Evaluation of effective features in the diagnosis of Covid‐19 infection from routine blood tests with multilayer perceptron neural network: A cross‐sectional study

Author:

Mohammadi Fatemeh1,Dehbozorgi Leila2,Akbari‐Hasanjani Hamid Reza3ORCID,Joz Abbasalian Zahra1,Akbari‐Hasanjani Reza2,Sabbaghi‐Nadooshan Reza2,Moradi Tabriz Hedieh1

Affiliation:

1. Department of Pathology, Sina Clinical‐Research Center Tehran University of Medical Sciences Tehran Iran

2. Department of Electrical Engineering, Central Tehran Branch Islamic Azad University Tehran Iran

3. Department of Analytical Chemistry, School of Chemistry Damghan University Damghan Iran

Abstract

AbstractBackground and AimCoronavirus is an infectious disease that is now known as an epidemic, early and accurate diagnosis helps the patient receive more care. The aim of this study is to investigate Covid‐19 using blood tests and multilayer perceptron neural network and affective factors in improving and preventing Covid‐19.MethodsThis cross‐sectional study was performed on 200 patients referred to Sina Hospital, Tehran, Iran, who were confirmed cases of Covid‐19 by computerized tomography‐scan analysis between 2 March 2020 to 5 April 2020. After verification of lung involvement, blood sampling was done to separate the sera for C‐reactive protein (CRP), magnesium (Mg), lymphocyte percentage, and vitamin D analysis in healthy and unhealthy people. Blood samples from healthy and sick people were applied to the multilayer perceptron network for 70% of the data for training and 30% for testing.ResultBy examining the features, it was found that in patients with Covid‐19, there was a significant relationship between increased CRP and decreased lymphocyte levels, and increased Mg (p < 0.01). In these patients, the amount of CRP and Mg in women and the number of lymphocytes and vitamin D in men were significantly higher (p < 0.01).ConclusionThe important advantage of using a multilayer perceptron neural network is to speed up the diagnosis and treatment.

Publisher

Wiley

Subject

General Medicine

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