Computer-Aided Lung Cancer Diagnosis Approaches Based on Deep Learning

被引:13
|
作者
Zhang P. [1 ]
Xu X. [2 ]
Wang H. [1 ]
Feng Y. [3 ]
Feng H. [3 ]
Zhang J. [3 ]
Yan S. [3 ]
Hou Y. [3 ]
Song Y. [3 ]
Li J. [3 ]
Liu X. [3 ]
机构
[1] School of Economics and Management, Tongji University, Shanghai
[2] Tongji University Affiliated to Shanghai Pulmonary Hospital Thoracic Surgery, Shanghai
[3] State Key Laboratory of CAD&CG, Zhejiang University, Hangzhou
来源
| 2018年 / Institute of Computing Technology卷 / 30期
关键词
Deep learning; Lung cancer; Medical image processing;
D O I
10.3724/SP.J.1089.2018.16919
中图分类号
学科分类号
摘要
Since 21th century, cancer is one of the high rates of mortality in the world, while lung cancer is at the top for both mortality and morbidity among all the cancers. With the development of big data and artificial intelligence, relying on deep learning to help diagnose lung cancer has become a hot topic in recent years. The key to computer-aided lung cancer diagnosis is mainly to process and analyze lung images, which was summarized as 4 steps: medical image data preprocessing, lung segmentation, lung nodule detection and segmentation, and pathological diagnosis. Deep learning on lung cancer diagnosis mainly focuses on lung segmentation, lung nodule detection and pathological analysis. This is because deep learning techniques rely strongly on large amount of training data, while current public data is mainly CT images annotated for lung nodules. This paper overviews classical medical image processing algorithms for auxiliary lung cancer diagnosis, and summarizes state-of-art deep-learning-based medical image processing methods. © 2018, Beijing China Science Journal Publishing Co. Ltd. All right reserved.
引用
收藏
页码:90 / 99
页数:9
相关论文
共 80 条
  • [1] Liao F., Solution of the 'grt123' team
  • [2] Hammack D., Forecasting lung cancer diagnoses with deep learning
  • [3] Setio A.A.A., Traverso A., de Bel T., Et al., Validation, comparison, and combination of algorithms for automatic detection of pulmonary nodules in computed tomography images: the LUNA16 challenge, Medical Image Analysis, 42, pp. 1-13, (2017)
  • [4] Gao M., Xu Z., Lu L., Et al., Multi-label deep regression and unordered pooling for holistic interstitial lung disease pattern detection, Proceedings of International Workshop on Machine Learning in Medical Imaging, pp. 147-155, (2016)
  • [5] Anthimopoulos M., Christodoulidis S., Ebner L., Et al., Lung pattern classification for interstitial lung diseases using a deep convolutional neural network, IEEE Transactions on Medical Imaging, 35, 5, pp. 1207-1216, (2016)
  • [6] Hu S., Hoffman E.A., Reinhardt J.M., Automatic lung segmentation for accurate quantitation of volumetric X-ray CT images, IEEE Transactions on Medical Imaging, 20, 6, pp. 490-498, (2001)
  • [7] Antoneli M., Frosini G., Lazzerini B., Et al., Lung nodule detection in CT Scans, International Conference on Computational Intelligence, 13, 5, pp. 365-368, (2004)
  • [8] Wei Y., Shen G., Li J., A fully automatic method for lung pa-renchyma segmentation and repairing, Journal of Digital Imaging, 26, 3, pp. 483-495, (2013)
  • [9] Arbabshirani M.R., Dallal A.H., Agarwal C., Et al., Accurate segmentation of lung fields on chest radiographs using deep convolutional networks, Proceedings of Medical Imaging: Image Processing, (2017)
  • [10] Cheng J.Z., Ni D., Chou Y.H., Et al., Computer-aided diagnosis with deep learning architecture: applications to breast lesions in US images and pulmonary nodules in CT scans, Scientific Reports, 6, (2016)