Department of Computer Science and Engineering, Uttaranchal Institute of Technology (UIT), Uttaranchal University, Dehradun 248007, Uttarakhand, India.
Department of Computer Science, College of Computer and Information Sciences, King Saud University, Riyadh, 11633, Saudi Arabia.
BMC Musculoskelet Disord. 2024 Oct 16;25(1):817. doi: 10.1186/s12891-024-07942-9.
In today's digital age, various diseases drastically reduce people's quality of life. Arthritis is one amongst the most common and debilitating maladies. Osteoarthritis affects several joints, including the hands, knees, spine, and hips. This study focuses on the medical disorder underlying Knee Osteoarthritis (KOA) which severely impairs people's quality of life. KOA is characterised by restricted mobility, stiffness, and terrible pain and can be caused by a range of factors such as ageing, obesity, and traumas. This degenerative disorder leads to progressive wear and tear of the knee joint.
To combat arthritis in the kneecap, this study employs a 12-layer Convolutional Neural Network (CNN) to reach deep learning capabilities. A collection of data from the Osteoarthritis Initiative (OAI) is used to classify KOA. Through the use of medical image processing; the study ascertains whether an individual has this ailment. A sophisticated CNN architecture created especially for binary classification and KOA severity utilising deep learning algorithms is the main component of this work.
The cross-entropy loss function is an important component of the model's laborious design that classifies data into two groups. The remaining section uses the Kellgren-Lawrence (KL) grade to classify the disease's severity. In the binary classification, the proposed algorithm outperforms previous methods with an accuracy rate of 92.3%, and in the multiclassification, its accuracy rate is 78.4% which is superior to the previous findings.
Looking ahead, the research broadens the scope of this work by gathering information from various sources and using these methods on a wider range of datasets and situations. The potential for major advancements in the field of osteoarthritis detection and classification is highlighted by this forward-looking approach. Furthermore, this method reduces the intervention of medical practitioners and ultimately results in accurate diagnosis.
Not applicable.
在当今数字化时代,各种疾病极大地降低了人们的生活质量。关节炎是最常见和最使人虚弱的疾病之一。骨关节炎影响多个关节,包括手、膝盖、脊柱和臀部。本研究专注于膝关节骨关节炎(KOA)的医学疾病,这种疾病严重影响了人们的生活质量。KOA 的特征是活动受限、僵硬和严重疼痛,可由多种因素引起,如年龄增长、肥胖和创伤。这种退行性疾病会导致膝关节的渐进性磨损。
为了治疗膝盖骨关节炎,本研究使用 12 层卷积神经网络(CNN)来实现深度学习能力。使用来自骨关节炎倡议(OAI)的数据来对 KOA 进行分类。通过使用医学图像处理;该研究确定个体是否患有这种疾病。这项工作的主要组成部分是一个专门为二进制分类和 KOA 严重程度而创建的复杂 CNN 架构,该架构利用深度学习算法。
交叉熵损失函数是模型设计的重要组成部分,它将数据分为两组。剩余部分使用 Kellgren-Lawrence(KL)分级来对疾病的严重程度进行分类。在二进制分类中,所提出的算法的准确率为 92.3%,优于以前的方法,在多分类中,其准确率为 78.4%,优于以前的发现。
展望未来,通过从各种来源收集信息并将这些方法应用于更广泛的数据集和情况,本研究拓宽了这项工作的范围。这种前瞻性方法突显了在骨关节炎检测和分类领域取得重大进展的潜力。此外,这种方法减少了医疗从业者的干预,最终导致准确的诊断。
不适用。