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Interactive framework for Covid-19 detection and segmentation with feedback facility for dynamically improved accuracy and trust

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  • Kashfia Sailunaz
  • Deniz Bestepe
  • Tansel Özyer
  • Jon Rokne
  • Reda Alhajj

Abstract

Due to the severity and speed of spread of the ongoing Covid-19 pandemic, fast but accurate diagnosis of Covid-19 patients has become a crucial task. Achievements in this respect might enlighten future efforts for the containment of other possible pandemics. Researchers from various fields have been trying to provide novel ideas for models or systems to identify Covid-19 patients from different medical and non-medical data. AI-based researchers have also been trying to contribute to this area by mostly providing novel approaches of automated systems using convolutional neural network (CNN) and deep neural network (DNN) for Covid-19 detection and diagnosis. Due to the efficiency of deep learning (DL) and transfer learning (TL) models in classification and segmentation tasks, most of the recent AI-based researches proposed various DL and TL models for Covid-19 detection and infected region segmentation from chest medical images like X-rays or CT images. This paper describes a web-based application framework for Covid-19 lung infection detection and segmentation. The proposed framework is characterized by a feedback mechanism for self learning and tuning. It uses variations of three popular DL models, namely Mask R-CNN, U-Net, and U-Net++. The models were trained, evaluated and tested using CT images of Covid patients which were collected from two different sources. The web application provide a simple user friendly interface to process the CT images from various resources using the chosen models, thresholds and other parameters to generate the decisions on detection and segmentation. The models achieve high performance scores for Dice similarity, Jaccard similarity, accuracy, loss, and precision values. The U-Net model outperformed the other models with more than 98% accuracy.

Suggested Citation

  • Kashfia Sailunaz & Deniz Bestepe & Tansel Özyer & Jon Rokne & Reda Alhajj, 2022. "Interactive framework for Covid-19 detection and segmentation with feedback facility for dynamically improved accuracy and trust," PLOS ONE, Public Library of Science, vol. 17(12), pages 1-28, December.
  • Handle: RePEc:plo:pone00:0278487
    DOI: 10.1371/journal.pone.0278487
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    References listed on IDEAS

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    1. Tarik Alafif & Abdul Muneeim Tehame & Saleh Bajaba & Ahmed Barnawi & Saad Zia, 2021. "Machine and Deep Learning towards COVID-19 Diagnosis and Treatment: Survey, Challenges, and Future Directions," IJERPH, MDPI, vol. 18(3), pages 1-24, January.
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