Deep convolutional neural networks in the classification of dual-energy thoracic radiographic views for efficient workflow: analysis on over 6500 clinical radiographs

被引:3
作者
Crosby, Jennie [1 ]
Rhines, Thomas [1 ]
Li, Feng [1 ]
MacMahon, Heber [1 ]
Giger, Maryellen [1 ]
机构
[1] Univ Chicago, Dept Radiol, Chicago, IL 60637 USA
关键词
thoracic radiographs; deep learning; dual-energy; DICOM header; workflow; convolutional neural networks;
D O I
10.1117/1.JMI.7.1.016501
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
DICOM header information is frequently used to classify medical image types; however, if a header is missing fields or contains incorrect data, the utility is limited. To expedite image classification, we trained convolutional neural networks (CNNs) in two classification tasks for thoracic radiographic views obtained from dual-energy studies: (a) distinguishing between frontal, lateral, soft tissue, and bone images and (b) distinguishing between posteroanterior (PA) or anteroposterior (AP) chest radiographs. CNNs with AlexNet architecture were trained from scratch. 1910 manually classified radiographs were used for training the network to accomplish task (a), then tested with an independent test set (3757 images). Frontal radiographs from the two datasets were combined to train a network to accomplish task (b); tested using an independent test set of 1000 radiographs. ROC analysis was performed for each trained CNN with area under the curve (AUC) as a performance metric. Classification between frontal images (AP/PA) and other image types yielded an AUC of 0.997 [95% confidence interval (CI): 0.996, 0.998]. Classification between PA and AP radiographs resulted in an AUC of 0.973 (95% CI: 0.961, 0.981). CNNs were able to rapidly classify thoracic radiographs with high accuracy, thus potentially contributing to effective and efficient workflow. (C) 2020 Society of Photo-Optical Instrumentation Engineers (SPIE)
引用
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页数:12
相关论文
共 10 条
[1]  
Clunie D.A., 2003, Advances in Digital Radiography: RSNA Categorical Course in Diagnostic Radiology Physics, P163
[2]   Impact of Imprinted Labels on Deep Learning Classification of AP and PA Thoracic Radiographs [J].
Crosby, Jennie ;
Rhines, Thomas ;
Duan, Clara ;
Li, Feng ;
MacMahon, Heber ;
Giger, Maryellen .
MEDICAL IMAGING 2019: IMAGING INFORMATICS FOR HEALTHCARE, RESEARCH, AND APPLICATIONS, 2019, 10954
[3]   COMPARING THE AREAS UNDER 2 OR MORE CORRELATED RECEIVER OPERATING CHARACTERISTIC CURVES - A NONPARAMETRIC APPROACH [J].
DELONG, ER ;
DELONG, DM ;
CLARKEPEARSON, DI .
BIOMETRICS, 1988, 44 (03) :837-845
[4]   Machine Learning in Medical Imaging [J].
Giger, Maryellen L. .
JOURNAL OF THE AMERICAN COLLEGE OF RADIOLOGY, 2018, 15 (03) :512-520
[5]   ImageNet Classification with Deep Convolutional Neural Networks [J].
Krizhevsky, Alex ;
Sutskever, Ilya ;
Hinton, Geoffrey E. .
COMMUNICATIONS OF THE ACM, 2017, 60 (06) :84-90
[6]  
Lemos J., 2012, Fundamentals of diagnostic radiology, chapter 12, P324
[7]   BASIC PRINCIPLES OF ROC ANALYSIS [J].
METZ, CE .
SEMINARS IN NUCLEAR MEDICINE, 1978, 8 (04) :283-298
[8]   High-Throughput Classification of Radiographs Using Deep Convolutional Neural Networks [J].
Rajkomar, Alvin ;
Lingam, Sneha ;
Taylor, Andrew G. ;
Blum, Michael ;
Mongan, John .
JOURNAL OF DIGITAL IMAGING, 2017, 30 (01) :95-101
[9]  
Simonyan K, 2015, Arxiv, DOI arXiv:1409.1556
[10]   Binge Watching: Scaling Affordance Learning from Sitcoms [J].
Wang, Xiaolong ;
Girdhar, Rohit ;
Gupta, Abhinav .
30TH IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2017), 2017, :3366-3375