Research Article

Application of Machine Learning in Postural Control Kinematics for the Diagnosis of Alzheimer’s Disease

Table 3

Best results obtained with each classifier trained with datasets with and without the MoCA variable. Between parentheses are the minimum and maximum values obtained. All results are in percentage.

AccuracySensitivitySpecificityBest decisional space

SVM with MoCA91 (75–96.4)89.3 (64.3–100)92.7 (71.4–100)Top 10 features
SVM without MoCA71,7 (53.6–92.9)65 (35.7–92.9)78.4 (35.7–100)
MLP with MoCA96.6 (96.5–100)100 (100–100)94.9 (94.7–100)Top 11 features and top 15 features
MLP without MoCA86,1 (79.3–86.2)78.5 (77.8–78.6)93.1 (81.8–93.3)
RBN with MoCA92,5 (75–100)90.4 (71.4–100)94.5 (78.6–100)Top 15 features
RBN without MoCA74,0 (53.6–82.1)71.3 (50–100)76.7 (42.9–100)
DBN with MoCA96,5 (89.3–100)95.3 (85.7–100)97.7 (85.7–100)Top 15 features
DBN without MoCA78,0 (57.1–92.9)79 (14.3–100)77 (21.4–100)