Suraj Rajendran, Weishen Pan, Mert R. Sabuncu, Yong Chen, Jiayu Zhou, Fei Wang
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引用次数: 0
摘要
在医疗保健领域,机器学习(ML)在增强患者护理、改善人口健康和简化医疗保健工作流程方面显示出巨大的潜力。然而,由于担心数据隐私、数据来源的多样性以及不同数据模式的次优利用,机器学习潜力的充分发挥往往受到阻碍。本综述研究了在这种情况下跨队列跨类别(C4)整合的效用:将分布在不同安全地点的不同数据集的信息结合起来的过程。我们认为,C4 方法可以为建立既全面又广泛适用的 ML 模型铺平道路。本文全面概述了 C4 在医疗保健领域的应用,包括其目前所处的阶段、潜在的机遇以及相关的挑战。
Learning across diverse biomedical data modalities and cohorts: Challenges and opportunities for innovation
In healthcare, machine learning (ML) shows significant potential to augment patient care, improve population health, and streamline healthcare workflows. Realizing its full potential is, however, often hampered by concerns about data privacy, diversity in data sources, and suboptimal utilization of different data modalities. This review studies the utility of cross-cohort cross-category (C4) integration in such contexts: the process of combining information from diverse datasets distributed across distinct, secure sites. We argue that C4 approaches could pave the way for ML models that are both holistic and widely applicable. This paper provides a comprehensive overview of C4 in health care, including its present stage, potential opportunities, and associated challenges.