Logic modelling of signalling networks – CellNOpt and CARNIVAL
Date: 20 January 2022 @ 09:00 - 17:00
Reconstruction of signaling networks has been widely utilised in the past, for example to understand aberrations in diseased cells, or to figure out mechanism of drug actions. With the development of high throughput data platforms, it is possible to infer these networks from the data alone, alternatively we could reuse existing knowledge about possible mechanisms reported in literature and interaction databases. The prior knowledge network (PKN) describes the possible interactions among the signaling molecules and connects the perturbations to the measured molecular markers. Different formalisms build different types of models from the PKN, ranging from boolean networks to differential equations. It is then possible to train the models to the measured data using optimisation methods. CellNOpt uses different logic formalisms, which include boolean, fuzzy, probabilistic, and ordinary differential equations models which are trained against (phosphoproteomic) data. On the other hand, similar approaches are used to extract mechanistic insights from multi-omics data using CARNIVAL to train signaling networks from gene expression data using integer linear programming to infer causal paths linking signaling drives with downstream transcripts’ levels. In this webinar, we introduce CellNOpt and CARNIVAL and show how each can be used to build models of signalling networks.
About the speaker
Dr Pablo Rodriguez Mier is a Postdoctoral Researcher at Julio Saez-Rodriguez’s group at the Joint Research-Center for Computational Biomedicine. He has a background in Computer Science and Artificial Intelligence. Prior to this, he was a Postdoctoral Researcher at the Food Toxicology Research Center of the French National Institute for Agricultural Research (INRAE) in Toulouse, in a project funded by the French National Cancer Institute (INCA). He was in charge of developing new computational methods to understand metabolic dysregulations in cancer due to mutations in the p53 gene and also in key target genes, combining previous biological knowledge with experimental data.
Keywords: Cell-level simulations, Personalised medicine, PerMedCoE, Signaling networks
Organizer: European Bioinformatics Institute (EBI)
Target audience: Plant research, Plant research
Capacity: 500
Event types:
- Workshops and courses
Scientific topics: Metabolic network modelling, Systems biology
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