Department of Surgery, Montefiore Medical Center, New York, NY, USA.
Department of Surgery, Beth Israel Deaconess Medical Center, Harvard Medical School, Boston, MA, USA.
Hernia. 2024 Aug;28(4):1405-1412. doi: 10.1007/s10029-024-03069-x. Epub 2024 May 18.
This systematic review aims to evaluate the use of machine learning and artificial intelligence in hernia surgery.
The PRISMA guidelines were followed throughout this systematic review. The ROBINS-I and Rob 2 tools were used to perform qualitative assessment of all studies included in this review. Recommendations were then summarized for the following pre-defined key items: protocol, research question, search strategy, study eligibility, data extraction, study design, risk of bias, publication bias, and statistical analysis.
A total of 13 articles were ultimately included for this review, describing the use of machine learning and deep learning for hernia surgery. All studies were published from 2020 to 2023. Articles varied regarding the population studied, type of machine learning or Deep Learning Model (DLM) used, and hernia type. Of the thirteen included studies, all included either inguinal, ventral, or incisional hernias. Four studies evaluated recognition of surgical steps during inguinal hernia repair videos. Two studies predicted outcomes using image-based DMLs. Seven studies developed and validated deep learning algorithms to predict outcomes and identify factors associated with postoperative complications.
The use of ML for abdominal wall reconstruction has been shown to be a promising tool for predicting outcomes and identifying factors that could lead to postoperative complications.
本系统评价旨在评估机器学习和人工智能在疝外科中的应用。
本系统评价遵循 PRISMA 指南。使用 ROBINS-I 和 Rob 2 工具对本综述纳入的所有研究进行定性评估。然后针对以下预先定义的关键项目总结建议:方案、研究问题、搜索策略、研究纳入标准、数据提取、研究设计、偏倚风险、发表偏倚和统计分析。
共有 13 篇文章最终纳入本综述,描述了机器学习和深度学习在疝外科中的应用。所有研究均发表于 2020 年至 2023 年。文章在研究人群、使用的机器学习或深度学习模型 (DLM) 以及疝类型方面存在差异。在纳入的 13 项研究中,均包括腹股沟疝、腹侧疝或切口疝。四项研究评估了腹股沟疝修补视频中手术步骤的识别。两项研究使用基于图像的 DLM 预测结局。七项研究开发和验证了深度学习算法,以预测结局并识别与术后并发症相关的因素。
机器学习在腹壁重建中的应用已被证明是预测结局和识别可能导致术后并发症的因素的有前途的工具。