Author:
Hernández-Lorenzo Laura,Hoffmann Markus,Scheibling Evelyn,List Markus,Matías-Guiu Jordi A.,Ayala Jose L.
Abstract
AbstractAlzheimer's disease (AD) is a neurodegenerative disease whose molecular mechanisms are activated several years before cognitive symptoms appear. Genotype-based prediction of the phenotype is thus a key challenge for the early diagnosis of AD. Machine learning techniques that have been proposed to address this challenge do not consider known biological interactions between the genes used as input features, thus neglecting important information about the disease mechanisms at play. To mitigate this, we first extracted AD subnetworks from several protein–protein interaction (PPI) databases and labeled these with genotype information (number of missense variants) to make them patient-specific. Next, we trained Graph Neural Networks (GNNs) on the patient-specific networks for phenotype prediction. We tested different PPI databases and compared the performance of the GNN models to baseline models using classical machine learning techniques, as well as randomized networks and input datasets. The overall results showed that GNNs could not outperform a baseline predictor only using the APOE gene, suggesting that missense variants are not sufficient to explain disease risk beyond the APOE status. Nevertheless, our results show that GNNs outperformed other machine learning techniques and that protein–protein interactions lead to superior results compared to randomized networks. These findings highlight that gene interactions are a valuable source of information in predicting disease status.
Funder
Complutense University of Madrid and Banco Santander
Technical University Munich – Institute for Advanced Study, funded by the German Excellence Initiative
Instituto de Salud Carlos III
Ministerio de Ciencia e Innovación
Publisher
Springer Science and Business Media LLC
Cited by
9 articles.
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