potential Impact? AI tools for patient flow management can support volume forecasting of patients with various conditions, especially those experiencing chronic conditions that require different types of treatment or care in different settings over a long period of time. These AI tools can predict admissions, patient movement from the emergency department to inpatient beds, discharge, and transfers to different health care settings. Evidence for their effectiveness in patients with emergency admissions and those transferred to tertiary and quaternary care, as well as inpatients from the general, cardiology, and mental health departments, was reported. In addition, evidence suggested that AI tools can optimize appointment scheduling in general outpatient settings and operating rooms. In health care systems in Canada, AI tools are being used or investigated to enhance patient flow by predicting emergency admissions, transfers to alternate levels of care, and general inpatient discharges, as well as optimizing capacity planning for patients receiving oncology care. AI appointment scheduling tools are currently being used in some oncology care settings and operating rooms across Canada. The implementation of AI systems generally requires an upfront investment of time and other resources in addition to the financial cost of the system itself for set-up, integration, and staff training. The goal of these systems is to improve efficiency and save money, time, and human resources in the long run. What Else Do We Need to Know? Patient privacy and data security issues are concerns regarding widespread implementation of AI tools trained on electronic health records systems and patient datasets. AI algorithms trained on datasets lacking adequate representation of all relevant patients may not predict their flow accurately. Training datasets with sufficient data from all relevant patient groups can ensure the inputs and outputs of the algorithms accurately reflect patient care needs and mitigate potential bias. To accurately predict the care needs of local patients, AI algorithms, once deployed, should be retrained on site-specific datasets containing data for the patient populations that are representative of the hospital or health system in which they are being used. Not all institutions have the hardware or computing power available to adequately or efficiently process the large amounts of data that are required by these AI systems, or the infrastructure needed to use big data (e.g., from electronic health records), and may require additional resources for implementation, as well as for ongoing maintenance and updating of the systems.
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