论文标题
深LF-net:印度胸部X光片的语义肺部分割,包括严重不健康的图像
Deep LF-Net: Semantic Lung Segmentation from Indian Chest Radiographs Including Severely Unhealthy Images
论文作者
论文摘要
胸部X光片(通常称为胸部X射线(CXR))在诊断各种肺癌(例如肺癌,结核病,肺炎等)中起着至关重要的作用。肺的自动分割是设计用于检查CXR的计算机辅助诊断工具的重要步骤。由于健康问题,年龄和性别引起的肺部形状差异,精确的肺部细分被认为是极具挑战性的。拟议的工作调查了使用有效的深卷卷积神经网络的使用,以准确地分割CXR的肺部。我们尝试使用DeepLab体系结构,编码器编码器和扩张的卷积进行端到端的DeepLabv3+网络,以快速训练和高精度进行语义肺部分割。我们尝试了不同的预训练的基础网络:RESNET18和MOBILENETV2,与DeepLabV3+模型有关,以进行性能分析。提出的方法在被送入神经网络之前不需要对胸部X射线图像进行任何预处理技术。形态操作用于消除语义分割过程中发生的假阳性。我们构建了印度人群的CXR数据集,其中包含临床确认的结核病患者,慢性阻塞性肺部疾病,间质性肺部疾病,胸腔积液和肺癌的健康和不健康的CXR。该方法对我们的印度CXR数据集的688张图像进行了测试,其中包括具有严重异常发现的图像以验证其鲁棒性。我们还尝试了常用的基准数据集,例如日本放射技术学会。美国蒙哥马利县;和中国深圳进行最新比较。测试了我们方法的性能,以根据文献中描述的技术进行测试,并实现了印度和公共数据集的肺部分割的最高准确性。
A chest radiograph, commonly called chest x-ray (CxR), plays a vital role in the diagnosis of various lung diseases, such as lung cancer, tuberculosis, pneumonia, and many more. Automated segmentation of the lungs is an important step to design a computer-aided diagnostic tool for examination of a CxR. Precise lung segmentation is considered extremely challenging because of variance in the shape of the lung caused by health issues, age, and gender. The proposed work investigates the use of an efficient deep convolutional neural network for accurate segmentation of lungs from CxR. We attempt an end to end DeepLabv3+ network which integrates DeepLab architecture, encoder-decoder, and dilated convolution for semantic lung segmentation with fast training and high accuracy. We experimented with the different pre-trained base networks: Resnet18 and Mobilenetv2, associated with the Deeplabv3+ model for performance analysis. The proposed approach does not require any pre-processing technique on chest x-ray images before being fed to a neural network. Morphological operations were used to remove false positives that occurred during semantic segmentation. We construct a CxR dataset of the Indian population that contain healthy and unhealthy CxRs of clinically confirmed patients of tuberculosis, chronic obstructive pulmonary disease, interstitial lung disease, pleural effusion, and lung cancer. The proposed method is tested on 688 images of our Indian CxR dataset including images with severe abnormal findings to validate its robustness. We also experimented on commonly used benchmark datasets such as Japanese Society of Radiological Technology; Montgomery County, USA; and Shenzhen, China for state-of-the-art comparison. The performance of our method is tested against techniques described in the literature and achieved the highest accuracy for lung segmentation on Indian and public datasets.