Analyzing causal relationships in proteomic profiles using CausalPath
CausalPath (causalpath.org) evaluates proteomic measurements against prior knowledge of biological pathways and infers causality between changes in measured features, such as global protein and phospho-protein levels. It uses pathway resources to determine potential causality between observable omic...
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Veröffentlicht in: | STAR protocols 2021-12, Vol.2 (4), p.100955-100955, Article 100955 |
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Sprache: | eng |
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Zusammenfassung: | CausalPath (causalpath.org) evaluates proteomic measurements against prior knowledge of biological pathways and infers causality between changes in measured features, such as global protein and phospho-protein levels. It uses pathway resources to determine potential causality between observable omic features, which are called prior relations. The subset of the prior relations that are supported by the proteomic profiles are reported and evaluated for statistical significance. The end result is a network model of signaling that explains the patterns observed in the experimental dataset.
For complete details on the use and execution of this protocol, please refer to Babur et al. (2021).
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•A free open-source tool for exploration of proteomic data•Analysis focuses on causal relationships revealed by proteomic changes•Network visualization and publication-quality figures of CausalPath results
CausalPath (causalpath.org) evaluates proteomic measurements against prior knowledge of biological pathways and infers causality between changes in measured features, such as global protein and phospho-protein levels. It uses pathway resources to determine potential causality between observable omic features, which are called prior relations. The subset of the prior relations that are supported by the proteomic profiles are reported and evaluated for statistical significance. The end result is a network model of signaling that explains the patterns observed in the experimental dataset. |
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ISSN: | 2666-1667 2666-1667 |
DOI: | 10.1016/j.xpro.2021.100955 |