人工智能应用于艾滋病的伦理考量

AI Pub Date : 2024-05-07 DOI:10.3390/ai5020031
Renee Garett, Seungjun Kim, Sean D. Young
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引用次数: 0

摘要

人类免疫缺陷病毒(HIV)是一种令人鄙视的疾病,在 HIV 感染者(PLWH)中,非裔美国人和拉丁裔美国人受到的影响尤为严重。研究人员越来越多地利用人工智能(AI)来分析大量数据,如社交媒体数据和电子健康记录(EHR),以完成从预防和监测到治疗和咨询等各种与 HIV 相关的任务。本文以可接受性、信任度、公平性和透明度为重点,探讨了将人工智能用于艾滋病防治的伦理考虑因素。为提高人工智能系统在艾滋病防治方面的可接受性和信任度,建议采用知情同意和联合学习(FL)方法。关于不公平问题,利益相关者应警惕艾滋病毒人工智能系统进一步污名化,甚至被用作将艾滋病毒感染者定罪的理由。为防止刑事定罪,尤其应研究对数据关联产生的艾滋病毒数据应用不同的隐私保护。参与式设计对于设计更加透明和包容的艾滋病毒人工智能系统至关重要。为此,可能需要同时组建数据伦理委员会,并构建相关框架和原则。最后,我们还提出了一个问题,即超过一定阈值的透明度是否会让患者不堪重负,从而意外引发负面后果。
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Ethical Considerations for Artificial Intelligence Applications for HIV
Human Immunodeficiency Virus (HIV) is a stigmatizing disease that disproportionately affects African Americans and Latinos among people living with HIV (PLWH). Researchers are increasingly utilizing artificial intelligence (AI) to analyze large amounts of data such as social media data and electronic health records (EHR) for various HIV-related tasks, from prevention and surveillance to treatment and counseling. This paper explores the ethical considerations surrounding the use of AI for HIV with a focus on acceptability, trust, fairness, and transparency. To improve acceptability and trust towards AI systems for HIV, informed consent and a Federated Learning (FL) approach are suggested. In regard to unfairness, stakeholders should be wary of AI systems for HIV further stigmatizing or even being used as grounds to criminalize PLWH. To prevent criminalization, in particular, the application of differential privacy on HIV data generated by data linkage should be studied. Participatory design is crucial in designing the AI systems for HIV to be more transparent and inclusive. To this end, the formation of a data ethics committee and the construction of relevant frameworks and principles may need to be concurrently implemented. Lastly, the question of whether the amount of transparency beyond a certain threshold may overwhelm patients, thereby unexpectedly triggering negative consequences, is posed.
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