Risks and benefits associated with the primary functions of artificial intelligence powered autoinjectors

IF 2.7 Q3 ENGINEERING, BIOMEDICAL Frontiers in medical technology Pub Date : 2024-04-05 DOI:10.3389/fmedt.2024.1331058
M. Machal
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Abstract

Objectives This research aims to present and assess the Primary Functions of autoinjectors introduced in ISO 11608-1:2022. Investigate the risks in current autoinjector technology, identify and assess risks and benefits associated with Artificial Intelligence (AI) powered autoinjectors, and propose a framework for mitigating these risks. ISO 11608-1:2022 is a standard that specifies requirements and test methods for needle-based injection systems intended to deliver drugs, focusing on design and function to ensure patient safety and product effectiveness. ‘KZH’ is an FDA product code used to classify autoinjectors, for regulatory purposes, ensuring they meet defined safety and efficacy standards before being marketed. Method A comprehensive analysis of autoinjectors problems is conducted using data from the United States Food and Drug Administration (FDA) database. This database records medical device reporting events, including those related to autoinjectors, reported by various sources. The analysis focuses on events associated with the product code KZH, covering data from January 1, 2008, to September 30, 2023. This research employs statistical frequency analysis and incorporates pertinent the FDA, United Kingdom, European Commission regulations, and ISO standards. Results 500 medical device reporting events are assessed for autoinjectors under the KZH code. Ultimately, 188 of these events are confirmed to be associated with autoinjectors, all 500 medical devices were seen to lack AI capabilities. An analysis of these events for traditional mechanical autoinjectors revealed a predominant occurrence of malfunctions (72%) and injuries (26%) among event types. Device problems, such as breakage, defects, jams, and others, accounted for 45% of incidents, while 10% are attributed to patient problems, particularly missed and underdoses. Conclusion Traditional autoinjectors are designed to assist patients in medication administration, underscoring the need for quality control, reliability, and design enhancements. AI autoinjectors, sharing this goal, bring additional cybersecurity and software risks, requiring a comprehensive risk management framework that includes standards, tools, training, and ongoing monitoring. The integration of AI promises to improve functionality, enable real-time monitoring, and facilitate remote clinical trials, timely interventions, and tailored medical treatments.
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与人工智能驱动的自动注射器主要功能相关的风险和益处
目标 本研究旨在介绍和评估 ISO 11608-1:2022 中引入的自动注射器的主要功能。调查当前自动注射器技术的风险,识别和评估与人工智能(AI)驱动的自动注射器相关的风险和益处,并提出降低这些风险的框架。ISO 11608-1:2022 是一项标准,规定了用于给药的针式注射系统的要求和测试方法,重点关注设计和功能,以确保患者安全和产品有效性。KZH "是美国食品和药物管理局用于对自动注射器进行分类的产品代码,用于监管目的,确保自动注射器在上市前符合规定的安全性和有效性标准。方法 利用美国食品和药物管理局(FDA)数据库中的数据,对自动注射器问题进行全面分析。该数据库记录了各种来源报告的医疗器械报告事件,包括与自动注射器有关的事件。分析的重点是与产品代码 KZH 相关的事件,涵盖 2008 年 1 月 1 日至 2023 年 9 月 30 日的数据。这项研究采用了统计频率分析法,并结合了相关的 FDA、英国、欧盟委员会法规和 ISO 标准。结果 评估了 500 起 KZH 代码下的自动注射器医疗器械报告事件。最终,188 起事件被证实与自动注射器有关,所有 500 起医疗器械事件都被认为缺乏人工智能功能。对这些传统机械式自动注射器事件的分析表明,在事件类型中,故障(72%)和伤害(26%)占主导地位。设备问题(如破损、缺陷、卡住等)占事件的 45%,而 10%则归因于患者问题,尤其是漏服和少服。结论 传统自动注射器旨在协助患者用药,因此需要加强质量控制、可靠性和设计。人工智能自动注射器在实现这一目标的同时,也带来了额外的网络安全和软件风险,需要一个包括标准、工具、培训和持续监控在内的全面风险管理框架。人工智能的集成有望提高功能性,实现实时监控,促进远程临床试验、及时干预和定制医疗。
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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来源期刊
CiteScore
3.70
自引率
0.00%
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0
审稿时长
13 weeks
期刊最新文献
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