2021
DOI: 10.3934/publichealth.2021019
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Automatic COVID-19 disease diagnosis using 1D convolutional neural network and augmentation with human respiratory sound based on parameters: cough, breath, and voice

Abstract: The issue in respiratory sound classification has attained good attention from the clinical scientists and medical researcher's group in the last year to diagnosing COVID-19 disease. To date, various models of Artificial Intelligence (AI) entered into the real-world to detect the COVID-19 disease from human-generated sounds such as voice/speech, cough, and breath. The Convolutional Neural Network (CNN) model is implemented for solving a lot of real-world problems on machines based on Artificial Intelligence (A… Show more

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Cited by 53 publications
(37 citation statements)
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References 47 publications
(56 reference statements)
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“… Speech, Cough, and Breath 79 DTL MC [ 4 ] Android App developed for COVID-19 sound samples. Speech and Cough 88 SVM with PCA [ 24 ] Crowdsourced COVID-19 Sounds Dataset Speech, Cough, and Breath Task-1: 80 Task-2: 82 Task-3: 80 VGG Net with Augmentation [ 24 ] Crowdsourced COVID-19 Sounds Dataset Voice, Cough, and Breath Task-2: 87 Task-3: 88 1DCNN with DDAE [ 34 ] Crowdsourced COVID-19 Sounds Dataset Voice, Cough, and Breath Task - 1: 90 Task-2: 88 Task-3: 88 Task-4: 84 Task-5: 86 Light-Weight CNN with MMFCC (Proposed) Crowdsourced COVID-19 Sounds Dataset Voice, Cough, and Breath Class-1: 89.78 Class-2: 92.32 Class-3: 89.69 Class-4: 88.74 …”
Section: Resultsmentioning
confidence: 99%
“… Speech, Cough, and Breath 79 DTL MC [ 4 ] Android App developed for COVID-19 sound samples. Speech and Cough 88 SVM with PCA [ 24 ] Crowdsourced COVID-19 Sounds Dataset Speech, Cough, and Breath Task-1: 80 Task-2: 82 Task-3: 80 VGG Net with Augmentation [ 24 ] Crowdsourced COVID-19 Sounds Dataset Voice, Cough, and Breath Task-2: 87 Task-3: 88 1DCNN with DDAE [ 34 ] Crowdsourced COVID-19 Sounds Dataset Voice, Cough, and Breath Task - 1: 90 Task-2: 88 Task-3: 88 Task-4: 84 Task-5: 86 Light-Weight CNN with MMFCC (Proposed) Crowdsourced COVID-19 Sounds Dataset Voice, Cough, and Breath Class-1: 89.78 Class-2: 92.32 Class-3: 89.69 Class-4: 88.74 …”
Section: Resultsmentioning
confidence: 99%
“…These sounds were collected using website applications to enable sound-based diagnosis for COVID-19. In [ 81 ], Dunne et al utilized three different datasets for diagnosis, including (1) Google’s Audioset ( ) (Last access date: 17 February 2021) aggregated from YouTube videos (non-COVID-19); (2) the Corswara dataset (COVID-19); and (3) data collected at Stanford University ( ) (Last access date: 17 February 2021). In [ 82 ], the authors developed a mobile application that analyzed the patient’s cough sound and provided COVID-19 identification within 2 min.…”
Section: The Study Taxonomymentioning
confidence: 99%
“…Pinter et al [106] Multi-layered perceptron Predictions of mortality rate and infected cases Aminu et al [107] Deep neural networks Detection of people with COVID-19 Magar et al [108] Ensemble techniques Virus-antibody sequence analysis and patients' Identification Zeng et al [109] Extreme Gradient Boosting (XGBoost) Forecasting of patient survival probability Ashraf et al [110] Machine & deep learning models Predict the severity of disease or chances of death Shah et al [111] Convolutional neural network (CNN) COVID-19 detection from X-ray images Prakash et al [112] Autoregressive Integrated Moving Average Impact analysis of various policies Rathod et al [113] AI Prediction models Effective crisis preparedness and management Ullah et al [114] Logistic Regression and Support Vector Machine Classification of patients with/without COVID-19 Rathod et al [115] SVM, RProp, and Decision tree Detection of abnormal data for effective analysis Hu et al [116] Spectral Clustering (SC) algorithm Feasible analysis model for the treatment & diagnosis Rashed et al [117] Long short-term memory (LSTM) network Provides public awareness about the risks of COVID-19 Singh et al [118] ResNet152V2 and VGG16 CNN Reduce the high false-negative results of the RT-PCR Saverino et al [119] Digital and artificial intelligence platform (DAIP) Changes implementation in rehabilitation services Peddinti et al [120] Convolutional Neural Network (CNN) Detection of COVID-19 cases in public places Malla et al [121] Ensemble deep learning model Real-time sentiment analysis of COVID-19 data Lella et al [122] Convolutional Neural Network (CNN) model Respiratory sound classification for patient identification Haleem et al [123] Artificial neuronal networks (ANN) Predictions of survival of COVID-19 patients Hashimi et al [124] Deep learning models Tracking and identifying potential virus spreaders Amaral et al [125] Artificial neuronal networks (ANN) forecasting and monitoring the progress of Covid-19 Zgheib et al [126] Collection of ensemble learning methods Detecting COVID-19 virus based on patient's demographics Ferrari et al [127] Bayesian framework Predictions about the behavior of the COVID-19 epidemic Almalki et al [128] COVID Inception-ResNet model (CoVIRNet) Automatic diagnosis of the COVID-19 patients Umair et al …”
Section: Ai Technique Used Purpose In the Context Of Covid-19 Pandemicmentioning
confidence: 99%