Deep Learning for the Classification of Small (≤2 cm) Pulmonary Nodules on CT Imaging: A Preliminary Study

被引:26
作者
Chae, Kum J. [1 ]
Jin, Gong Y. [1 ]
Ko, Seok B. [2 ]
Wang, Yi [2 ]
Zhang, Hao [2 ]
Choi, Eun J. [1 ]
Choi, Hyemi [3 ,4 ]
机构
[1] Chonbuk Natl Univ, Chonbuk Natl Univ Hosp, Dept Radiol, Res Inst Clin Med,Biomed Res Inst, 634-18 Keumam Dong, Jeonju 561712, Jeonbuk, South Korea
[2] Univ Saskatchewan, Dept Elect & Comp Engn, Saskatoon, SK, Canada
[3] Chonbuk Natl Univ, Dept Stat, Jeonju, South Korea
[4] Chonbuk Natl Univ, Inst Appl Stat, Jeonju, South Korea
关键词
Computer-aided diagnosis; Computed tomography; Deep learning; Nodule classification; Pulmonary nodule; COMPUTER-AIDED DIAGNOSIS; ARTIFICIAL NEURAL-NETWORKS; LUNG-CANCER;
D O I
10.1016/j.acra.2019.05.018
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
Rationale and Objectives: We aimed to present a deep learning-based malignancy prediction model (CT-lungNET) that is simpler and faster to use in the diagnosis of small (<= 2 cm) pulmonary nodules on nonenhanced chest CT and to preliminarily evaluate its performance and usefulness for human reviewers. Materials and Methods: A total of 173 whole nonenhanced chest CT images containing 208 pulmonary nodules (94 malignant and 11 benign nodules) ranging in size from 5 mm to 20 mm were collected. Pathologically confirmed nodules or nodules that remained unchanged for more than 1 year were included, and 30 benign and 30 malignant nodules were randomly assigned into the test set. We designed CT-lungNET to include three convolutional layers followed by two fully-connected layers and compared its diagnostic performance and processing time with those of AlexNET by using the area under the receiver operating curve (AUROC). An observer performance test was conducted involving eight human reviewers of four different groups (medical students, physicians, radiologic residents, and thoracic radiologists) at test 1 and test 2, referring to the CT-lungNET's malignancy prediction rate with pairwise comparison receiver operating curve analysis. Results: CT-lungNET showed an improved AUROC (0.85; 95% confidence interval: 0.74-0.93), compared to that of the AlexNET (0.82; 95% confidence interval: 0.71-0.91). The processing speed per one image slice for CT-lungNET was about 10 times faster than that for AlexNET (0.90 vs. 8.79 seconds). During the observer performance test, the classification performance of nonradiologists was increased with the aid of CTlungN ET, (mean AUC improvement: 0.13; range: 0.03 -0.19) but not significantly so in the radiologists group (mean AUC improvement: 0.02; range: -0.02 to 0.07). Conclusion: CT-lungNET was able to provide better classification results with a significantly shorter amount of processing time as compared to AlexNET in the diagnosis of small pulmonary nodules on nonenhanced chest CT. In this preliminary observer performance test, CT-lungNET may have a role acting as a second reviewer for less experienced reviewers, resulting in enhanced performance in the diagnosis of early lung cancer.
引用
收藏
页码:E55 / E63
页数:9
相关论文
共 50 条
  • [1] Feature-shared adaptive-boost deep learning for invasiveness classification of pulmonary subsolid nodules in CT images
    Wang, Jun
    Chen, Xiaorong
    Lu, Hongbing
    Zhang, Lichi
    Pan, Jianfeng
    Bao, Yong
    Su, Jiner
    Qian, Dahong
    MEDICAL PHYSICS, 2020, 47 (04) : 1738 - 1749
  • [2] Deep Learning for Lung Cancer Nodules Detection and Classification in CT Scans
    Riquelme, Diego
    Akhloufi, Moulay A.
    AI, 2020, 1 (01) : 28 - 67
  • [3] Study on the Detection of Pulmonary Nodules in CT Images Based on Deep Learning
    Li, Gai
    Zhou, Wei
    Chen, Weibin
    Sun, Fengtao
    Fu, Yu
    Gong, Fengling
    Zhang, Huiying
    IEEE ACCESS, 2020, 8 : 67300 - 67309
  • [4] Detectability of pulmonary nodules by deep learning: results from a phantom study
    Li, Qiong
    Li, Qing-chu
    Cao, Rui-ting
    Wang, Xiang
    Chen, Ru-tan
    Liu, Kai
    Fan, Li
    Xiao, Yi
    Zhang, Zi-tian
    Fu, Chi-Cheng
    Song, Qiong
    Liu, Weiping
    Fang, Qu
    Liu, Shi-yuan
    CHINESE JOURNAL OF ACADEMIC RADIOLOGY, 2019, 2 (1-2) : 1 - 12
  • [5] Comparative evaluation of conventional and deep learning methods for semi-automated segmentation of pulmonary nodules on CT
    Bianconi, Francesco
    Fravolini, Mario Luca
    Pizzoli, Sofia
    Palumbo, Isabella
    Minestrini, Matteo
    Rondini, Maria
    Nuvoli, Susanna
    Spanu, Angela
    Palumbo, Barbara
    QUANTITATIVE IMAGING IN MEDICINE AND SURGERY, 2021, 11 (07) : 3286 - 3305
  • [6] Development and validation of a clinically applicable deep learning strategy (HONORS) for pulmonary nodule classification at CT: A retrospective multicentre study
    Lv, Wenhui
    Wang, Yang
    Zhou, Changsheng
    Yuan, Mei
    Pang, Minxia
    Fang, Xiangming
    Zhang, Qirui
    Huang, Chuxi
    Li, Xinyu
    Zhou, Zhen
    Yu, Yizhou
    Wang, Yizhou
    Lu, Mengjie
    Xu, Qiang
    Li, Xiuli
    Lin, Haoliang
    Lu, Xiaofan
    Xu, Qinmei
    Sun, Jing
    Tang, Yuxia
    Yan, Fangrong
    Zhang, Bing
    Cheng, Zhen
    Zhang, Longjiang
    Lu, Guangming
    LUNG CANCER, 2021, 155 : 78 - 86
  • [7] A pattern classification approach to characterizing solitary pulmonary nodules imaged on high resolution CT: Preliminary results
    McNitt-Gray, MF
    Har, EM
    Wyckoff, N
    Sayre, JW
    Goldin, JG
    Aberle, DR
    MEDICAL PHYSICS, 1999, 26 (06) : 880 - 888
  • [8] Characterization of small pulmonary nodules by CT
    Dag Wormanns
    Stefan Diederich
    European Radiology, 2004, 14 : 1380 - 1391
  • [9] Characterization of small pulmonary nodules by CT
    Wormanns, D
    Diederich, S
    EUROPEAN RADIOLOGY, 2004, 14 (08) : 1380 - 1391
  • [10] Semi-Supervised Deep Transfer Learning for Benign-Malignant Diagnosis of Pulmonary Nodules in Chest CT Images
    Shi, Feng
    Chen, Bojiang
    Cao, Qiqi
    Wei, Ying
    Zhou, Qing
    Zhang, Rui
    Zhou, Yaojie
    Yang, Wenjie
    Wang, Xiang
    Fan, Rongrong
    Yang, Fan
    Chen, Yanbo
    Li, Weimin
    Gao, Yaozong
    Shen, Dinggang
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2022, 41 (04) : 771 - 781