Department of Machine Design and Mechatronics, Faculty of Mechanical Engineering, Lublin University of Technology, Nadbystrzycka 36, 20-618 Lublin, Poland.
Department of Trauma Surgery and Emergency Medicine, Medical University of Lublin, Staszica 11, 20-081 Lublin, Poland.
Sensors (Basel). 2022 Mar 10;22(6):2176. doi: 10.3390/s22062176.
Osteoarthritis (OA) is a chronic, progressive disease which has over 300 million cases each year. Some of the main symptoms of OA are pain, restriction of joint motion and stiffness of the joint. Early diagnosis and treatment can prolong painless joint function. Vibroarthrography (VAG) is a cheap, reproducible, non-invasive and easy-to-use tool which can be implemented in the diagnostic route. The aim of this study was to establish diagnostic accuracy and to identify the most accurate signal processing method for the detection of OA in knee joints. In this study, we have enrolled a total of 67 patients, 34 in a study group and 33 in a control group. All patients in the study group were referred for surgical treatment due to intraarticular lesions, and the control group consisted of healthy individuals without knee symptoms. Cartilage status was assessed during surgery according to the International Cartilage Repair Society (ICRS) and vibroarthrography was performed one day prior to surgery in the study group. Vibroarthrography was performed in an open and closed kinematic chain for the involved knees in the study and control group. Signals were acquired by two sensors placed on the medial and lateral joint line. Using the neighbourhood component analysis (NCA) algorithm, the selection of optimal signal measures was performed. Classification using artificial neural networks was performed for three variants: I-open kinetic chain, II-closed kinetic chain, and III-open and closed kinetic chain. Vibroarthrography showed high diagnostic accuracy in determining healthy cartilage from cartilage lesions, and the number of repetitions during examination can be reduced only to closed kinematic chain.
骨关节炎(OA)是一种慢性、进行性疾病,每年有超过 3 亿例病例。OA 的一些主要症状包括疼痛、关节运动受限和关节僵硬。早期诊断和治疗可以延长无痛关节功能。振动关节造影(VAG)是一种廉价、可重复、非侵入性且易于使用的工具,可在诊断过程中实施。本研究的目的是确定诊断准确性,并确定检测膝关节 OA 最准确的信号处理方法。在这项研究中,我们共招募了 67 名患者,研究组 34 名,对照组 33 名。所有研究组患者均因关节内病变而接受手术治疗,对照组由无膝关节症状的健康个体组成。根据国际软骨修复学会(ICRS)评估软骨状态,并在研究组患者手术前一天进行振动关节造影。在研究和对照组的受累膝关节中进行开放式和闭合式运动链的振动关节造影。信号由放置在关节线内侧和外侧的两个传感器采集。使用邻域成分分析(NCA)算法,对最优信号测量值进行选择。使用人工神经网络进行分类,分为三种变体:I-开放式运动链、II-封闭式运动链和 III-开放式和封闭式运动链。振动关节造影在确定健康软骨与软骨病变方面具有较高的诊断准确性,并且检查过程中的重复次数可以减少到仅闭合运动链。