Segmentation and classification on chest radiography: a systematic survey

被引:0
作者
Tarun Agrawal
Prakash Choudhary
机构
[1] National Institute of Technology Hamirpur,Department of Computer Science and Engineering
来源
The Visual Computer | 2023年 / 39卷
关键词
Deep convolutional neural network; Computer vision; Lung segmentation; Multiclass classification; Nodule, TB, COVID-19, Pneumothorax detection; GAN;
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暂无
中图分类号
学科分类号
摘要
Chest radiography (X-ray) is the most common diagnostic method for pulmonary disorders. A trained radiologist is required for interpreting the radiographs. But sometimes, even experienced radiologists can misinterpret the findings. This leads to the need for computer-aided detection diagnosis. For decades, researchers were automatically detecting pulmonary disorders using the traditional computer vision (CV) methods. Now the availability of large annotated datasets and computing hardware has made it possible for deep learning to dominate the area. It is now the modus operandi for feature extraction, segmentation, detection, and classification tasks in medical imaging analysis. This paper focuses on the research conducted using chest X-rays for the lung segmentation and detection/classification of pulmonary disorders on publicly available datasets. The studies performed using the Generative Adversarial Network (GAN) models for segmentation and classification on chest X-rays are also included in this study. GAN has gained the interest of the CV community as it can help with medical data scarcity. In this study, we have also included the research conducted before the popularity of deep learning models to have a clear picture of the field. Many surveys have been published, but none of them is dedicated to chest X-rays. This study will help the readers to know about the existing techniques, approaches, and their significance.
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页码:875 / 913
页数:38
相关论文
共 432 条
[1]  
Agrawal A(2020)Using cnn for facial expression recognition: a study of the effects of kernel size and number of filters on accuracy Vis. Comput. 36 405-412
[2]  
Mittal N(2002)A modified fuzzy c-means algorithm for bias field estimation and segmentation of mri data IEEE Trans. Med. Imaging 21 193-199
[3]  
Ahmed MN(2009)Accuracy of chest radiograph interpretation by emergency physicians Emerg. Radiol. 16 111-114
[4]  
Yamany SM(1998)Automated lung segmentation in digitized posteroanterior chest radiographs Acad. Radiol. 5 245-255
[5]  
Mohamed N(1992)Missed bronchogenic carcinoma: radiographic findings in 27 patients with a potentially resectable lesion evident in retrospect Radiology 182 115-122
[6]  
Farag AA(2021)Ensemble learning based automatic detection of tuberculosis in chest x-ray images using hybrid feature descriptors Phys. Eng. Sci. Med. 44 183-194
[7]  
Moriarty T(2017)Segnet: a deep convolutional encoder-decoder architecture for image segmentation IEEE Trans. Pattern Anal. Mach. Intell. 39 2481-2495
[8]  
Al Aseri Z(2019)Comparison of deep learning approaches for multi-label chest x-ray classification Sci. Rep. 9 1-10
[9]  
Armato SG(2018)Benchmark analysis of representative deep neural network architectures IEEE Access 6 64270-64277
[10]  
Giger ML(1998)Knowledge-based method for segmentation and analysis of lung boundaries in chest x-ray images Comput. Med. Imaging Graph. 22 463-477