Ahmed Sozan Mohammed, Mstafa Ramadhan J
Department of Computer Science, Faculty of Science, University of Zakho, Duhok 42002, Iraq.
Department of Computer Science, College of Science, Nawroz University, Duhok 42001, Iraq.
Diagnostics (Basel). 2022 Nov 24;12(12):2939. doi: 10.3390/diagnostics12122939.
Recently, many diseases have negatively impacted people's lifestyles. Among these, knee osteoarthritis (OA) has been regarded as the primary cause of activity restriction and impairment, particularly in older people. Therefore, quick, accurate, and low-cost computer-based tools for the early prediction of knee OA patients are urgently needed. In this paper, as part of addressing this issue, we developed a new method to efficiently diagnose and classify knee osteoarthritis severity based on the X-ray images to classify knee OA in (i.e., binary and multiclass) in order to study the impact of different class-based, which has not yet been addressed in previous studies. This will provide physicians with a variety of deployment options in the future. Our proposed models are basically divided into two frameworks based on applying pre-trained convolutional neural networks (CNN) for feature extraction as well as fine-tuning the pre-trained CNN using the transfer learning (TL) method. In addition, a traditional machine learning (ML) classifier is used to exploit the enriched feature space to achieve better knee OA classification performance. In the first one, we developed five classes-based models using a proposed pre-trained CNN for feature extraction, principal component analysis (PCA) for dimensionality reduction, and support vector machine (SVM) for classification. While in the second framework, a few changes were made to the steps in the first framework, the concept of TL was used to fine-tune the proposed pre-trained CNN from the first framework to fit the two classes, three classes, and four classes-based models. The proposed models are evaluated on X-ray data, and their performance is compared with the existing state-of-the-art models. It is observed through conducted experimental analysis to demonstrate the efficacy of the proposed approach in improving the classification accuracy in both multiclass and binary class-based in the OA case study. Nonetheless, the empirical results revealed that the fewer multiclass labels used, the better performance achieved, with the binary class labels outperforming all, which reached a 90.8% accuracy rate. Furthermore, the proposed models demonstrated their contribution to early classification in the first stage of the disease to help reduce its progression and improve people's quality of life.
近年来,许多疾病对人们的生活方式产生了负面影响。其中,膝关节骨关节炎(OA)被认为是导致活动受限和功能障碍的主要原因,尤其是在老年人中。因此,迫切需要快速、准确且低成本的基于计算机的工具来早期预测膝关节OA患者。在本文中,作为解决这一问题的一部分,我们开发了一种新方法,基于X射线图像有效地诊断和分类膝关节骨关节炎的严重程度,以便对膝关节OA进行分类(即二分类和多分类),以研究不同分类方式的影响,而这在以往的研究中尚未涉及。这将为医生在未来提供多种部署选项。我们提出的模型主要基于应用预训练的卷积神经网络(CNN)进行特征提取以及使用迁移学习(TL)方法对预训练的CNN进行微调,分为两个框架。此外,使用传统机器学习(ML)分类器来利用丰富的特征空间,以实现更好的膝关节OA分类性能。在第一个框架中,我们使用提出的预训练CNN进行特征提取、主成分分析(PCA)进行降维和支持向量机(SVM)进行分类,开发了基于五类的模型。而在第二个框架中,对第一个框架中的步骤进行了一些更改,使用TL概念对第一个框架中提出的预训练CNN进行微调,以适应基于两类、三类和四类的模型。所提出的模型在X射线数据上进行评估,并将其性能与现有的最先进模型进行比较。通过进行实验分析观察到,在OA案例研究中,所提出的方法在提高多分类和二分类的分类准确率方面是有效的。尽管如此,实证结果表明,使用的多分类标签越少,性能越好,二分类标签的性能最佳,准确率达到90.8%。此外,所提出的模型在疾病的第一阶段展示了它们对早期分类的贡献,有助于减少疾病进展并提高人们的生活质量。