Selective Deployment of AI in Healthcare and the Problem of Declining Human Expertise
Machine-learning algorithms are transforming healthcare diagnostics and prognostics. However, they sometimes underperform for groups underrepresented in their training data. Vandersluis and Savulescu have suggested selectively deploying these algorithms for populations well represented in the traini...
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| 格式: | 电子 文件 |
| 语言: | English |
| Check availability: | HBZ Gateway |
| Interlibrary Loan: | Interlibrary Loan for the Fachinformationsdienste (Specialized Information Services in Germany) |
| 出版: |
2025
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| In: |
Bioethics
Year: 2025, 卷: 39, 发布: 7, Pages: 688-692 |
| Further subjects: | B
underrepresented groups
B Algorithms B Bias B Artificial Intelligence B Expertise |
| 在线阅读: |
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| 总结: | Machine-learning algorithms are transforming healthcare diagnostics and prognostics. However, they sometimes underperform for groups underrepresented in their training data. Vandersluis and Savulescu have suggested selectively deploying these algorithms for populations well represented in the training data, while excluding underrepresented groups until improvements are made to the algorithms. In this paper, I explore one long-term risk of such selective deployment for certain small underrepresented groups, such as those with rare diseases. The risk in question is the potential long-term decline in the human expertise critical for such small groups, which, because they are excluded from effective care by the algorithm, would still rely on non-algorithmic, human expertise even in the long run. I then discuss how to best preserve human expertise and maintain long-term access to quality care for excluded groups and contend that such expertise preservation is essential for ethical deployment of algorithmic processes in healthcare. |
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| ISSN: | 1467-8519 |
| Contains: | Enthalten in: Bioethics
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| Persistent identifiers: | DOI: 10.1111/bioe.13424 |