Krishnan S, Rangayyan R M, Bell G D, Frank C B, Ladly K O
Department of Electrical and Computer Engineering, University of Calgary, Alberta, Canada.
Med Biol Eng Comput. 1997 Nov;35(6):677-84. doi: 10.1007/BF02510977.
Interpretation of vibrations or sound signals emitted from the patellofemoral joint during movement of the knee, also known as vibroarthrography (VAG), could lead to a safe, objective, and non-invasive clinical tool for early detection, localisation, and quantification of articular cartilage disorders. In this study with a reasonably large database of VAG signals of 90 human knee joints (51 normal and 39 abnormal), a new technique for adaptive segmentation based on the recursive least squares lattice (RLSL) algorithm was developed to segment the non-stationary VAG signals into locally-stationary components; the stationary components were then modelled autoregressively, using the Burg-Lattice method. Logistic classification of the primary VAG signals into normal and abnormal signals (with no restriction on the type of cartilage pathology) using only the AR coefficients as discriminant features provided an accuracy of 68.9% with the leave-one-out method. When the abnormal signals were restricted to chondromalacia patella only, the classification accuracy rate increased to 84.5%. The effects of muscle contraction interference (MCI) on VAG signals were analysed using signals from 53 subjects (32 normal and 21 abnormal), and it was found that adaptive filtering of the MCI from the primary VAG signals did not improve the classification accuracy rate. The results indicate that VAG is a potential diagnostic tool for screening for chondromalacia patella.
在膝关节运动过程中对髌股关节发出的振动或声音信号进行解读,即振动关节造影术(VAG),有望成为一种用于早期检测、定位和量化关节软骨疾病的安全、客观且非侵入性的临床工具。在这项研究中,基于90个膝关节(51个正常和39个异常)的VAG信号构建了一个相当大的数据库,开发了一种基于递归最小二乘格型(RLSL)算法的自适应分割新技术,用于将非平稳的VAG信号分割为局部平稳分量;然后使用Burg - 格型方法对平稳分量进行自回归建模。仅将自回归(AR)系数作为判别特征,对主要VAG信号进行正常和异常信号的逻辑分类(对软骨病理类型无限制),采用留一法时准确率为68.9%。当异常信号仅限制为髌骨软化症时,分类准确率提高到84.5%。利用53名受试者(32名正常和21名异常)的信号分析了肌肉收缩干扰(MCI)对VAG信号的影响,发现从主要VAG信号中对MCI进行自适应滤波并不能提高分类准确率。结果表明,VAG是筛查髌骨软化症的一种潜在诊断工具。