Farajzadeh Nacer, Sadeghzadeh Nima, Hashemzadeh Mahdi
Faculty of Information Technology and Computer Engineering, Azarbaijan Shahid Madani University, Tabriz, Iran; Artificial Intelligence and Machine Learning Research Laboratory, Azarbaijan Shahid Madani University, Tabriz, Iran.
Faculty of Information Technology and Computer Engineering, Azarbaijan Shahid Madani University, Tabriz, Iran; Artificial Intelligence and Machine Learning Research Laboratory, Azarbaijan Shahid Madani University, Tabriz, Iran.
Med Eng Phys. 2023 Mar;113:103957. doi: 10.1016/j.medengphy.2023.103957. Epub 2023 Feb 10.
Among the musculoskeletal disorders in the world, osteoarthritis is the most common, affecting most of the body joints, especially the knee. Clinical radiographic imaging methods are commonly used to diagnose osteoarthritis thanks to their cheapness and availability. Due to the low quality and indiscernibility of these images, however, accurate osteoarthritis diagnosis has always faced inaccuracies, such as the wrong diagnosis. One of the osteoarthritis hallmarks is joint space narrowing. Thus, its degree and severity can be determined relatively by assessing the space between the bones in the joint. Therefore, in this research, a deep residual neural network, termed IJES-OA Net, is presented to automatically grade (classify) the severity of knee osteoarthritis via radiographs. This is achieved by tuning it in a way to have it focused on the distance of the edges of the bones inside the knee joint. Experimental results which are conducted on MOST (for training) and OAI (for validation and testing) datasets show that the IJES-OA Net achieves high average accuracy as well as average precision (80.23% and 0.802, respectively) while having less complexity compared to other methods. Additionally, the resulting attention maps from IJES-OA Net are accurate enough that increase experts' reliance on the provided results.
在全球肌肉骨骼疾病中,骨关节炎最为常见,影响身体的大部分关节,尤其是膝关节。临床放射成像方法因其价格低廉且易于获取而常用于诊断骨关节炎。然而,由于这些图像质量低且难以辨别,骨关节炎的准确诊断一直面临不准确的问题,比如误诊。骨关节炎的一个标志是关节间隙变窄。因此,可以通过评估关节中骨骼之间的间隙来相对确定其程度和严重程度。所以,在本研究中,提出了一种名为IJES-OA Net的深度残差神经网络,用于通过X光片自动对膝关节骨关节炎的严重程度进行分级(分类)。这是通过对其进行调整,使其专注于膝关节内骨骼边缘的距离来实现的。在MOST(用于训练)和OAI(用于验证和测试)数据集上进行的实验结果表明,IJES-OA Net实现了较高的平均准确率和平均精度(分别为80.23%和0.802),同时与其他方法相比具有较低的复杂度。此外,IJES-OA Net生成的注意力图足够准确,提高了专家对所提供结果的信赖度。