IEEE Trans Neural Syst Rehabil Eng. 2019 Nov;27(11):2254-2262. doi: 10.1109/TNSRE.2019.2945634. Epub 2019 Oct 10.
Studies using time-frequency analysis have reported that somatosensory evoked potentials provide information regarding the location of spinal cord injury. However, a better understanding of the time-frequency components derived from somatosensory evoked potentials is essential for developing more reliable algorithms that can diagnosis level (location) of cervical injury. In the present study, we proposed a random forests machine learning approach, for separating somatosensory evoked potentials depending on spinal cord state. For data acquisition, we established rat models of compression spinal cord injury at the C4, C5, and C6 levels to induce cervical myelopathy. After making the compression injury, we collected somatosensory evoked potentials and extracted their time-frequency components. We then used the random forests classification system to analyze the evoked potential dataset that was obtained from the three groups of model rats. Evaluation of the classifier performance revealed an overall classification accuracy of 84.72%, confirming that the random forests method was able to separate the time-frequency components of somatosensory evoked potentials from rats under different conditions. Features of the time-frequency components contained information that could identify the location of the cervical spinal cord injury, demonstrating the potential benefits of using time-frequency components of somatosensory evoked potentials to diagnose the level of cervical injury in cervical myelopathy.
使用时频分析的研究报告称,体感诱发电位提供了有关脊髓损伤位置的信息。然而,为了开发更可靠的算法,能够诊断颈椎损伤的水平(位置),更好地理解体感诱发电位的时频成分至关重要。在本研究中,我们提出了一种随机森林机器学习方法,用于根据脊髓状态分离体感诱发电位。为了进行数据采集,我们在 C4、C5 和 C6 水平建立了大鼠压迫性脊髓损伤模型,以诱导颈椎脊髓病。在进行压迫性损伤后,我们收集了体感诱发电位并提取了它们的时频成分。然后,我们使用随机森林分类系统分析了从三组模型大鼠获得的诱发电位数据集。分类器性能的评估显示出总体分类准确性为 84.72%,这证实了随机森林方法能够分离不同条件下大鼠体感诱发电位的时频成分。时频成分的特征包含可以识别颈椎脊髓损伤位置的信息,表明使用体感诱发电位的时频成分诊断颈椎脊髓病中颈椎损伤水平具有潜在的益处。