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Classification of knee arthropathy with accelerometer-based vibroarthrography

机译:加速度计的拟臂脉络膝关节大学分类

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One of the most common knee joint disorders is known as osteoarthritis which results from the progressive degeneration of cartilage and subchondral bone over time, affecting essentially elderly adults. Current evaluation techniques are either complex, expensive, invasive or simply fails into detection of small and progressive changes that occur within the knee. Vibroarthrography appeared as a new solution where the mechanical vibratory signals arising from the knee are recorded recurring only to an accelerometer and posteriorly analyzed enabling the differentiation between a healthy and an arthritic joint. In this study, a vibration-based classification system was created using a dataset with 92 healthy and 120 arthritic segments of knee joint signals collected from 19 healthy and 20 arthritic volunteers, evaluated with k-nearest neighbors and support vector machine classifiers. The best classification was obtained using the k-nearest neighbors classifier with only 6 time-frequency features with an overall accuracy of 89.8% and with a precision, recall and f-measure of 88.3%, 92.4% and 90.1%, respectively. Preliminary results showed that vibroarthrography can be a promising, non-invasive and low cost tool that could be used for screening purposes. Despite this encouraging results, several upgrades in the data collection process and analysis can be further implemented.
机译:最常见的膝关节障碍之一被称为骨关节炎,从随着时间的推移随着时间的推移而导致软骨和潜力性骨的逐渐变性导致,影响基本上的老年人。目前的评估技术是复杂的,昂贵的,侵入性的或根本未能检测膝盖内发生的小而渐进的变化。醋蝎图作为一种新的解决方案,其中由膝关节产生的机械振动信号仅被记录到加速度计,并在后部分析,使得健康和关节炎关节之间的分化能够分析。在这项研究中,基于振动的分类系统使用的数据集92个健康120从19名健康和20关节炎志愿者中收集膝关节信号,其中k最近邻和支持向量机分类器评价关节炎片段创建的。使用K-Collect邻居分类器获得最佳分类,只有6个时间频率的特征,整体精度为89.8%,精度,召回和F-PEATION分别为88.3%,92.4%和90.1%。初步结果表明,拟臂表可以是可用于筛选目的的有前途的,无侵入性和低成本的工具。尽管结果令人鼓舞的结果,但可以进一步实施数据收集过程和分析中的几种升级。

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