Division of Pain Medicine, Department of Anesthesia.
Cereb Cortex. 2014 Apr;24(4):1037-44. doi: 10.1093/cercor/bhs378. Epub 2012 Dec 17.
Chronic low back pain (cLBP) has a tremendous personal and socioeconomic impact, yet the underlying pathology remains a mystery in the majority of cases. An objective measure of this condition, that augments self-report of pain, could have profound implications for diagnostic characterization and therapeutic development. Contemporary research indicates that cLBP is associated with abnormal brain structure and function. Multivariate analyses have shown potential to detect a number of neurological diseases based on structural neuroimaging. Therefore, we aimed to empirically evaluate such an approach in the detection of cLBP, with a goal to also explore the relevant neuroanatomy. We extracted brain gray matter (GM) density from magnetic resonance imaging scans of 47 patients with cLBP and 47 healthy controls. cLBP was classified with an accuracy of 76% by support vector machine analysis. Primary drivers of the classification included areas of the somatosensory, motor, and prefrontal cortices--all areas implicated in the pain experience. Differences in areas of the temporal lobe, including bordering the amygdala, medial orbital gyrus, cerebellum, and visual cortex, were also useful for the classification. Our findings suggest that cLBP is characterized by a pattern of GM changes that can have discriminative power and reflect relevant pathological brain morphology.
慢性下腰痛(cLBP)对个人和社会经济有巨大影响,但大多数情况下其潜在病理仍不清楚。这种疾病的客观衡量标准,增强了对疼痛的自我报告,可以对诊断特征和治疗发展产生深远的影响。当代研究表明,cLBP 与异常的大脑结构和功能有关。多元分析显示,基于结构神经影像学,可以检测出许多神经疾病。因此,我们旨在通过实证评估这种方法在检测 cLBP 中的应用,以探索相关的神经解剖学。我们从 47 名 cLBP 患者和 47 名健康对照者的磁共振成像扫描中提取大脑灰质(GM)密度。支持向量机分析的准确率为 76%,对 cLBP 进行分类。分类的主要驱动因素包括躯体感觉、运动和前额叶皮层的区域——所有与疼痛体验相关的区域。颞叶区域的差异,包括靠近杏仁核、内侧眶回、小脑和视觉皮层的区域,也有助于分类。我们的研究结果表明,cLBP 的特点是 GM 变化模式,具有判别力,并反映了相关的病理性大脑形态。