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Issue title: Soft Computing Applications
Guest editors: Valentina Emilia Balas
Article type: Research Article
Authors: Abineza, Claudiaa; * | Balas, Valentina E.b | Nsengiyumva, Philiberta
Affiliations: [a] African Center of Excellence in Internet of Things, University of Rwanda, Kigali, Rwanda | [b] Department of Automatics and Applied Software, “Aurel Vlaicu” University, Arad, Romania
Correspondence: [*] Corresponding author. Claudia Abineza, African Center of Excellence in Internet of Things, University of Rwanda, Kigali, Rwanda. E-mail: abineza1@gmail.com.
Abstract: Chronic Obstructive Pulmonary Disease (COPD) is a progressive, obstructive lung disease that restricts airflow from the lungs. COPD patients are at risk of sudden and acute worsening of symptoms called exacerbations. Early identification and classification of COPD exacerbation can reduce COPD risks and improve patient’s healthcare and management. Pulse oximetry is a non-invasive technique used to assess patients with acutely worsening symptoms. As part of manual diagnosis based on pulse oximetry, clinicians examine three warning signs to classify COPD patients. This may lack high sensitivity and specificity which requires a blood test. However, laboratory tests require time, further delayed treatment and additional costs. This research proposes a prediction method for COPD patients’ classification based on pulse oximetry three manual warning signs and the resulting derived few key features that can be obtained in a short time. The model was developed on a robust physician labeled dataset with clinically diverse patient cases. Five classification algorithms were applied on the mentioned dataset and the results showed that the best algorithm is XGBoost with the accuracy of 91.04%, precision of 99.86%, recall of 82.19%, F1 measure value of 90.05% with an AUC value of 95.8%. Age, current and baseline heart rate, current and baseline pulse ox. (SPO2) were found the top most important predictors. These findings suggest the strength of XGBoost model together with the availability and the simplicity of input variables in classifying COPD daily living using a (wearable) pulse oximeter.
Keywords: COPD, pulse oximetry, machine learning, easy, classification
DOI: 10.3233/JIFS-219270
Journal: Journal of Intelligent & Fuzzy Systems, vol. 43, no. 2, pp. 1683-1695, 2022
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