Détail du document
Identifiant

doi:10.1007/s10142-023-01228-4...

Auteur
Cava, Claudia D’Antona, Salvatore Maselli, Francesca Castiglioni, Isabella Porro, Danilo
Langue
en
Editeur

Springer

Catégorie

Life Sciences

Année

2023

Date de référencement

13/09/2023

Mots clés
alzheimer gene expression genetic correlation neural network alzheimer’s disease models ad network neural traits
Métrique

Résumé

Sporadic Alzheimer’s disease (AD) is a complex neurological disorder characterized by many risk loci with potential associations with different traits and diseases.

AD, characterized by a progressive loss of neuronal functions, manifests with different symptoms such as decline in memory, movement, coordination, and speech.

The mechanisms underlying the onset of AD are not always fully understood, but involve a multiplicity of factors.

Early diagnosis of AD plays a central role as it can offer the possibility of early treatment, which can slow disease progression.

Currently, the methods of diagnosis are cognitive testing, neuroimaging, or cerebrospinal fluid analysis that can be time-consuming, expensive, invasive, and not always accurate.

In the present study, we performed a genetic correlation analysis using genome-wide association statistics from a large study of AD and UK Biobank, to examine the association of AD with other human traits and disorders.

In addition, since hippocampus, a part of cerebral cortex could play a central role in several traits that are associated with AD; we analyzed the gene expression profiles of hippocampus of AD patients applying 4 different artificial neural network models.

We found 65 traits correlated with AD grouped into 9 clusters: medical conditions, fluid intelligence, education, anthropometric measures, employment status, activity, diet, lifestyle, and sexuality.

The comparison of different 4 neural network models along with feature selection methods on 5 Alzheimer’s gene expression datasets showed that the simple basic neural network model obtains a better performance (66% of accuracy) than other more complex methods with dropout and weight regularization of the network.

Cava, Claudia,D’Antona, Salvatore,Maselli, Francesca,Castiglioni, Isabella,Porro, Danilo, 2023, From genetic correlations of Alzheimer’s disease to classification with artificial neural network models, Springer

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