Multi-Classification of Lung Infections Using Improved Stacking Convolution Neural Network

Usharani Bhimavarapu, Nalini Chintalapudi, Gopi Battineni
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引用次数: 1

Abstract

Lung disease is a respiratory disease that poses a high risk to people worldwide and includes pneumonia and COVID-19. As such, quick and precise identification of lung disease is vital in medical treatment. Early detection and diagnosis can significantly reduce the life-threatening nature of lung diseases and improve the quality of life of human beings. Chest X-ray and computed tomography (CT) scan images are currently the best techniques to detect and diagnose lung infection. The increase in the chest X-ray or CT scan images at the time of training addresses the overfitting dilemma, and multi-class classification of lung diseases will deal with meaningful information and overfitting. Overfitting deteriorates the performance of the model and gives inaccurate results. This study reduces the overfitting issue and computational complexity by proposing a new enhanced kernel convolution function. Alongside an enhanced kernel convolution function, this study used convolution neural network (CNN) models to determine pneumonia and COVID-19. Each CNN model was applied to the collected dataset to extract the features and later applied these features as input to the classification models. This study shows that extracting deep features from the common layers of the CNN models increased the performance of the classification procedure. The multi-class classification improves the diagnostic performance, and the evaluation metrics improved significantly with the improved support vector machine (SVM). The best results were obtained using the improved SVM classifier fed with the features provided by CNN, and the success rate of the improved SVM was 99.8%.
基于改进堆叠卷积神经网络的肺部感染多分类
肺部疾病是一种呼吸道疾病,对全世界的人们构成高风险,包括肺炎和COVID-19。因此,快速准确地识别肺部疾病在医疗中至关重要。早期发现和诊断可以显著降低肺部疾病的致命性,提高人类的生活质量。胸部x线和计算机断层扫描(CT)图像是目前检测和诊断肺部感染的最佳技术。训练时胸部x线或CT扫描图像的增加解决了过拟合困境,肺部疾病的多类分类将处理有意义的信息和过拟合。过拟合会降低模型的性能并给出不准确的结果。本研究通过提出一种新的增强核卷积函数来减少过拟合问题和计算复杂度。除了增强的核卷积函数外,该研究还使用卷积神经网络(CNN)模型来确定肺炎和COVID-19。将每个CNN模型应用于收集到的数据集,提取特征,然后将这些特征作为分类模型的输入。本研究表明,从CNN模型的公共层中提取深层特征可以提高分类过程的性能。多类分类提高了诊断性能,改进后的支持向量机(SVM)的评价指标得到显著改善。以CNN提供的特征为馈入的改进SVM分类器效果最好,准确率达到99.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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