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A Practical Sensor-Based Methodology for the Quantitative Assessment and Classification of Chronic Non Specific Low Back Patients (NSLBP) in Clinical Settings

机译:一种基于传感器的实用方法用于临床环境中的慢性非特异性下腰痛患者(NSLBP)的定量评估和分类

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摘要

The successful clinical application of patient-specific personalized medicine for the management of low back patients remains elusive. This study aimed to classify chronic nonspecific low back pain (NSLBP) patients using our previously developed and validated wearable inertial sensor (SHARIF-HMIS) for the assessment of trunk kinematic parameters. One hundred NSLBP patients consented to perform repetitive flexural movements in five different planes of motion (PLM): 0° in the sagittal plane, as well as 15° and 30° lateral rotation to the right and left, respectively. They were divided into three subgroups based on the STarT Back Screening Tool. The sensor was placed on the trunk of each patient. An ANOVA mixed model was conducted on the maximum and average angular velocity, linear acceleration and maximum jerk, respectively. The effect of the three-way interaction of Subgroup by direction by PLM on the mean trunk acceleration was significant. Subgrouping by STarT had no main effect on the kinematic indices in the sagittal plane, although significant effects were observed in the asymmetric directions. A significant difference was also identified during pre-rotation in the transverse plane, where the velocity and acceleration decreased while the jerk increased with increasing asymmetry. The acceleration during trunk flexion was significantly higher than that during extension, in contrast to the velocity, which was higher in extension. A Linear Discriminant Analysis, utilized for classification purposes, demonstrated that 51% of the total performance classifying the three STarT subgroups (65% for high risk) occurred at a position of 15° of rotation to the right during extension. Greater discrimination (67%) was obtained in the classification of the high risk vs. low-medium risk. This study provided a smart “sensor-based” practical methodology for quantitatively assessing and classifying NSLBP patients in clinical settings. The outcomes may also be utilized by leveraging cost-effective inertial sensors, already available in today’s smartphones, as objective tools for various health applications towards personalized precision medicine.
机译:针对患者的个性化个性化药物的成功临床应用仍然难以捉摸。这项研究旨在使用我们先前开发和验证的可穿戴惯性传感器(SHARIF-HMIS)对慢性非特异性下腰痛(NSLBP)患者进行分类,以评估躯干运动学参数。一百名NSLBP患者同意在五个不同的运动平面(PLM)中进行重复的弯曲运动:矢状面为0°,左右旋转分别为15°和30°。根据STarT Back Screening Tool,它们分为三个子组。传感器放置在每个患者的躯干上。分别对最大和平均角速度,线性加速度和最大加速度进行了ANOVA混合模型。 PLM方向的亚组三向交互作用对平均躯干加速度的影响是显着的。尽管在不对称方向上观察到了显着影响,但通过STarT分组对矢状面的运动学指数没有主要影响。在横向旋转的预旋转过程中也发现了显着差异,其中速度和加速度随着不对称性的增加而降低,而加加速度随着不对称性的增加而增加。躯干屈曲期间的加速度显着高于伸展过程中的加速度,而速度则高于伸展过程中的速度。用于分类目的的线性判别分析表明,在对三个STarT子组进行分类的总绩效中,有51%(对于高风险为65%)发生在伸展过程中向右旋转15°的位置。在高风险与低风险之间的分类中获得了更大的区分度(67%)。这项研究提供了一种智能的“基于传感器”的实用方法,用于在临床环境中对NSLBP患者进行定量评估和分类。通过利用当今智能手机中已经具有的高性价比惯性传感器,这些结果也可以用作针对个性化精准医学的各种健康应用的客观工具。

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