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评估人工智能在超声引导外周神经和平面阻滞中识别解剖结构的有效性。

Evaluation of the effectiveness of artificial intelligence for ultrasound guided peripheral nerve and plane blocks in recognizing anatomical structures.

机构信息

Gazi University Faculty of Medicine, Department of Anesthesiology & Reanimation, Ankara, Besevler 06500, Turkey.

Gazi University Faculty of Medicine, Department of Anesthesiology & Reanimation, Ankara, Besevler 06500, Turkey.

出版信息

Ann Anat. 2023 Oct;250:152143. doi: 10.1016/j.aanat.2023.152143. Epub 2023 Aug 11.

Abstract

BACKGROUND

We aimed to assess the accuracy of artificial intelligence (AI) based real-time anatomy identification for ultrasound-guided peripheral nerve and plane block in eight regions in this prospective observational study.

METHODS

After obtaining ethics committee approval and written informed consent from 40 healthy volunteers (20 men and 20 women, between 18 and 72 years old), an ultrasound device installed with AI software (Nerveblox, SmartAlfa, Turkey) were used to scan regions of the cervical plexus, brachial plexus, pectoralis (PECS), rectus sheet, femoralis, canalis adductorius, popliteal, and ESP by three anesthesiology trainees. During scanning by a trainee, once software indicates 100 % scan success of associated anatomic landmarks, both raw and labeled ultrasound images were saved, assessed, and validated using a 6-point scale between 0 and 5 by two expert validators. Evaluation scores of the validators for each block were compared according to demographics (gender, age, and BMI) and block type exists.

RESULTS

The scores were not different except ESP, femoralis, and cervical plexus regions between the experts. The mean scores of the experts for the PECS, popliteal and rectus sheath were significant between males and females (p < 0.05). In terms of BMI, significant differences in the scores were observed only in the canalis adductorius, brachial plexus, and ESP regions (p < 0.05).

CONCLUSIONS

Ultrasound guided AI-based anatomy identification was performed in commonly used eight block regions by the trainees where AI technology can successfully interpret the anatomical structures in real-time sonography which would be valuable in assisting anesthesiologists.

摘要

背景

在这项前瞻性观察研究中,我们旨在评估人工智能(AI)实时解剖识别在超声引导外周神经和平面阻滞 8 个区域的准确性。

方法

在获得伦理委员会批准和 40 名健康志愿者(20 名男性和 20 名女性,年龄在 18 至 72 岁之间)的书面知情同意书后,使用安装有 AI 软件(Nerveblox,SmartAlfa,土耳其)的超声设备扫描颈丛、臂丛、胸肌(胸大肌)、股直肌、股管、收肌管、腘窝和 ESP 区域。在一名学员进行扫描时,一旦软件显示相关解剖标志的扫描成功率达到 100%,则会保存原始和标记的超声图像,并由两名专家验证者使用 0 至 5 分的 6 分制进行评估和验证。根据性别、年龄和 BMI 以及是否存在阻滞类型,比较验证者对每个阻滞的评估得分。

结果

除 ESP、股管和颈丛外,专家之间的得分无差异。专家对胸大肌、腘窝和股直肌的评分在男性和女性之间存在显著差异(p<0.05)。就 BMI 而言,仅在收肌管、臂丛和 ESP 区域观察到评分的显著差异(p<0.05)。

结论

学员在常用的 8 个阻滞区域进行了超声引导的基于 AI 的解剖识别,AI 技术可以成功实时解释解剖结构,这对麻醉师具有重要价值。

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