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Removal of artifacts in knee joint vibroarthrographic signals using ensemble empirical mode decomposition and detrended fluctuation analysis

机译:整体经验模态分解和去趋势波动分析法去除膝关节颤动信号中的伪影

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High-resolution knee joint vibroarthrographic (VAG) signals can help physicians accurately evaluate the pathological condition of a degenerative knee joint, in order to prevent unnecessary exploratory surgery. Artifact cancellation is vital to preserve the quality of VAG signals prior to further computeraided analysis. This paper describes a novel method that effectively utilizes ensemble empirical mode decomposition (EEMD) and detrended fluctuation analysis (DFA) algorithms for the removal of baseline wander and white noise in VAG signal processing. The EEMD method first successively decomposes the raw VAG signal into a set of intrinsic mode functions (IMFs) with fast and low oscillations, until the monotonic baseline wander remains in the last residue. Then, the DFA algorithm is applied to compute the fractal scaling index parameter for each IMF, in order to identify the anti-correlation and the long-range correlation components. Next, the DFA algorithm can be used to identify the anti-correlated and the long-range correlated IMFs, which assists in reconstructing the artifact-reduced VAG signals. Our experimental results showed that the combination of EEMD and DFA algorithms was able to provide averaged signal-to-noise ratio (SNR) values of 20.52 dB (standard deviation: 1.14 dB) and 20.87 dB (standard deviation: 1.89 dB) for 45 normal signals in healthy subjects and 20 pathological signals in symptomatic patients, respectively. The combination of EEMD and DFA algorithms can ameliorate the quality of VAG signals with great SNR improvements over the raw signal, and the results were also superior to those achieved bywaveletmatching pursuit decomposition and time-delay neural filter.
机译:高分辨率膝关节纤颤(VAG)信号可帮助医生准确评估退行性膝关节的病理状况,以防止进行不必要的探索性手术。伪影消除对于在进一步计算机辅助分析之前保持VAG信号的质量至关重要。本文介绍了一种新方法,该方法有效地利用了集成经验模式分解(EEMD)和去趋势波动分析(DFA)算法来消除VAG信号处理中的基线漂移和白噪声。 EEMD方法首先将原始VAG信号连续分解为具有快速和低振荡的一组固有模式函数(IMF),直到单调基线漂移保留在最后一个残差中。然后,使用DFA算法计算每个IMF的分形缩放指数参数,以识别反相关分量和远程相关分量。接下来,DFA算法可用于识别反相关和远程相关的IMF,这有助于重建减少伪影的VAG信号。我们的实验结果表明,EEMD和DFA算法的结合能够为45个正常人群提供20.52 dB(标准偏差:1.14 dB)和20.87 dB(标准偏差:1.89 dB)的平均信噪比(SNR)值健康受试者中的信号和有症状患者中的20种病理信号。 EEMD和DFA算法的结合可以改善VAG信号的质量,并且比原始信号具有更大的SNR改善,其结果也优于通过小波匹配追踪分解和时延神经滤波器获得的结果。

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