, Université Catholique de Louvain, Institute of Neuroscience, Avenue Mounier, 53 - B1.53.04, BE-1200 Brussels, Belgium.
J Rehabil Med. 2014 Sep;46(8):819-23. doi: 10.2340/16501977-1836.
To determine whether kinematic algorithms can distinguish subjects with chronic non-specific low back pain from asymptomatic subjects and subjects simulating low back pain, during trunk motion tasks.
Comparative cohort study.
A total of 90 subjects composed 3 groups; 45 chronic non-specific low back pain patients in the CLBP group; 45 asymptomatic controls people in the asymptomatic controls group. 20/45 subjects from the asymptomatic controls group composed the CLBP simulators group as well.
During performance of 7 standardized trunk motion tasks 6 spinal segments from the kinematic spine model were recorded by 8 infrared cameras. Two logit scores, for range of motion and speed, were used to investigate differences between the groups. Group allocation based on logit scores was also calculated, allowing the assessment of sensitivity and specificity of the algorithms.
For the 90 subjects (pooled data), the logit scores for range of motion and speed demonstrated highly significant differences between groups (p < 0.001). The logit score means and standard deviation (SD) values in the asymptomatic group (n = 45) and chronic non-specific low back pain group (n = 45), respectively, were -1.6 (SD 2.6) and 2.8 (SD 2.8) for range of motion and -2.6 (SD 2.5) and 1.2 (SD 1.9) for speed. The sensitivity and specificity (n = 90) for logit score for range of motion were 0.80/0.82 and for logit score for speed were 0.80/0.87, respectively.
These results support the validity of using 2 movement algorithms, range of motion and speed, to discriminate asymptomatic subjects from those with low back pain. However, people simulating low back pain cannot be distinguished from those with real low back pain using this method.
确定运动学算法是否能够区分慢性非特异性下腰痛患者、无症状受试者和模拟下腰痛的受试者在躯干运动任务中的表现。
比较队列研究。
共 90 名受试者分为 3 组:45 名慢性非特异性下腰痛患者(CLBP 组);45 名无症状对照者(无症状对照组)。其中 20 名无症状对照者(无症状对照组)也组成了 CLBP 模拟组。
在进行 7 项标准化躯干运动任务时,使用 8 个红外摄像机记录 6 个脊柱节段的运动学脊柱模型。使用两个逻辑得分(运动范围和速度)来研究组间差异。基于逻辑得分的分组分配也进行了计算,以评估算法的敏感性和特异性。
对于 90 名受试者(汇总数据),运动范围和速度的逻辑得分在组间具有高度显著差异(p<0.001)。无症状组(n=45)和慢性非特异性下腰痛组(n=45)的逻辑得分均值和标准差(SD)值分别为运动范围的-1.6(SD 2.6)和 2.8(SD 2.8),速度的-2.6(SD 2.5)和 1.2(SD 1.9)。运动范围逻辑得分的敏感性和特异性(n=90)分别为 0.80/0.82,速度逻辑得分的敏感性和特异性分别为 0.80/0.87。
这些结果支持使用 2 种运动学算法(运动范围和速度)来区分无症状受试者和腰痛患者的有效性。然而,该方法无法区分模拟腰痛的人和真正患有腰痛的人。