Probabilistic Critical Controllability Analysis of Protein Interaction Networks Integrating Normal Brain Ageing Gene Expression Profiles.
Eimi YamaguchiTatsuya AkutsuJose C NacherPublished in: International journal of molecular sciences (2021)
Recently, network controllability studies have proposed several frameworks for the control of large complex biological networks using a small number of life molecules. However, age-related changes in the brain have not been investigated from a controllability perspective. In this study, we compiled the gene expression profiles of four normal brain regions from individuals aged 20-99 years and generated dynamic probabilistic protein networks across their lifespan. We developed a new algorithm that efficiently identified critical proteins in probabilistic complex networks, in the context of a minimum dominating set controllability model. The results showed that the identified critical proteins were significantly enriched with well-known ageing genes collected from the GenAge database. In particular, the enrichment observed in replicative and premature senescence biological processes with critical proteins for male samples in the hippocampal region led to the identification of possible new ageing gene candidates.
Keyphrases
- genome wide
- genome wide identification
- resting state
- white matter
- copy number
- cerebral ischemia
- functional connectivity
- genome wide analysis
- protein protein
- machine learning
- endothelial cells
- transcription factor
- emergency department
- multiple sclerosis
- small molecule
- oxidative stress
- stress induced
- neural network
- atomic force microscopy
- subarachnoid hemorrhage