Swain Bhanu Pratap, Nag Deb Sanjay, Anand Rishi, Kumar Himanshu, Ganguly Pradip Kumar, Singh Niharika
Department of Anaesthesiology, Tata Main Hospital, Jamshedpur 831001, India.
Department of Anesthesiology, Manipal Tata Medical College, Jamshedpur 831017, India.
World J Clin Cases. 2024 Nov 26;12(33):6613-6619. doi: 10.12998/wjcc.v12.i33.6613.
The recent advancement in regional anesthesia (RA) has been largely attributed to ultrasound technology. However, the safety and efficiency of ultrasound-guided nerve blocks depend upon the skill and experience of the performer. Even with adequate training, experience, and knowledge, human-related limitations such as fatigue, failure to recognize the correct anatomical structure, and unintentional needle or probe movement can hinder the overall effectiveness of RA. The amalgamation of artificial intelligence (AI) to RA practice has promised to override these human limitations. Machine learning, an integral part of AI can improve its performance through continuous learning and experience, like the human brain. It enables computers to recognize images and patterns specifically useful in anatomic structure identification during the performance of RA. AI can provide real-time guidance to clinicians by highlighting important anatomical structures on ultrasound images, and it can also assist in needle tracking and accurate deposition of local anesthetics. The future of RA with AI integration appears promising, yet obstacles such as device malfunction, data privacy, regulatory barriers, and cost concerns can deter its clinical implementation. The current mini review deliberates the current application, future direction, and barrier to the application of AI in RA practice.
区域麻醉(RA)的最新进展很大程度上归功于超声技术。然而,超声引导神经阻滞的安全性和有效性取决于操作者的技能和经验。即使经过充分的培训、具备经验和知识,诸如疲劳、无法识别正确的解剖结构以及无意的针头或探头移动等人为相关限制仍会阻碍RA的整体效果。将人工智能(AI)融入RA实践有望克服这些人为限制。机器学习作为AI的一个组成部分,可以像人类大脑一样通过持续学习和经验来提高其性能。它使计算机能够识别在RA操作过程中对解剖结构识别特别有用的图像和模式。AI可以通过突出显示超声图像上的重要解剖结构为临床医生提供实时指导,还可以协助针头跟踪和局部麻醉剂的准确注射。整合AI的RA的未来似乎很有前景,然而诸如设备故障、数据隐私、监管障碍和成本问题等障碍可能会阻碍其临床应用。当前的这篇小型综述探讨了AI在RA实践中的当前应用、未来方向以及应用障碍。