Doctoral Course Syllabus
Title: Characterisation of Metabolic Phenotypes via Data Integration
Duration: 8 hours (January 23-24)
Teacher: Chiara Damiani
Course Overview:
This doctoral course aims to provide participants with the basic knowledge of the metabolic network reconstruction and analysis framework. The focus will be on the analysis of metabolic pathways through the integration of various data types, including gene expression, proteomics, and metabolomics. The course will cover theoretical concepts as well as practical applications using user-friendly web-based platforms such as Esher and Galaxy.
By the end of the course, students will have acquired the ability to independently navigate and assess the strengths and limitations of the current state-of-the-art methods and the increasing list of accomplishments of the vibrant and growing field of metabolic network reconstruction and analysis.
Day 1: January 23
Morning Session (10:30-12:30): Introduction to Metabolic Networks
- Overview of Metabolic Networks
- Challenges in Analyzing Metabolic Phenotypes
- Importance of Data Integration
- From gene expression to metabolic Reaction Activity Scores
Afternoon Session (14:30-16:30): Practical Session on Galaxy Platform
- Introduction to Galaxy
- Hands-on Exercise: Gene Expression Data mapping into the human metabolic network
Day 2: January 24
Morning Session (10:30-12:30): Advanced Data Integration Techniques
- The constraint-based modeling framework
- Flux sampling and prediction of Metabolic Flux Differences
- Integration of Transcriptomics, Proteomics, and Exo-Metabolomics
- Identification of Transcriptionally Controlled Metabolic Reactions
Afternoon Session (14:30-16:30): Practical Session on Esher Platform
- Introduction to Esher
- Hands-on Exercise: In Silico Prediction of Robustness to Nutritional Perturbations
Assessment:
Participants will be evaluated based on their engagement in practical exercises and a final project. The project will involve applying the learned concepts to a relevant case study.
Prerequisites:
Recommended reading: Nielsen, J. (2017). Systems biology of metabolism. Annual review of biochemistry, 86, 245-275. https://www.annualreviews.org/doi/full/10.1146/annurev-biochem-061516-044757
Platform Requirements:
Note: The schedule and topics may be subject to slight adjustments based on the pace of the class and participants' background knowledge.