Lungs X-Ray Image Segmentation and Classification of Lung Disease using Convolutional Neural Network Architectures

B. Suprihatin, Yuli Andriani, F. N. Kurdi, Anita Desiani, Ibra Giovani Dwi Putra, Muhammad Akmal Shidqi
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Abstract

Lung disease is one of the biggest causes of death in the world. The SARS-CoV-2 virus causes diseases like COVID-19, and the bacteria Streptococcus sp., which causes pneumonia, are two sample causes of lung disease. X-ray images are used to detect the lung disease. This study aimed to combine the stages of segmentation and classification of lung disease. This study in segmentation aims to separate the features contained in the lung images. The classification aimed to provide holistic information on lung disease. This research method used the Deep Residual U-Net (DrU-Net) segmentation architecture and the Deep Residual Neural Network (DResNet) classification architecture. DrU-Net is a modified U-Net architecture with dropout added in its convolutional layers. DResNet is a modified Residual Network (ResNet) architecture with dropout added in its convolutional block layers. The result of this study was segmentation using the DrU-Net architecture obtained 99% for accuracy, 98% for precision, 98% for recalls, 98% for F1-Score, and 96.1% for IoU. The classification results of the segmented images using the DResNet architecture obtained 91% for accuracy, 86% for precision, 85% for recalls, and 84% for F1-Score. The performance results of DrU-Net architecture were excellent and robust in image segmentation. Unfortunately, the average performance of DResNet in classification was still below 90%. These results indicate that Dres-Net performs well in classifying lung disorders in 3 labels, namely Covid, Normal, and Pneumonia, but still needs improvement.
利用卷积神经网络架构进行肺部 X 光图像分割和肺病分类
肺病是世界上最大的死亡原因之一。导致 COVID-19 等疾病的 SARS-CoV-2 病毒和导致肺炎的链球菌是肺病的两种样本病因。X 射线图像用于检测肺部疾病。本研究旨在将肺病的分割和分类阶段结合起来。分割研究旨在分离肺部图像中包含的特征。分类旨在提供肺部疾病的整体信息。该研究方法使用了深度残差 U-网络(DrU-Net)分割架构和深度残差神经网络(DResNet)分类架构。DrU-Net 是一种改进的 U-Net 架构,在其卷积层中添加了 dropout。DResNet 是一种改进的残差网络(ResNet)架构,在其卷积块层中添加了剔除。研究结果显示,使用 DrU-Net 架构进行分割的准确率为 99%,精确率为 98%,召回率为 98%,F1-Score 为 98%,IoU 为 96.1%。使用 DResNet 架构对分割图像进行分类的准确率为 91%,精确率为 86%,召回率为 85%,F1-Score 为 84%。在图像分割方面,DRU-Net 架构的性能结果非常出色且稳健。遗憾的是,DResNet 在分类方面的平均性能仍低于 90%。这些结果表明,Dres-Net 在将肺部疾病分为 Covid、Normal 和 Pneumonia 三个标签方面表现良好,但仍需改进。
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