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http://hdl.handle.net/10553/77330
Título: | Analysis of Risk Factors in Dementia Through Machine Learning | Autores/as: | Balea Fernández, Francisco Javier Martínez Vega, Beatriz Ortega Sarmiento, Samuel Fabelo Gómez, Himar Antonio León Martín, Sonia Raquel Marrero Callicó, Gustavo Iván Bilbao Sieyro, Cristina |
Clasificación UNESCO: | 3307 Tecnología electrónica | Palabras clave: | Alzheimer’s disease machine learning neurocognitive disorders risk factors |
Fecha de publicación: | 2021 | Proyectos: | Identificación Hiperespectral de Tumores Cerebrales (Ithaca) Plataforma H2/Sw Distribuida Para El Procesamiento Inteligente de Información Sensorial Heterogenea en Aplicaciones de Supervisión de Grandes Espacios Naturales |
Publicación seriada: | Journal of Alzheimer's Disease | Resumen: | Background:Sociodemographic data indicate the progressive increase in life expectancy and the prevalence of Alzheimer’s disease (AD). AD is raised as one of the greatest public health problems. Its etiology is twofold: on the one hand, non-modifiable factors and on the other, modifiable. Objective:This study aims to develop a processing framework based on machine learning (ML) and optimization algorithms to study sociodemographic, clinical, and analytical variables, selecting the best combination among them for an accurate discrimination between controls and subjects with major neurocognitive disorder (MNCD). Methods:This research is based on an observational-analytical design. Two research groups were established: MNCD group (n = 46) and control group (n = 38). ML and optimization algorithms were employed to automatically diagnose MNCD. Results:Twelve out of 37 variables were identified in the validation set as the most relevant for MNCD diagnosis. Sensitivity of 100%and specificity of 71%were achieved using a Random Forest classifier. Conclusion:ML is a potential tool for automatic prediction of MNCD which can be applied to relatively small preclinical and clinical data sets. These results can be interpreted to support the influence of the environment on the development of AD. | URI: | http://hdl.handle.net/10553/77330 | ISSN: | 1387-2877 | DOI: | 10.3233/JAD-200955 | Fuente: | Journal of Alzheimer's Disease[ISSN 1387-2877],v. 79 (2), p. 845-861 |
Colección: | Artículos |
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