KVAK, Daniel and Karolína KVAKOVÁ. Automatic Detection of Pneumonia in Chest X-Rays using Lobe Deep Residual Network. Preprints. Basilej, Švýcarsko: MDPI, 2021, 10 pp. Available from: https://dx.doi.org/10.20944/preprints202104.0221.v2.
Other formats:   BibTeX LaTeX RIS
Basic information
Original name Automatic Detection of Pneumonia in Chest X-Rays using Lobe Deep Residual Network
Name in Czech Automatická detekce pneumonie v RTG snímcích hrudníku pomocí hluboké reziduální sítě Lobe
Authors KVAK, Daniel and Karolína KVAKOVÁ.
Edition Preprints, Basilej, Švýcarsko, MDPI, 2021.
Other information
Original language English
Type of outcome Article in a journal (not reviewed)
Country of publisher Switzerland
Confidentiality degree is not subject to a state or trade secret
WWW URL
Doi http://dx.doi.org/10.20944/preprints202104.0221.v2
Keywords in English automatic detection, chest X-ray, convolutional neural network, COVID-19, deep learning, feature extraction, image classification, pneumonia
Tags International impact
Changed by Changed by: Mgr. Daniel Kvak, učo 445232. Changed: 7/12/2021 18:59.
Abstract
One of the critical tools for early detection and subsequent evaluation of the incidence of lung diseases is chest radiography. At a time when the speed and reliability of results, especially for COVID-19 positive patients, is important, the development of applications that would facilitate the work of untrained staff involved in the evaluation is also crucial. Our model takes the form of a simple and intuitive application, into which you only need to upload X-rays: tens or hundreds at once. In just a few seconds, the physician will determine the patient's diagnosis, including the percentage accuracy of the estimate. While the original idea was a mere binary classifier that could tell if a patient was suffering from pneumonia or not, in this paper we present a model that distinguishes between a bacterial disease, a viral infection, or a finding caused by COVID-19. The aim of this research is to demonstrate whether pneumonia can be detected or even spatially localized using a uniform, supervised classification.
PrintDisplayed: 23/7/2024 21:19