Kim Gi Nam, Zhang Ho Yeol, Cho Yong Eun, Ryu Seung Jun
Department of Spinal Neurosurgery, Gangnam Severance Hospital, Yonsei University College of Medicine, Seoul 06273, Korea.
Department of Neurosurgery, National Health Insurance Service Ilsan Hospital, Yonsei University College of Medicine, Goyang 10444, Korea.
Healthcare (Basel). 2022 Jun 13;10(6):1094. doi: 10.3390/healthcare10061094.
Doctors in primary hospitals can obtain the impression of lumbosacral radiculopathy with a physical exam and need to acquire medical images, such as an expensive MRI, for diagnosis. Then, doctors will perform a foraminal root block to the target root for pain control. However, there was insufficient screening medical image examination for precise L5 and S1 lumbosacral radiculopathy, which is most prevalent in the clinical field. Therefore, to perform differential screening of L5 and S1 lumbosacral radiculopathy, the authors applied digital infrared thermographic images (DITI) to the machine learning (ML) algorithm, which is the bag of visual words method. DITI dataset included data from the healthy population and radiculopathy patients with herniated lumbar discs (HLDs) L4/5 and L5/S1. A total of 842 patients were enrolled and the dataset was split into a 7:3 ratio as the training algorithm and test dataset to evaluate model performance. The average accuracy was 0.72 and 0.67, the average precision was 0.71 and 0.77, the average recall was 0.69 and 0.74, and the F1 score was 0.70 and 0.75 for the training and test datasets. Application of the bag of visual words algorithm to DITI classification will aid in the differential screening of lumbosacral radiculopathy and increase the therapeutic effect of primary pain interventions with economical cost.
基层医院的医生可以通过体格检查获得腰骶神经根病的初步印象,并且需要获取医学影像(如昂贵的核磁共振成像)以进行诊断。然后,医生会对目标神经根进行椎间孔神经根阻滞以控制疼痛。然而,对于临床中最常见的L5和S1腰骶神经根病,缺乏足够的用于精确筛查的医学影像检查。因此,为了对L5和S1腰骶神经根病进行鉴别筛查,作者将数字红外热成像(DITI)图像应用于机器学习(ML)算法,即视觉词袋法。DITI数据集包括来自健康人群以及患有L4/5和L5/S1腰椎间盘突出症(HLD)的神经根病患者的数据。总共纳入了842名患者,并将数据集按照7:3的比例划分为训练算法数据集和测试数据集,以评估模型性能。训练数据集和测试数据集的平均准确率分别为0.72和0.67,平均精确率分别为0.71和0.77,平均召回率分别为0.69和0.74,F1分数分别为0.70和0.75。将视觉词袋算法应用于DITI分类将有助于腰骶神经根病的鉴别筛查,并以经济的成本提高原发性疼痛干预的治疗效果。