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Saez Lab

Welcome to Saez Lab!

We are a research group at Heidelberg University and the European Bioinformatics Institute, part of the European Molecular Biology Laboratory (EMBL-EBI).

Our goal is to acquire a functional understanding of the deregulation of signalling networks in disease and to apply this knowledge to develop novel therapeutics. We focus on cancer, heart failure, auto-immune and fibrotic disease. Towards this goal, we integrate big (‘omics’) data with mechanistic molecular knowledge into statistical and machine learning methods. To this end, we have developed a range of tools in different areas of biomedical research, mainly using the programming languages R and Python.

Resources

Legend:     Home page     R code     Python code     Package     Article       Docs


BioCypher CARNIVAL CellNOpt CollecTRI
BioCypher A unifying framework for biomedical research knowledge graphs CARNIVAL Causal reasoning to explore mechanisms in molecular networks CellNOpt Train logic models of signaling against omics data CollecTRI Collection of Transcriptional Regulatory Interactions
     PYPI        BIOC        BIOC           
CORNETO COSMOS Decoupler DoRothEA
CORNETO Unified framework for network inference problems COSMOS Mechanistic insights across multiple omics Decoupler Infer biological activities from omics data using a collection of methods DoRothEA Transcription factor activity inference
   PYPI        BIOC              PYPI     BIOC               
DOT LIANA+ MetalinksDB MetaProViz
DOT Optimization framework for transferring cell features from a reference data to spatial omics LIANA+ Framework to infer inter- and intra-cellular signalling from single-cell and spatial omics MetalinksDB Database of protein-metabolite and small molecule ligand-receptor interactions MetaProViz Metabolomics functional analysis and visualization
                       
MISTy NetworkCommons ocEAn OmniPath
MISTy Explainable machine learning models for single-cell, highly multiplexed, spatially resolved data NetworkCommons Context specific networks from omics data and prior-knowledge ocEAn Metabolic enzyme enrichment analysis OmniPath Networks, pathways, gene annotations from 180+ databases
     BIOC        PYPI               BIOC       PYPI       PYPI     CYTO      
PHONEMeS PROGENy
PHONEMeS Logic modeling of phosphoproteomics PROGENy Activities of canonical pathways from transcriptomics data
                BIOC    

More resources: See them in the Resources section of our webpage. Docker: A container with all our tools is available.