论文标题
膝盖声音的时间频分析和参数化,用于非侵入性检测骨关节炎
Time-Frequency Analysis and Parameterisation of Knee Sounds for Non-invasive Detection of Osteoarthritis
论文作者
论文摘要
目的:在这项工作中,使用膝关节在步行过程中使用膝关节产生的声音研究了非侵入性检测膝关节骨关节炎的潜力。方法:这些信号及其压缩表示的时间频域中包含的信息被利用,并研究了其判别属性。它们对正常和异常信号分类任务的功效通过全面的实验框架进行了评估。基于此,使用分类和回归树(CART),线性判别分析(LDA)和支持向量机(SVM)分类器研究特征提取参数对分类性能的影响。结果:表明分类是成功的,在接收器操作特征(ROC)曲线下的区域为0.92。结论:分析表明,当使用不均匀的频率缩放并确定包含区分特征的特定频带时,分类性能的改善。意义:与其他针对静坐运动和膝盖屈曲/延伸的研究相反,本研究使用了步行过程中获得的膝盖声音。对此类信号的分析导致非侵入性检测膝关节骨关节炎具有很高的准确性,并有可能扩大可用工具的范围,以评估该疾病是一种更实用和具有成本效益的方法,而无需临床设置。
Objective: In this work the potential of non-invasive detection of knee osteoarthritis is investigated using the sounds generated by the knee joint during walking. Methods: The information contained in the time-frequency domain of these signals and its compressed representations is exploited and their discriminant properties are studied. Their efficacy for the task of normal vs abnormal signal classification is evaluated using a comprehensive experimental framework. Based on this, the impact of the feature extraction parameters on the classification performance is investigated using Classification and Regression Trees (CART), Linear Discriminant Analysis (LDA) and Support Vector Machine (SVM) classifiers. Results: It is shown that classification is successful with an area under the Receiver Operating Characteristic (ROC) curve of 0.92. Conclusion: The analysis indicates improvements in classification performance when using non-uniform frequency scaling and identifies specific frequency bands that contain discriminative features. Significance: Contrary to other studies that focus on sit-to-stand movements and knee flexion/extension, this study used knee sounds obtained during walking. The analysis of such signals leads to non-invasive detection of knee osteoarthritis with high accuracy and could potentially extend the range of available tools for the assessment of the disease as a more practical and cost effective method without requiring clinical setups.