Back to Search Start Over

A novel multimodal fusion framework for early diagnosis and accurate classification of COVID-19 patients using X-ray images and speech signal processing techniques.

Authors :
Kumar, Santosh
Chaube, Mithilesh Kumar
Alsamhi, Saeed Hamood
Gupta, Sachin Kumar
Guizani, Mohsen
Gravina, Raffaele
Fortino, Giancarlo
Source :
Computer Methods & Programs in Biomedicine. Nov2022, Vol. 226, pN.PAG-N.PAG. 1p.
Publication Year :
2022

Abstract

• A novel multimodal framework is proposed for COVID-19 patients early diagnosis and accurate prediction using DL techniques. • Chest X-ray images and cough-based models with extraction of discriminatory features and early prediction of COVID-19 patients. • Use of U Net DL technique, CNN processing techniques to perform segmentation and to extract features from chest X-ray images. • Results compared with existing methods for accurate classification based on different settings and protocols. COVID-19 outbreak has become one of the most challenging problems for human being. It is a communicable disease caused by a new coronavirus strain, which infected over 375 million people already and caused almost 6 million deaths. This paper aims to develop and design a framework for early diagnosis and fast classification of COVID-19 symptoms using multimodal Deep Learning techniques. Methods: we collected chest X-ray and cough sample data from open source datasets, Cohen and datasets and local hospitals. The features are extracted from the chest X-ray images are extracted from chest X-ray datasets. We also used cough audio datasets from Coswara project and local hospitals. The publicly available Coughvid DetectNow and Virufy datasets are used to evaluate COVID-19 detection based on speech sounds, respiratory, and cough. The collected audio data comprises slow and fast breathing, shallow and deep coughing, spoken digits, and phonation of sustained vowels. Gender, geographical location, age, preexisting medical conditions, and current health status (COVID-19 and Non-COVID-19) are recorded. The proposed framework uses the selection algorithm of the pre-trained network to determine the best fusion model characterized by the pre-trained chest X-ray and cough models. Third, deep chest X-ray fusion by discriminant correlation analysis is used to fuse discriminatory features from the two models. The proposed framework achieved recognition accuracy, specificity, and sensitivity of 98.91%, 96.25%, and 97.69%, respectively. With the fusion method we obtained 94.99% accuracy. This paper examines the effectiveness of well-known ML architectures on a joint collection of chest-X-rays and cough samples for early classification of COVID-19. It shows that existing methods can effectively used for diagnosis and suggesting that the fusion learning paradigm could be a crucial asset in diagnosing future unknown illnesses. The proposed framework supports health informatics basis on early diagnosis, clinical decision support, and accurate prediction. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01692607
Volume :
226
Database :
Academic Search Index
Journal :
Computer Methods & Programs in Biomedicine
Publication Type :
Academic Journal
Accession number :
160314544
Full Text :
https://doi.org/10.1016/j.cmpb.2022.107109