为机构整合选择人工智能解决方案的战略考虑因素:单个中心的经验

Janice L. Pascoe BRMP , Luqing Lu MS , Matthew M. Moore MFA , Daniel J. Blezek PhD , Annie E. Ovalle BS , Jane A. Linderbaum APRN, CNP , Matthew R. Callstrom MD, PhD , Eric E. Williamson MD
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引用次数: 0

摘要

人工智能(AI)有望彻底改变医疗保健。疾病的早期识别、适当的测试选择以及重复性任务的自动化有望优化具有成本效益的医疗服务。然而,如何务实地选择和整合人工智能算法以实现这一变革仍然充满挑战。医疗保健领导者必须在人工智能部署方面做出复杂的决策,考虑实施成本、对患者和医疗服务提供者的益处以及机构对采用人工智能的准备程度等因素。成功的战略需要将人工智能的采用与机构的优先事项相结合,选择合适的算法进行购买或内部开发,并确保有足够的支持和基础设施。此外,成功的部署需要算法验证和工作流程整合,以确保有效性和可用性。以用户为中心的设计原则和可用性测试对采用人工智能至关重要,可确保无缝集成到临床工作流程中。一旦部署,持续改进流程和不断的算法支持可确保临床实践持续获益。要在复杂的医疗环境中实施人工智能,就必须进行严密的规划和执行。通过应用本文概述的框架,医疗机构可以驾驭人工智能在医疗保健领域不断发展的复杂环境,最大限度地发挥这些创新技术的优势。
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Strategic Considerations for Selecting Artificial Intelligence Solutions for Institutional Integration: A Single-Center Experience
Artificial intelligence (AI) promises to revolutionize health care. Early identification of disease, appropriate test selection, and automation of repetitive tasks are expected to optimize cost-effective care delivery. However, pragmatic selection and integration of AI algorithms to enable this transformation remain challenging. Health care leaders must navigate complex decisions regarding AI deployment, considering factors such as cost of implementation, benefits to patients and providers, and institutional readiness for adoption. A successful strategy needs to align AI adoption with institutional priorities, select appropriate algorithms to be purchased or internally developed, and ensure adequate support and infrastructure. Further, successful deployment requires algorithm validation and workflow integration to ensure efficacy and usability. User-centric design principles and usability testing are critical for AI adoption, ensuring seamless integration into clinical workflows. Once deployed, continuous improvement processes and ongoing algorithm support ensure continuous benefits to the clinical practice. Vigilant planning and execution are necessary to navigate the complexities of AI implementation in the health care environment. By applying the framework outlined in this article, institutions can navigate the ever-evolving and complex environment of AI in health care to maximize the benefits of these innovative technologies.
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来源期刊
Mayo Clinic Proceedings. Digital health
Mayo Clinic Proceedings. Digital health Medicine and Dentistry (General), Health Informatics, Public Health and Health Policy
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