Diagnostic validation of a deep learning nodule detection algorithm in low-dose chest CT: determination of optimized dose thresholds in a virtual screening scenario

被引:10
|
作者
Peters, Alan A. [1 ]
Huber, Adrian T. [1 ]
Obmann, Verena C. [1 ]
Heverhagen, Johannes T. [1 ,2 ,3 ]
Christe, Andreas [1 ]
Ebner, Lukas [1 ]
机构
[1] Univ Bern, Bern Univ Hosp, Dept Diagnost Intervent & Pediat Radiol DIPR, Inselspital Bern, CH-3010 Bern, Switzerland
[2] Univ Bern, Dept BioMed Res, Expt Radiol, CH-3008 Bern, Switzerland
[3] Ohio State Univ, Dept Radiol, Columbus, OH 43210 USA
关键词
Lung neoplasms; Artificial intelligence; Deep learning; Computer-assisted diagnosis; Radiographic phantoms; COMPUTER-AIDED-DETECTION; LUNG-CANCER; ITERATIVE RECONSTRUCTION; RADIATION-EXPOSURE; PULMONARY NODULES; CAD; TOMOGRAPHY; PERFORMANCE; EQUIVALENT; IMAGES;
D O I
10.1007/s00330-021-08511-7
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
Objectives This study was conducted to evaluate the effect of dose reduction on the performance of a deep learning (DL)-based computer-aided diagnosis (CAD) system regarding pulmonary nodule detection in a virtual screening scenario. Methods Sixty-eight anthropomorphic chest phantoms were equipped with 329 nodules (150 ground glass, 179 solid) with four sizes (5 mm, 8 mm, 10 mm, 12 mm) and scanned with nine tube voltage/current combinations. The examinations were analyzed by a commercially available DL-based CAD system. The results were compared by a comparison of proportions. Logistic regression was performed to evaluate the impact of tube voltage, tube current, nodule size, nodule density, and nodule location. Results The combination with the lowest effective dose (E) and unimpaired detection rate was 80 kV/50 mAs (sensitivity: 97.9%, mean false-positive rate (FPR): 1.9, mean CTDIvol: 1.2 +/- 0.4 mGy, mean E: 0.66 mSv). Logistic regression revealed that tube voltage and current had the greatest impact on the detection rate, while nodule size and density had no significant influence. Conclusions The optimal tube voltage/current combination proposed in this study (80 kV/50 mAs) is comparable to the proposed combinations in similar studies, which mostly dealt with conventional CAD software. Modification of tube voltage and tube current has a significant impact on the performance of DL-based CAD software in pulmonary nodule detection regardless of their size and composition.
引用
收藏
页码:4324 / 4332
页数:9
相关论文
共 50 条
  • [41] Low-dose spiral chest CT screening of women for common causes of death
    Swensen, SJ
    Hartman, TE
    Brandt, KR
    Sykes, AG
    Quam, JP
    Zink, FE
    RADIOLOGY, 1998, 209P : 222 - 222
  • [42] Deep Learning for Malignancy Risk Estimation of Pulmonary Nodules Detected at Low-Dose Screening CT
    Venkadesh, Kiran Vaidhya
    Setio, Arnaud A. A.
    Schreuder, Anton
    Scholten, Ernst T.
    Chung, Kaman
    Wille, Mathilde M. W.
    Saghir, Zaigham
    van Ginneken, Bram
    Prokop, Mathias
    Jacobs, Colin
    RADIOLOGY, 2021, 300 (02) : 438 - 447
  • [43] Improving image quality and lung nodule detection for low-dose chest CT by using generative adversarial network reconstruction
    Cao, Qiqi
    Mao, Yifu
    Qin, Le
    Quan, Guotao
    Yan, Fuhua
    Yang, Wenjie
    BRITISH JOURNAL OF RADIOLOGY, 2022, 95 (1138):
  • [44] Diagnostic value of using epicardial fat measurement on screening low-dose chest CT for the prediction of metabolic syndrome A cross-validation study
    Kim, Hyun Ji
    Lee, Heon
    Lee, Bora
    Lee, Jae Wook
    Shin, Kyung Eun
    Suh, Jon
    Park, Hyun Woo
    Kim, Jeong A.
    MEDICINE, 2019, 98 (07)
  • [45] Deep convolutional neural networks for automatic coronary calcium scoring in a screening study with low-dose chest CT
    Lessmann, Nikolas
    Isgum, Ivana
    Setio, Arnaud A. A.
    de Vos, Bob D.
    Ciompi, Francesco
    de Jong, Pim A.
    Oudkerk, Matthijs
    Mali, Willem P. Th. M.
    Viergever, Max A.
    van Ginneken, Bram
    MEDICAL IMAGING 2016: COMPUTER-AIDED DIAGNOSIS, 2015, 9785
  • [46] Computerized lung nodule detection: comparison of performance for low-dose and standard-dose helical CT scans
    Armato, SG
    Giger, ML
    Doi, K
    Bick, U
    MacMahon, H
    MEDICAL IMAGING: 2001: IMAGE PROCESSING, PTS 1-3, 2001, 4322 : 1449 - 1454
  • [47] Automated coronary artery calcification detection on low-dose chest CT images
    Xie, Yiting
    Cham, Matthew D.
    Henschke, Claudia
    Yankelevitz, David
    Reeves, Anthony P.
    MEDICAL IMAGING 2014: COMPUTER-AIDED DIAGNOSIS, 2014, 9035
  • [48] Accuracy of Low-Dose Chest CT Scan in Detection of COVID-19
    Bahrami-Motlagh, Hooman
    Taheri, Morteza Sanei
    Abbasi, Sahar
    Haghighi-Morad, Maryam
    Salevatipour, Babak
    Darazam, Ilad Alavi
    RADIOLOGY-CARDIOTHORACIC IMAGING, 2020, 2 (03):
  • [49] Is it possible to use low-dose deep learning reconstruction for the detection of liver metastases on CT routinely?
    Peijie Lyu
    Nana Liu
    Brian Harrawood
    Justin Solomon
    Huixia Wang
    Yan Chen
    Francesca Rigiroli
    Yuqin Ding
    Fides Regina Schwartz
    Hanyu Jiang
    Carolyn Lowry
    Luotong Wang
    Ehsan Samei
    Jianbo Gao
    Daniele Marin
    European Radiology, 2023, 33 : 1629 - 1640
  • [50] Deep Learning for Low-Dose CT Denoising Using Perceptual Loss and Edge Detection Layer
    Maryam Gholizadeh-Ansari
    Javad Alirezaie
    Paul Babyn
    Journal of Digital Imaging, 2020, 33 : 504 - 515