腰背部疾病的运动轮廓计算机辅助诊断

H. Sharafeddin, M. Parnianpour, H. Hemami, T. Hanson, S. Goldman, T. Madson
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引用次数: 4

摘要

特征提取和逐步识别技术应用于从受试者在重复躯干屈伸任务中获得的运动轮廓(MPs),以开发诊断腰背部疾病的计算机辅助程序。采用美国梅奥诊所和俄亥俄州立大学的B-200等站测力计对524名正常、腰痛和就业前患者进行了测试。采用主成分分析(PCA)和傅立叶描述子(FD)方法分别对数据降维,有效地表示连续MPs和相位肖像。此外,使用连续MPs的统计参数来表示动态中继性能。判别分析结果表明,使用三种数据表示方法:MPs、PCA和FD,错误率在19% ~ 24%之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer aided diagnosis of low back disorders using the motion profile
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.
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