Use of deep learning to detect cardiomegaly on thoracic radiographs in dogs

被引:43
作者
Burti, S. [1 ]
Osti, V. Longhin [1 ]
Zotti, A. [1 ]
Banzato, T. [1 ]
机构
[1] Univ Padua, Dept Anim Med Prod & Hlth, Viale Univ 16, I-35020 Padua, Italy
关键词
Computer aided diagnosis; Convolutional neural network; Vertebral heart scale; COMPUTER-AIDED DIAGNOSIS; VERTEBRAL HEART SCALE; CHEST RADIOGRAPHS; ULTRASONOGRAPHIC IMAGES; QUANTITATIVE-ANALYSIS; CARDIAC-DISEASE; ACCURACY; CANINE; ERROR; MENINGIOMAS;
D O I
10.1016/j.tvjl.2020.105505
中图分类号
S85 [动物医学(兽医学)];
学科分类号
0906 ;
摘要
The purpose of this study was to develop a computer-aided detection (CAD) device based on convolutional neural networks (CNNs) to detect cardiomegaly from plain radiographs in dogs. Right lateral chest radiographs (n = 1465) were retrospectively selected from archives. The radiographs were classified as having a normal cardiac silhouette (No-vertebral heart scale [VHS]-Cardiomegaly) or an enlarged cardiac silhouette (VHS-Cardiomegaly) based on the breed-specific VHS. The database was divided into a training set (1153 images) and a test set (315 images). The diagnostic accuracy of four different CNN models in the detection of cardiomegaly was calculated using the test set. All tested models had an area under the curve >0.9, demonstrating high diagnostic accuracy. There was a statistically significant difference between Model C and the remainder models (Model A vs. Model C, P = 0.0298; Model B vs. Model C, P = 0.003; Model C vs. Model D, P = 0.0018), but there were no significant differences between other combinations of models (Model A vs. Model B, P = 0.395; Model A vs. Model D, P = 0.128; Model B vs. Model D, P = 0.373). Convolutional neural networks could therefore assist veterinarians in detecting cardiomegaly in dogs from plain radiographs. (c) 2020 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
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页数:7
相关论文
共 54 条
[1]  
Alexander K, 2010, CAN VET J, V51, P533
[2]  
[Anonymous], 2015, ICLR
[3]  
[Anonymous], 2018, KYOTO FURITSU KAIYO
[4]   Development of a deep convolutional neural network to predict grading of canine meningiomas from magnetic resonance images [J].
Banzato, T. ;
Cherubini, G. B. ;
Atzori, M. ;
Zotti, A. .
VETERINARY JOURNAL, 2018, 235 :90-92
[5]   Use of transfer learning to detect diffuse degenerative hepatic diseases from ultrasound images in dogs: A methodological study [J].
Banzato, T. ;
Bonsembiante, F. ;
Aresu, L. ;
Gelain, M. E. ;
Burti, S. ;
Zotti, A. .
VETERINARY JOURNAL, 2018, 233 :35-40
[6]   Estimation of fetal lung development using quantitative analysis of ultrasonographic images in normal canine pregnancy [J].
Banzato, T. ;
Zovi, G. ;
Milani, C. .
THERIOGENOLOGY, 2017, 96 :158-163
[7]   Accuracy of deep learning to differentiate the histopathological grading of meningiomas on MR images: A preliminary study [J].
Banzato, Tommaso ;
Causin, Francesco ;
Della Puppa, Alessandro ;
Cester, Giacomo ;
Mazzai, Linda ;
Zotti, Alessandro .
JOURNAL OF MAGNETIC RESONANCE IMAGING, 2019, 50 (04) :1152-1159
[8]   A methodological approach for deep learning to distinguish between meningiomas and gliomas on canine MR-images [J].
Banzato, Tommaso ;
Bernardini, Marco ;
Cherubini, Giunio B. ;
Zotti, Alessandro .
BMC VETERINARY RESEARCH, 2018, 14
[9]  
Banzato T, 2017, AM J VET RES, V78, P1156, DOI 10.2460/ajvr.78.10.1156
[10]   Relationship of diagnostic accuracy of renal cortical echogenicity with renal histopathology in dogs and cats, a quantitative study [J].
Banzato, Tommaso ;
Bonsembiante, Federico ;
Aresu, Luca ;
Zotti, Alessandro .
BMC Veterinary Research, 2017, 13