Granular computing approach for the design of medical data classification systems

Granular computing is a computation theory that imitates human thinking and reasoning by dealing with information at different levels of abstraction/precision. The adoption of granular computing approach in the design of data classification systems improves their performance in dealing with data uncertainty and facilitates handling large volumes of data. In this paper, a new approach for the design of medical data classification systems is proposed. The proposed approach makes use of data granulation in training the classifier. Training data is granulated at different levels and data from each level is used for constructing the classification system. To evaluate performance of the proposed approach, a classification system based on neural network is implemented. Four medical datasets are used to compare performance of the proposed approach to other classifiers: neural network classifier, ANFIS classifier and SVM classifier. Results show that the proposed approach improves classification performance of neural network classifier and produces better accuracy and area under curve than other classifiers for most of the datasets used.

[1]  Robert P. W. Duin,et al.  Using two-class classifiers for multiclass classification , 2002, Object recognition supported by user interaction for service robots.

[2]  Lotfi A. Zadeh,et al.  Fuzzy sets and information granularity , 1996 .

[3]  Maysam F. Abbod,et al.  Automatic Generation of Fuzzy Classification Rules from Data , 2022, International Journal of Fuzzy Systems and Advanced Applications.

[4]  B. Chandra,et al.  Classification of gene expression data using Spiking Wavelet Radial Basis Neural Network , 2014, Expert Syst. Appl..

[5]  Ahmad Taher Azar,et al.  Performance analysis of support vector machines classifiers in breast cancer mammography recognition , 2013, Neural Computing and Applications.

[6]  Pei-Chann Chang,et al.  A hybrid model combining case-based reasoning and fuzzy decision tree for medical data classification , 2011, Appl. Soft Comput..

[7]  Hui Li,et al.  Research and Development of Granular Neural Networks , 2013 .

[8]  Elena N. Zaitseva,et al.  Fuzzy Decision Trees in Medical Decision Making Support Systems , 2012, 2012 Federated Conference on Computer Science and Information Systems (FedCSIS).

[9]  Ludmil Mikhailov,et al.  An interpretable fuzzy rule-based classification methodology for medical diagnosis , 2009, Artif. Intell. Medicine.

[10]  Hau-San Wong,et al.  A neural network-based biomarker association information extraction approach for cancer classification , 2009, J. Biomed. Informatics.

[11]  Lotfi A. Zadeh,et al.  Toward a theory of fuzzy information granulation and its centrality in human reasoning and fuzzy logic , 1997, Fuzzy Sets Syst..

[12]  Hongjie Jia,et al.  Granular neural networks , 2014, Artificial Intelligence Review.

[13]  George Panoutsos,et al.  A neural-fuzzy modelling framework based on granular computing: Concepts and applications , 2010, Fuzzy Sets Syst..

[14]  Mei-Ling Huang,et al.  Usage of Case-Based Reasoning, Neural Network and Adaptive Neuro-Fuzzy Inference System Classification Techniques in Breast Cancer Dataset Classification Diagnosis , 2012, Journal of Medical Systems.

[15]  P. Harper,et al.  A review and comparison of classification algorithms for medical decision making. , 2005, Health policy.

[16]  G. M. Nasira,et al.  A New Approach for Diagnosis of Diabetes and Prediction of Cancer Using ANFIS , 2014, 2014 World Congress on Computing and Communication Technologies.

[17]  Humberto Bustince,et al.  Medical diagnosis of cardiovascular diseases using an interval-valued fuzzy rule-based classification system , 2014, Appl. Soft Comput..

[18]  Kemal Polat,et al.  A cascade learning system for classification of diabetes disease: Generalized Discriminant Analysis and Least Square Support Vector Machine , 2008, Expert Syst. Appl..