Clinical decision support model for prevailing diseases to improve human life survivability

Constantly increasing amount of heterogeneous prevailing disease patient data can redefines medical research and clinical practice for human life survival. Computational intelligent techniques help to translate them into knowledge base that is applicable in health-care. Prediction of such diseases at early stages is biggest challenge for doctors in the country. Previous studies on prevailing diseases focus on individual diseases rather than many with similar symptom. Few of these models have constraints in finding good parameters with high accuracy. The proposed clinical decision support system in this paper models the patient's diseases state statically from his heterogeneous data to reveal the correct diagnosis by formalizing the hypothesis based on test results and symptoms of the patient before recommending treatments for the prevailing diseases. Its goal is to assist clinician in diagnosing the patient by analyzing his available data and relevant information. The proposed model designed using data mining techniques such as neural network, decision tree, statistical method, Naive Bayes, classifier and clustering pattern analysis for improving human life survivability. Several clinical data-set are used to evaluate and demonstrate the proposed model for early prediction of prevailing disease.

[1]  Shuzlina Abdul Rahman,et al.  An exploratory study in classification methods for patients' dataset , 2009, 2009 2nd Conference on Data Mining and Optimization.

[2]  T. Ambrose,et al.  Novel Approach of Geographic Information Systems on Recent Out-Breaks of Chikungunya in Tamil Nadu, India , 2011 .

[3]  Russell C. Eberhart,et al.  Computational intelligence - concepts to implementations , 2007 .

[4]  Ian H. Witten,et al.  The WEKA data mining software: an update , 2009, SKDD.

[5]  Tajul Rosli Bin Razak,et al.  Dengue notification system using fuzzy logic , 2013, 2013 International Conference on Computer, Control, Informatics and Its Applications (IC3INA).

[6]  Nisar Hundewale,et al.  Comparitive analysis of machine learning techniques for classification of arbovirus , 2012, Proceedings of 2012 IEEE-EMBS International Conference on Biomedical and Health Informatics.

[7]  Md Nasir Sulaiman,et al.  A hybrid model using genetic algorithm and neural network for predicting dengue outbreak , 2012, 2012 4th Conference on Data Mining and Optimization (DMO).

[8]  อนิรุธ สืบสิงห์,et al.  Data Mining Practical Machine Learning Tools and Techniques , 2014 .

[9]  S. P. Akpabio World Health Organisation , 1983, British Dental Journal.

[10]  Petra Perner,et al.  Data Mining - Concepts and Techniques , 2002, Künstliche Intell..