| Literature DB >> 35003751 |
A Renjini1, M S Swapna1, Vimal Raj1, S Sankararaman1.
Abstract
This article proposes a unique approach to bring out the potential of graph-based features to reveal the hidden signatures of wet (WE) and dry (DE) cough signals, which are the suggestive symptoms of various respiratory ailments like COVID 19. The spectral and complex network analyses of 115 cough signals are employed for perceiving the airflow dynamics through the infected respiratory tract while coughing. The different phases of WE and DE are observed from their time-domain signals, indicating the operation of the glottis. The wavelet analysis of WE shows a frequency spread due to the turbulence in the respiratory tract. The complex network features namely degree centrality, eigenvector centrality, transitivity, graph density and graph entropy not only distinguish WE and DE but also reveal the associated airflow dynamics. A better distinguishability between WE and DE is obtained through the supervised machine learning techniques (MLTs)-quadratic support vector machine and neural net pattern recognition (NN), when compared to the unsupervised MLT, principal component analysis. The 93.90% classification accuracy with a precision of 97.00% suggests NN as a better classifier using complex network features. The study opens up the possibility of complex network analysis in remote auscultation. © The authors 2021. Published by Oxford University Press. All rights reserved.Entities:
Keywords: complex network; dry cough; neural net; quadratic SVM; wet cough
Year: 2021 PMID: 35003751 PMCID: PMC8689935 DOI: 10.1093/comnet/cnab039
Source DB: PubMed Journal: J Complex Netw ISSN: 2051-1310