Aikaterini Angeli

2papers

2 Papers

IVMay 4, 2022
Evaluating Transferability for Covid 3D Localization Using CT SARS-CoV-2 segmentation models

Constantine Maganaris, Eftychios Protopapadakis, Nikolaos Bakalos et al.

Recent studies indicate that detecting radiographic patterns on CT scans can yield high sensitivity and specificity for Covid-19 localization. In this paper, we investigate the appropriateness of deep learning models transferability, for semantic segmentation of pneumonia-infected areas in CT images. Transfer learning allows for the fast initialization/reutilization of detection models, given that large volumes of training data are not available. Our work explores the efficacy of using pre-trained U-Net architectures, on a specific CT data set, for identifying Covid-19 side-effects over images from different datasets. Experimental results indicate improvement in the segmentation accuracy of identifying Covid-19 infected regions.

IVJul 25, 2022
Transferability limitations for Covid 3D Localization Using SARS-CoV-2 segmentation models in 4D CT images

Constantine Maganaris, Eftychios Protopapadakis, Nikolaos Bakalos et al.

In this paper, we investigate the transferability limitations when using deep learning models, for semantic segmentation of pneumonia-infected areas in CT images. The proposed approach adopts a 4 channel input; 3 channels based on Hounsfield scale, plus one channel (binary) denoting the lung area. We used 3 different, publicly available, CT datasets. If the lung area mask was not available, a deep learning model generates a proxy image. Experimental results suggesting that transferability should be used carefully, when creating Covid segmentation models; retraining the model more than one times in large sets of data results in a decrease in segmentation accuracy.