LIVIVO - The Search Portal for Life Sciences

zur deutschen Oberfläche wechseln
Advanced search

Search results

Result 1 - 1 of total 1

Search options

Article ; Online: LBP-based information assisted intelligent system for COVID-19 identification.

Maheshwari, Shishir / Sharma, Rishi Raj / Kumar, Mohit

Computers in biology and medicine

2021  Volume 134, Page(s) 104453

Abstract: ... This article presents a chest X-ray image-based automated COVID-19 detection system which can be employed ... A real-time COVID-19 detection system is an utmost requirement of the present situation ... provided to the classifier for developing an automated model for COVID-19 identification. The performance ...

Abstract A real-time COVID-19 detection system is an utmost requirement of the present situation. This article presents a chest X-ray image-based automated COVID-19 detection system which can be employed with the RT-PCR test to improve the diagnosis rate. In the proposed approach, the textural features are extracted from the chest X-ray images and local binary pattern (LBP) based images. Further, the image-based and LBP image-based features are jointly investigated. Thereafter, highly discriminatory features are provided to the classifier for developing an automated model for COVID-19 identification. The performance of the proposed approach is investigated over 2905 chest X-ray images of normal, pneumonia, and COVID-19 infected persons on various class combinations to analyze the robustness. The developed method achieves 97.97% accuracy (acc) and 99.88% sensitivity (sen) for classifying COVID-19 X-ray images against pneumonia infected and normal person's X-ray images. It attains 98.91% acc and 99.33% sen for COVID-19 X-ray against the normal X-ray classification. This method can be employed to assist the radiologists during mass screening for fast, accurate, and contact-free COVID-19 diagnosis.
Language English
Publishing date 2021-05-01
Publishing country United States
Document type Journal Article
ZDB-ID 127557-4
ISSN 1879-0534 ; 0010-4825
ISSN (online) 1879-0534
ISSN 0010-4825
DOI 10.1016/j.compbiomed.2021.104453
Shelf mark
Zs.A 653: Show issues Location:
Je nach Verfügbarkeit (siehe Angabe bei Bestand)
bis Jg. 1994: Bestellungen von Artikeln über das Online-Bestellformular
Jg. 1995 - 2021: Lesesall (1.OG)
ab Jg. 2022: Lesesaal (EG)
Database MEDical Literature Analysis and Retrieval System OnLINE

More links

Kategorien

To top