INVESTIGADORES
FERNANDEZ SLEZAK Diego
artículos
Título:
A Machine Learning Approach to Personalize Computerized Cognitive Training Interventions
Autor/es:
VLADISAUSKAS, MELINA; BELLOLI, LAOUEN M. L.; FERNÁNDEZ SLEZAK, DIEGO; GOLDIN, ANDREA P.
Revista:
Frontiers in Artificial Intelligence
Editorial:
Frontiers Media S.A.
Referencias:
Año: 2022 vol. 5
Resumen:
Executive functions are a class of cognitive processes critical for purposeful goal-directed behavior. Cognitive training is the adequate stimulation of executive functions and has been extensively studied and applied for more than 20 years. However, there is still a lack of solid consensus in the scientific community about its potential to elicit consistent improvements in untrained domains. Individual differences are considered one of the most important factors of inconsistent reports on cognitive training benefits, as differences in cognitive functioning are both genetic and context-dependent, and might be affected by age and socioeconomic status. We here present a proof of concept based on the hypothesis that baseline individual differences among subjects would provide valuable information to predict the individual effectiveness of a cognitive training intervention. With a dataset from an investigation in which 73 6-year-olds trained their executive functions using an online software with a fixed protocol, freely available at www.matemarote.org.ar, we trained a support vector classifier that successfully predicted (average accuracy = 0.67, AUC = 0.707) whether a child would improve, or not, after the cognitive stimulation, using baseline individual differences as features. We also performed a permutation feature importance analysis that suggested that all features contribute equally to the model´s performance. In the long term, this results might allow us to design better training strategies for those players who are less likely to benefit from the current training protocols in order to maximize the stimulation for each child.