Ketola Juuso H J, Inkinen Satu I, Karppinen Jaro, Niinimäki Jaakko, Tervonen Osmo, Nieminen Miika T
Research Unit of Medical Imaging, Physics and Technology, University of Oulu, Oulu, Finland.
Medical Research Center Oulu, Oulu University Hospital and University of Oulu, Oulu, Finland.
J Orthop Res. 2021 Nov;39(11):2428-2438. doi: 10.1002/jor.24973. Epub 2021 Jan 13.
Low back pain is a very common symptom and the leading cause of disability throughout the world. Several degenerative imaging findings seen on magnetic resonance imaging are associated with low back pain but none of them is specific for the presence of low back pain as abnormal findings are prevalent among asymptomatic subjects as well. The purpose of this population-based study was to investigate if more specific magnetic resonance imaging predictors of low back pain could be found via texture analysis and machine learning. We used this methodology to classify T -weighted magnetic resonance images from the Northern Finland Birth Cohort 1966 data to symptomatic and asymptomatic groups. Lumbar spine magnetic resonance imaging was performed using a fast spin-echo sequence at 1.5 T. Texture analysis pipeline consisting of textural feature extraction, principal component analysis, and logistic regression classifier was applied to the data to classify them into symptomatic (clinically relevant pain with frequency ≥30 days and intensity ≥6/10) and asymptomatic (frequency ≤7 days, intensity ≤3/10, and no previous pain episodes in the follow-up period) groups. Best classification results were observed applying texture analysis to the two lowest intervertebral discs (L4-L5 and L5-S1), with accuracy of 83%, specificity of 83%, sensitivity of 82%, negative predictive value of 94%, precision of 56%, and receiver operating characteristic area-under-curve of 0.91. To conclude, textural features from T -weighted magnetic resonance images can be applied in low back pain classification.
下背痛是一种非常常见的症状,也是全球致残的主要原因。磁共振成像上看到的几种退行性影像学表现与下背痛有关,但它们都不能特异性地表明存在下背痛,因为在无症状受试者中也普遍存在异常表现。这项基于人群的研究的目的是调查是否可以通过纹理分析和机器学习找到更具特异性的下背痛磁共振成像预测指标。我们使用这种方法将1966年芬兰北部出生队列数据中的T加权磁共振图像分类为有症状和无症状组。使用1.5 T的快速自旋回波序列进行腰椎磁共振成像。将由纹理特征提取、主成分分析和逻辑回归分类器组成的纹理分析管道应用于数据,以将它们分类为有症状组(临床相关疼痛,频率≥30天且强度≥6/10)和无症状组(频率≤7天,强度≤3/10,且随访期间无既往疼痛发作)。将纹理分析应用于两个最低的椎间盘(L4-L5和L5-S1)时观察到最佳分类结果,准确率为83%,特异性为83%,敏感性为82%,阴性预测值为94%,精确率为56%,受试者工作特征曲线下面积为0.91。总之,T加权磁共振图像的纹理特征可应用于下背痛分类。