机器学习、重要性和治理:健康和社会护理案例研究

Inf. Polity Pub Date : 2021-02-22 DOI:10.3233/ip-200264
J. Keen, R. Ruddle, Jan Palczewski, G. Aivaliotis, Anna Palczewska, C. Megone, Kevin Macnish
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引用次数: 1

摘要

人们普遍认为,机器学习工具可以用来改善卫生和社会保健方面的决策。与此同时,有人担心它们会对隐私和机密性构成威胁。因此,政策制定者需要制定治理安排,平衡与新工具相关的利益和风险。本文追溯了二级使用个人数据集的信息基础设施的发展历史,包括卫生和社会保健领域活动和服务规划的例行报告。这些发展为研究卫生和社会保健数据集分析新工具对治理的影响提供了广泛的背景。我们发现机器学习工具可以提高对数据集中所代表的人进行推断的能力,尽管这种潜力受到常规数据质量差的限制,而且方法和结果很难向其他利益相关者解释。我们认为,目前的地方治理安排是零碎的,但同时加强了对个人和人口进行推断的能力的集中。他们没有对数据集中的患者和客户提供足够的监督或问责。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning, materiality and governance: A health and social care case study
There is a widespread belief that machine learning tools can be used to improve decision-making in health and social care. At the same time, there are concerns that they pose threats to privacy and confidentiality. Policy makers therefore need to develop governance arrangements that balance benefits and risks associated with the new tools. This article traces the history of developments of information infrastructures for secondary uses of personal datasets, including routine reporting of activity and service planning, in health and social care. The developments provide broad context for a study of the governance implications of new tools for the analysis of health and social care datasets. We find that machine learning tools can increase the capacity to make inferences about the people represented in datasets, although the potential is limited by the poor quality of routine data, and the methods and results are difficult to explain to other stakeholders. We argue that current local governance arrangements are piecemeal, but at the same time reinforce centralisation of the capacity to make inferences about individuals and populations. They do not provide adequate oversight, or accountability to the patients and clients represented in datasets.
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