In this paper we evaluate the use of the machine learning algorithms Support Vector Machines (SVM), K-Nearest Neighbors (KNN) and Classification and Regression Trees (CART) to identify non spontaneous saccades in clinical electrooculography tests. We propose a modification to an adaptive threshold estimation algorithm for detecting signal impulses without the need of any manually pre-established parameters. Data mining tasks such as feature selection and model tunning were performed, obtaining a very efficient models using only 3 attributes amplitude deviation, absolute response latency and relative latency. The models were evaluated with signals recorded from subjects affected by Spinocerebellar Ataxia type 2 (SCA2). Results obtained by the algorithm show accuracies over 98%, recalls over 98% and precisions over 95% for the three models evaluated.