数据切割:iToBoS 项目中健康数据的风险、益处、紧张关系和技术。

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES Frontiers in digital health Pub Date : 2024-01-31 eCollection Date: 2024-01-01 DOI:10.3389/fdgth.2024.1272709
Niamh Aspell, Abigail Goldsteen, Robin Renwick
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引用次数: 0

摘要

本文将讨论由欧洲委员会资助的 iToBoS 项目,该项目旨在开发一个用于早期检测皮肤黑色素瘤的人工智能诊断平台。本文将概述该项目,概述正在处理的数据,描述影响评估过程,并解释正在部署的人工智能隐私风险缓解方法。随后,本文将简要讨论一些较为复杂的方面:(1) 人口数量相对较少的临床试验研究队列,这带来了与数据可区分性和应用匿名化工具的掩盖能力相关的风险;(2) 鉴于技术的复杂性,项目从研究队列中获得知情同意的能力;(3) 项目对开放研究数据策略的承诺,以及保护多模式研究数据所需的额外隐私风险缓解措施;(4) 项目向广泛的利益相关者充分解释算法组件输出的能力。本文将讨论这些复杂性如何造成紧张局势,这些紧张局势反映了健康领域更广泛的紧张局势。项目层面的解决方案包括与黑色素瘤患者网络合作,作为与患者利益相关者群体一起对风险和收益进行公平、有代表性鉴定的途径。然而,由于人工智能、开放数据战略和包括基因组学在内的多模式数据集的不断涌现,健康领域对创新的不懈追求,目前尚不清楚这一过程的可扩展性。
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Dicing with data: the risks, benefits, tensions and tech of health data in the iToBoS project.

This paper will discuss the European funded iToBoS project, tasked by the European Commission to develop an AI diagnostic platform for the early detection of skin melanoma. The paper will outline the project, provide an overview of the data being processed, describe the impact assessment processes, and explain the AI privacy risk mitigation methods being deployed. Following this, the paper will offer a brief discussion of some of the more complex aspects: (1) the relatively low population clinical trial study cohort, which poses risks associated with data distinguishability and the masking ability of the applied anonymisation tools, (2) the project's ability to obtain informed consent from the study cohort given the complexity of the technologies, (3) the project's commitment to an open research data strategy and the additional privacy risk mitigations required to protect the multi-modal study data, and (4) the ability of the project to adequately explain the outputs of the algorithmic components to a broad range of stakeholders. The paper will discuss how the complexities have caused tension which are reflective of wider tensions in the health domain. A project level solution includes collaboration with a melanoma patient network, as an avenue for fair and representative qualification of risks and benefits with the patient stakeholder group. However, it is unclear how scalable this process is given the relentless pursuit of innovation within the health domain, accentuated by the continued proliferation of artificial intelligence, open data strategies, and the integration of multi-modal data sets inclusive of genomics.

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CiteScore
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审稿时长
13 weeks
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