Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Differentiating COVID-19 from other types of pneumonia with convolutional neural networks

View through CrossRef
Abstract INTRODUCTION A widely-used method for diagnosing COVID-19 is the nucleic acid test based on real-time reverse transcriptase-polymerase chain reaction (RT-PCR). However, the sensitivity of real time RT-PCR tests is low and it can take up to 8 hours to receive the test results. Radiologic methods can provide higher sensitivity. The aim of this study is to investigate the use of X-ray and convolutional neural networks for the diagnosis of COVID-19 and to differentiate it from viral and/or bacterial pneumonia, as 2-class (bacterial pneumonia vs COVID-19 and viral pneumonia vs COVID-19) and 3- class (bacterial pneumonia, COVID-19, and healthy group (BCH), and among viral pneumonia, COVID- 19, and healthy group (VCH)) experiments. METHODS 225 COVID-19, 1,583 healthy control, 2,780 bacterial pneumonia, and 1,493 viral pneumonia chest X-ray images were used. 2-class- and 3-class-experiments were performed with different convolutional neural network (ConvNet) architectures, with different variations of convolutional layers and fully-connected layers. RESULTS The results showed that bacterial pneumonia vs COVID-19 and viral pneumonia vs COVID- 19 reached a mean ROC AUC of 97.32% and 96.80%, respectively. In the 3-class-experiments, macro-average F1 scores of 95.79% and 94.59% were obtained in terms of detecting COVID-19 among BCH and VCH, respectively. CONCLUSIONS The ConvNet was able to distinguish the COVID-19 images among non-COVID-19 images, namely bacterial and viral pneumonia as well as normal X-ray images.
Title: Differentiating COVID-19 from other types of pneumonia with convolutional neural networks
Description:
Abstract INTRODUCTION A widely-used method for diagnosing COVID-19 is the nucleic acid test based on real-time reverse transcriptase-polymerase chain reaction (RT-PCR).
However, the sensitivity of real time RT-PCR tests is low and it can take up to 8 hours to receive the test results.
Radiologic methods can provide higher sensitivity.
The aim of this study is to investigate the use of X-ray and convolutional neural networks for the diagnosis of COVID-19 and to differentiate it from viral and/or bacterial pneumonia, as 2-class (bacterial pneumonia vs COVID-19 and viral pneumonia vs COVID-19) and 3- class (bacterial pneumonia, COVID-19, and healthy group (BCH), and among viral pneumonia, COVID- 19, and healthy group (VCH)) experiments.
METHODS 225 COVID-19, 1,583 healthy control, 2,780 bacterial pneumonia, and 1,493 viral pneumonia chest X-ray images were used.
2-class- and 3-class-experiments were performed with different convolutional neural network (ConvNet) architectures, with different variations of convolutional layers and fully-connected layers.
RESULTS The results showed that bacterial pneumonia vs COVID-19 and viral pneumonia vs COVID- 19 reached a mean ROC AUC of 97.
32% and 96.
80%, respectively.
In the 3-class-experiments, macro-average F1 scores of 95.
79% and 94.
59% were obtained in terms of detecting COVID-19 among BCH and VCH, respectively.
CONCLUSIONS The ConvNet was able to distinguish the COVID-19 images among non-COVID-19 images, namely bacterial and viral pneumonia as well as normal X-ray images.

Related Results

Electrocardiographic markers of increased risk of sudden cardiac death in patients with COVID‐19 pneumonia
Electrocardiographic markers of increased risk of sudden cardiac death in patients with COVID‐19 pneumonia
AbstractBackgroundLittle is known about the role of ECG markers of increased risk of sudden cardiac death during the acute period of coronavirus disease 2019 ( COVID‐19) pneumonia....
Fuzzy Chaotic Neural Networks
Fuzzy Chaotic Neural Networks
An understanding of the human brain’s local function has improved in recent years. But the cognition of human brain’s working process as a whole is still obscure. Both fuzzy logic ...
Long COVID Treatment No Silver Bullets, Only a Few Bronze BBs
Long COVID Treatment No Silver Bullets, Only a Few Bronze BBs
Long COVID is the consequence of having had COVID. Long COVID has many other names including Long-haul COVID, Post-COVID conditions (PCC), Post-COVID-19 syndrome, Post-acute seque...
Long COVID Treatment No Silver Bullets, Only a Few Bronze BBs
Long COVID Treatment No Silver Bullets, Only a Few Bronze BBs
Long COVID is the consequence of having had COVID. Long COVID has many other names including Long-haul COVID, Post-COVID conditions (PCC), Post-COVID-19 syndrome, Post-acute seque...
On the role of network dynamics for information processing in artificial and biological neural networks
On the role of network dynamics for information processing in artificial and biological neural networks
Understanding how interactions in complex systems give rise to various collective behaviours has been of interest for researchers across a wide range of fields. However, despite ma...
PERSEPSI IBU HAMIL TENTANG VAKSIN COVID-19 TERHADAP PELAKSANAAN VAKSINASI COVID-19
PERSEPSI IBU HAMIL TENTANG VAKSIN COVID-19 TERHADAP PELAKSANAAN VAKSINASI COVID-19
Latar Belakang: kasus positif Covid-19 di Kabupaten Sukoharjo tahun 2021 mencapai 12.350 dan terus mengalami penambahan jumlah. Dari jumlah tersebut terdapat 168 kasus positif Covi...
The Impact of the Covid-19 Pandemic and Macroeconomics on the Sharia Stock Indexes in Indonesia
The Impact of the Covid-19 Pandemic and Macroeconomics on the Sharia Stock Indexes in Indonesia
ABSTRACT The Covid-19 pandemic has changed economic conditions in various countries, including Indonesia. One of the sectors affected is the capital market sector which can also de...

Back to Top