Keyword search (4,164 papers available)

"COVID-19 pandemic" Keyword-tagged Publications:

Title Authors PubMed ID
1 A portrait of online gambling: a look at a transformation amid a pandemic Kairouz S; Savard AC; Murch WS; Dixon MR; Martin NB; Brodeur M; Dauphinais S; Ferland F; Hamel D; Dufour M; French M; Monson E; Van Mourik V; Morvannou A; 40770758
CONCORDIA
2 Canadian pediatric eating disorder programs and virtual care during the COVID-19 pandemic: a mixed-methods approach to understanding clinicians' perspectives Novack K; Dufour R; Picard L; Taddeo D; Nadeau PO; Katzman DK; Booij L; Chadi N; 37101241
PSYCHOLOGY
3 The unsanitary other and racism during the pandemic: analysis of purity discourses on social media in India, France and United States of America during the COVID-19 pandemic Desmarais C; Roy M; Nguyen MT; Venkatesh V; Rousseau C; 36861381
CONCORDIA
4 The effect of COVID-19 pandemic on return-volume and return-volatility relationships in cryptocurrency markets Foroutan P; Lahmiri S; 36068915
CONCORDIA
5 Designing a hybrid reinforcement learning based algorithm with application in prediction of the COVID-19 pandemic in Quebec. Khalilpourazari S, Hashemi Doulabi H 33424076
ENCS
6 Assessing the impact of COVID-19 pandemic on urban transportation and air quality in Canada. Tian X, An C, Chen Z, Tian Z 33401062
ENCS
7 Randomness, Informational Entropy, and Volatility Interdependencies among the Major World Markets: The Role of the COVID-19 Pandemic Lahmiri S; Bekiros S; 33286604
JMSB
8 COVID-CAPS: A Capsule Network-based Framework for Identification of COVID-19 cases from X-ray Images. Afshar P, Heidarian S, Naderkhani F, Oikonomou A, Plataniotis KN, Mohammadi A 32958971
ENCS
9 Renyi entropy and mutual information measurement of market expectations and investor fear during the COVID-19 pandemic Lahmiri S; Bekiros S; 32834621
JMSB

 

Title:COVID-CAPS: A Capsule Network-based Framework for Identification of COVID-19 cases from X-ray Images.
Authors:Afshar PHeidarian SNaderkhani FOikonomou APlataniotis KNMohammadi A
Link:https://www.ncbi.nlm.nih.gov/pubmed/32958971
DOI:10.1016/j.patrec.2020.09.010
Publication:Pattern recognition letters
Keywords:COVID-19 pandemicCapsule networkDeep learningX-ray images
PMID:32958971 Category:Pattern Recognit Lett Date Added:2020-09-23
Dept Affiliation: ENCS
1 Concordia Institute for Information Systems Engineering, Concordia University, Montreal, QC, Canada.
2 Department of Electrical and Computer Engineering, Concordia University, Montreal, QC, Canada.
3 Department of Medical Imaging, Sunnybrook Health Sciences Centre, University of Toronto, Canada.
4 Department of Electrical and Computer Engineering, University of Toronto, Toronto, ON, Canada.

Description:

COVID-CAPS: A Capsule Network-based Framework for Identification of COVID-19 cases from X-ray Images.

Pattern Recognit Lett. 2020 Sep 16; :

Authors: Afshar P, Heidarian S, Naderkhani F, Oikonomou A, Plataniotis KN, Mohammadi A

Abstract

Novel Coronavirus disease (COVID-19) has abruptly and undoubtedly changed the world as we know it at the end of the 2nd decade of the 21st century. COVID-19 is extremely contagious and quickly spreading globally making its early diagnosis of paramount importance. Early diagnosis of COVID-19 enables health care professionals and government authorities to break the chain of transition and flatten the epidemic curve. The common type of COVID-19 diagnosis test, however, requires specific equipment and has relatively low sensitivity. Computed tomography (CT) scans and X-ray images, on the other hand, reveal specific manifestations associated with this disease. Overlap with other lung infections makes human-centered diagnosis of COVID-19 challenging. Consequently, there has been an urgent surge of interest to develop Deep Neural Network (DNN)-based diagnosis solutions, mainly based on Convolutional Neural Networks (CNNs), to facilitate identification of positive COVID-19 cases. CNNs, however, are prone to lose spatial information between image instances and require large datasets. The paper presents an alternative modeling framework based on Capsule Networks, referred to as the COVID-CAPS, being capable of handling small datasets, which is of significant importance due to sudden and rapid emergence of COVID-19. Our results based on a dataset of X-ray images show that COVID-CAPS has advantage over previous CNN-based models. COVID-CAPS achieved an Accuracy of 95.7%, Sensitivity of 90%, Specificity of 95.8%, and Area Under the Curve (AUC) of 0.97, while having far less number of trainable parameters in comparison to its counterparts. To potentially and further improve diagnosis capabilities of the COVID-CAPS, pre-training and transfer learning are utilized based on a new dataset constructed from an external dataset of X-ray images. This is in contrary to existing works on COVID-19 detection where pre-training is performed based on natural images. Pre-training with a dataset of similar nature further improved accuracy to 98.3% and specificity to 98.6%.

PMID: 32958971 [PubMed - as supplied by publisher]





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