info:eu-repo/semantics/article
A hybrid method to select morphometric features using tensor completion and F-score rank for gifted children identification
Fecha
2021-08Registro en:
Zhang, Jin; Feng, Fan; Han, TianYi; Duan, Feng; Sun, Zhe; et al.; A hybrid method to select morphometric features using tensor completion and F-score rank for gifted children identification; Springer; Science China Technological Sciences; 64; 8-2021; 1863–1871
1674-7321
1869-1900
CONICET Digital
CONICET
Autor
Zhang, Jin
Feng, Fan
Han, TianYi
Duan, Feng
Sun, Zhe
Caiafa, César Federico
Solé Casals, Jordi
Resumen
Gifted children are able to learn in a more advanced way than others, probably due to neurophysiological differences in the communication efficiency in neural pathways. Topological features contribute to understanding the correlation between the brain structure and intelligence. Despite decades of neuroscience research using MRI, methods based on brain region connectivity patterns are limited by MRI artifacts, which therefore leads to revisiting MRI morphometric features, with the aim of using them to directly identify gifted children instead of using brain connectivity. However, the small, high dimensional morphometric feature dataset with outliers makes the task of finding good classification models challenging. To this end, a hybrid method is proposed that combines tensor completion and feature selection methods to handle outliers and then select the discriminative features. The proposed method can achieve a classification accuracy of 93.1%, higher than other existing algorithms, which is thus suitable for the small MRI datasets with outliers in supervised classification scenarios.