Multiscale entropy analysis of surface electromyographic signals as a prognostic indicator for subtle functional impairment of urethral sphincter

Hsien-Tsai Wu, Wen-Yao Pan, Chun-Wei Liu, H. Kuo, Yuan-Hong Jiang
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Abstract

To explore information hidden in the electromyographic (EMG) signals of urethral sphincter, 19 patients with voiding difficulty were divided into two groups: Patients with detrusor overactivity (Group 1, n=7), detrusor-external sphincter dyssynergia (Group 2, n=12). All patients underwent baseline urodynamic studies for comparison. The results demonstrated that, despite no significant difference in urodynamic parameters between Group 1 and Group 2, the large-scale MSE of preoperative EMG [i.e., MSELS(EMG)] and small-scale MSE of preoperative EMG [i.e., MSESS(EMG)] of Group 1 were notably higher than those of Group 2 (i.e., patients with abnormal sphincter function). In conclusion, using MSE analysis for assessing preoperative urethral sphincter EMG signals successfully distinguished the subtle functional impairment of urethral sphincter unable to be detected by routine urodynamic studies.
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表面肌电信号的多尺度熵分析作为尿道括约肌细微功能损害的预后指标
为探索尿道括约肌肌电图(EMG)信号中隐藏的信息,将19例排尿困难患者分为逼尿肌过度活动组(1组,n=7)和逼尿肌-外括约肌协同障碍组(2组,n=12)。所有患者进行基线尿动力学研究进行比较。结果显示,尽管1组与2组尿动力学参数无显著差异,但1组术前EMG的大尺度MSE[即MSELS(EMG)]和术前EMG的小尺度MSE[即mess (EMG)]明显高于2组(即括约肌功能异常患者)。综上所述,利用MSE分析评估术前尿道括约肌肌电图信号,成功区分了常规尿动力学检查无法检测到的尿道括约肌细微功能损伤。
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