AU - Ameri, H AU - Alizadeh, S AU - Barzegari, A TI - Knowledge Extraction of Diabetics' Data by Decision Tree Method PT - JOURNAL ARTICLE TA - jha JN - jha VO - 16 VI - 53 IP - 53 4099 - http://jha.iums.ac.ir/article-1-1351-en.html 4100 - http://jha.iums.ac.ir/article-1-1351-en.pdf SO - jha 53 AB  - Introduction: In the last 10 years The incidence of diabetes has doubled worldwide with annual increasing rate of about 6%. More than 2 million people in Iran are now affected by this disease. The present research deals with the relation between the observed complications of type 2 diabetic patients and some related features like Blood Glucose Level, Blood Pressure, Age, and Family History. The main purpose was to predict the patients’ complications based on the observed signs. Methods: The research data were gathered from 856 patient records related to the 2009’s cases in the Diabetes Center of Golestan province. A new model based on the standard methodology CRISP was developed. In the modeling section, two well-known data mining techniques called C5.0 decision tree and Neural Network were used. Celementine 12.0 software was implemented For data analysis. Results: The results of data mining showed that the variables of high blood pressure, age, and family history had the most impact on the observed complications. Based on the created decision tree, some rules have been extracted which can be used as a pattern to predict the probability of occurring these complications in the patients. The accuracy of the C5.0 model on the data was shown to be 89.74% and on the Artificial Neural Network was 51.28%. Conclusion: As the highest accuracy was shown to be achieved using C5.0 algorithm, according to the created rules, it can be predicted which complication(s) any diabetic patient with new specified features may probably suffer from. CP - IRAN IN - 4th floor-industrial faculty- NO.24- Agahi alley-Dabestan street-Resalat street-Seid khandan street-Tehran LG - eng PB - jha PG - 58 PT - Research YR - 2013