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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Adaptive time-frequency analysis of knee joint vibroarthrographic signals for noninvasive screening of articular cartilage pathology
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Adaptive time-frequency analysis of knee joint vibroarthrographic signals for noninvasive screening of articular cartilage pathology

机译:自适应时频分析膝关节颤动成像技术以无创性筛查关节软骨病理

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摘要

Vibroarthrographic (VAG) signals emitted by human knee joints are nonstationary and multicomponent in nature; time-frequency distributions (TFD's) provide powerful means to analyze such signals. The objective of this paper is to construct adaptive TFD's of VAG signals suitable for feature extraction. An adaptive TFD was constructed by minimum cross-entropy optimization of the TFD obtained by the matching pursuit decomposition algorithm. Parameters of VAG signals such as energy, energy spread. frequency, and frequency spread were extracted from their adaptive TFD's. The parameters carry information about the combined TF dynamics of the signals. The mean and standard deviation of the parameters were computed, and each VAG signal was represented by a set of just six features. Statistical pattern classification experiments based on logistic regression analysis of the parameters showed an overall normal/abnormal screening accuracy of 68.9% with 90 VAG signals (51 normals and 39 abnormals), and a higher accuracy of 77.5% with a database of 71 signals with 51 normals and 20 abnormals of a specific type of patellofemoral disorder. The proposed method of VAG signal analysis is independent of joint angle and clinical information, and shows good potential for noninvasive diagnosis and monitoring of patellofemoral disorders such as chondromalacia patella.
机译:人膝关节发出的振动性脑血管造影(VAG)信号本质上是不稳定的且是多分量的。时频分布(TFD)提供了分析此类信号的有力手段。本文的目的是构建适合于特征提取的VAG信号的自适应TFD。通过对匹配追踪分解算法获得的TFD进行最小交叉熵优化,构建了自适应TFD。 VAG信号的参数,例如能量,能量扩散。从它们的自适应TFD中提取频率和频率扩展。参数携带有关信号的组合TF动态的信息。计算参数的平均值和标准偏差,每个VAG信号仅由一组六个特征表示。基于参数的Logistic回归分析的统计模式分类实验显示,对于90个VAG信号(51个正常和39个异常),总体正常/异常筛查准确性为68.9%,而对于71个信号为51的数据库,其总体准确性为77.5%。正常和20种特定类型的of股疾病异常。提出的VAG信号分析方法独立于关节角度和临床信息,在无创诊断和监测pa股软化症(例如软骨软化骨)方面显示出良好的潜力。

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