Research Article

A Novel Approach for Sleep Arousal Disorder Detection Based on the Interaction of Physiological Signals and Metaheuristic Learning

Table 4

The calculation of accuracy, AUC, and RR in various scenarios of wavelet descriptor and subset feature selection. The results of SVM and improved SVM classifiers are compared to detect arousal events.

Signal typeNo. of featuresSVMOptimized SVM
ACC (%)AUC (%)RR (%)ACC (%)AUC (%)RR (%)

EEG474.6274.7073.9181.3279.5678.38
879.7378.0478.8182.8183.6082.32
1275.0876.5076.8283.2482.3681.52
1675.7075.1174.8981.3881.2880.24

ECG472.2272.0972.4980.3879.8679.24
877.2977.8376.4381.8282.3681.62
1273.2173.3774.9781.9081.4480.68
1672.0473.3773.8480.6380.2080.11

EEG + ECG478.1378.0478.7786.4687.6686.80
881.6580.2279.0589.7390.3489.76
1275.6176.3176.4988.4788.0886.42
1675.8175.0574.2586.6786.3385.18

Bold values are the best values obtained.