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A translational perspective towards clinical AI fairness
65
Zitationen
15
Autoren
2023
Jahr
Abstract
Abstract Artificial intelligence (AI) has demonstrated the ability to extract insights from data, but the fairness of such data-driven insights remains a concern in high-stakes fields. Despite extensive developments, issues of AI fairness in clinical contexts have not been adequately addressed. A fair model is normally expected to perform equally across subgroups defined by sensitive variables (e.g., age, gender/sex, race/ethnicity, socio-economic status, etc.). Various fairness measurements have been developed to detect differences between subgroups as evidence of bias, and bias mitigation methods are designed to reduce the differences detected. This perspective of fairness, however, is misaligned with some key considerations in clinical contexts. The set of sensitive variables used in healthcare applications must be carefully examined for relevance and justified by clear clinical motivations. In addition, clinical AI fairness should closely investigate the ethical implications of fairness measurements (e.g., potential conflicts between group- and individual-level fairness) to select suitable and objective metrics. Generally defining AI fairness as “equality” is not necessarily reasonable in clinical settings, as differences may have clinical justifications and do not indicate biases. Instead, “equity” would be an appropriate objective of clinical AI fairness. Moreover, clinical feedback is essential to developing fair and well-performing AI models, and efforts should be made to actively involve clinicians in the process. The adaptation of AI fairness towards healthcare is not self-evident due to misalignments between technical developments and clinical considerations. Multidisciplinary collaboration between AI researchers, clinicians, and ethicists is necessary to bridge the gap and translate AI fairness into real-life benefits.
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Autoren
Institutionen
- Duke-NUS Medical School(SG)
- Antwerp Management School(BE)
- University of Antwerp(BE)
- Province of Antwerp(BE)
- University of Florida Health(US)
- Singapore Eye Research Institute(SG)
- SingHealth(SG)
- Singapore National Eye Center(SG)
- Singapore General Hospital(SG)
- Cornell University(US)
- Weill Cornell Medicine(US)
- Beth Israel Deaconess Medical Center(US)
- Massachusetts Institute of Technology(US)
- Harvard University(US)
- National University of Singapore(SG)