IEEE J Biomed Health Inform. 2015 Mar;19(2):464-70. doi: 10.1109/JBHI.2014.2320633. Epub 2014 Apr 29.
Spinal cord injured (SCI) individuals may be afflicted by spasticity, a condition in which involuntary muscle spasms are common. EMG recordings can be analyzed to quantify this symptom of spasticity but manual identification and classification of spasms are time consuming. Here, an algorithm was created to find and classify spasm events automatically within 24-h recordings of EMG. The algorithm used expert rules and time-frequency techniques to classify spasm events as tonic, unit, or clonus spasms. A companion graphical user interface (GUI) program was also built to verify and correct the results of the automatic algorithm or manually defined events. Eight channel EMG recordings were made from seven different SCI subjects. The algorithm was able to correctly identify an average (±SD) of 94.5 ± 3.6% spasm events and correctly classify 91.6 ± 1.9% of spasm events, with an accuracy of 61.7 ± 16.2%. The accuracy improved to 85.5 ± 5.9% and the false positive rate decreased to 7.1 ± 7.3%, respectively, if noise events between spasms were removed. On average, the algorithm was more than 11 times faster than manual analysis. Use of both the algorithm and the GUI program provide a powerful tool for characterizing muscle spasms in 24-h EMG recordings, information which is important for clinical management of spasticity.
脊髓损伤(SCI)患者可能会遭受痉挛,这是一种常见的不随意肌肉痉挛的情况。肌电图记录可以进行分析,以定量评估痉挛症状,但手动识别和分类痉挛是很耗时的。在这里,我们创建了一种算法,可以在肌电图 24 小时记录中自动查找和分类痉挛事件。该算法使用专家规则和时频技术将痉挛事件分类为强直性、单位性或阵挛性痉挛。还构建了一个配套的图形用户界面(GUI)程序,用于验证和校正自动算法或手动定义事件的结果。对 7 名不同 SCI 患者的 8 通道肌电图记录进行了分析。该算法平均能够正确识别 94.5 ± 3.6%的痉挛事件,并正确分类 91.6 ± 1.9%的痉挛事件,准确率为 61.7 ± 16.2%。如果去除痉挛之间的噪声事件,准确率可提高到 85.5 ± 5.9%,假阳性率可降低至 7.1 ± 7.3%。平均而言,该算法比手动分析快 11 倍以上。算法和 GUI 程序的使用为在 24 小时肌电图记录中描述肌肉痉挛提供了强大的工具,这对于痉挛的临床管理非常重要。