Application of Self-Adaptive Medical Ultrasonic Imaging Algorithm-Based Obturator Nerve Block in Transurethral Resection of Bladder Tumor

医学 闭孔神经 可视模拟标度 超声波 算法 块(置换群论) 切除术 膀胱肿瘤 泌尿科 外科 放射科 数学 膀胱癌 几何学 内科学 癌症
作者
Haoliang Sun
出处
期刊:Journal of Biomedical Nanotechnology [American Scientific Publishers]
卷期号:19 (2): 309-315 被引量:1
标识
DOI:10.1166/jbn.2023.3529
摘要

The application values of ultrasound-guided obturator nerve block (ONB) optimized by self-adaptive algorithm in transurethral resection of bladder tumor (TURBT) are investigated. For this purpose, total of 50 patients receiving TURBT areselected and randomly rolled into a control group (Ctrl group, ONB under traditional resectoscope) and an experimental group (Exp group, self-adaptive algorithm-based ultrasound-guided ONB (algorithm+ultrasound ONB)). Each group contains 25 cases. The results of the comprehensive assessment of each index showed that the self-adaptive algorithm enhanced the solution of ultrasonoscopy, which was morebeneficial for the intraoperative guidance on block. The success rate of the block in the Exp group reached 100%, higher than that in the Ctrl group (92%). The block time was 6.53±1.28 minutes, which was obviously shorter than that in the Ctrl group (10.34±1.76 minutes). The incidence of complications (IoC) (16%) was significantly lower than that in the Ctrl group (36%). Besides, postoperative visual analogue scale/score (VAS) (2.01±0.84 points) was remarkably lower based on the score in theCtrl group (4.73±1.15 points). The above differences all show statistical significance ( P <0.05). To sum up, self-adaptive algorithm could enhance the quality of surgical ultrasound-guided ONB, which showed significant values in the prevention of obturator nerve reflex, postoperative analgesia for patients, and the recovery.

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