DocumentCode
45999
Title
Evolvable Rough-Block-Based Neural Network and its Biomedical Application to Hypoglycemia Detection System
Author
Phyo Phyo San ; Sai Ho Ling ; Nuryani ; Hung Nguyen
Author_Institution
Fac. of Eng. & Inf. Technol., Centre for Health Technol., Univ. of Technol., Sydney, Sydney, NSW, Australia
Volume
44
Issue
8
fYear
2014
fDate
Aug. 2014
Firstpage
1338
Lastpage
1349
Abstract
This paper focuses on the hybridization technology using rough sets concepts and neural computing for decision and classification purposes. Based on the rough set properties, the lower region and boundary region are defined to partition the input signal to a consistent (predictable) part and an inconsistent (random) part. In this way, the neural network is designed to deal only with the boundary region, which mainly consists of an inconsistent part of applied input signal causing inaccurate modeling of the data set. Owing to different characteristics of neural network (NN) applications, the same structure of conventional NN might not give the optimal solution. Based on the knowledge of application in this paper, a block-based neural network (BBNN) is selected as a suitable classifier due to its ability to evolve internal structures and adaptability in dynamic environments. This architecture will systematically incorporate the characteristics of application to the structure of hybrid rough-block-based neural network (R-BBNN). A global training algorithm, hybrid particle swarm optimization with wavelet mutation is introduced for parameter optimization of proposed R-BBNN. The performance of the proposed R-BBNN algorithm was evaluated by an application to the field of medical diagnosis using real hypoglycemia episodes in patients with Type 1 diabetes mellitus. The performance of the proposed hybrid system has been compared with some of the existing neural networks. The comparison results indicated that the proposed method has improved classification performance and results in early convergence of the network.
Keywords
blood; diseases; medical signal processing; neural nets; particle swarm optimisation; patient diagnosis; rough set theory; signal classification; wavelet transforms; NN applications; R-BBNN algorithm; biomedical application; boundary region; classification performance; classification purposes; classifier; decision purposes; dynamic environments; global training algorithm; hybrid particle swarm optimization; hybrid rough-block-based neural network; hybrid system performance; hybridization technology; hypoglycemia detection system; hypoglycemia episodes; internal structures; lower region; medical diagnosis; neural computing; parameter optimization; rough set properties; signal partitioning; type 1 diabetes mellitus; wavelet mutation; Approximation methods; Artificial neural networks; Biological neural networks; Particle swarm optimization; Rough sets; Training; Hypoglycemic episodes; neural network; particle swarm optimization with wavelet mutation (HPSOWM); rough set;
fLanguage
English
Journal_Title
Cybernetics, IEEE Transactions on
Publisher
ieee
ISSN
2168-2267
Type
jour
DOI
10.1109/TCYB.2013.2283296
Filename
6626640
Link To Document