Automated Vibration and Acoustic Crepitus Sensing in Humans

IF 2.2 3区 工程技术 Q2 ENGINEERING, MECHANICAL
Gregory R. Roytman, Jocelyn Faydenko, Matthew Budavich, Judith D. Pocius, Gregory David Cramer
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Abstract

Crepitus vibrational and acoustic signal analysis of the human facet joints of the lumbar spine has historically been a difficult problem due to the inhomogeneous and varied signal characteristics. Here we improve upon our previous automated computational method, now enhancing it for analysis of human crepitus. Compared with this group's previous studies using a mechanical model; human crepitus is extremely complex. Moreover, there is no existing availability of large numbers of human crepitus data to enable effective machine learning approaches. Therefore, we proposed an automated method (AM) of analysis that, analogous to machine learning, used a test set (n = 16) and an experimental set of data (n = 48). The advantage of beginning with this approach was that we identified characteristics of the signal that are unavailable or otherwise not easily obtained in more advanced methods, such as “black box” machine learning methods. However, we did not have the high fidelity that a machine learning approach would provide. This was shown by only a fair level of inter-rater agreement (Kw = 0.367; SE = 0.054, 95% CI = 0.260-0.474) between the AM and human observers before adjustments were made in the AM. Following adjustments to the AM, inter-rater agreement improved to a substantial level of agreement (Kw = 0.788; SE = 0.056, 95% CI = 0.0.682-0.895). In the future, we recommend a machine learning study with a high number of subjects, that can better capture the nuances of varying types of human crepitus.
人类的自动振动和Crepitus声学传感
人类腰椎小关节的Crepitus振动和声学信号分析历来是一个困难的问题,这是由于信号特性的不均匀和变化。在这里,我们改进了以前的自动计算方法,现在将其用于分析人类皱纹。与该组先前使用力学模型进行的研究相比;人类的皱纹是极其复杂的。此外,目前还没有大量的人类认知数据来实现有效的机器学习方法。因此,我们提出了一种自动分析方法(AM),类似于机器学习,使用测试集(n=16)和实验数据集(n=48)。从这种方法开始的好处是,我们识别了在更先进的方法中不可用或不容易获得的信号特征,例如“黑匣子”机器学习方法。然而,我们没有机器学习方法所能提供的高保真度。在对AM进行调整之前,AM和人类观察者之间只有一个公平的评分者间一致性水平(Kw=0.367;SE=0.054,95%CI=0.260-0.474)表明了这一点。在对AM做出调整后,评分者间的一致性提高到了相当大的水平(Kw=0.788;SE=0.056,95%CI=0.0.682-0.895)。在未来,我们建议进行大量受试者的机器学习研究,这样可以更好地捕捉不同类型人类皱纹的细微差别。
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来源期刊
Journal of Tribology-transactions of The Asme
Journal of Tribology-transactions of The Asme 工程技术-工程:机械
CiteScore
4.20
自引率
12.00%
发文量
117
审稿时长
4.1 months
期刊介绍: The Journal of Tribology publishes over 100 outstanding technical articles of permanent interest to the tribology community annually and attracts articles by tribologists from around the world. The journal features a mix of experimental, numerical, and theoretical articles dealing with all aspects of the field. In addition to being of interest to engineers and other scientists doing research in the field, the Journal is also of great importance to engineers who design or use mechanical components such as bearings, gears, seals, magnetic recording heads and disks, or prosthetic joints, or who are involved with manufacturing processes. Scope: Friction and wear; Fluid film lubrication; Elastohydrodynamic lubrication; Surface properties and characterization; Contact mechanics; Magnetic recordings; Tribological systems; Seals; Bearing design and technology; Gears; Metalworking; Lubricants; Artificial joints
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