Decision and Feature Level Fusion of Deep Features Extracted from Public
COVID-19 Data-sets
- URL: http://arxiv.org/abs/2011.08528v1
- Date: Tue, 17 Nov 2020 09:36:21 GMT
- Title: Decision and Feature Level Fusion of Deep Features Extracted from Public
COVID-19 Data-sets
- Authors: Hamza Osman Ilhan, Gorkem Serbes, Nizamettin Aydin
- Abstract summary: The usage of chest radiography has been increasing in the early diagnosis of COVID-19.
A computer-aided diagnosis system for X-ray images based on convolutional neural networks (CNNs) has been proposed.
The experimental results show that the proposed approach has attained high COVID-19 detection performance.
- Score: 6.445605125467574
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The Coronavirus (COVID-19), which is an infectious pulmonary disorder, has
affected millions of people and has been declared as a global pandemic by the
WHO. Due to highly contagious nature of COVID-19 and its high possibility of
causing severe conditions in the patients, the development of rapid and
accurate diagnostic tools have gained importance. The real-time reverse
transcription-polymerize chain reaction (RT-PCR) is used to detect the presence
of Coronavirus RNA by using the mucus and saliva mixture samples. But, RT-PCR
suffers from having low-sensitivity especially in the early stage. Therefore,
the usage of chest radiography has been increasing in the early diagnosis of
COVID-19 due to its fast imaging speed, significantly low cost and low dosage
exposure of radiation. In our study, a computer-aided diagnosis system for
X-ray images based on convolutional neural networks (CNNs), which can be used
by radiologists as a supporting tool in COVID-19 detection, has been proposed.
Deep feature sets extracted by using CNNs were concatenated for feature level
fusion and fed to multiple classifiers in terms of decision level fusion idea
with the aim of discriminating COVID-19, pneumonia and no-finding classes. In
the decision level fusion idea, a majority voting scheme was applied to the
resultant decisions of classifiers. The obtained accuracy values and confusion
matrix based evaluation criteria were presented for three progressively created
data-sets. The aspects of the proposed method that are superior to existing
COVID-19 detection studies have been discussed and the fusion performance of
proposed approach was validated visually by using Class Activation Mapping
technique. The experimental results show that the proposed approach has
attained high COVID-19 detection performance that was proven by its comparable
accuracy and superior precision/recall values with the existing studies.
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