公共利益的个人数据:技术增强抗菌素耐药性监测社会许可的监管决定因素。

IF 0.6 Q2 LAW
Journal of Law and Medicine Pub Date : 2023-05-01
David J Carter, Mitchell K Byrne, Steven P Djordjevic, Hamish Robertson, Maurizio Labbate, Branwen S Morgan, Lisa Billington
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引用次数: 0

摘要

已经提出了技术上增强的监测系统,以监测和应对人类、动物和环境环境中的抗菌素耐药性。这些系统的使用尚处于起步阶段,尽管2019冠状病毒病的出现使应对该大流行的类似技术取得了进展。我们进行了定性研究,以确定澳大利亚公众对人工智能(AI)和机器学习增强的One Health抗菌素耐药性监测系统的伦理、法律和社会影响的主要担忧。我们的研究提供了公众支持人工智能/机器学习增强的单一健康AMR监测系统的初步证据,前提是满足三个主要条件:个人医疗保健数据必须被识别;必须在强有力的治理下严格监管数据的使用和访问;该系统必须生成高质量、可靠的分析,以指导值得信赖的医疗保健决策者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personal Data for Public Benefit: The Regulatory Determinants of Social Licence for Technologically Enhanced Antimicrobial Resistance Surveillance.

Technologically enhanced surveillance systems have been proposed for the task of monitoring and responding to antimicrobial resistance (AMR) in both human, animal and environmental contexts. The use of these systems is in their infancy, although the advent of COVID-19 has progressed similar technologies in response to that pandemic. We conducted qualitative research to identify the Australian public's key concerns about the ethical, legal and social implications of an artificial intelligence (AI) and machine learning-enhanced One Health AMR surveillance system. Our study provides preliminary evidence of public support for AI/machine learning-enhanced One Health monitoring systems for AMR, provided that three main conditions are met: personal health care data must be deidentified; data use and access must be tightly regulated under strong governance; and the system must generate high-quality, reliable analyses to guide trusted health care decision-makers.

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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
63
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