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Using surface electromyography (SEMG) to classify low back pain based on lifting capacity evaluation with principal component analysis neural network method

机译:基于主成分分析神经网络的提升能力评估,使用表面肌电图(SEMG)对腰痛进行分类

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Low back pain (LBP) is a leading cause of disability. The population with low back pain is continuously growing in the recent years. This study tries to distinguish LBP patients with healthy subjects by using the objective surface electromyography (SEMG) as a quantitative score for clinical evaluations. There are 26 healthy and 26 low back pain subjects who involved in this research. They lifted different weights by static and dynamic lifting process. Multiple features are extracted from the raw SEMG data, including energy and frequency indexes. Moreover, false discovery rate (FDR) omitted the false positive features. Then, a principal component analysis neural network (PCANN) was used for classifications. The results showed the features with different loadings (including 30%, and 50% loading) on lifting which can be used for distinguishing healthy and back pain subjects. By using PCANN method, more than 80% accuracies are achieved when different lifting weights were applied. Moreover, it is correlated between some EMG features and clinical scales, on exertion, fatigue, and pain. This technology can be potentially used for the future researches as a computer-aid diagnosis tool of LBP evaluation.
机译:下背痛(LBP)是导致残疾的主要原因。近年来,腰背痛的人口持续增长。这项研究试图通过使用客观表面肌电图(SEMG)作为临床评估的定量评分来区分LBP患者与健康受试者。有26位健康受试者和26位下腰痛受试者参与了这项研究。他们通过静态和动态举升过程举起不同的重物。从原始SEMG数据中提取了多个特征,包括能量和频率指数。此外,误发现率(FDR)省略了误报功能。然后,使用主成分分析神经网络(PCANN)进行分类。结果表明,在抬起时具有不同负荷(包括30%和50%负荷)的特征可用于区分健康受试者和背部疼痛受试者。通过使用PCANN方法,当施加不同的起重重量时,可达到80%以上的精度。此外,它与一些肌电图特征和临床量表(劳累,疲劳和疼痛)相关。该技术可以作为LBP评估的计算机辅助诊断工具潜在地用于未来的研究。

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