建立医学人工智能研究中心

Curtis P. Langlotz MD, PhD , Johanna Kim MPH, MBA , Nigam Shah MBBS, PhD , Matthew P. Lungren MD, MPH , David B. Larson MD, MBA , Somalee Datta PhD , Fei Fei Li PhD , Ruth O’Hara PhD , Thomas J. Montine MD, PhD , Robert A. Harrington MD , Garry E. Gold MD, MS
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摘要

人工智能(AI)和机器学习(ML)正在推动生物科学的创新,并已经影响到医学奖学金和临床护理的关键要素。许多医学院正在利用这些新技术的前景,通过建立学术单位来促进和发展人工智能/机器学习的研究和创新。在斯坦福大学,我们在学术领袖、临床部门、校外资助和行业合作伙伴的支持下,为人工智能/机器学习研究中心开发了一个成功的模型。医学和成像中的人工智能中心使用以下4个关键策略来支持AI/ML研究:基于项目的学习机会,建立跨学科合作;促进校外资金的内部拨款计划;促进快速创建大型多模式人工智能临床数据集的基础设施;以及教育和开放数据项目,吸引更广泛的研究界参与。该中心的前提是基础研究和应用研究不是对立的,而是相辅相成的。用AI/ML解决重要的生物医学问题需要高质量的基础团队科学,结合临床医生、临床医生科学家、计算机科学家和数据科学家的知识和专业知识。随着人工智能/机器学习成为研究和临床护理的重要组成部分,人工智能/机器学习的多学科卓越中心将成为学术医疗中心学术组合的关键部分,并将为负责任、道德和公平地实施人工智能/机器学习系统提供基础。
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Developing a Research Center for Artificial Intelligence in Medicine
Artificial intelligence (AI) and machine learning (ML) are driving innovation in biosciences and are already affecting key elements of medical scholarship and clinical care. Many schools of medicine are capitalizing on the promise of these new technologies by establishing academic units to catalyze and grow research and innovation in AI/ML. At Stanford University, we have developed a successful model for an AI/ML research center with support from academic leaders, clinical departments, extramural grants, and industry partners. The Center for Artificial Intelligence in Medicine and Imaging uses the following 4 key tactics to support AI/ML research: project-based learning opportunities that build interdisciplinary collaboration; internal grant programs that catalyze extramural funding; infrastructure that facilitates the rapid creation of large multimodal AI-ready clinical data sets; and educational and open data programs that engage the broader research community. The center is based on the premise that foundational and applied research are not in tension but instead are complementary. Solving important biomedical problems with AI/ML requires high-quality foundational team science that incorporates the knowledge and expertise of clinicians, clinician scientists, computer scientists, and data scientists. As AI/ML becomes an essential component of research and clinical care, multidisciplinary centers of excellence in AI/ML will become a key part of the scholarly portfolio of academic medical centers and will provide a foundation for the responsible, ethical, and fair implementation of AI/ML systems.
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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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