Department of Medical Data Sharing, Institute of Medical Information & Library, Chinese Academy of Medical Sciences & Peking Union Medical College, Beijing 100020, China.
Int J Environ Res Public Health. 2022 Oct 21;19(20):13691. doi: 10.3390/ijerph192013691.
Artificial intelligence (AI) has driven innovative transformation in healthcare service patterns, despite a lack of understanding of its performance in clinical practice. We conducted a cross-sectional analysis of AI-related trials in healthcare based on ClinicalTrials.gov, intending to investigate the trial characteristics and AI's development status. Additionally, the Neo4j graph database and visualization technology were employed to construct an AI technology application graph, achieving a visual representation and analysis of research hotspots in healthcare AI. A total of 1725 eligible trials that were registered in ClinicalTrials.gov up to 31 March 2022 were included in this study. The number of trial registrations has dramatically grown each year since 2016. However, the AI-related trials had some design drawbacks and problems with poor-quality result reporting. The proportion of trials with prospective and randomized designs was insufficient, and most studies did not report results upon completion. Currently, most healthcare AI application studies are based on data-driven learning algorithms, covering various disease areas and healthcare scenarios. As few studies have publicly reported results on ClinicalTrials.gov, there is not enough evidence to support an assessment of AI's actual performance. The widespread implementation of AI technology in healthcare still faces many challenges and requires more high-quality prospective clinical validation.
人工智能(AI)在医疗服务模式方面带来了创新变革,尽管人们对其在临床实践中的表现了解甚少。我们基于 ClinicalTrials.gov 对医疗保健领域的 AI 相关试验进行了横断面分析,旨在调查试验特征和 AI 的发展状况。此外,我们还使用了 Neo4j 图形数据库和可视化技术构建了 AI 技术应用图,实现了对医疗保健 AI 研究热点的可视化表示和分析。本研究共纳入截至 2022 年 3 月 31 日在 ClinicalTrials.gov 上注册的 1725 项合格试验。自 2016 年以来,试验注册数量每年都在大幅增长。然而,AI 相关试验存在一些设计缺陷和结果报告质量差的问题。前瞻性和随机设计的试验比例不足,且大多数研究在完成后并未报告结果。目前,大多数医疗保健 AI 应用研究基于数据驱动的学习算法,涵盖了各种疾病领域和医疗保健场景。由于很少有研究在 ClinicalTrials.gov 上公开报告结果,因此没有足够的证据来评估 AI 的实际性能。AI 技术在医疗保健中的广泛实施仍然面临许多挑战,需要更多高质量的前瞻性临床验证。