Mycobacterial cavity on chest computed tomography: clinical implications and deep learning-based automatic detection with quantification

被引:5
作者
Yoon, Ieun [1 ]
Hong, Jung Hee [2 ]
Witanto, Joseph Nathanael [3 ]
Yim, Jae-Joon [4 ]
Kwak, Nakwon [4 ]
Goo, Jin Mo [1 ]
Yoon, Soon Ho [1 ]
机构
[1] Seoul Natl Univ, Seoul Natl Univ Hosp, Dept Radiol, Coll Med, Seoul, South Korea
[2] Keimyung Univ, Dept Radiol, Dongsan Med Ctr, Daegu, South Korea
[3] MEDICALIP Co Ltd, Seoul, South Korea
[4] Seoul Natl Univ, Seoul Natl Univ Hosp, Div Pulm & Crit Care Med, Dept Internal Med,Coll Med, Seoul, South Korea
关键词
Computed tomography (CT); deep learning; pulmonary tuberculosis; non-tuberculous mycobacterial pulmonary disease (NTM-PD); cavity; PULMONARY TUBERCULOSIS; CT FINDINGS; DISEASE; INITIATION; RADIOLOGY; DIAGNOSIS; ADULTS;
D O I
10.21037/qims-22-620
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
Background: This study aimed (I) to investigate the clinical implication of computed tomography (CT) cavity volume in tuberculosis (TB) and non-tuberculous mycobacterial pulmonary disease (NTM-PD), and (II) to develop a three-dimensional (3D) nnU-Net model to automatically detect and quantify cavity volume on CT images. Methods: We retrospectively included conveniently sampled 206 TB and 186 NTM-PD patients in a tertiary referral hospital, who underwent thin-section chest CT scans from 2012 through 2019. TB was microbiologically confirmed, and NTM-PD was diagnosed by 2007 Infectious Diseases Society of America/ American Thoracic Society guideline. The reference cavities were semi-automatically segmented on CT images and a 3D nnU-Net model was built with 298 cases (240 cases for training, 20 for tuning, and 38 for internal validation). Receiver operating characteristic curves were used to evaluate the accuracy of the CT cavity volume for two clinically relevant parameters: sputum smear positivity in TB and treatment in NTM-PD. The sensitivity and false-positive rate were calculated to assess the cavity detection of nnU-Net using radiologist-detected cavities as references, and the intraclass correlation coefficient (ICC) between the reference and the U-Net-derived cavity volumes was analyzed. Results: The mean CT cavity volumes in TB and NTM-PD patients were 11.3 and 16.4 cm(3), respectively, and were significantly greater in smear-positive TB (P< 0.001) and NTM-PD necessitating treatment (P=0.020). The CT cavity volume provided areas under the curve of 0.701 [95% confidence interval (CI): 0.620-0.782] for TB sputum positivity and 0.834 (95% CI: 0.773-0.894) for necessity of NTM-PD treatment. The nnU-Net provided per- patient sensitivity of 100% (19/19) and per-lesion sensitivity of 83.7% (41/49) in the validation dataset, with an average of 0.47 false-positive small cavities per patient (median volume, 0.26 cm(3)). The mean Dice similarity coefficient between the manually segmented cavities and the U-Net-derived cavities was 78.9. The ICCs between the reference and U-Net-derived volumes were 0.991 (95% CI: 0.983-0.995) and 0.933 (95% CI: 0.897-0.957) on a per-patient and per-lesion basis, respectively. Conclusions: CT cavity volume was associated with sputum positivity in TB and necessity of treatment in NTM-PD. The 3D nnU-Net model could automatically detect and quantify mycobacterial cavities on chest CT, helping assess TB infectivity and initiate NTM-TB treatment.
引用
收藏
页码:747 / +
页数:17
相关论文
共 37 条
[1]  
[Anonymous], 2019, Global tuberculosis report 2019
[2]   Drug-sensitive tuberculosis, multidrug-resistant tuberculosis, and nontuberculous mycobacterial pulmonary disease in nonAIDS adults: comparisons of thin-section CT findings [J].
Chung, Myung Jin ;
Lee, Kyung Soo ;
Koh, Won-Jung ;
Kim, Tae Sung ;
Kang, Eun Young ;
Kim, Sung Mok ;
Kwon, O. Jung ;
Kim, Seonwoo .
EUROPEAN RADIOLOGY, 2006, 16 (09) :1934-1941
[3]  
Daley CL, 2020, CLIN INFECT DIS, V71, pE1, DOI 10.1093/cid/ciaa241
[4]  
Gomes Mauro, 2003, Rev. Inst. Med. trop. S. Paulo, V45, P275, DOI 10.1590/S0036-46652003000500007
[5]   Fleischner Society:: Glossary of terms tor thoracic imaging [J].
Hansell, David M. ;
Bankier, Alexander A. ;
MacMahon, Heber ;
McLoud, Theresa C. ;
Mueller, Nestor L. ;
Remy, Jacques .
RADIOLOGY, 2008, 246 (03) :697-722
[6]   British Thoracic Society guidelines for the management of non-tuberculous mycobacterial pulmonary disease (NTM-PD) [J].
Haworth, Charles S. ;
Banks, John ;
Capstick, Toby ;
Fisher, Andrew J. ;
Gorsuch, Thomas ;
Laurenson, Ian F. ;
Leitch, Andrew ;
Loebinger, Michael R. ;
Milburn, Heather J. ;
Nightingale, Mark ;
Ormerod, Peter ;
Shingadia, Delane ;
Smith, David ;
Whitehead, Nuala ;
Wilson, Robert ;
Floto, R. Andres .
THORAX, 2017, 72 :ii1-ii64
[7]   Clinical Implementation of Deep Learning in Thoracic Radiology: Potential Applications and Challenges [J].
Hwang, Eui Jin ;
Park, Chang Min .
KOREAN JOURNAL OF RADIOLOGY, 2020, 21 (05) :511-525
[8]   nnU-Net: a self-configuring method for deep learning-based biomedical image segmentation [J].
Isensee, Fabian ;
Jaeger, Paul F. ;
Kohl, Simon A. A. ;
Petersen, Jens ;
Maier-Hein, Klaus H. .
NATURE METHODS, 2021, 18 (02) :203-+
[9]   Predictors of 5-year mortality in pulmonary Mycobacterium avium-intracellulare complex disease [J].
Ito, Y. ;
Hirai, T. ;
Maekawa, K. ;
Fujita, K. ;
Imai, S. ;
Tatsumi, S. ;
Handa, T. ;
Matsumoto, H. ;
Muro, S. ;
Niimi, A. ;
Mishima, M. .
INTERNATIONAL JOURNAL OF TUBERCULOSIS AND LUNG DISEASE, 2012, 16 (03) :408-414