Medical device similarity analysis: a promising approach to medical device equivalence regulation.

Jan Sündermann, Joaquin Delgado Fernandez, Rupert Kellner, Theodor Doll, Ulrich P Froriep, Annette Bitsch
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Abstract

Background: This study aims to facilitate the identification of similar devices for both, the European Medical Device Regulation (MDR) and the US 510(k) equivalence pathway by leveraging existing data. Both are related to the regulatory pathway of read across for chemicals, where toxicological data from a known substance is transferred to one under investigation, as they aim to streamline the accreditation process for new devices and chemicals.

Research design and methods: This study employs latent semantic analysis to generate similarity values, harnessing the US Food and Drug Administration 510k-database, utilizing their 'Device Descriptions' and 'Intended Use' statements.

Results: For the representative inhaler cluster, similarity values up to 0.999 were generated for devices within a 510(k)-predicate tree, whereas values up to 0.124 were gathered for devices outside this group.

Conclusion: Traditionally, MDR equivalence involves manual review of many devices, which is laborious. However, our results suggest that the automated calculation of similarity coefficients streamlines this process, thus reducing regulatory effort, which can be beneficial for patients needing medical devices. Although this study is focused on the European perspective, it can find application within 510(k) equivalence regulation. The conceptual approach is reminiscent of chemical fingerprint similarity analysis employed in read-across.

医疗器械相似性分析:医疗器械等效性监管的可行方法。
背景:本研究旨在通过利用现有数据,为《欧洲医疗器械法规》(MDR)和美国 510(k) 等效途径识别类似器械提供便利。这两项研究都与化学品的 "跨读 "监管途径有关,即把已知物质的毒理学数据转移到正在调查的物质上,目的是简化新设备和化学品的认证流程:本研究采用潜在语义分析法,利用美国食品和药物管理局 510k 数据库中的 "设备描述 "和 "预期用途 "声明生成相似性值:对于具有代表性的吸入器集群,510(k)-谓词树中的设备的相似性值高达 0.999,而该集群之外的设备的相似性值则高达 0.124:结论:传统上,MDR 等效需要对许多器械进行人工审核,非常费力。然而,我们的研究结果表明,相似性系数的自动计算简化了这一过程,从而减少了监管工作,这对需要医疗器械的患者是有益的。虽然这项研究侧重于欧洲的视角,但它也可应用于 510(k) 等效监管。这种概念方法让人联想到读取交叉中使用的化学指纹相似性分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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