论文标题
使用胸部X射线进行可靠的结核病检测,并进行深度学习,分割和可视化
Reliable Tuberculosis Detection using Chest X-ray with Deep Learning, Segmentation and Visualization
论文作者
论文摘要
结核病(TB)是一种慢性肺部疾病,是由于细菌感染引起的,并且是死亡的前十大原因之一。准确和早期发现结核病非常重要,否则,它可能会威胁生命。在这项工作中,我们使用图像预处理,数据增强,图像分割和深度学习分类技术从胸部X射线图像可靠地检测到了TB。该研究的一些公共数据库用于创建一个700 TB感染和3500个普通胸部X射线图像的数据库。 9种不同的深CNN(Resnet18,Resnet50,Resnet101,Chexnet,IntectionV3,VGG19,Densenet201,Squeezenet和Mobilenet),用于从其预先培训的初始权重,经过验证,经过验证,经过验证,测试和测试的TB和非TB正常情况下转移学习。在这项工作中进行了三个不同的实验:使用两个不同的U-NET模型对X射线图像进行分割,使用X射线图像进行分类以及分割的肺图像。使用X射线图像检测结核病检测的精度,精度,灵敏度,F1得分,分别为97.07%,97.34%,97.07%,97.14%和97.36%。然而,分类的分段肺比基于整个X射线图像的分类和准确性,精度,灵敏度,F1评分,特异性分别为99.9%,99.91%,99.9%,99.9%,99.9%和99.52%。该论文还使用可视化技术来确认CNN从分段的肺区域中显着学习,从而提高了检测准确性。提出的具有最先进性能的方法可用于更快的结核病诊断。
Tuberculosis (TB) is a chronic lung disease that occurs due to bacterial infection and is one of the top 10 leading causes of death. Accurate and early detection of TB is very important, otherwise, it could be life-threatening. In this work, we have detected TB reliably from the chest X-ray images using image pre-processing, data augmentation, image segmentation, and deep-learning classification techniques. Several public databases were used to create a database of 700 TB infected and 3500 normal chest X-ray images for this study. Nine different deep CNNs (ResNet18, ResNet50, ResNet101, ChexNet, InceptionV3, Vgg19, DenseNet201, SqueezeNet, and MobileNet), which were used for transfer learning from their pre-trained initial weights and trained, validated and tested for classifying TB and non-TB normal cases. Three different experiments were carried out in this work: segmentation of X-ray images using two different U-net models, classification using X-ray images, and segmented lung images. The accuracy, precision, sensitivity, F1-score, specificity in the detection of tuberculosis using X-ray images were 97.07 %, 97.34 %, 97.07 %, 97.14 % and 97.36 % respectively. However, segmented lungs for the classification outperformed than whole X-ray image-based classification and accuracy, precision, sensitivity, F1-score, specificity were 99.9 %, 99.91 %, 99.9 %, 99.9 %, and 99.52 % respectively. The paper also used a visualization technique to confirm that CNN learns dominantly from the segmented lung regions results in higher detection accuracy. The proposed method with state-of-the-art performance can be useful in the computer-aided faster diagnosis of tuberculosis.