Literature DB >> 23354669

Automatic identification of wet and dry cough in pediatric patients with respiratory diseases.

Vinayak Swarnkar1, Udantha R Abeyratne, Anne B Chang, Yusuf A Amrulloh, Amalia Setyati, Rina Triasih.   

Abstract

Cough is the most common symptom of several respiratory diseases. It is a defense mechanism of the body to clear the respiratory tract from foreign materials inhaled accidentally or produced internally by infections. The identification of wet and dry cough is an important clinical finding, aiding in the differential diagnosis especially in children. Wet coughs are more likely to be associated with lower respiratory track bacterial infections. At present during a typical consultation session, the wet/dry decision is based on the subjective judgment of a physician. It is not available for the non-trained person, long term monitoring or in the assessment of treatment efficacy. In this paper we address these issues and develop an automated technology to classify cough into 'wet' and 'dry' categories. We propose novel features and a Logistic regression model (LRM) for the classification of coughs into wet/dry classes. The performance of the method was evaluated on a clinical database of pediatric coughs (C = 536) recorded using a bed-side non-contact microphone from N = 78 patients. Results of the automatic classification were compared against two expert human scorers. The sensitivity and specificity of the LRM in picking wet coughs were between 87 and 88% with 95% confidence interval on training/validation dataset (310 cough events from 60 patients) and 84 and 76% respectively on prospective dataset (117 cough events from 18 patients). The kappa agreement with two expert human scorers on prospective dataset was 0.51. These results indicate the potential of the method as a useful clinical tool for cough monitoring, especially at home settings.

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Year:  2013        PMID: 23354669     DOI: 10.1007/s10439-013-0741-6

Source DB:  PubMed          Journal:  Ann Biomed Eng        ISSN: 0090-6964            Impact factor:   3.934


  10 in total

1.  Exhaustive mathematical analysis of simple clinical measurements for childhood pneumonia diagnosis.

Authors:  Keegan Kosasih; Udantha Abeyratne
Journal:  World J Pediatr       Date:  2017-03-22       Impact factor: 2.764

2.  Graph-based feature extraction and classification of wet and dry cough signals: a machine learning approach.

Authors:  A Renjini; M S Swapna; Vimal Raj; S Sankararaman
Journal:  J Complex Netw       Date:  2021-11-12

3.  A Cough-Based Algorithm for Automatic Diagnosis of Pertussis.

Authors:  Renard Xaviero Adhi Pramono; Syed Anas Imtiaz; Esther Rodriguez-Villegas
Journal:  PLoS One       Date:  2016-09-01       Impact factor: 3.240

Review 4.  The present and future of cough counting tools.

Authors:  Jocelin Isabel Hall; Manuel Lozano; Luis Estrada-Petrocelli; Surinder Birring; Richard Turner
Journal:  J Thorac Dis       Date:  2020-09       Impact factor: 3.005

5.  Robust Detection of COVID-19 in Cough Sounds: Using Recurrence Dynamics and Variable Markov Model.

Authors:  Pauline Mouawad; Tammuz Dubnov; Shlomo Dubnov
Journal:  SN Comput Sci       Date:  2021-01-12

6.  Cough Sound Detection and Diagnosis Using Artificial Intelligence Techniques: Challenges and Opportunities.

Authors:  Kawther S Alqudaihi; Nida Aslam; Irfan Ullah Khan; Abdullah M Almuhaideb; Shikah J Alsunaidi; Nehad M Abdel Rahman Ibrahim; Fahd A Alhaidari; Fatema S Shaikh; Yasmine M Alsenbel; Dima M Alalharith; Hajar M Alharthi; Wejdan M Alghamdi; Mohammed S Alshahrani
Journal:  IEEE Access       Date:  2021-07-15       Impact factor: 3.367

Review 7.  Past and Trends in Cough Sound Acquisition, Automatic Detection and Automatic Classification: A Comparative Review.

Authors:  Antoine Serrurier; Christiane Neuschaefer-Rube; Rainer Röhrig
Journal:  Sensors (Basel)       Date:  2022-04-10       Impact factor: 3.847

8.  A comparative analysis of deep neural network architectures for the dynamic diagnosis of COVID-19 based on acoustic cough features.

Authors:  Gurram Sunitha; Rajesh Arunachalam; Mohammed Abd-Elnaby; Mahmoud M A Eid; Ahmed Nabih Zaki Rashed
Journal:  Int J Imaging Syst Technol       Date:  2022-05-21       Impact factor: 2.177

9.  Continuous Sound Collection Using Smartphones and Machine Learning to Measure Cough.

Authors:  Lucia Kvapilova; Vladimir Boza; Peter Dubec; Martin Majernik; Jan Bogar; Jamileh Jamison; Jennifer C Goldsack; Duncan J Kimmel; Daniel R Karlin
Journal:  Digit Biomark       Date:  2019-12-10

10.  A COVID-19 Multipurpose Platform.

Authors:  Nikos Petrellis
Journal:  Digit Biomark       Date:  2020-10-06
  10 in total

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