Pattern classification approach to segmentation of digital chest radiographs and chest CT image slices

Author(s):  
Michael F. McNitt-Gray ◽  
James W. Sayre ◽  
H. K. Huang ◽  
Mahmood Razavi ◽  
Denise R. Aberle
1993 ◽  
Author(s):  
Michael F. McNitt-Gray ◽  
James W. Sayre ◽  
H. K. Huang ◽  
Mahmood Razavi

2020 ◽  
Author(s):  
Jinseok Lee

BACKGROUND The coronavirus disease (COVID-19) has explosively spread worldwide since the beginning of 2020. According to a multinational consensus statement from the Fleischner Society, computed tomography (CT) can be used as a relevant screening tool owing to its higher sensitivity for detecting early pneumonic changes. However, physicians are extremely busy fighting COVID-19 in this era of worldwide crisis. Thus, it is crucial to accelerate the development of an artificial intelligence (AI) diagnostic tool to support physicians. OBJECTIVE We aimed to quickly develop an AI technique to diagnose COVID-19 pneumonia and differentiate it from non-COVID pneumonia and non-pneumonia diseases on CT. METHODS A simple 2D deep learning framework, named fast-track COVID-19 classification network (FCONet), was developed to diagnose COVID-19 pneumonia based on a single chest CT image. FCONet was developed by transfer learning, using one of the four state-of-art pre-trained deep learning models (VGG16, ResNet50, InceptionV3, or Xception) as a backbone. For training and testing of FCONet, we collected 3,993 chest CT images of patients with COVID-19 pneumonia, other pneumonia, and non-pneumonia diseases from Wonkwang University Hospital, Chonnam National University Hospital, and the Italian Society of Medical and Interventional Radiology public database. These CT images were split into a training and a testing set at a ratio of 8:2. For the test dataset, the diagnostic performance to diagnose COVID-19 pneumonia was compared among the four pre-trained FCONet models. In addition, we tested the FCONet models on an additional external testing dataset extracted from the embedded low-quality chest CT images of COVID-19 pneumonia in recently published papers. RESULTS Of the four pre-trained models of FCONet, the ResNet50 showed excellent diagnostic performance (sensitivity 99.58%, specificity 100%, and accuracy 99.87%) and outperformed the other three pre-trained models in testing dataset. In additional external test dataset using low-quality CT images, the detection accuracy of the ResNet50 model was the highest (96.97%), followed by Xception, InceptionV3, and VGG16 (90.71%, 89.38%, and 87.12%, respectively). CONCLUSIONS The FCONet, a simple 2D deep learning framework based on a single chest CT image, provides excellent diagnostic performance in detecting COVID-19 pneumonia. Based on our testing dataset, the ResNet50-based FCONet might be the best model, as it outperformed other FCONet models based on VGG16, Xception, and InceptionV3.


1996 ◽  
Author(s):  
Christiaan M. Fivez ◽  
Patrick Wambacq ◽  
Paul Suetens ◽  
Emile P. Schoeters

1991 ◽  
Vol 32 (6) ◽  
pp. 442-448 ◽  
Author(s):  
M. Kehler ◽  
U. Albrechtsson ◽  
A. Andrésdóttir ◽  
P. Hochbergs ◽  
H. Lárusdóttir ◽  
...  

Inverted (positive) digital chest radiographs of patients with lung tumors were compared with commonly used (negative) digital images, consisting of one simulated normal and one contrast enhanced image. The first part of the material consisted of 80 patients of whom 40 had tumors and 40 were normal. Five radiologists with different experience reviewed the examinations. From their answers, ROC curves were constructed. The second part of the material consisted of 100 chest phantom examinations with a simulated tumor in the mediastinum (45 examinations) and/or the left lung (46 examinations). In 31 exposures there was no abnormality. These were reviewed by 3 observers and performed as an ROC study as well. There was no statistical difference between the different types of images or between the observers in the 2 studies.


1996 ◽  
Author(s):  
Jacob K. Laading ◽  
Valen E. Johnson ◽  
Alan H. Baydush ◽  
Carey E. Floyd, Jr.

1993 ◽  
Vol 20 (4) ◽  
pp. 975-982 ◽  
Author(s):  
Xuan Chen ◽  
Kunio Doi ◽  
Shigehiko Katsuragawa ◽  
Heber MacMahon

1990 ◽  
Vol 25 (8) ◽  
pp. 902-907 ◽  
Author(s):  
DAVID A. YOCKY ◽  
GEORGE W. SEELEY ◽  
THERON W. OVITT ◽  
HANS ROEHRIG ◽  
WILLIAM J. DALLAS

PLoS ONE ◽  
2014 ◽  
Vol 9 (8) ◽  
pp. e105735 ◽  
Author(s):  
Tsuneo Yamashiro ◽  
Tetsuhiro Miyara ◽  
Osamu Honda ◽  
Hisashi Kamiya ◽  
Kiyoshi Murata ◽  
...  

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