Using Systems Biology to understand Immunosenescen
  • Using Systems Biology to Understand Immunosenescence
  • Background
    • Introduction
    • 1.1. Aging in Society and in the Individual
    • 1.2. Aging and its Molecular Mechanisms
    • 1.3.The Remodeling of the Immune System: Immunosenescence
    • 1.4. Changes in the Immune System Related to Immunosenescence
    • 1.5 Chronic Inflammation During Aging: Inflammaging
    • 1.6 The Immune Risk Phenotype (IRP)
    • 1.6. Systems Biology
  • Objectives
  • Methods
    • Overall Methodology
    • 3.1 Survey of Studies
    • 3.2. Reannotation of Probes in Microarrays
    • 3.3. Data acquisition and pre-processing
    • 3.4. Creation of age-representative samples: AgeCollapsed
    • 3.5. Detection of Highly Age-Related Transcripts: AgingGenes
    • 3.6. Lifetime Co-Expressed Transcript Analysis: AgingNet
    • 3.7. Detection of Change Points in Age-Related Modules
  • Results
    • 4.1. Survey and Data Acquisition
    • 4.2. Reannotation of Platforms
    • 4.3. AgeCollapsed Pre-Processing and Creation
    • 4.4. Assessment of the Agreement of the Relationships of Transcripts with Age between the Sexes
    • 4.5. AgingGenes and AgingNet Reviews
    • 4.6 Aging Co-Expression Network: AgingNet
  • Discussion
    • Main Regards
    • AgingGenes
    • Análise de Co-Expressão: AgingNet
  • Conclusions
    • Final Regards
  • Citations
    • References
  • Appendix
    • Supplementary Files
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  1. Methods

Overall Methodology

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Microarray transcriptomics data from the blood of healthy individuals were obtained from public databases and pre-processed using the R and Bash programming languages. All platforms have been re-annotated to the most current versions of the human genome and non-coding RNA database. Then, all samples were used to create a new dataset consisting of representative samples of each age and transcribed in common to all platforms. Each transcript was treated as a time series in the following analyses, with each time point representing an age.

‌ First, highly age-correlated transcripts (AgingGenes) were identified. Each transcript was classified according to its type of correlation, which could be positive linear, negative or non-linear. Then, a co-expression analysis was performed to build a network (AgingNet) in which its nodes are represented by transcripts and their relationships are represented by the similarity between their expression profiles. Once the network was built, subgroups of genes with similar expression profiles over the ages were identified.

‌ All AgingGenes classes, as well as the AgingNet modules, were submitted to a pathway enrichment analysis, to elucidate the possible molecular mechanisms they would be representing. In addition, a Change-point Detection analysis was performed to identify at which times during life such molecular programs present changes in their transcriptional behaviour.

Figura 3.1. Fluxograma de análise. Resumo dos processos e análises realizadas no trabalho.