Al-Rimy Bander Ali Saleh, Saeed Faisal, Al-Sarem Mohammed, Albarrak Abdullah M, Qasem Sultan Noman
Department of Computer Science, Faculty of Computing, Universiti Teknologi Malaysia, Johor Bahru 81310, Malaysia.
DAAI Research Group, Department of Computing and Data Science, School of Computing and Digital Technology, Birmingham City University, Birmingham B4 7XG, UK.
Diagnostics (Basel). 2023 May 29;13(11):1903. doi: 10.3390/diagnostics13111903.
Knee osteoarthritis (OA) detection is an important area of research in health informatics that aims to improve the accuracy of diagnosing this debilitating condition. In this paper, we investigate the ability of DenseNet169, a deep convolutional neural network architecture, for knee osteoarthritis detection using X-ray images. We focus on the use of the DenseNet169 architecture and propose an adaptive early stopping technique that utilizes gradual cross-entropy loss estimation. The proposed approach allows for the efficient selection of the optimal number of training epochs, thus preventing overfitting. To achieve the goal of this study, the adaptive early stopping mechanism that observes the validation accuracy as a threshold was designed. Then, the gradual cross-entropy (GCE) loss estimation technique was developed and integrated to the epoch training mechanism. Both adaptive early stopping and GCE were incorporated into the DenseNet169 for the OA detection model. The performance of the model was measured using several metrics including accuracy, precision, and recall. The obtained results were compared with those obtained from the existing works. The comparison shows that the proposed model outperformed the existing solutions in terms of accuracy, precision, recall, and loss performance, which indicates that the adaptive early stopping coupled with GCE improved the ability of DenseNet169 to accurately detect knee OA.
膝关节骨关节炎(OA)检测是健康信息学领域的一个重要研究方向,旨在提高对这种使人衰弱疾病的诊断准确性。在本文中,我们研究了深度卷积神经网络架构DenseNet169利用X射线图像检测膝关节骨关节炎的能力。我们专注于DenseNet169架构的使用,并提出一种利用渐进交叉熵损失估计的自适应早期停止技术。所提出的方法允许有效地选择最佳训练轮数,从而防止过拟合。为实现本研究的目标,设计了以验证准确率为阈值的自适应早期停止机制。然后,开发了渐进交叉熵(GCE)损失估计技术并将其集成到轮次训练机制中。自适应早期停止和GCE都被纳入用于OA检测模型的DenseNet169中。使用包括准确率、精确率和召回率在内的多个指标来衡量模型的性能。将获得的结果与现有研究的结果进行比较。比较表明,所提出的模型在准确率、精确率、召回率和损失性能方面优于现有解决方案,这表明自适应早期停止与GCE相结合提高了DenseNet169准确检测膝关节OA的能力。