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Computer aided diagnosis of low back disorders using the motion profile

机译:计算机辅助使用运动型材的低背障碍的诊断

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Feature extraction and stepwise discrimination techniques were applied to motion profiles (MPs) obtained from subjects during a repetitive trunk flexion and extension task, in order to develop a computer aided procedure for the diagnosis of low back disorder. 524 subjects, belonging to normal, low back pain patient, and pre-employment categories were tested using the B-200 Isostation dynamometers, at the Mayo Clinic and The Ohio State University. Principal components analysis (PCA) and Fourier descriptor (FD) methods were used to efficiently represent the continuous MPs and phase portraits, respectively, by reducing the dimensionality of the data. In addition, the statistical parameters from the continuous MPs were used to represent the dynamic trunk performance. The results of discriminant analysis indicated similar error rates ranging from 19% to 24%, using the three methods of data representation: MPs, PCA and FD.
机译:特征提取和逐步辨别技术被应用于从重复的中继屈曲和扩展任务期间从受试者获得的运动分布(MPS),以便开发用于诊断低次疾病的计算机辅助过程。 524名受试者,属于正常,低腰疼痛患者和在俄亥俄州州立大学的B-200型静力测量仪测试的预雇用类别。主要成分分析(PCA)和傅立叶描述符(FD)方法通过降低数据的维度分别有效地表示连续的MPS和相位肖像。此外,来自连续MPS的统计参数用于表示动态中继性能。判别分析结果表明,使用三种数据表示方法:MPS,PCA和FD的方法,判别分析的误差率为19%至24%。

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