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About:
Fast and accurate detection of Covid-19-related pneumonia from chest X-ray images with novel deep learning model
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An Entity of Type :
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covidontheweb.inria.fr
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Academic Article
research paper
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type
Academic Article
research paper
schema:ScholarlyArticle
isDefinedBy
Covid-on-the-Web dataset
has title
Fast and accurate detection of Covid-19-related pneumonia from chest X-ray images with novel deep learning model
Creator
Alam, C
Faza, A
Handayani, D
Lestariningsih, I
Lubis, L
Pawiro, S
Prajitno, P
Ramadhan, M
Resa, A
Salamah, T
Sidipratomo, P
Soejoko, D
Yunus, R
Source
ArXiv
abstract
Background: Novel coronavirus disease has spread rapidly worldwide. As recent radiological literatures on Covid-19 related pneumonia is primarily focused on CT findings, the American College of Radiology (ACR) recommends using portable chest X-radiograph (CXR). A tool to assist for detection and monitoring of Covid-19 cases from CXR is highly required. Purpose: To develop a fully automatic framework to detect Covid-19 related pneumonia using CXR images and evaluate its performance. Materials and Methods: In this study, a novel deep learning model, named CovIDNet (Covid-19 Indonesia Neural-Network), was developed to extract visual features from chest x-ray images for the detection of Covid-19 related pneumonia. The model was trained and validated by chest x-rays datasets collected from several open source provided by GitHub and Kaggle. Results and Discussion: In the validation stage using open-source data, the accuracy to recognize Covid-19 and others classes reaches 98.44%, that is, 100% Covid-19 precision and 97% others precision. Discussion: The use of the model to classify Covid-19 and other pathologies might slightly decrease the accuracy. Although SoftMax was used to handle classification bias, this indicates the benefit of additional training upon the introduction of new set of data. Conclusion: The model has been tested and get 98.4% accuracy for open source datasets, the sensitivity and specificity are 100% and 96.97%, respectively.
has issue date
2020-05-10
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)
has license
arxiv
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b7c44f57f380e171733707602fbab59bf3fa2cbc
resource representing a document's title
Fast and accurate detection of Covid-19-related pneumonia from chest X-ray images with novel deep learning model
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covid:b7c44f57f380e171733707602fbab59bf3fa2cbc#body_text
is
schema:about
of
named entity 'ResNet'
named entity 'false negative'
named entity 'pathology'
named entity 'ResNet'
named entity 'Pneumonia'
named entity 'pneumonia'
named entity 'JPEG'
named entity 'Wuhan'
named entity 'global public health'
named entity 'March 1'
named entity 'convolution'
named entity 'false negative'
named entity 'pathology'
named entity 'Kaggle'
named entity 'non-invasive imaging'
named entity 'Covid-19 outbreak'
named entity 'Covid'
named entity 'open source'
named entity 'Covid-19'
named entity 'x-ray'
named entity 'Covid'
named entity 'cross infection'
named entity 'Neural Network'
named entity 'RT-PCR'
named entity 'sensitivity and specificity'
named entity 'first-line'
named entity 'confidence level'
named entity 'chest radiograph'
named entity 'chest x-ray'
named entity 'high availability'
named entity 'open source'
named entity 'data set'
named entity 'lung'
named entity 'Indonesia'
named entity 'lungs'
named entity 'overfitting'
named entity 'Community-Acquired Pneumonia'
named entity 'Wuhan'
named entity 'deep learning'
named entity 'Covid-19'
named entity 'CLAHE'
named entity 'Canada'
named entity 'Computed tomography'
named entity 'Covid'
named entity 'open source'
named entity 'Covid'
named entity 'DICOM'
named entity 'rescale'
named entity 'SoftMax'
named entity 'x-ray'
named entity 'Covid'
named entity 'web form'
named entity 'deep learning architecture'
named entity 'Covid'
named entity 'CXR'
named entity 'CXR'
named entity 'Covid'
named entity 'China'
named entity 'CXR'
named entity 'Covid'
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named entity 'x-ray'
named entity 'deep learning'
named entity 'SoftMax'
named entity 'radiology'
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named entity 'RT-PCR'
named entity 'SSD'
named entity 'GitHub'
named entity 'Covid-19'
named entity 'Covid'
named entity 'pathologies'
named entity 'hospital-acquired infections'
named entity 'Covid'
named entity 'chest CT'
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