The document describes a dengue detection and prediction system using data mining techniques. Clinical documents are analyzed to extract named entities, symptoms, and other features to generate a feature vector. Various classifiers are trained and evaluated on the vector to identify the best model for predicting dengue. Frequency analysis is also performed to correlate dengue occurrence with symptoms over months. The system achieves appreciable accuracy in detecting and predicting dengue.