BACKGROUND When many features and a small number of clinical data exist, previous studies have used a few top-ranked features from the Fisher's discriminant ratio (FDR) for feature selection. However,… Click to show full abstract
BACKGROUND When many features and a small number of clinical data exist, previous studies have used a few top-ranked features from the Fisher's discriminant ratio (FDR) for feature selection. However, there are many similarities between selected features. New method: To reduce the redundant features, we applied a technique employing FDR in conjunction with feature correlation. We performed an attention network test on schizophrenic patients and normal subjects with a 152-channel magnetoencephalograph. P300m amplitudes of event-related fields (ERFs) were used as features at the sensor level and P300m amplitudes of ERFs for 500 nodes on the cortex surface were used as features at the source level. Features were ranked using FDR criterion and cross-correlation measure, and then the highest ranked 10 features were selected and an exhaustive search was used to find combination having the maximum accuracy. RESULTS At the sensor level, we found a single channel of the occipital region that distinguished the two groups with an accuracy of 89.7%. At source level, we obtained an accuracy of 96.2% using two features, the left superior frontal region and the left inferior temporal region. COMPARISON WITH EXISTING METHOD At source level, we obtained a higher accuracy than traditional method using only FDR criterion (accuracy = 88.5%). We used only the P300 m amplitude (not latency) on a single channel and two brain regions at a fairly high rate.
               
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