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Rise of Clinical Studies in the Field of Machine Learning: A Review of Data Registered in ClinicalTrials.gov

机译:机器学习领域临床研究的兴起:临床上注册的数据综述.GOV

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摘要

Although advances in machine-learning healthcare applications promise great potential for innovative medical care, few data are available on the translational status of these new technologies. We aimed to provide a comprehensive characterization of the development and status quo of clinical studies in the field of machine learning. For this purpose, we performed a registry-based analysis of machine-learning-related studies that were published and first available in the ClinicalTrials.gov database until 2020, using the database’s study classification. In total, n = 358 eligible studies could be included in the analysis. Of these, 82% were initiated by academic institutions/university (hospitals) and 18% by industry sponsors. A total of 96% were national and 4% international. About half of the studies (47%) had at least one recruiting location in a country in North America, followed by Europe (37%) and Asia (15%). Most of the studies reported were initiated in the medical field of imaging (12%), followed by cardiology, psychiatry, anesthesia/intensive care medicine (all 11%) and neurology (10%). Although the majority of the clinical studies were still initiated in an academic research context, the first industry-financed projects on machine-learning-based algorithms are becoming visible. The number of clinical studies with machine-learning-related applications and the variety of medical challenges addressed serve to indicate their increasing importance in future clinical care. Finally, they also set a time frame for the adjustment of medical device-related regulation and governance.
机译:虽然机器学习医疗保健应用的进步承诺创新医疗保健的巨大潜力,但这些新技术的翻译状况很少有数据。我们旨在提供机器学习领域临床研究的发展和现状的全面特征。为此目的,我们执行了基于注册表的基于机器学习相关的研究的分析,这些研究已发布,并在ClinicalTrials.gov数据库中发布并首先可用,直到2020年,使用数据库的研究分类。总共,N = 358符合条件的研究可以包括在分析中。其中,82%由学术机构/大学(医院)发起,由行业赞助商18%发起。共有96%的国家和4%国际。大约一半的研究(47%)在北美的一个国家至少有一个招聘地点,其次是欧洲(37%)和亚洲(15%)。报告的大多数研究都在成像(12%)的医学领域开始,其次是心脏病学,精神病学,麻醉/密集护理药物(全11%)和神经学(10%)。虽然大多数临床研究在学术研究环境中仍然是在学术研究环境中启动的,但是基于机器学习的算法的第一个行业资助的项目变得可见。与机器学习相关的申请的临床研究数量和解决的各种医疗挑战有助于表明他们在未来的临床护理中越来越重要。最后,他们还设定了调整医疗器械相关的监管和治理的时间框架。

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