مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

video

مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

sound

مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

Persian Version

مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

View:

148
مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

Download:

88
مرکز اطلاعات علمی Scientific Information Database (SID) - Trusted Source for Research and Academic Resources

Cites:

Information Journal Paper

Title

Covidense: Providing a Suitable Solution for Diagnosing Covid-19 Lung Infection Based on Deep Learning from Chest X-Ray Images of Patients

Pages

  131-142

Abstract

 Purpose: Coronavirus disease 2019 (Covid-19), first reported in December 2019 in Wuhan, China, has become a pandemic. Chest imaging is used for the diagnosis of Covid-19 patients and can address problems concerning Reverse Transcription-Polymerase Chain Reaction (RT-PCR) shortcomings. Chest X-Ray Images can act as an appropriate alternative to Computed Tomography (CT) for diagnosing Covid-19. The purpose of this study is to use a Deep Learning method for diagnosing Covid-19 cases using Chest X-Ray Images. Thus, we propose Covidense based on the pre-trained Densenet-201 model and is trained on a dataset comprising Chest X-Ray Images of Covid-19, normal, bacterial pneumonia, and viral pneumonia cases. Materials and Methods: In this study, a total number of 1280 Chest X-Ray Images of Covid-19, normal, bacterial and viral pneumonia cases were collected from open access repositories. Covidense, a Convolutional Neural Network model, is based on the pre-trained DenseNet-201 architecture, and after pre-processing the images, it has been trained and tested on the images using the 5-fold cross-validation method. Results: The accuracy of different classifications including classification of two classes (Covid-19, normal), three classes 1 (Covid-19, normal and bacterial pneumonia), three classes 2 (Covid-19, normal and viral pneumonia), and four classes (Covid-19, normal, bacterial pneumonia and viral pneumonia) are 99. 46%, 92. 86%, 93. 91 %, and 91. 01% respectively. Conclusion: This model can differentiate pneumonia caused by Covid-19 from other types of pneumonia, including bacterial and viral. The proposed model offers high accuracy and can be of great help for effective screening. Thus, reducing the rate of infection spread. Also, it can act as a complementary tool for the detection and diagnosis of Covid-19.

Multimedia

  • No record.
  • Cites

  • No record.
  • References

  • No record.
  • Cite

    APA: Copy

    Sorayaie Azar, Amir, GHAFARI, ALI, Ostadi Najar, Mohammad, Babaei Rikan, Samin, GHAFARI, REZA, Farajpouri Khamene, Maryam, & Sheikhzadeh, Peyman. (2021). Covidense: Providing a Suitable Solution for Diagnosing Covid-19 Lung Infection Based on Deep Learning from Chest X-Ray Images of Patients. FRONTIERS IN BIOMEDICAL TECHNOLOGIES, 8(2 ), 131-142. SID. https://sid.ir/paper/666969/en

    Vancouver: Copy

    Sorayaie Azar Amir, GHAFARI ALI, Ostadi Najar Mohammad, Babaei Rikan Samin, GHAFARI REZA, Farajpouri Khamene Maryam, Sheikhzadeh Peyman. Covidense: Providing a Suitable Solution for Diagnosing Covid-19 Lung Infection Based on Deep Learning from Chest X-Ray Images of Patients. FRONTIERS IN BIOMEDICAL TECHNOLOGIES[Internet]. 2021;8(2 ):131-142. Available from: https://sid.ir/paper/666969/en

    IEEE: Copy

    Amir Sorayaie Azar, ALI GHAFARI, Mohammad Ostadi Najar, Samin Babaei Rikan, REZA GHAFARI, Maryam Farajpouri Khamene, and Peyman Sheikhzadeh, “Covidense: Providing a Suitable Solution for Diagnosing Covid-19 Lung Infection Based on Deep Learning from Chest X-Ray Images of Patients,” FRONTIERS IN BIOMEDICAL TECHNOLOGIES, vol. 8, no. 2 , pp. 131–142, 2021, [Online]. Available: https://sid.ir/paper/666969/en

    Related Journal Papers

  • No record.
  • Related Seminar Papers

  • No record.
  • Related Plans

  • No record.
  • Recommended Workshops






    Move to top
    telegram sharing button
    whatsapp sharing button
    linkedin sharing button
    twitter sharing button
    email sharing button
    email sharing button
    email sharing button
    sharethis sharing button