关闭人工智能、电子病历和供应商合作伙伴关系:改善人口健康管理的关键?

A. Kurek, D. Langholz, Aiesha Ahmed
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摘要

人工智能(AI)在医疗保健,更具体地说,人口健康方面的能力和兴趣在过去十年中呈指数级增长。由于人口老龄化和对成像需求的不断增长,放射科积累了大量以图像形式出现的数字数据或“大数据”,为人工智能应用提供了充足的机会,使放射科成为人工智能在医疗领域的服务线领导者。随着各组织努力将其服务转向早期识别和干预,特别是与慢性病有关的早期识别和干预,人工智能的筛查和检测能力使其成为人口健康管理的宝贵工具。本文描述了相互开发和集成的临床、技术和操作工作流程,以支持采用旨在检测亚临床骨质疏松症和冠状动脉疾病的人工智能算法。在人口健康管理和风险合同安排的背景下,审查和权衡人工智能的好处和潜在的缺点。讨论了缓解策略,以及在避免成本、医生使用循证临床途径和减少主要患者事件(如中风、髋部骨折)方面的预期结果。数据收集和分析的计划也被描述为项目评估。
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Closing the Look in AI, EMR and Provider Partnerships: The Key to Improved Population Health Management?
The capabilities of and interest in artificial intelligence (AI) in healthcare, and more specifically, population health, has grown exponentially over the past decade. The vast volume of digital data or “big data” in the form of images generated by an aging population, with an ever-increasing demand for imaging, amassed by radiology departments, provides ample opportunity for AI application and has allowed radiology to become a service line leader of AI in the medical field. The screening and detection capabilities of AI make it a valuable tool in population health management, as organizations work to shift their services to early identification and intervention, especially as it relates to chronic disease. In this paper, the clinical, technological, and operational workflows that were developed and integrated within each other to support the adoption of AI algorithms aimed at detecting subclinical osteoporosis and coronary artery disease are described. The benefits of AI are reviewed and weighed against potential drawbacks within the context of population health management and risk contract arrangements. Mitigation tactics are discussed, as well as the anticipated outcomes in terms of cost-avoidance, physician use of evidence-based clinical pathways, and reduction in major patient events (e.g., stroke, hip fracture). The plan for data collection and analysis is also described for program evaluation.
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