Statistical inference of gene regulatory networks

By using a comprehensive online resource generated by the PsychENCODE Consortium for the adult brain, Wang et al, have identified and embedded functional elements, quantitative-trait loci (QTLs), and regulatory-network linkages into a comprehensive deep-learning model, in order to predict psychiat...

Πλήρης περιγραφή

Λεπτομέρειες βιβλιογραφικής εγγραφής
Κύριος συγγραφέας: Μπάμπος, Κώστας
Άλλοι συγγραφείς: Bampos, Costas
Γλώσσα:English
Έκδοση: 2022
Θέματα:
Διαθέσιμο Online:https://hdl.handle.net/10889/23922
Περιγραφή
Περίληψη:By using a comprehensive online resource generated by the PsychENCODE Consortium for the adult brain, Wang et al, have identified and embedded functional elements, quantitative-trait loci (QTLs), and regulatory-network linkages into a comprehensive deep-learning model, in order to predict psychiatric phenotypes from genotypic and transcriptomic data. The end-result is a biologically-relevant Deep Boltzmann Machine architecture connecting genotype, functional genomics, and phenotype data, with conditional and lateral connections that improve trait prediction over traditional additive models. In the present thesis we are focusing on schizophrenia and follow a different route, by using the regulatory relationships including the enhancers, transcription factors (TFs), miRNAs, and target genes (TGs) in this resource as priors to different techniques: For example, we are not using the TG-TG linkages as lateral connections and TF-TG linkages as conditional connections to the same network, but we include them as prior information to network analysis and to denoising autoencoders (DAE), respectively. Our main goal is to implement different methods by exploiting different priors each time and finding the overlapping genes supported by as many methods as possible.