Samarla Suresh Kumar, P Maragathavalli
Information Technology, Puducherry Technological University, Puducherry, India.
CSE Department, SRKR Engineering College, AndhraPradesh, India.
MethodsX. 2024 Mar 6;12:102640. doi: 10.1016/j.mex.2024.102640. eCollection 2024 Jun.
Lung abnormalities pose significant health concerns, underscoring the need for swift and accurate diagnoses to facilitate timely medical intervention. This study introduces a novel methodology for the sub-classification of lung abnormalities within chest X-rays captured via smartphones. An accurate and timely diagnosis of lung abnormalities is essential for the successful implementation of appropriate therapy. In this paper, we propose a novel approach using a Convolutional neural network (CNN) with three maximum pooling layers and early fusion for sub-classifying lung abnormalities from chest Xrays. Based on the kind of abnormality, the CheXpert dataset is divided into 13 sub-classes, each of which is trained using a different sub-model. An early fusion procedure is then used to integrate the outputs of the sub-model.•3M-CNN (Method 1): We employed a Convolutional Neural Network (CNN) with three max pooling layers and an early fusion strategy to train dedicated sub-models for each of the 13 distinct sub-classes of lung abnormalities using the CheXpert dataset.•Ensemble Model (Method 2): Our 'Ensemble model' integrated the outputs of the trained sub-models, providing a powerful approach for the sub-classification of lung abnormalities.•Exceptional Accuracy: Our '3M-CNN' and 'fused model' achieved an accuracy of 98.79%, surpassing established methodologies, which is beneficial in resource-constrained environments embracing smartphone-based imaging.
肺部异常引发了重大的健康问题,这凸显了迅速而准确诊断的必要性,以便及时进行医疗干预。本研究介绍了一种用于对通过智能手机拍摄的胸部X光片中的肺部异常进行子分类的新方法。准确及时地诊断肺部异常对于成功实施适当治疗至关重要。在本文中,我们提出了一种新颖的方法,使用具有三个最大池化层的卷积神经网络(CNN)和早期融合来对胸部X光片中的肺部异常进行子分类。根据异常类型,将CheXpert数据集分为13个子类,每个子类使用不同的子模型进行训练。然后使用早期融合程序来整合子模型的输出。
3M-CNN(方法1):我们采用了具有三个最大池化层的卷积神经网络(CNN)和早期融合策略,使用CheXpert数据集为13种不同的肺部异常子类分别训练专用子模型。
集成模型(方法2):我们的“集成模型”整合了训练后的子模型的输出,为肺部异常的子分类提供了一种强大的方法。
卓越的准确性:我们的“3M-CNN”和“融合模型”实现了98.79%的准确率,超过了既定方法,这在采用基于智能手机成像的资源受限环境中是有益的。