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使用基于图的谱嵌入量化联合声发射的信号质量

Quantifying Signal Quality for Joint Acoustic Emissions Using Graph-Based Spectral Embedding.

作者信息

Richardson Kristine L, Gharehbaghi Sevda, Ozmen Goktug C, Safaei Mohsen M, Inan Omer T

机构信息

School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, GA 30332 USA.

出版信息

IEEE Sens J. 2021 Jun 15;21(12):13676-13684. doi: 10.1109/jsen.2021.3071664. Epub 2021 Apr 7.

Abstract

We present a new method for quantifying signal quality of joint acoustic emissions (JAEs) from the knee during unloaded flexion/extension (F/E) exercises. For ten F/E cycles, JAEs were recorded, in a clinical setting, from 34 healthy knees and 13 with a meniscus tear (n=24 subjects). The recordings were first segmented by F/E cycle and described using time and frequency domain features. Using these features, a symmetric k-nearest neighbor graph was created and described using a spectral embedding. We show how the underlying community structure of JAEs was comparable across joint health levels and was highly affected by artifacts. Each F/E cycle was scored by its distance from a diverse set of manually annotated, clean templates and removed if above the artifact threshold. We validate this methodology by showing an improvement in the distinction between the JAEs of healthy and injured knees. Graph community factor (GCF) was used to detect the number of communities in each recording and describe the heterogeneity of JAEs from each knee. Before artifact removal, there was no significant difference between the healthy and injured groups due to the impact of artifacts on the community construction. Following implementation of artifact removal, we observed improvement in knee health classification. The GCF value for the meniscus tear group was significantly higher than the healthy group (p<0.01). With more JAE recordings being taken in the clinic and at home, this paper addresses the need for a robust artifact removal method which is necessary for an accurate description of joint health.

摘要

我们提出了一种新方法,用于量化在无负荷屈伸(F/E)运动期间膝关节联合声发射(JAE)的信号质量。在临床环境中,对34个健康膝关节和13个半月板撕裂膝关节(n = 24名受试者)进行了10个F/E周期的JAE记录。记录首先按F/E周期进行分割,并使用时域和频域特征进行描述。利用这些特征,创建了一个对称k近邻图,并使用谱嵌入进行描述。我们展示了JAE的潜在群落结构在不同关节健康水平之间具有可比性,并且受到伪影的高度影响。每个F/E周期根据其与一组多样化的手动标注的干净模板的距离进行评分,如果超过伪影阈值则予以去除。我们通过显示健康膝关节和受伤膝关节的JAE之间区分度的提高来验证这种方法。图群落因子(GCF)用于检测每个记录中的群落数量,并描述每个膝关节JAE的异质性。在去除伪影之前,由于伪影对群落构建的影响,健康组和受伤组之间没有显著差异。在实施伪影去除后,我们观察到膝关节健康分类有所改善。半月板撕裂组的GCF值显著高于健康组(p<0.01)。随着临床上和家庭中进行更多的JAE记录,本文满足了对一种强大的伪影去除方法的需求,这对于准确描述关节健康是必要的。

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