Optimal matrix size of chest radiographs for computer-aided detection on lung nodule or mass with deep learning.
Aged
Deep Learning
Diagnosis, Computer-Assisted
Female
Humans
Lung
/ diagnostic imaging
Lung Neoplasms
/ diagnosis
Male
Middle Aged
Neural Networks, Computer
Precancerous Conditions
/ diagnosis
Radiographic Image Interpretation, Computer-Assisted
/ methods
Radiography
Radiography, Thoracic
/ methods
Retrospective Studies
Solitary Pulmonary Nodule
/ diagnosis
Algorithms
Computer-assisted diagnosis
Deep learning
Lung
Thoracic radiography
Journal
European radiology
ISSN: 1432-1084
Titre abrégé: Eur Radiol
Pays: Germany
ID NLM: 9114774
Informations de publication
Date de publication:
Sep 2020
Sep 2020
Historique:
received:
02
01
2020
accepted:
14
04
2020
revised:
04
03
2020
pubmed:
1
5
2020
medline:
20
1
2021
entrez:
1
5
2020
Statut:
ppublish
Résumé
To investigate the optimal input matrix size for deep learning-based computer-aided detection (CAD) of nodules and masses on chest radiographs. We retrospectively collected 2088 abnormal (nodule/mass) and 352 normal chest radiographs from two institutions. Three thoracic radiologists drew 2758 abnormalities regions. A total of 1736 abnormal chest radiographs were used for training and tuning convolutional neural networks (CNNs). The remaining 352 abnormal and 352 normal chest radiographs were used as a test set. Two CNNs (Mask R-CNN and RetinaNet) were selected to validate the effects of the squared different matrix size of chest radiograph (256, 448, 896, 1344, and 1792). For comparison, figure of merit (FOM) of jackknife free-response receiver operating curve and sensitivity were obtained. In Mask R-CNN, matrix size 896 and 1344 achieved significantly higher FOM (0.869 and 0.856, respectively) for detecting abnormalities than 256, 448, and 1792 (0.667-0.820) (p < 0.05). In RetinaNet, matrix size 896 was significantly higher FOM (0.906) than others (0.329-0.832) (p < 0.05). For sensitivity of abnormalities, there was a tendency to increase sensitivity when lesion size increases. For small nodules (< 10 mm), the sensitivities were 0.418 and 0.409, whereas the sensitivities were 0.937 and 0.956 for masses. Matrix size 896 and 1344 in Mask R-CNN and matrix size 896 in RetinaNet showed significantly higher sensitivity than others (p < 0.05). Matrix size 896 had the highest performance for various sizes of abnormalities using different CNNs. The optimal matrix size of chest radiograph could improve CAD performance without additional training data. • Input matrix size significantly affected the performance of a deep learning-based CAD for detection of nodules or masses on chest radiographs. • The matrix size 896 showed the best performance in two different CNN detection models. • The optimal matrix size of chest radiographs could enhance CAD performance without additional training data.
Identifiants
pubmed: 32350657
doi: 10.1007/s00330-020-06892-9
pii: 10.1007/s00330-020-06892-9
doi:
Types de publication
Journal Article
Multicenter Study
Langues
eng
Sous-ensembles de citation
IM
Pagination
4943-4951Subventions
Organisme : Ministry of Trade, Industry and Energy
ID : 10072064