Viderman Dmitriy, Dossov Mukhit, Seitenov Serik, Lee Min-Ho
Department of Biomedical Sciences, Nazarbayev University School of Medicine, Nur-Sultan, Kazakhstan.
Department of Anesthesiology and Critical Care, Presidential Hospital, Nur-Sultan, Kazakhstan.
Front Med (Lausanne). 2022 Oct 25;9:994805. doi: 10.3389/fmed.2022.994805. eCollection 2022.
Regional anesthesia is increasingly used in acute postoperative pain management. Ultrasound has been used to facilitate the performance of the regional block, increase the percentage of successfully performed procedures and reduce the complication rate. Artificial intelligence (AI) has been studied in many medical disciplines with achieving high success, especially in radiology. The purpose of this review was to review the evidence on the application of artificial intelligence for optimization and interpretation of the sonographic image, and visualization of needle advancement and injection of local anesthetic.
To conduct this scoping review, we followed the PRISMA-S guidelines. We included studies if they met the following criteria: (1) Application of Artificial intelligence-assisted in ultrasound-guided regional anesthesia; (2) Any human subject (of any age), object (manikin), or animal; (3) Study design: prospective, retrospective, RCTs; (4) Any method of regional anesthesia (epidural, spinal anesthesia, peripheral nerves); (5) Any anatomical localization of regional anesthesia (any nerve or plexus) (6) Any methods of artificial intelligence; (7) Settings: Any healthcare settings (Medical centers, hospitals, clinics, laboratories.
The systematic searches identified 78 citations. After the removal of the duplicates, 19 full-text articles were assessed; and 15 studies were eligible for inclusion in the review.
AI solutions might be useful in anatomical landmark identification, reducing or even avoiding possible complications. AI-guided solutions can improve the optimization and interpretation of the sonographic image, visualization of needle advancement, and injection of local anesthetic. AI-guided solutions might improve the training process in UGRA. Although significant progress has been made in the application of AI-guided UGRA, randomized control trials are still missing.
区域麻醉在急性术后疼痛管理中的应用越来越广泛。超声已被用于辅助区域阻滞的实施,提高成功实施手术的比例并降低并发症发生率。人工智能(AI)已在许多医学学科中进行研究并取得了很高的成功率,尤其是在放射学领域。本综述的目的是回顾关于人工智能在超声图像优化与解读、针头推进可视化以及局部麻醉剂注射方面应用的证据。
为进行这项范围综述,我们遵循PRISMA-S指南。如果研究符合以下标准,我们将其纳入:(1)人工智能辅助在超声引导区域麻醉中的应用;(2)任何人类受试者(任何年龄)、对象(人体模型)或动物;(3)研究设计:前瞻性、回顾性、随机对照试验;(4)任何区域麻醉方法(硬膜外麻醉、脊髓麻醉、周围神经麻醉);(5)区域麻醉的任何解剖定位(任何神经或神经丛);(6)任何人工智能方法;(7)环境:任何医疗环境(医疗中心、医院、诊所、实验室)。
系统检索共识别出78篇引文。去除重复项后,评估了19篇全文文章;15项研究符合纳入综述的条件。
人工智能解决方案可能有助于解剖标志的识别,减少甚至避免可能的并发症。人工智能引导的解决方案可以改善超声图像的优化与解读、针头推进的可视化以及局部麻醉剂的注射。人工智能引导的解决方案可能会改善超声引导区域麻醉的培训过程。尽管在人工智能引导的超声引导区域麻醉应用方面已取得显著进展,但仍缺少随机对照试验。