TY - ECHAP KW - clustering KW - Data mining KW - Epidemiology KW - Kohonen networks KW - leprosy AU - Tan Y AU - Shi Y AU - Tang Q AU - Dutra da Silva YE AU - Salgado CG AU - Gomes Conde VM AU - Conde G AB -
Leprosy remains a public health problem in the world and also in Brazil. The people’s living conditions, especially of the most socially vulnerable, dramatically influence the risk of contagion of the disease. In this context, this study aimed to analyze the epidemiology of leprosy through the list of patients and the environment of these using data mining techniques with clustering methods. In the process of creating of clusters, best results were obtained with Self-Organizing Maps of Kohonen with information organized into 6 clusters. A set of data with SINAN patients and new cases of leprosy found in an active search carried out in the municipality of Santarém in the year 2014. The results were analyzed, draws attention the values found for the Anti PGL-1 in cluster 4 first set of data analysis which indicates very high values of positive, indicating a high load of the leprosy bacillus, and therefore a high risk for communicating. The study demonstrated that the identification of leprosy patient’s relationship profile with your family and your household appear as promising tools like leprosy control strategy.
BT - Data Mining and Big Data CY - Cham DO - 10.1007/978-3-319-93803-5_27 LA - eng N2 -Leprosy remains a public health problem in the world and also in Brazil. The people’s living conditions, especially of the most socially vulnerable, dramatically influence the risk of contagion of the disease. In this context, this study aimed to analyze the epidemiology of leprosy through the list of patients and the environment of these using data mining techniques with clustering methods. In the process of creating of clusters, best results were obtained with Self-Organizing Maps of Kohonen with information organized into 6 clusters. A set of data with SINAN patients and new cases of leprosy found in an active search carried out in the municipality of Santarém in the year 2014. The results were analyzed, draws attention the values found for the Anti PGL-1 in cluster 4 first set of data analysis which indicates very high values of positive, indicating a high load of the leprosy bacillus, and therefore a high risk for communicating. The study demonstrated that the identification of leprosy patient’s relationship profile with your family and your household appear as promising tools like leprosy control strategy.
PB - Springer International Publishing PP - Cham PY - 2018 SN - 978-3-319-93802-8/0302-9743 SP - 284 EP - 293 T2 - Data Mining and Big Data TI - Data mining using clustering techniques as leprosy epidemiology analyzing model. ER -