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Bias in artificial intelligence for medical imaging: fundamentals, detection, avoidance, mitigation, challenges, ethics, and prospects
108
Zitationen
10
Autoren
2024
Jahr
Abstract
Although artificial intelligence (AI) methods hold promise for medical imaging-based prediction tasks, their integration into medical practice may present a double-edged sword due to bias (i.e., systematic errors). AI algorithms have the potential to mitigate cognitive biases in human interpretation, but extensive research has highlighted the tendency of AI systems to internalize biases within their model. This fact, whether intentional or not, may ultimately lead to unintentional consequences in the clinical setting, potentially compromising patient outcomes. This concern is particularly important in medical imaging, where AI has been more progressively and widely embraced than any other medical field. A comprehensive understanding of bias at each stage of the AI pipeline is therefore essential to contribute to developing AI solutions that are not only less biased but also widely applicable. This international collaborative review effort aims to increase awareness within the medical imaging community about the importance of proactively identifying and addressing AI bias to prevent its negative consequences from being realized later. The authors began with the fundamentals of bias by explaining its different definitions and delineating various potential sources. Strategies for detecting and identifying bias were then outlined, followed by a review of techniques for its avoidance and mitigation. Moreover, ethical dimensions, challenges encountered, and prospects were discussed.
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Autoren
Institutionen
- Sağlık Bilimleri Üniversitesi(TR)
- University of Health Sciences Antigua(AG)
- İstanbul Başakşehir Çam ve Sakura Şehir Hastanesi
- University of Naples Federico II(IT)
- University of Zurich(CH)
- University Hospital of Zurich(CH)
- Champalimaud Foundation(PT)
- University of Lisbon(PT)
- Radboud University Medical Center(NL)
- Radboud University Nijmegen(NL)
- Karolinska Institutet(SE)
- University of Crete(GR)
- University Hospital of Heraklion(GR)
- University of Palermo(IT)
- University of Salerno(IT)