Skip navigation
  • Sciety Labs 🧪 (Experimental)
  • Search
Sciety application utilities

Radiology and Imaging

  • Subscribe to feed (RSS)

Showing page 4 of 15 pages of list content

  • Observer agreement and clinical significance of chest CT reporting in patients suspected of COVID-19

    This article's authors
    1. Marie-Pierre Debray
    2. Helena Tarabay
    3. Lisa Males
    4. Nisrine Chalhoub
    5. Elyas Mahdjoub
    6. Thomas Pavlovsky
    7. Benoît Visseaux
    8. Donia Bouzid
    9. Raphael Borie
    10. Catherine Wackenheim
    11. Bruno Crestani
    12. Christophe Rioux
    13. Loukbi Saker
    14. Christophe Choquet
    15. Jimmy Mullaert
    16. Antoine Khalil
    This article has 1 evaluations Latest evaluation on Jun 8, 2020 Published on May 11, 2020
  • AI based Chest X-Ray (CXR) Scan Texture Analysis Algorithm for Digital Test of COVID-19 Patients

    This article's authors
    1. Dhurgham Al-Karawi
    2. Shakir Al-Zaidi
    3. Nisreen Polus
    4. Sabah Jassim
    This article has 1 evaluations Latest evaluation on Jun 7, 2020 Published on May 8, 2020
  • Deep Learning for Screening COVID-19 using Chest X-Ray Images

    This article's authors
    1. Sanhita Basu
    2. Sushmita Mitra
    3. Nilanjan Saha
    This article has 1 evaluations Latest evaluation on Jun 7, 2020 Published on May 8, 2020
  • Training deep learning algorithms with weakly labeled pneumonia chest X-ray data for COVID-19 detection

    This article's authors
    1. Sivaramakrishnan Rajaraman
    2. Sameer Antani
    This article has 1 evaluations Latest evaluation on Jun 7, 2020 Published on May 8, 2020
  • Fully automatic deep convolutional approaches for the analysis of Covid-19 using chest X-ray images

    This article's authors
    1. Joaquim de Moura
    2. Jorge Novo
    3. Marcos Ortega
    This article has 1 evaluations Latest evaluation on Jun 7, 2020 Published on May 6, 2020
  • Classification of COVID-19 from Chest X-ray images using Deep Convolutional Neural Networks

    This article's authors
    1. Sohaib Asif
    2. Yi Wenhui
    3. Hou Jin
    4. Yi Tao
    5. Si Jinhai
    This article has 1 evaluations Latest evaluation on Jun 7, 2020 Published on Jun 18, 2020
  • TRACKING AND PREDICTING COVID-19 RADIOLOGICAL TRAJECTORY USING DEEP LEARNING ON CHEST X-RAYS: INITIAL ACCURACY TESTING

    This article's authors
    1. S. Duchesne
    2. D. Gourdeau
    3. P. Archambault
    4. C. Chartrand-Lefebvre
    5. L. Dieumegarde
    6. R. Forghani
    7. C. Gagné
    8. A. Hains
    9. D. Hornstein
    10. H. Le
    11. S. Lemieux
    12. M.H. Lévesque
    13. D. Martin
    14. L. Rosenbloom
    15. A. Tang
    16. F. Vecchio
    17. O. Potvin
    18. N. Duchesne
    This article has 1 evaluations Latest evaluation on Jun 6, 2020 Published on May 5, 2020
  • Distinguishing L and H phenotypes of COVID-19 using a single x-ray image

    This article's authors
    1. Mohammad Tariqul Islam
    2. Jason W. Fleischer
    This article has 1 evaluations Latest evaluation on Jun 6, 2020 Published on May 3, 2020
  • Clinical and Imaging Findings in COVID-19 Patients Complicated by Pulmonary Embolism

    This article's authors
    1. Ting Li
    2. Gregory Kicska
    3. Paul E Kinahan
    4. Chengcheng Zhu
    5. Murat Alp Oztek
    6. Wei Wu
    This article has 1 evaluations Latest evaluation on Jun 6, 2020 Published on Apr 24, 2020
  • From Community Acquired Pneumonia to COVID-19: A Deep Learning Based Method for Quantitative Analysis of COVID-19 on thick-section CT Scans

    This article's authors
    1. Zhang Li
    2. Zheng Zhong
    3. Yang Li
    4. Tianyu Zhang
    5. Liangxin Gao
    6. Dakai Jin
    7. Yue Sun
    8. Xianghua Ye
    9. Li Yu
    10. Zheyu Hu
    11. Jing Xiao
    12. Lingyun Huang
    13. Yuling Tang
    This article has 1 evaluations Latest evaluation on Jun 6, 2020 Published on Apr 23, 2020
Previous Next
Stay updated. Get involved.
Subscribe to Mailing List
  • Blog
  • About Sciety
  • Contact
  • Follow us on Twitter
  • Follow us on Facebook
© 2022 eLife Sciences Publications Ltd. Legal information