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首页> 外文期刊>Computers in Biology and Medicine >A novel approach to spinal 3-D kinematic assessment using inertial sensors: Towards effective quantitative evaluation of low back pain in clinical settings
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A novel approach to spinal 3-D kinematic assessment using inertial sensors: Towards effective quantitative evaluation of low back pain in clinical settings

机译:惯性传感器的脊柱3-D运动评估的一种新方法:临床环境中低腰疼的有效定量评价

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摘要

Abstract This paper presents a novel approach for evaluating LBP in various settings. The proposed system uses cost-effective inertial sensors, in conjunction with pattern recognition techniques, for identifying sensitive classifiers towards discriminate identification of LB patients. 24 healthy individuals and 28 low back pain patients performed trunk motion tasks in five different directions for validation. Four combinations of these motions were selected based on literature, and the corresponding kinematic data was collected. Upon filtering (4th order, low pass Butterworth filter) and normalizing the data, Principal Component Analysis was used for feature extraction, while Support Vector Machine classifier was applied for data classification. The results reveal that non-linear Kernel classification can be adequately employed for low back pain identification. Our preliminary results demonstrate that using a single inertial sensor placed on the thorax, in conjunction with a relatively simple test protocol, can identify low back pain with an accuracy of 96%, a sensitivity of %100, and specificity of 92%. While our approach shows promising results, further validation in a larger population is required towards using the methodology as a practical quantitative assessment tool for the detection of low back pain in clinical/rehabilitation settings. Highlights ? This study proposes a novel system for the assessment of LBP in clinical settings. ? The system uses inertial sensors along with pattern recognition techniques. ? Accuracy of 96% is achieved using one inertial sensor on the thorax. ? A simple sagittal flexion/extension task is adequate to discriminate LBP patients. ? Non-linear Kernel classification is appropriate for LBP identification.
机译:摘要本文提出了一种在各种设置中评估LBP的新方法。该提出的系统与模式识别技术结合使用具有成本效益的惯性传感器,用于识别敏感分类器,以鉴定LB患者的鉴定。 24个健康个体和28名低腰疼痛患者在五种不同方向上进行了躯干运动任务以进行验证。基于文献选择这些动作的四种组合,并收集了相应的运动数据。在过滤(第四顺序,低通贝尔沃斯滤波器)并使数据中归一化时,主要成分分析用于特征提取,而支持向量机分类器应用于数据分类。结果表明,对于低腰痛鉴定,可以充分使用非线性内核分类。我们的初步结果表明,使用胸部上的单个惯性传感器与相对简单的试验方案结合,可以识别低腰痛,精度为96%,敏感性为100%,特异性为92%。虽然我们的方法显示了有希望的结果,但需要在较大的人群中进行进一步的验证,以利用该方法作为检测临床/康复环境中低腰疼的实际定量评估工具。强调 ?本研究提出了一种在临床环境中评估LBP的新系统。还该系统使用惯性传感器以及模式识别技术。还使用胸部上的一个惯性传感器实现96%的精度。还简单的矢状屈曲/扩展任务是足以区分LBP患者。还非线性内核分类适用于LBP识别。

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