Causal Protein-Signaling Networks Derived from Multiparameter Single-Cell Data
Top Cited Papers
- 22 April 2005
- journal article
- Published by American Association for the Advancement of Science (AAAS) in Science
- Vol. 308 (5721) , 523-529
- https://doi.org/10.1126/science.1105809
Abstract
Machine learning was applied for the automated derivation of causal influences in cellular signaling networks. This derivation relied on the simultaneous measurement of multiple phosphorylated protein and phospholipid components in thousands of individual primary human immune system cells. Perturbing these cells with molecular interventions drove the ordering of connections between pathway components, wherein Bayesian network computational methods automatically elucidated most of the traditionally reported signaling relationships and predicted novel interpathway network causalities, which we verified experimentally. Reconstruction of network models from physiologically relevant primary single cells might be applied to understanding native-state tissue signaling biology, complex drug actions, and dysfunctional signaling in diseased cells.Keywords
This publication has 19 references indexed in Scilit:
- Bayesian analysis of signaling networks governing embryonic stem cell fate decisionsBioinformatics, 2004
- Seventeen-colour flow cytometry: unravelling the immune systemNature Reviews Immunology, 2004
- PathBLAST: a tool for alignment of protein interaction networksNucleic Acids Research, 2004
- Single Cell Profiling of Potentiated Phospho-Protein Networks in Cancer CellsCell, 2004
- Flow cytometric analysis of vaccine responses: how many colors are enough?Clinical Immunology, 2004
- Inferring Cellular Networks Using Probabilistic Graphical ModelsScience, 2004
- A high-throughput assay for Tn5 Tnp-induced DNA cleavageNucleic Acids Research, 2004
- Bayesian Network Approach to Cell Signaling Pathway ModelingScience's STKE, 2002
- A NEWAPPROACH TODECODINGLIFE: Systems BiologyAnnual Review of Genomics and Human Genetics, 2001
- Using Bayesian Networks to Analyze Expression DataJournal of Computational Biology, 2000