Cough/X-ray/CT (CXC) website for testing COVID-19 and auto-informing results

Despite the development of vaccines and the emergence of various treatments for COVID-19, the number of confirmed cases of the coronavirus disease (COVID-19) is increasing worldwide, and it is unlikely that the disease will ever disappear completely. Having a non-contact remote testing system can im...

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Veröffentlicht in:Review of scientific instruments 2022-01, Vol.93 (1), p.013705-013705
Hauptverfasser: Mahmood, Ahlam Fadhil, Mahmood, Saja Waleed
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container_title Review of scientific instruments
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creator Mahmood, Ahlam Fadhil
Mahmood, Saja Waleed
description Despite the development of vaccines and the emergence of various treatments for COVID-19, the number of confirmed cases of the coronavirus disease (COVID-19) is increasing worldwide, and it is unlikely that the disease will ever disappear completely. Having a non-contact remote testing system can improve the workload of health-care centers and contribute to reducing the infection by recommending early self-isolation for those who suffer from a cough. In the proposed system, patients can upload an audio cough recording via mobile phones through the suggested Cough/X-ray/CT website and then receive the diagnosis within seconds on the same phone. Moreover, in the case of infection, the health center and the community are informed in addition to automatically calling the mobile phones of the injured cases. The higher proposed accuracy with deep cough training was achieved on the ResNet152v2 model after converting the cough signal into an image using the Mel-spectrogram, where the accuracy was 99.95%, the sensitivity was 100%, and the specificity was 99%.
doi_str_mv 10.1063/5.0076314
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subjects Cell phones
Cellular telephones
Computed tomography
Coronaviruses
Cough
COVID-19
Health care facilities
Humans
SARS-CoV-2
Scientific apparatus & instruments
Tomography, X-Ray Computed
Viral diseases
Websites
X-Rays
title Cough/X-ray/CT (CXC) website for testing COVID-19 and auto-informing results
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