A Data Mining Approach to the Diagnosis of Tuberculosis by Cascading Clustering and Classification

08/04/2011
by   Asha. T, et al.
0

In this paper, a methodology for the automated detection and classification of Tuberculosis(TB) is presented. Tuberculosis is a disease caused by mycobacterium which spreads through the air and attacks low immune bodies easily. Our methodology is based on clustering and classification that classifies TB into two categories, Pulmonary Tuberculosis(PTB) and retroviral PTB(RPTB) that is those with Human Immunodeficiency Virus (HIV) infection. Initially K-means clustering is used to group the TB data into two clusters and assigns classes to clusters. Subsequently multiple different classification algorithms are trained on the result set to build the final classifier model based on K-fold cross validation method. This methodology is evaluated using 700 raw TB data obtained from a city hospital. The best obtained accuracy was 98.7 proposed approach helps doctors in their diagnosis decisions and also in their treatment planning procedures for different categories.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset