Center for Sensory-Motor Interaction, Department of Health Science and Technology, Aalborg University, Fredrik Bajers Vej 7, Aalborg, Øst 9220, Denmark.
BMC Neurosci. 2013 Oct 3;14:110. doi: 10.1186/1471-2202-14-110.
The nociceptive withdrawal reflex (NWR) has been proven to be a valuable tool in the objective assessment of central hyperexcitability in the nociceptive system at spinal level that is present in some chronic pain disorders, particularly chronic low back and neck pain. However, most of the studies on objective assessment of central hyperexcitability focus on population differences between patients and healthy individuals and do not provide tools for individual assessment. In this study, a prediction model was developed to objectively assess central hyperexcitability in individuals. The method is based on statistical properties of the EMG signals associated with the nociceptive withdrawal reflex. The model also supports individualized assessment of patients, including an estimation of the confidence of the predicted result.
up to 80% classification rates were achieved when differentiating between healthy volunteers and chronic low back and neck pain patients. EMG signals recorded after stimulation of the anterolateral and heel regions and of the sole of the foot presented the best prediction rates.
A prediction model was proposed and successfully tested as a new approach for objective assessment of central hyperexcitability in the nociceptive system, based on statistical properties of EMG signals recorded after eliciting the NWR. Therefore, the present statistical prediction model constitutes a first step towards potential applications in clinical practice.
痛觉回避反射(NWR)已被证明是评估疼痛系统中脊髓水平的中枢兴奋性的有用工具,这种中枢兴奋性存在于一些慢性疼痛疾病中,特别是慢性下腰痛和颈痛。然而,大多数关于中枢兴奋性的客观评估的研究都集中在患者和健康个体之间的人群差异上,而没有提供个体评估的工具。在这项研究中,开发了一种预测模型来客观评估个体的中枢兴奋性。该方法基于与痛觉回避反射相关的肌电图信号的统计特性。该模型还支持对患者进行个体化评估,包括对预测结果的置信度进行估计。
当区分健康志愿者和慢性下腰痛和颈痛患者时,达到了高达 80%的分类率。刺激前外侧和脚跟区域以及脚底后记录的肌电图信号呈现出最佳的预测率。
提出并成功测试了一种预测模型,作为一种新的方法,用于评估疼痛系统中的中枢兴奋性,基于诱发 NWR 后记录的肌电图信号的统计特性。因此,目前的统计预测模型构成了潜在临床应用的第一步。