Appraisal of deep-learning techniques on computer-aided lung cancer diagnosis with computed tomography screening

被引:8
|
作者
Agnes, S. Akila [1 ]
Anitha, J. [1 ]
机构
[1] Karunya Inst Technol & Sci, Dept CSE, Coimbatore, Tamil Nadu, India
关键词
Computer-aided diagnosis system for lung cancer; convolutional neural network; deep learning; false-positive reduction; lung segmentation; pulmonary nodule detection; FALSE-POSITIVE REDUCTION; CLASSIFICATION; NODULES; COLLEGE; NETWORK; CNNS;
D O I
10.4103/jmp.JMP_101_19
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Aims: Deep-learning methods are becoming versatile in the field of medical image analysis. The hand-operated examination of smaller nodules from computed tomography scans becomes a challenging and time-consuming task due to the limitation of human vision. A standardized computer-aided diagnosis (CAD) framework is required for rapid and accurate lung cancer diagnosis. The National Lung Screening Trial recommends routine screening with low-dose computed tomography among high-risk patients to reduce the risk of dying from lung cancer by early cancer detection. The evolvement of clinically acceptable CAD system for lung cancer diagnosis demands perfect prototypes for segmenting lung region, followed by identifying nodules with reduced false positives. Recently, deep-learning methods are increasingly adopted in medical image diagnosis applications. Subjects and Methods: In this study, a deep-learning-based CAD framework for lung cancer diagnosis with chest computed tomography (CT) images is built using dilated SegNet and convolutional neural networks (CNNs). A dilated SegNet model is employed to segment lung from chest CT images, and a CNN model with batch normalization is developed to identify the true nodules from all possible nodules. The dilated SegNet and CNN models have been trained on the sample cases taken from the LUNA16 dataset. The performance of the segmentation model is measured in terms of Dice coefficient, and the nodule classifier is evaluated with sensitivity. The discriminant ability of the features learned by a CNN classifier is further confirmed with principal component analysis. Results: Experimental results confirm that the dilated SegNet model segments the lung with an average Dice coefficient of 0.89 +/- 0.23 and the customized CNN model yields a sensitivity of 94.8 on categorizing cancerous and noncancerous nodules. Conclusions: Thus, the proposed CNN models achieve efficient lung segmentation and two-dimensional nodule patch classification in CAD system for lung cancer diagnosis with CT screening.
引用
收藏
页码:98 / 106
页数:9
相关论文
共 50 条
  • [41] Computer-aided diagnosis of cystic lung diseases using CT scans and deep learning
    Zhu, Zhibin
    Xing, Wenyu
    Yang, Yanping
    Liu, Xin
    Jiang, Tao
    Zhang, Xingwei
    Song, Yuanlin
    Hou, Dongni
    Ta, Dean
    MEDICAL PHYSICS, 2024, : 5911 - 5926
  • [42] An Interpretable Three-Dimensional Artificial Intelligence Model for Computer-Aided Diagnosis of Lung Nodules in Computed Tomography Images
    Hung, Sheng-Chieh
    Wang, Yao-Tung
    Tseng, Ming-Hseng
    CANCERS, 2023, 15 (18)
  • [43] Deep learning for gastroscopic images: computer-aided techniques for clinicians
    Ziyi Jin
    Tianyuan Gan
    Peng Wang
    Zuoming Fu
    Chongan Zhang
    Qinglai Yan
    Xueyong Zheng
    Xiao Liang
    Xuesong Ye
    BioMedical Engineering OnLine, 21
  • [44] Model-based detection of lung nodules in computed tomography exams -: Thoracic computer-aided diagnosis
    McCulloch, CC
    Kaucic, RA
    Mendonça, PRS
    Walter, DJ
    Avila, RS
    ACADEMIC RADIOLOGY, 2004, 11 (03) : 258 - 266
  • [45] Screening baseline characteristics of early lung cancer on low-dose computed tomography with computer-aided detection in a Chinese population
    Liu, Yuanyuan
    Luo, Hongbin
    Qing, Haomiao
    Wang, Xiaodong
    Ren, Jing
    Xu, Guohui
    Hu, Shibei
    He, Changjiu
    Zhou, Peng
    CANCER EPIDEMIOLOGY, 2019, 62
  • [46] Standalone deep learning versus experts for diagnosis lung cancer on chest computed tomography: a systematic review
    Wang, Ting-Wei
    Hong, Jia-Sheng
    Chiu, Hwa-Yen
    Chao, Heng-Sheng
    Chen, Yuh-Min
    Wu, Yu-Te
    EUROPEAN RADIOLOGY, 2024, 34 (11) : 7397 - 7407
  • [47] Interpretative computer-aided lung cancer diagnosis: From radiology analysis to malignancy evaluation
    Zheng, Shaohua
    Shen, Zhiqiang
    Pei, Chenhao
    Ding, Wangbin
    Lin, Haojin
    Zheng, Jiepeng
    Pan, Lin
    Zheng, Bin
    Huang, Liqin
    COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2021, 210
  • [48] Computer-Aided Early Melanoma Brain-Tumor Detection Using Deep-Learning Approach
    Asad, Rimsha
    Rehman, Saif Ur
    Imran, Azhar
    Li, Jianqiang
    Almuhaimeed, Abdullah
    Alzahrani, Abdulkareem
    BIOMEDICINES, 2023, 11 (01)
  • [49] Computer-Aided Diagnosis and Localization of Glaucoma Using Deep Learning
    Kim, Mijung
    Park, Ho-min
    Zuallaert, Jasper
    Janssens, Olivier
    Van Hoecke, Sofie
    De Neve, Wesley
    PROCEEDINGS 2018 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE (BIBM), 2018, : 2357 - 2362
  • [50] An Optimal Deep Learning Based Computer-Aided Diagnosis System for Diabetic Retinopathy
    Phong Thanh Nguyen
    Vy Dang Bich Huynh
    Khoa Dang Vo
    Phuong Thanh Phan
    Yang, Eunmok
    Joshi, Gyanendra Prasad
    CMC-COMPUTERS MATERIALS & CONTINUA, 2021, 66 (03): : 2815 - 2830