Rosa Verhoeven, Wiam Bouisaghouane, Jan Bf Hulscher
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引用次数: 0
Abstract
Artificial intelligence (AI) is increasingly integrated into pediatric healthcare, offering opportunities to improve diagnostic accuracy and clinical decision-making. However, the complexity and opacity of many AI models raise concerns about trust, transparency, and safety, especially in vulnerable pediatric populations. Explainable AI (XAI) aims to make AI-driven decisions more interpretable and accountable. This review outlines the role of XAI in pediatric surgery, emphasizing challenges related to bias, the importance of ethical frameworks, and the need for standardized benchmarks. Addressing these aspects is essential to developing fair, safe, and effective AI applications for children. Finally, we provide recommendations for future research and implementation to guide the development of robust and ethically sound XAI solutions.
期刊介绍:
This broad-based international journal updates you on vital developments in pediatric surgery through original articles, abstracts of the literature, and meeting announcements.
You will find state-of-the-art information on:
abdominal and thoracic surgery
neurosurgery
urology
gynecology
oncology
orthopaedics
traumatology
anesthesiology
child pathology
embryology
morphology
Written by surgeons, physicians, anesthesiologists, radiologists, and others involved in the surgical care of neonates, infants, and children, the EJPS is an indispensable resource for all specialists.