Universiti Teknologi Malaysia Institutional Repository

Automatic classification of regular and irregular capnogram segments using time- and frequency-domain features: a machine learning-based approach

El-Badawy, I. M. and Singh, O. P. and Omar, Z. (2021) Automatic classification of regular and irregular capnogram segments using time- and frequency-domain features: a machine learning-based approach. Technology and Health Care, 29 (1). pp. 59-72. ISSN 0928-7329

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Official URL: http://www.dx.doi.org/10.3233/THC-202198

Abstract

This paper presents a machine learning-based approach for the automatic classification of regular and irregular capnogram segments. METHODS: Herein, we proposed four time- and two frequency-domain features experimented with the support vector machine classifier through ten-fold cross-validation. MATLAB simulation was conducted on 100 regular and 100 irregular 15 s capnogram segments. Analysis of variance was performed to investigate the significance of the proposed features. Pearson's correlation was utilized to select the relatively most substantial ones, namely variance and the area under normalized magnitude spectrum. Classification performance, using these features, was evaluated against two feature sets in which either time- or frequency-domain features only were employed. RESULTS: Results showed a classification accuracy of 86.5%, which outperformed the other cases by an average of 5.5%. The achieved specificity, sensitivity, and precision were 84%, 89% and 86.51%, respectively. The average execution time for feature extraction and classification per segment is only 36 ms. CONCLUSION: The proposed approach can be integrated with capnography devices for real-time capnogram-based respiratory assessment. However, further research is recommended to enhance the classification performance.

Item Type:Article
Uncontrolled Keywords:artefacts, capnogram, capnography
Subjects:T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions:Electrical Engineering
ID Code:94179
Deposited By: Narimah Nawil
Deposited On:28 Feb 2022 13:17
Last Modified:28 Feb 2022 13:17

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