PERFORMANCE ANALYSIS OF FEATURE SELECTION METHOD USING ANOVA FOR AUTOMATIC WHEEZE DETECTION

Authors

  • Syamimi Mardiah Shaharum AI-Rehab Research Group, Universiti Malaysia Perlis (UniMAP), Kampus Pauh Putra, 02600 Perlis, Malaysia
  • Kenneth Sundaraj AI-Rehab Research Group, Universiti Malaysia Perlis (UniMAP), Kampus Pauh Putra, 02600 Perlis, Malaysia
  • Khaled Helmy AI-Rehab Research Group, Universiti Malaysia Perlis (UniMAP), Kampus Pauh Putra, 02600 Perlis, Malaysia

DOI:

https://doi.org/10.11113/jt.v77.6246

Keywords:

Neural network, one-way ANOVA, statistical features, wheeze detection

Abstract

In this work, we show that the classification performance of a high-dimensional features data can be improved by applying feature selection method. One-way ANOVA were utilized and to evaluate the performance measure of the feature selection method, Artificial Neural Network (ANN) was used. From the results obtained, it can be concluded that ANN performance using feature that undergo feature selection method produce a better classification accuracy compared to the ANN performance using feature that did not undergo feature selection method with 93.33% against 80.00% accuracy achieved. Therefore can be conclude that feature selection is a process that is crucial to be done in order to produce a good performance rate. 

References

Pasterkamp, H., Kraman S. S., Wodicka G. R. 1997. Respiratory Sounds: Advances Beyond The Stethoscope. American Journal Of Respiratory And Critical Care Medicine. 156(3): 974-987.

Le C. S., Belghith A., Collet C., Salzenstein F. 2009. Wheezing Sounds Detection Using Multivariate Generalized Gaussian Distributions. IEEE International Conference on Acoustics, Speech and Signal Processing . 541-544.

Riella, R. J., Nohama P., Maia J. M. 2009. Method For Automatic Detection Of Wheezing In Lung Sounds. Brazilian Journal of Medical and Biological Research. 42(7): 674-684.

Taplidou, S. A., Hadjileontiadis L. J. 2007. Wheeze Detection Based On Time-Frequency Analysis Of Breath Sounds. Computers In Biology And Medicine. 37(8): 1073-1083.

Jané, R., Salvatella D., Fiz J. A., Morera J. 1998. Spectral Analysis Of Respiratory Sounds To Assess Bronchodilator Effect In Asthmatic Patients. Proceedings of the 20th Annual International Conference of the IEEE in Engineering in Medicine and Biology Society. 3203-3206.

Alsmadi, S. S., Kahya Y. P. 2002. Online Classification Of Lung Sounds Using DSP. Proceedings of the Second Joint in Engineering in Medicine and Biology 2002. (2): 1771-1772.

Güler, E. Ç., Sankur B., Kahya Y. P., Raudys S. 2005. Two-Stage Classification Of Respiratory Sound Patterns. Computers in Biology and Medicine. 35(1): 67-83.

Hashemi, A., Arabalibiek H., Agin K. 2011. Classification Of Wheeze Sounds Using Wavelets And Neural Networks. International Conference on Biomedical Engineering and Technology. (127).

Sello, S., Strambi S. K., De M. G., Ambrosino N. 2008. Respiratory Sound Analysis In Healthy And Pathological Subjects: A Wavelet Approach. Biomedical Signal Processing and Control. 3(3): 181-191.

Van Der Heijden M., Lucas P. J., Lijnse B., Heijdra Y. F., Schermer T. R. 2013. An Autonomous Mobile System For The Management Of COPD. Journal Of Biomedical Informatics.

Wisniewski M., Zielinski T. 2011. Tonal Index In Digital Recognition Of Lung Auscultation. Conference Proceedings in Signal Processing Algorithms, Architectures, Arrangements, and Applications 2011. 1-5.

Dokur Z., Ölmez T. 2003. Classification Of Respiratory Sounds By Using An Artificial Neural Network. International Journal Of Pattern Recognition And Artificial Intelligence. 17(04): 567-580.

Nadiatun Z. S., Mashor P. M. D., Nor Hazlyna H., Fatimatul Anis B., Rosline H. 2012. Classification Of Blasts In Acute Leukemia Blood Samples Using K-Nearest Neighbour. IEEE 8th International Colloquium on Signal Processing and its Application. 461-465.

Grünauer, A., & Vincze, M. 2015. Using Dimension Reduction to Improve the Classification of High-dimensional Data. arXiv preprint arXiv:1505.06907.

Andrew Y. Ng. 2004. Feature Selection, L1 Vs. L2 Regularization, And Rotational Invariance. In Proceedings of the Twenty-first International Conference on Machine Learning, ICML ’04, pages 78–, New York, NY, USA. ACM.

Dunja Mladenić. 2006. Feature selection for dimensionality reduction. In Subspace, Latent Structure and Feature Selection. 3940 of Lecture Notes in Computer Science. 84–102. Springer Berlin Heidelberg.

Guyon, I. and Elisseeff, A. 2003. An Introduction To Variable And Feature Selection. Journal of Machine Learning Research: Special Issue on Variable and Feature Selection. 3: 1157–1182.

Esmael B., Arnaout A., Fruhwirth R. K., Thonhauser G. 2011. Automated System For Drilling Operations Classification Using Statistical Features. 11th International Conference on Hybrid Intelligent Systems. 196-199.

Mohanraj M., Jayaraj S., Muraleedharan C. 2012. Applications Of Artificial Neural Networks For Refrigeration, Air-Conditioning And Heat Pump Systems—A Review. Renewable and Sustainable Energy Reviews. 16(2): 1340-1358.

Ali A. 2012. A Concise Artificial Neural Network in Data Mining. International Journal of Research in Engineering & Applied Sciences. 2(2): 418-428.

Van den Broek, E. L., Lisý, V., Janssen, J. H., Westerink, J. H., Schut, M. H., & Tuinenbreijer, K. 2010. Affective Man-Machine Interface: Unveiling Human Emotions Through Biosignals. Biomedical Engineering Systems and Technologies. 21-47. Springer Berlin Heidelberg.

Downloads

Published

2015-11-12

Issue

Section

Science and Engineering

How to Cite

PERFORMANCE ANALYSIS OF FEATURE SELECTION METHOD USING ANOVA FOR AUTOMATIC WHEEZE DETECTION. (2015). Jurnal Teknologi, 77(7). https://doi.org/10.11113/jt.v77.6246