Moussavi Z M, Rangayyan R M, Bell G D, Frank C B, Ladly K O, Zhang Y T
Department of Electrical and Computer Engineering, University of Calgary, Canada.
IEEE Trans Biomed Eng. 1996 Jan;43(1):15-23. doi: 10.1109/10.477697.
This paper proposes a noninvasive method to diagnose chondromalacia patella at its early stages by recording knee vibration signals (also known as vibroarthrographic or VAG signals) over the mid-patella during normal movement. An adaptive segmentation method was developed to segment the nonstationary VAG signals. The least squares modeling method was used to reduce the number of data samples to a few model parameters. Model parameters along with a few clinical parameters and a signal variability parameter were then used as discriminant features for screening VAG signals by applying logistic and discriminant algorithms. The system was trained using ten normal and eight abnormal signals. It correctly screened a separate test set of ten normal and eight abnormal signals except for one normal signal. The proposed method should find use as an alternative technique for diagnosis of knee joint pathology or as a test before arthroscopy or major knee surgery.
本文提出了一种非侵入性方法,通过在正常运动过程中记录髌骨中部的膝关节振动信号(也称为振动关节造影或VAG信号)来早期诊断髌骨软化症。开发了一种自适应分割方法来分割非平稳VAG信号。使用最小二乘建模方法将数据样本数量减少到几个模型参数。然后,将模型参数与一些临床参数和一个信号变异性参数用作判别特征,通过应用逻辑和判别算法来筛选VAG信号。该系统使用十个正常信号和八个异常信号进行训练。除了一个正常信号外,它正确地筛选了一个由十个正常信号和八个异常信号组成的单独测试集。所提出的方法应可作为诊断膝关节病变的替代技术,或作为关节镜检查或大型膝关节手术前的一项测试。