人工智能和机器学习在重建显微外科中的应用。

IF 1.2 3区 医学 Q2 SURGERY
Seminars in Plastic Surgery Pub Date : 2025-08-08 eCollection Date: 2025-08-01 DOI:10.1055/s-0045-1810062
Ta-Chun Lin, Hsi-An Yang, Ren-Wen Huang, Cheng-Hung Lin
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引用次数: 0

摘要

人工智能(AI)和机器学习(ML)技术正在通过数据驱动的方法改变重建显微外科手术,提高精确度和标准化临床工作流程。这些创新解决了长期存在的挑战,包括主观评估方法,依赖于操作者的决策,以及围手术期连续体中不一致的监测方案。当代应用在术前风险分层方面表现出卓越的能力,ML算法对皮瓣丢失和供区发病率等并发症具有很高的预测准确性。cnn彻底改变了穿支定位,其先进模型在CT血管造影解剖结构检测中的Dice系数达到了91.87%。通过人工智能增强机器人平台的术中辅助提供亚毫米精度和震颤过滤,特别有利于涉及直径0.3至0.8毫米血管的超显微手术。术后监测是一个特别有前途的领域,其中基于人工智能的图像分析系统在分类皮瓣灌注状态和检测早期血管损伤方面的准确率达到98.4%。与传统的主观方法相比,自动化平台可以在减少临床工作量的情况下实现持续监测,同时保持更好的一致性。患者沟通受益于人工智能驱动的视觉模拟和大型语言模型(LLMs),这些模型可以生成个性化的教育材料,增强知情同意过程。关键的实施挑战包括数据质量、算法偏差和固有的数据集不平衡,其中并发症代表罕见但临床上至关重要的事件。未来的发展需要可解释的人工智能系统、多机构合作和全面的监管框架。经过深思熟虑的整合,人工智能可以作为一种强大的增强工具,提高显微手术的精度和结果,同时保留手术专业知识和临床判断的基本重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence and Machine Learning in Reconstructive Microsurgery.

Artificial intelligence (AI) and machine learning (ML) technologies are transforming reconstructive microsurgery through data-driven approaches that enhance precision and standardize clinical workflows. These innovations address long-standing challenges, including subjective assessment methodologies, operator-dependent decision-making, and inconsistent monitoring protocols across the perioperative continuum. Contemporary applications demonstrate remarkable capabilities in preoperative risk stratification, with ML algorithms achieving high predictive accuracy for complications such as flap loss and donor site morbidity. CNNs have revolutionized perforator localization, with advanced models achieving Dice coefficients of 91.87% in anatomical structure detection from CT angiography. Intraoperative assistance through AI-enhanced robotic platforms provides submillimeter precision and tremor filtration, particularly beneficial in supermicrosurgery involving vessels measuring 0.3- to 0.8-mm diameter. Postoperative monitoring represents a particularly promising domain, where AI-based image analysis systems achieve 98.4% accuracy in classifying flap perfusion status and detecting early vascular compromise. Automated platforms may enable continuous surveillance with reduced clinical workload while maintaining superior consistency compared with traditional subjective methods. Patient communication benefits from AI-driven visual simulation and large language models (LLMs) that generate personalized educational materials, enhancing informed consent processes. Critical implementation challenges include data quality, algorithmic bias, and inherent dataset imbalance, where complications represent rare but clinically crucial events. Future advancement requires explainable AI systems, multi-institutional collaboration, and comprehensive regulatory frameworks. When thoughtfully integrated, AI serves as a powerful augmentation tool that elevates microsurgical precision and outcomes while preserving the fundamental importance of surgical expertise and clinical judgment.

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来源期刊
CiteScore
4.10
自引率
5.00%
发文量
27
期刊介绍: Seminars in Plastic Surgery is a quarterly review journal that publishes topic-specific issues covering all areas of aesthetic and reconstructive plastic surgery. The journal''s scope includes issues devoted to breast reconstruction, rhinoplasty, lipogenesis and lipoplasty, craniomaxillofacial trauma, and all other major plastic surgery procedures. The journal also covers such emerging areas as free tissue transfer, lasers, endoscopic facial plastic procedures, as well as all the related technologies associated with these techniques.
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