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Using a Motion Sensor to Categorize Nonspecific Low Back Pain Patients: A Machine Learning Approach

机译:使用运动传感器对非特异性下腰痛患者进行分类:一种机器学习方法

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摘要

Nonspecific low back pain (NSLBP) constitutes a critical health challenge that impacts millions of people worldwide with devastating health and socioeconomic consequences. In today’s clinical settings, practitioners continue to follow conventional guidelines to categorize NSLBP patients based on subjective approaches, such as the STarT Back Screening Tool (SBST). This study aimed to develop a sensor-based machine learning model to classify NSLBP patients into different subgroups according to quantitative kinematic data, i.e., trunk motion and balance-related measures, in conjunction with STarT output. Specifically, inertial measurement units (IMU) were attached to the trunks of ninety-four patients while they performed repetitive trunk flexion/extension movements on a balance board at self-selected pace. Machine learning algorithms (support vector machine (SVM) and multi-layer perceptron (MLP)) were implemented for model development, and SBST results were used as ground truth. The results demonstrated that kinematic data could successfully be used to categorize patients into two main groups: high vs. low-medium risk. Accuracy levels of ~75% and 60% were achieved for SVM and MLP, respectively. Additionally, among a range of variables detailed herein, time-scaled IMU signals yielded the highest accuracy levels (i.e., ~75%). Our findings support the improvement and use of wearable systems in developing diagnostic and prognostic tools for various healthcare applications. This can facilitate development of an improved, cost-effective quantitative NSLBP assessment tool in clinical and home settings towards effective personalized rehabilitation.
机译:非特异性下背痛(NSLBP)构成了至关重要的健康挑战,对全世界数以百万计的人造成了毁灭性的健康和社会经济后果。在当今的临床环境中,从业人员继续遵循常规准则,根据诸如STarT Back Screening Tool(SBST)等主观方法对NSLBP患者进行分类。这项研究旨在开发一种基于传感器的机器学习模型,根据定量运动学数据(即躯干运动和平衡相关措施)以及STarT输出,将NSLBP患者分为不同的亚组。具体来说,惯性测量单元(IMU)连接到94位患者的躯干上,同时他们以自行选择的速度在平衡板上执行重复的躯干弯曲/伸展运动。实现了机器学习算法(支持向量机(SVM)和多层感知器(MLP))用于模型开发,并将SBST结果用作基本事实。结果表明,运动学数据可以成功地将患者分为两大类:高风险与低风险。 SVM和MLP的准确度分别达到〜75%和60%。另外,在本文详述的一系列变量中,时标IMU信号产生最高的准确度水平(即〜75%)。我们的发现支持可穿戴系统在开发用于各种医疗保健应用的诊断和预后工具中的改进和使用。这可以促进在临床和家庭环境中开发改进的,具有成本效益的定量NSLBP评估工具,以实现有效的个性化康复。

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