Islam Mohammad Shariful, Rony Mohammad Abu Tareq
Department of Computer Science and Telecommunication Engineering (CSTE), Noakhali Science and Technology University, Noakhali 3814, Bangladesh.
Department of Statistics, Noakhali Science and Technology University, Noakhali 3814, Bangladesh.
J Pathol Inform. 2024 May 8;15:100382. doi: 10.1016/j.jpi.2024.100382. eCollection 2024 Dec.
Knee osteoarthritis (OA) is a prevalent condition causing significant disability, particularly among the elderly, necessitating advancements in diagnostic methodologies to facilitate early detection and treatment. Traditional OA diagnosis, relying on radiography and physical exams, faces limitations in accuracy and objectivity. This underscores the need for more advanced diagnostic methods, such as machine learning (ML) and deep learning (DL), to improve OA detection and classification. This research introduces a novel ensemble learning approach for image data feature extraction which ingeniously combines the strengths of 2 advanced (ML) models with a (DL) method to substantially improve the accuracy of OA detection from radiographic images. This innovative strategy aims to address the limitations of traditional diagnostic tools by leveraging the enhanced sensitivity and specificity of combined ML and DL models. The methodology deployed in this study encompasses the application of 10 ML models to a comprehensive publicly available Kaggle dataset with a total of 3615 samples of knee X-ray images. Through rigorous k-fold cross-validation and meticulous hyperparameter optimization, we also included evaluation metrics like accuracy, receiver operating characteristic, precision, recall, and F1-score to assess our models' performance effectively. The proposed novel CDK (convolutional neural network, decision tree, K-nearest classifier) ensemble approach for feature extraction is designed to synergize the predictive capabilities of individual models, thereby significantly improving the detection accuracy of OA indicators within radiographic images. We applied several ML and DL approaches to the newly created feature set to evaluate performance. The CDK ensemble model outperformed state-of-the-art studies with a high-performance score of 99.72% accuracy. This remarkable achievement underscores the model's exceptional capability in the early detection of OA, highlighting its superiority in comparison to existing methods.
膝关节骨关节炎(OA)是一种普遍存在的疾病,会导致严重的残疾,尤其是在老年人中,因此需要改进诊断方法以促进早期检测和治疗。传统的OA诊断依赖于X线摄影和体格检查,在准确性和客观性方面存在局限性。这凸显了对更先进的诊断方法的需求,如机器学习(ML)和深度学习(DL),以提高OA的检测和分类。本研究引入了一种用于图像数据特征提取的新型集成学习方法,该方法巧妙地将两种先进的(ML)模型的优势与一种(DL)方法相结合,以大幅提高从X线图像中检测OA的准确性。这种创新策略旨在通过利用组合的ML和DL模型增强的敏感性和特异性来解决传统诊断工具的局限性。本研究中采用的方法包括将10个ML模型应用于一个全面的公开可用的Kaggle数据集,该数据集共有3615个膝关节X线图像样本。通过严格的k折交叉验证和细致的超参数优化,我们还纳入了准确性、受试者工作特征、精确率、召回率和F1分数等评估指标,以有效评估我们模型的性能。所提出的用于特征提取的新型CDK(卷积神经网络、决策树、K近邻分类器)集成方法旨在协同各个模型的预测能力,从而显著提高X线图像中OA指标的检测准确性。我们将几种ML和DL方法应用于新创建的特征集以评估性能。CDK集成模型的表现优于现有研究,准确率高达99.72%。这一显著成就凸显了该模型在OA早期检测方面的卓越能力,突出了其相对于现有方法的优越性。