[Translational challenges and clinical potential of artificial intelligence in minimally invasive surgery].

Matthias Carstens, Micha Pfeiffer, Stefanie Speidel, Marius Distler, Jürgen Weitz, Fiona R Kolbinger
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Abstract

Artificial intelligence (AI) holds great potential for minimally invasive surgery, with fields of application ranging from interdisciplinary treatment stratification through preoperative planning up to active decision support in the operating room, which are the focus of this article. Artificial neural networks for analysis of surgical video recordings could enhance surgical safety, efficiency and planning. High-quality, diverse (meta)data are essential for such AI applications but the annotation, training and validation present complex demands. Despite technological advances, the clinical implementation often fails due to a lack of data standardization, insufficient infrastructure, regulatory barriers and ethical uncertainties. Many models remain black boxes, which hinders acceptance and trust among medical professionals. In addition, AI systems need to be robust, transparent and practically integrable into clinical workflows. Stringent data collection strategies, privacy-preserving learning methods, explainable AI and human-in-the-loop approaches are critical to facilitate clinical translation. Regulatory framework conditions, such as the General Data Protection Regulation, the EU Medical Device Regulation and the EU AI Act, will require further legal refinements to address the specific needs of medical AI applications and interventions, to facilitate the safe adoption of interdisciplinary assistive technologies in the operating room that meaningfully support surgical practice.

[人工智能在微创手术中的转化挑战和临床潜力]
人工智能(AI)在微创手术中具有巨大的潜力,其应用领域从跨学科治疗分层到术前计划,再到手术室的主动决策支持,这是本文的重点。用于手术录像分析的人工神经网络可以提高手术的安全性、效率和计划性。高质量、多样化的(元)数据对于此类人工智能应用至关重要,但注释、训练和验证提出了复杂的要求。尽管技术进步,但由于缺乏数据标准化、基础设施不足、监管障碍和伦理不确定性,临床实施往往失败。许多模型仍然是黑盒子,这阻碍了医学专业人士的接受和信任。此外,人工智能系统需要稳健、透明,并实际可集成到临床工作流程中。严格的数据收集策略、保护隐私的学习方法、可解释的人工智能和人在循环的方法对于促进临床翻译至关重要。监管框架条件,如《通用数据保护条例》、《欧盟医疗器械条例》和《欧盟人工智能法案》,将需要进一步完善法律,以满足医疗人工智能应用和干预的具体需求,促进在手术室安全地采用跨学科辅助技术,从而有意义地支持手术实践。
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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