Apneic Events Detection Using Different Features of Airflow Signals

Abstract

Apneic-event based sleep disorders are very common and affect greatly the daily life of people. However, diagnosis of these disorders by detecting apneic events are very difficult. Studies show that analyzes of airflow signals are effective in diagnosis of apneic-event based sleep disorders. According to these studies, diagnosis can be performed by detecting the apneic episodes of the airflow signals. This work deals with detection of apneic episodes on airflow signals belonging to Apnea-ECG (Electrocardiogram) and MIT (Massachusetts Institute of Technology) BIH (Bastons’s Beth Isreal Hospital) databases. In order to accomplish this task, three representative feature sets namely classic feature set, amplitude feature set and descriptive model feature set were created. The performance of these feature sets were evaluated individually and in combination with the aid of the random forest classifier to detect apneic episodes. Moreover, effective features were selected by OneR Attribute Eval Feature Selection Algorithm to obtain higher performance. Selected 28 features for Apnea-ECG database and 31 features for MITBIH database from 54 features were applied to classifier to compare achievements. As a result, the highest classification accuracies were obtained with the usage of effective features as 96.21% for Apnea-ECG database and 92.23% for MIT-BIH database. Kappa values are also quite good (91.80 and 81.96%) and support the classification accuracies for both databases, too. The results of the study are quite promising for determining apneic events on a minute-by-minute basis.

Authors and Affiliations

Fatma Zehra Gogus, Gulay Tezel

Keywords

Related Articles

Assessment of Air Pollution and its Effects on Health of Workers of Steel Re-Rolling Mills in Hyderabad

The SRRMs (Steel Re-Rolling Mills) are being releasing air pollutants in the environment. In order to evaluate their effect on the health of the workers, health and safety issues were analyzed by first measuring the conc...

Image Quality Assessment using Image Details in Frequency Domain

This research proposes a RR (Reduced Reference) DIQAM (Detailed Image Quality Assessment Meter) for DCT (Discrete Cosine Transform) based compressed images. DCT technique divides image in sub blocks to achieve image comp...

Performance Enhancement of Low Voltage Distribution Network in Developing Countries using Hybrid Rehabilitation Technique

Majority of the developing countries are facing problem of low supply voltage coupled with shortage of electrical energy. There is a growing concern for ways and means to preserve the existing resources and optimize the...

Problem of Traffic Congestion and Correlation Analysis of Driving behaviors in Qasimabad, Hyderabad

In this study, we explore the problem of traffic congestion, its effects and related issues for Qasimabad, Hyderabad, Pakistan. The study is based on survey conducted at different sites of Qasimabad. The data was collect...

Change Detection Algorithms for Surveillance in Visual IoT: A Comparative Study

The VIoT (Visual Internet of Things) connects virtual information world with real world objects using sensors and pervasive computing. For video surveillance in VIoT, ChD (Change Detection) is a critical component. ChD a...

Download PDF file
  • EP ID EP430906
  • DOI 10.22581/muet1982.1901.01
  • Views 91
  • Downloads 0

How To Cite

Fatma Zehra Gogus, Gulay Tezel (2019). Apneic Events Detection Using Different Features of Airflow Signals. Mehran University Research Journal of Engineering and Technology, 38(1), 1-16. https://europub.co.uk/articles/-A-430906