Validation of a deep learning computer aided system for CT based lung nodule detection, classification, and growth rate estimation in a routine clinical population

被引:19
|
作者
Murchison, John T. [1 ]
Ritchie, Gillian [1 ]
Senyszak, David [2 ]
Nijwening, Jeroen H. [3 ]
van Veenendaal, Gerben [3 ]
Wakkie, Joris [3 ]
van Beek, Edwin J. R. [1 ,2 ]
机构
[1] Royal Infirm Edinburgh NHS Trust, Dept Radiol, Edinburgh, Midlothian, Scotland
[2] Univ Edinburgh, Edinburgh Imaging Facil QMRI, Edinburgh, Midlothian, Scotland
[3] Aidence, Amsterdam, Netherlands
来源
PLOS ONE | 2022年 / 17卷 / 05期
关键词
PULMONARY NODULES; STATEMENT; CAD; RECOMMENDATIONS; RADIOLOGISTS; MANAGEMENT; VOLUMETRY;
D O I
10.1371/journal.pone.0266799
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Objective In this study, we evaluated a commercially available computer assisted diagnosis system (CAD). The deep learning algorithm of the CAD was trained with a lung cancer screening cohort and developed for detection, classification, quantification, and growth of actionable pulmonary nodules on chest CT scans. Here, we evaluated the CAD in a retrospective cohort of a routine clinical population. Materials and methods In total, a number of 337 scans of 314 different subjects with reported nodules of 3-30 mm in size were included into the evaluation. Two independent thoracic radiologists alternately reviewed scans with or without CAD assistance to detect, classify, segment, and register pulmonary nodules. A third, more experienced, radiologist served as an adjudicator. In addition, the cohort was analyzed by the CAD alone. The study cohort was divided into five different groups: 1) 178 CT studies without reported pulmonary nodules, 2) 95 studies with 1-10 pulmonary nodules, 23 studies from the same patients with 3) baseline and 4) follow-up studies, and 5) 18 CT studies with subsolid nodules. A reference standard for nodules was based on majority consensus with the third thoracic radiologist as required. Sensitivity, false positive (FP) rate and Dice inter-reader coefficient were calculated. Results After analysis of 470 pulmonary nodules, the sensitivity readings for radiologists without CAD and radiologist with CAD, were 71.9% (95% CI: 66.0%, 77.0%) and 80.3% (95% CI: 75.2%, 85.0%) (p < 0.01), with average FP rate of 0.11 and 0.16 per CT scan, respectively. Accuracy and kappa of CAD for classifying solid vs sub-solid nodules was 94.2% and 0.77, respectively. Average inter-reader Dice coefficient for nodule segmentation was 0.83 (95% CI: 0.39, 0.96) and 0.86 (95% CI: 0.51, 0.95) for CAD versus readers. Mean growth percentage discrepancy of readers and CAD alone was 1.30 (95% CI: 1.02, 2.21) and 1.35 (95% CI: 1.01, 4.99), respectively. Conclusion The applied CAD significantly increased radiologist's detection of actionable nodules yet also minimally increasing the false positive rate. The CAD can automatically classify and quantify nodules and calculate nodule growth rate in a cohort of a routine clinical population. Results suggest this Deep Learning software has the potential to assist chest radiologists in the tasks of pulmonary nodule detection and management within their routine clinical practice.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] An Automatic Detection System of Lung Nodule Based on Multigroup Patch-Based Deep Learning Network
    Jiang, Hongyang
    Ma, He
    Qian, Wei
    Gao, Mengdi
    Li, Yan
    IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2018, 22 (04) : 1227 - 1237
  • [32] On the robustness of deep learning-based lung-nodule classification for CT images with respect to image noise
    Shen, Chenyang
    Tsai, Min-Yu
    Chen, Liyuan
    Li, Shulong
    Nguyen, Dan
    Wang, Jing
    Jiang, Steve B.
    Jia, Xun
    PHYSICS IN MEDICINE AND BIOLOGY, 2020, 65 (24):
  • [33] Knowledge-based Collaborative Deep Learning for Benign-Malignant Lung Nodule Classification on Chest CT
    Xie, Yutong
    Xia, Yong
    Zhang, Jianpeng
    Song, Yang
    Feng, Dagan
    Fulham, Michael
    Cai, Weidong
    IEEE TRANSACTIONS ON MEDICAL IMAGING, 2019, 38 (04) : 991 - 1004
  • [34] Deep Learning-Based Slice Thickness Reduction for Computer-Aided Detection of Lung Nodules in Thick-Slice CT
    Jeong, Jonghun
    Park, Doohyun
    Kang, Jung-Hyun
    Kim, Myungsub
    Kim, Hwa-Young
    Choi, Woosuk
    Ham, Soo-Youn
    DIAGNOSTICS, 2024, 14 (22)
  • [35] Clinical evaluation of a deep-learning-based computer-aided detection system for the detection of pulmonary nodules in a large teaching hospital
    Jarnalo, C. O. Martins
    Linsen, P. V. M.
    Blazis, S. P.
    van der Valk, P. H. M.
    Dickerscheid, D. B. M.
    CLINICAL RADIOLOGY, 2021, 76 (11) : 838 - 845
  • [36] A Survey on Machine Learning and Deep Learning-based Computer-Aided Methods for Detection of Polyps in CT Colonography
    Hegde, Niharika
    Shishir, M.
    Shashank, S.
    Dayananda, P.
    Latte, Mrityunjaya, V
    CURRENT MEDICAL IMAGING, 2021, 17 (01) : 3 - 15
  • [37] Leukemia detection and classification using computer-aided diagnosis system with falcon optimization algorithm and deep learning
    Asar, Turky Omar
    Ragab, Mahmoud
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [38] Absolute ground truth-based validation of computer-aided nodule detection and volumetry in low-dose CT imaging
    D'hondt, Louise
    Kellens, Pieter-Jan
    Torfs, Kwinten
    Bosmans, Hilde
    Bacher, Klaus
    Snoeckx, Annemiek
    PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2024, 121
  • [39] Computer-aided diagnosis of lung nodule classification between benign nodule, primary lung cancer, and metastatic lung cancer at different image size using deep convolutional neural network with transfer learning
    Nishio, Mizuho
    Sugiyama, Osamu
    Yakami, Masahiro
    Ueno, Syoko
    Kubo, Takeshi
    Kuroda, Tomohiro
    Togashi, Kaori
    PLOS ONE, 2018, 13 (07):
  • [40] External validation of the performance of commercially available deep-learning-based lung nodule detection on low-dose CT images for lung cancer screening in Japan
    Fukumoto, Wataru
    Yamashita, Yuki
    Kawashita, Ikuo
    Higaki, Toru
    Sakahara, Asako
    Nakamura, Yuko
    Awaya, Yoshikazu
    Awai, Kazuo
    JAPANESE JOURNAL OF RADIOLOGY, 2024, : 634 - 640