Performance of a deep learning-based lung nodule detection system as an alternative reader in a Chinese lung cancer screening program
Publication type: Journal Article
Publication date: 2022-01-01
scimago Q1
wos Q1
SJR: 1.003
CiteScore: 5.8
Impact factor: 3.3
ISSN: 0720048X, 18727727
PubMed ID:
34871936
General Medicine
Radiology, Nuclear Medicine and imaging
Abstract
To evaluate the performance of a deep learning-based computer-aided detection (DL-CAD) system in a Chinese low-dose CT (LDCT) lung cancer screening program.One-hundred-and-eighty individuals with a lung nodule on their baseline LDCT lung cancer screening scan were randomly mixed with screenees without nodules in a 1:1 ratio (total: 360 individuals). All scans were assessed by double reading and subsequently processed by an academic DL-CAD system. The findings of double reading and the DL-CAD system were then evaluated by two senior radiologists to derive the reference standard. The detection performance was evaluated by the Free Response Operating Characteristic curve, sensitivity and false-positive (FP) rate. The senior radiologists categorized nodules according to nodule diameter, type (solid, part-solid, non-solid) and Lung-RADS.The reference standard consisted of 262 nodules ≥ 4 mm in 196 individuals; 359 findings were considered false positives. The DL-CAD system achieved a sensitivity of 90.1% with 1.0 FP/scan for detection of lung nodules regardless of size or type, whereas double reading had a sensitivity of 76.0% with 0.04 FP/scan (P = 0.001). The sensitivity for detection of nodules ≥ 4 - ≤ 6 mm was significantly higher with DL-CAD than with double reading (86.3% vs. 58.9% respectively; P = 0.001). Sixty-three nodules were only identified by the DL-CAD system, and 27 nodules only found by double reading. The DL-CAD system reached similar performance compared to double reading in Lung-RADS 3 (94.3% vs. 90.0%, P = 0.549) and Lung-RADS 4 nodules (100.0% vs. 97.0%, P = 1.000), but showed a higher sensitivity in Lung-RADS 2 (86.2% vs. 65.4%, P < 0.001).The DL-CAD system can accurately detect pulmonary nodules on LDCT, with an acceptable false-positive rate of 1 nodule per scan and has higher detection performance than double reading. This DL-CAD system may assist radiologists in nodule detection in LDCT lung cancer screening.
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32
Total citations:
32
Citations from 2024:
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(62.51%)
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Cui X. et al. Performance of a deep learning-based lung nodule detection system as an alternative reader in a Chinese lung cancer screening program // European Journal of Radiology. 2022. Vol. 146. p. 110068.
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Cui X., Zheng S., Heuvelmans M. A., Du Y., Sidorenkov G., Fan S., Li Y., XIE Y., Zhu Z., Dorrius M. D., Zhao Y., Veldhuis R. N., de Bock G. H., Oudkerk M., van Ooijen P. M. A., Vliegenthart R., Ye Z. Performance of a deep learning-based lung nodule detection system as an alternative reader in a Chinese lung cancer screening program // European Journal of Radiology. 2022. Vol. 146. p. 110068.
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TY - JOUR
DO - 10.1016/j.ejrad.2021.110068
UR - https://doi.org/10.1016/j.ejrad.2021.110068
TI - Performance of a deep learning-based lung nodule detection system as an alternative reader in a Chinese lung cancer screening program
T2 - European Journal of Radiology
AU - Cui, Xiao-nan
AU - Zheng, Sunyi
AU - Heuvelmans, Marjolein A.
AU - Du, Yihui
AU - Sidorenkov, Grigory
AU - Fan, Shuxuan
AU - Li, Yanju
AU - XIE, YONGSHENG
AU - Zhu, Zhongyuan
AU - Dorrius, Monique D.
AU - Zhao, Yingru
AU - Veldhuis, Raymond N.J.
AU - de Bock, Geertruida H.
AU - Oudkerk, Matthijs
AU - van Ooijen, Peter M. A.
AU - Vliegenthart, Rozemarijn
AU - Ye, Zhaoxiang
PY - 2022
DA - 2022/01/01
PB - Elsevier
SP - 110068
VL - 146
PMID - 34871936
SN - 0720-048X
SN - 1872-7727
ER -
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BibTex (up to 50 authors)
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@article{2022_Cui,
author = {Xiao-nan Cui and Sunyi Zheng and Marjolein A. Heuvelmans and Yihui Du and Grigory Sidorenkov and Shuxuan Fan and Yanju Li and YONGSHENG XIE and Zhongyuan Zhu and Monique D. Dorrius and Yingru Zhao and Raymond N.J. Veldhuis and Geertruida H. de Bock and Matthijs Oudkerk and Peter M. A. van Ooijen and Rozemarijn Vliegenthart and Zhaoxiang Ye},
title = {Performance of a deep learning-based lung nodule detection system as an alternative reader in a Chinese lung cancer screening program},
journal = {European Journal of Radiology},
year = {2022},
volume = {146},
publisher = {Elsevier},
month = {jan},
url = {https://doi.org/10.1016/j.ejrad.2021.110068},
pages = {110068},
doi = {10.1016/j.ejrad.2021.110068}
}
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