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Quantifying the Effects of Increasing Mechanical Stress on Knee Acoustical Emissions Using Unsupervised Graph Mining

机译:使用无监督图挖掘量化增加机械应力对膝盖声发射的影响

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摘要

In this paper, we investigate the effects of increasing mechanical stress on the knee joints by recording knee acoustical emissions and analyze them using an unsupervised graph mining algorithm. We placed miniature contact microphones on four different locations: on the lateral and medial sides of the patella and superficial to the lateral and medial meniscus. We extracted audio features in both time and frequency domains from the acoustical signals and calculated the graph community factor (GCF): an index of heterogeneity (variation) in the sounds due to different loading conditions enforced on the knee. To determine the GCF, a k-Nearest Neighbor graph was constructed and an Infomap community detection algorithm was used to extract all potential clusters within the graph – the number of detected communities were then quantified with GCF. Measurements from twelve healthy subjects showed that the GCF increased monotonically and significantly with vertical loading forces (mean GCF for no load = 30 and mean GCF for maximum load [body weight] = 39). This suggests that the increased complexity of the emitted sounds is related to the increased forces on the joint. In addition, microphones placed on the medial side of the patella and superficial to the lateral meniscus produced the most variation in the joint sounds. This information can be used to determine the optimal location for the microphones to obtain acoustical emissions with greatest sensitivity to loading. In future work, joint loading quantification based on acoustical emissions and derived GCF can be used for assessing cumulative knee usage and loading during activities, for example for patients rehabilitating knee injuries.
机译:在本文中,我们通过记录膝盖声发射来研究增加机械应力对膝关节的影响,并使用无监督图挖掘算法对其进行分析。我们将微型接触式麦克风放在四个不同的位置::骨的外侧和内侧,以及半月板的内侧和外侧。我们从声学信号中提取了时域和频域中的音频特征,并计算了图社区因子(GCF):由于在膝盖上施加的不同负载条件,声音中的异质性(变异性)指标。为了确定GCF,构建了k最近邻图,并使用Infomap社区检测算法提取了图中的所有潜在聚类-然后使用GCF对检测到的社区的数量进行量化。对十二名健康受试者的测量结果显示,随着垂直负荷力的增加,GCF单调显着增加(无负荷的平均GCF = 30,最大负荷的平均GCF [体重] = 39)。这表明,发出声音的复杂性增加与关节上的力增加有关。此外,放置在the骨内侧和半月板表面的麦克风产生的关节声音变化最大。此信息可用于确定麦克风的最佳位置,以获得对负载具有最大敏感性的声发射。在未来的工作中,基于声发射和导出的GCF的关节负荷量化可用于评估活动期间(例如,康复膝盖受伤的患者)累积的膝盖使用量和负荷。

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