Callan Daniel, Mills Lloyd, Nott Connie, England Robert, England Shaun
Center for Information and Neural Networks, National Institute of Information and Communications Technology, Osaka University, Osaka, Japan; Chronic Pain Diagnostics, Roseville, California, United States of America.
Chronic Pain Diagnostics, Roseville, California, United States of America.
PLoS One. 2014 Jun 6;9(6):e98007. doi: 10.1371/journal.pone.0098007. eCollection 2014.
Chronic pain is one of the most prevalent health problems in the world today, yet neurological markers, critical to diagnosis of chronic pain, are still largely unknown. The ability to objectively identify individuals with chronic pain using functional magnetic resonance imaging (fMRI) data is important for the advancement of diagnosis, treatment, and theoretical knowledge of brain processes associated with chronic pain. The purpose of our research is to investigate specific neurological markers that could be used to diagnose individuals experiencing chronic pain by using multivariate pattern analysis with fMRI data. We hypothesize that individuals with chronic pain have different patterns of brain activity in response to induced pain. This pattern can be used to classify the presence or absence of chronic pain. The fMRI experiment consisted of alternating 14 seconds of painful electric stimulation (applied to the lower back) with 14 seconds of rest. We analyzed contrast fMRI images in stimulation versus rest in pain-related brain regions to distinguish between the groups of participants: 1) chronic pain and 2) normal controls. We employed supervised machine learning techniques, specifically sparse logistic regression, to train a classifier based on these contrast images using a leave-one-out cross-validation procedure. We correctly classified 92.3% of the chronic pain group (N = 13) and 92.3% of the normal control group (N = 13) by recognizing multivariate patterns of activity in the somatosensory and inferior parietal cortex. This technique demonstrates that differences in the pattern of brain activity to induced pain can be used as a neurological marker to distinguish between individuals with and without chronic pain. Medical, legal and business professionals have recognized the importance of this research topic and of developing objective measures of chronic pain. This method of data analysis was very successful in correctly classifying each of the two groups.
慢性疼痛是当今世界上最普遍的健康问题之一,然而,对于慢性疼痛诊断至关重要的神经学标志物在很大程度上仍不为人知。利用功能磁共振成像(fMRI)数据客观识别慢性疼痛个体的能力,对于慢性疼痛的诊断、治疗以及与慢性疼痛相关的大脑过程的理论知识的进步具有重要意义。我们研究的目的是通过对fMRI数据进行多变量模式分析,来探究可用于诊断慢性疼痛个体的特定神经学标志物。我们假设慢性疼痛个体在对诱发疼痛的反应中具有不同的大脑活动模式。这种模式可用于对慢性疼痛的存在与否进行分类。fMRI实验包括交替进行14秒的疼痛电刺激(施加于下背部)和14秒的休息。我们分析了疼痛相关脑区在刺激与休息状态下的对比fMRI图像,以区分两组参与者:1)慢性疼痛组和2)正常对照组。我们采用监督式机器学习技术,特别是稀疏逻辑回归,使用留一法交叉验证程序基于这些对比图像训练一个分类器。通过识别体感皮层和顶下小叶皮层的多变量活动模式,我们正确分类了92.3%的慢性疼痛组(N = 13)和92.3%的正常对照组(N = 13)。这项技术表明,大脑对诱发疼痛的活动模式差异可作为一种神经学标志物,用于区分患有和未患有慢性疼痛的个体。医学、法律和商业专业人士已经认识到这一研究课题以及开发慢性疼痛客观测量方法的重要性。这种数据分析方法在正确分类两组个体方面非常成功。