Abstract

Preventing exacerbation and seeking to determine the severity of the disease during the hospitalization of chronic obstructive pulmonary disease (COPD) patients is a crucial global initiative for chronic obstructive lung disease (GOLD); this option is available only for stable-phase patients. Recently, the assessment and prediction techniques that are used have been determined to be inadequate for acute exacerbation of chronic obstructive pulmonary disease patients. To magnify the monitoring and treatment of acute exacerbation COPD patients, we need to rely on the AI system, because traditional methods take a long time for the prognosis of the disease. Machine-learning techniques have shown the capacity to be effectively used in crucial healthcare applications. In this paper, we propose a voting ensemble classifier with 24 features to identify the severity of chronic obstructive pulmonary disease patients. In our study, we applied five machine-learning classifiers, namely random forests (RF), support vector machine (SVM), gradient boosting machine (GBM), XGboost (XGB), and K-nearest neighbor (KNN). These classifiers were trained with a set of 24 features. After that, we combined their results with a soft voting ensemble (SVE) method. Consequently, we found performance measures with an accuracy of 91.0849%, a precision of 90.7725%, a recall of 91.3607%, an F-measure of 91.0656%, and an AUC score of 96.8656%, respectively. Our result shows that the SVE classifier with the proposed twenty-four features outperformed regular machine-learning-based methods for chronic obstructive pulmonary disease (COPD) patients. The SVE classifier helps respiratory physicians to estimate the severity of COPD patients in the early stage, consequently guiding the cure strategy and helps the prognosis of COPD patients.

Highlights

  • Machine-learning techniques have revolutionized the entire technological domain

  • +82-55-320-3720 in Tables 2 and 3,heeki@inje.ac.kr; respectively.Tel.: It can be observed that the soft voting ensemble (SVE) method performed well in terms of classifying chronic obstructive pulmonary disease (COPD) patients

  • Patients is a crucial global initiawas observed that the SVE method demonstrated the best generalizability in terms of tive for chronic obstructive lung option is available only foroverall stable-phase paforecast the data according to disease several(GOLD); test sets.this

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Summary

Introduction

Machine-learning techniques have revolutionized the entire technological domain. The machine-learning technique (ML) is considered as a subset of artificial intelligence (AI). These types of intelligence are mostly acknowledged as having initiated with the invention of robotics [1]. With the fast growth of programming and electronic speeds, in the near future, computers may be able to display intelligent behaviors the way humans do [2]. In the field of computer science, it is explained as the machine’s ability to learn by itself for imitating intelligence behavior [3]. Due to the revolution in the computer, every field takes benefit from this innovation, and the medical sector is one of those areas which are making advancement with the help of latest technologies, such as AI

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