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基于人工智能/机器学习的医疗器械在美国和日本获准用于分诊/检测/诊断的测试设计和性能的系统分析。

Systematic analysis of the test design and performance of AI/ML-based medical devices approved for triage/detection/diagnosis in the USA and Japan.

机构信息

Cooperative Major in Advanced Biomedical Sciences, Joint Graduate School of Tokyo Women's Medical University and Waseda University, Waseda University, 2-2 Wakamatsucho, Shinjuku, Tokyo, 162-8480, Japan.

Department of Modern Mechanical Engineering, School of Creative Science and Engineering, Waseda University, Tokyo, Japan.

出版信息

Sci Rep. 2022 Oct 7;12(1):16874. doi: 10.1038/s41598-022-21426-7.

Abstract

The development of computer-aided detection (CAD) using artificial intelligence (AI) and machine learning (ML) is rapidly evolving. Submission of AI/ML-based CAD devices for regulatory approval requires information about clinical trial design and performance criteria, but the requirements vary between countries. This study compares the requirements for AI/ML-based CAD devices approved by the US Food and Drug Administration (FDA) and the Pharmaceuticals and Medical Devices Agency (PMDA) in Japan. A list of 45 FDA-approved and 12 PMDA-approved AI/ML-based CAD devices was compiled. In the USA, devices classified as computer-aided simple triage were approved based on standalone software testing, whereas devices classified as computer-aided detection/diagnosis were approved based on reader study testing. In Japan, however, there was no clear distinction between evaluation methods according to the category. In the USA, a prospective randomized controlled trial was conducted for AI/ML-based CAD devices used for the detection of colorectal polyps, whereas in Japan, such devices were approved based on standalone software testing. This study indicated that the different viewpoints of AI/ML-based CAD in the two countries influenced the selection of different evaluation methods. This study's findings may be useful for defining a unified global development and approval standard for AI/ML-based CAD.

摘要

基于人工智能(AI)和机器学习(ML)的计算机辅助检测(CAD)的发展正在迅速发展。提交用于监管批准的基于 AI/ML 的 CAD 设备需要有关临床试验设计和性能标准的信息,但各国的要求不同。本研究比较了获得美国食品和药物管理局(FDA)和日本药品和医疗器械管理局(PMDA)批准的基于 AI/ML 的 CAD 设备的要求。编制了一份获得美国 FDA 批准的 45 种和获得日本 PMDA 批准的 12 种基于 AI/ML 的 CAD 设备的清单。在美国,被归类为计算机辅助简单分诊的设备是基于独立软件测试获得批准的,而被归类为计算机辅助检测/诊断的设备是基于阅读器研究测试获得批准的。然而,在日本,根据类别没有明确区分评估方法。在美国,针对用于检测结直肠息肉的基于 AI/ML 的 CAD 设备进行了前瞻性随机对照试验,而在日本,此类设备是基于独立软件测试获得批准的。本研究表明,两国对基于 AI/ML 的 CAD 的不同观点影响了评估方法的选择。本研究的结果可能有助于为基于 AI/ML 的 CAD 的全球统一开发和批准标准提供参考。

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