Padmavathi V, Ganesan Kavitha
Department of Electronics and Communication Engineering, CEG Campus, Anna University, Chennai, India.
J Xray Sci Technol. 2025 Jul;33(4):742-759. doi: 10.1177/08953996251320262. Epub 2025 Mar 28.
This research introduces a Multistage-Vision Transformer (Multistage-ViT) model for precisely classifying various lung diseases using chest radiographic (CXR) images. The dataset in the proposed method includes four classes: Normal, COVID-19, Viral Pneumonia and Lung Opacity. This model demonstrates its efficacy on imbalanced and balanced datasets by enhancing classifier accuracy through deep feature extraction. It integrates backbone models with the ViT architecture, creating rigorously hybrid configurations compared to their standalone counterparts. These hybrid models utilize optimized features for classification, significantly improving their performance. Notably, the multistage-ViT model achieved accuracies of 99.93% on an imbalanced dataset and 99.97% on a balanced dataset using the InceptionV3 combined with the ViT model. These findings highlight the superior accuracy and robustness of multistage-ViT models, underscoring their potential to enhance lung disease classification through advanced feature extraction and model integration techniques. The proposed model effectively demonstrates the benefits of employing ViT for deep feature extraction from CXR images.
本研究引入了一种多阶段视觉Transformer(Multistage-ViT)模型,用于使用胸部X光(CXR)图像精确分类各种肺部疾病。所提出方法中的数据集包括四个类别:正常、新冠肺炎、病毒性肺炎和肺部 opacity。该模型通过深度特征提取提高分类器准确性,从而在不平衡和平衡数据集上证明了其有效性。它将骨干模型与ViT架构集成,与单独的对应模型相比,创建了严格的混合配置。这些混合模型利用优化特征进行分类,显著提高了它们的性能。值得注意的是,多阶段ViT模型在使用InceptionV3与ViT模型相结合时,在不平衡数据集上的准确率达到了99.93%,在平衡数据集上的准确率达到了99.97%。这些发现突出了多阶段ViT模型的卓越准确性和鲁棒性,强调了它们通过先进的特征提取和模型集成技术增强肺部疾病分类的潜力。所提出的模型有效地证明了采用ViT从CXR图像中进行深度特征提取的好处。