Publication: Exploring the druggable space around the Fanconi anemia pathway using machine learning and mechanistic models.
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Date
2019-07-02
Authors
Esteban-Medina, Marina
Peña-Chilet, María
Loucera, Carlos
Dopazo, Joaquín
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Abstract
In spite of the abundance of genomic data, predictive models that describe phenotypes as a function of gene expression or mutations are difficult to obtain because they are affected by the curse of dimensionality, given the disbalance between samples and candidate genes. And this is especially dramatic in scenarios in which the availability of samples is difficult, such as the case of rare diseases. The application of multi-output regression machine learning methodologies to predict the potential effect of external proteins over the signaling circuits that trigger Fanconi anemia related cell functionalities, inferred with a mechanistic model, allowed us to detect over 20 potential therapeutic targets. The use of artificial intelligence methods for the prediction of potentially causal relationships between proteins of interest and cell activities related with disease-related phenotypes opens promising avenues for the systematic search of new targets in rare diseases.
Description
MeSH Terms
Databases, Factual
Fanconi Anemia
Genomics
Humans
Machine Learning
Phenotype
Proteins
Signal Transduction
Fanconi Anemia
Genomics
Humans
Machine Learning
Phenotype
Proteins
Signal Transduction
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CIE Terms
Keywords
Big data, Fanconi anemia, Genomics, Machine learning, Mathematical models, Signaling pathways