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一种使用肌内肌电图信号进行腰骶神经根病诊断和严重程度量化的临床决策支持系统。

A clinical decision support system for diagnosis and severity quantification of lumbosacral radiculopathy using intramuscular electromyography signals.

作者信息

Hamtaei Pour Shirazi Farshid, Parsaei Hossein, Ashraf Alireza

机构信息

Department of Medical Physics and Engineering, School of Medicine, Shiraz University of Medical Sciences, Shiraz, Iran.

Student Research Committee, Shiraz University of Medical Sciences, Shiraz, Iran.

出版信息

Med Biol Eng Comput. 2025 Jan;63(1):239-249. doi: 10.1007/s11517-024-03196-8. Epub 2024 Sep 19.

Abstract

Interpreting intramuscular electromyography (iEMG) signals for diagnosing and quantifying the severity of lumbosacral radiculopathy is challenging due to the subjective evaluation of signals. To address this limitation, a clinical decision support system (CDSS) was developed for the diagnosis and quantification of the severity of lumbosacral radiculopathy based on intramuscular electromyography (iEMG) signals. The CDSS uses the EMG interference pattern method (QEMG IP) to directly extract features from the iEMG signal and provide a quantitative expression of injury severity for each muscle and overall radiculopathy severity. From 126 time and frequency domain features, a set of five features, including the crest factor, mean absolute value, peak frequency, zero crossing count, and intensity, were selected. These features were derived from raw iEMG signals, empirical mode decomposition, and discrete wavelet transform, and the wrapper method was utilized to determine the most significant features. The CDSS was trained and tested on a dataset of 75 patients, achieving an accuracy of 93.3%, sensitivity of 93.3%, and specificity of 96.6%. The system shows promise in assisting physicians in diagnosing lumbosacral radiculopathy with high accuracy and consistency using iEMG data. The CDSS's objective and standardized diagnostic process, along with its potential to reduce the time and effort required by physicians to interpret EMG signals, makes it a potentially valuable tool for clinicians in the diagnosis and management of lumbosacral radiculopathy. Future work should focus on validating the system's performance in diverse clinical settings and patient populations.

摘要

由于肌电图信号的主观评估,解读肌内肌电图(iEMG)信号以诊断和量化腰骶神经根病的严重程度具有挑战性。为了解决这一局限性,开发了一种基于肌内肌电图(iEMG)信号的临床决策支持系统(CDSS),用于诊断和量化腰骶神经根病的严重程度。该CDSS使用肌电图干扰模式方法(QEMG IP)直接从iEMG信号中提取特征,并为每块肌肉提供损伤严重程度的定量表达以及整体神经根病的严重程度。从126个时域和频域特征中,选择了一组五个特征,包括波峰因数、平均绝对值、峰值频率、过零计数和强度。这些特征源自原始iEMG信号、经验模态分解和离散小波变换,并利用包装法确定最显著的特征。该CDSS在75例患者的数据集上进行了训练和测试,准确率达到93.3%,灵敏度为93.3%,特异性为96.6%。该系统在协助医生使用iEMG数据高精度、一致性地诊断腰骶神经根病方面显示出前景。CDSS客观、标准化的诊断过程,以及其减少医生解读肌电图信号所需时间和精力的潜力,使其成为临床医生在腰骶神经根病诊断和管理中潜在的有价值工具。未来的工作应集中在验证该系统在不同临床环境和患者群体中的性能。

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