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Deep learning models for COVID-19 infected area segmentation in CT images
Author(s) -
Athanasios Voulodimos,
Eftychios Protopapadakis,
Iason Katsamenis,
Anastasios Doulamis,
Nikolaos Doulamis
Publication year - 2021
Publication title -
medrxiv (cold spring harbor laboratory)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/3453892.3461322
Subject(s) - segmentation , convolutional neural network , artificial intelligence , covid-19 , computer science , deep learning , image segmentation , pneumonia , pattern recognition (psychology) , annotation , task (project management) , computer vision , medicine , pathology , disease , infectious disease (medical specialty) , management , economics
Recent studies indicated that detecting radiographic patterns on CT chest scans can yield high sensitivity and specificity for COVID-19 detection. In this work, we scrutinize the effectiveness of deep learning models for semantic segmentation of pneumonia infected area segmentation in CT images for the detection of COVID-19. We explore the efficacy of U-Nets and Fully Convolutional Neural Networks in this task using real-world CT data from COVID-19 patients. The results indicate that Fully Convolutional Neural Networks are capable of accurate segmentation despite the class imbalance on the dataset and the man-made annotation errors on the boundaries of symptom manifestation areas, and can be a promising method for further analysis of COVID-19 induced pneumonia symptoms in CT images.

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