Ethical Pitfalls in AI-Based Predictive Models in Surgery.

IF 2.5 3区 医学 Q2 SURGERY
World Journal of Surgery Pub Date : 2025-10-01 Epub Date: 2025-09-04 DOI:10.1002/wjs.70080
Sara Ben Hmido, Houssam Abder Rahim, Boris Keller, Freek Daams, Matthijs Schakel, J Carel Goslings, E J M Nieveen van Dijkum, Stephen Rainey, Geert Kazemier, Marieke Bak, Corrette Ploem
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引用次数: 0

Abstract

Background: Predictive models in surgery promise to improve clinical care by anticipating complications, guiding decision-making, and supporting personalized treatment strategies. Although their potential to enhance outcomes and efficiency is substantial, their integration into clinical practice also raises profound ethical challenges.

Ethical framework: These challenges span the entire lifecycle of predictive models from data collection and development to validation and clinical use. They touch upon patient privacy, algorithmic bias, transparency, and the shifting responsibilities of clinicians. Importantly, the ethical concerns are not isolated to one group but shared across patients, developers, and clinicians within a dynamic stakeholder relationship.

Analysis: Key risks include biased or unrepresentative datasets, privacy breaches, opaque decision-making processes, and the danger of deskilling surgeons if reliance on algorithms becomes excessive. To mitigate these risks, strategies, such as out-of-distribution detection, standardized data collection, parallel model development, and continuous auditing, are essential. Beyond technical safeguards, embedding predictive models within a framework of accountability and patient-centered care is necessary to sustain trust and equity.

Conclusion: The integration of predictive models into surgery requires more than technical excellence, and it demands ethical vigilance. Preparing future clinicians through education that emphasizes both clinical reasoning and ethical awareness is critical. By aligning predictive model development with human-centered values, healthcare systems can ensure that these innovations enhance surgical practice while safeguarding equity, transparency, and patient trust.

基于人工智能的外科预测模型中的伦理陷阱。
背景:外科预测模型有望通过预测并发症、指导决策和支持个性化治疗策略来改善临床护理。尽管它们提高结果和效率的潜力是巨大的,但它们融入临床实践也引发了深刻的伦理挑战。伦理框架:这些挑战跨越了预测模型从数据收集和开发到验证和临床使用的整个生命周期。它们涉及患者隐私、算法偏见、透明度和临床医生责任的转移。重要的是,伦理问题不是孤立于一个群体,而是在动态的利益相关者关系中由患者、开发人员和临床医生共享。分析:主要风险包括有偏见或不具代表性的数据集、隐私泄露、不透明的决策过程,以及如果过度依赖算法,外科医生可能会失去技能。为了减轻这些风险,诸如分布外检测、标准化数据收集、并行模型开发和持续审计等策略是必不可少的。除了技术保障之外,在问责制和以患者为中心的护理框架内嵌入预测模型对于维持信任和公平也是必要的。结论:将预测模型整合到外科手术中不仅需要技术上的卓越,还需要道德上的警惕。通过强调临床推理和道德意识的教育培养未来的临床医生是至关重要的。通过将预测模型开发与以人为本的价值观结合起来,医疗保健系统可以确保这些创新增强手术实践,同时保障公平性、透明度和患者信任。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
World Journal of Surgery
World Journal of Surgery 医学-外科
CiteScore
5.10
自引率
3.80%
发文量
460
审稿时长
3 months
期刊介绍: World Journal of Surgery is the official publication of the International Society of Surgery/Societe Internationale de Chirurgie (iss-sic.com). Under the editorship of Dr. Julie Ann Sosa, World Journal of Surgery provides an in-depth, international forum for the most authoritative information on major clinical problems in the fields of clinical and experimental surgery, surgical education, and socioeconomic aspects of surgical care. Contributions are reviewed and selected by a group of distinguished surgeons from across the world who make up the Editorial Board.
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