| Literature DB >> 31964336 |
Antoine Buetti-Dinh1,2,3,4,5, Malte Herold6, Stephan Christel7, Mohamed El Hajjami8, Francesco Delogu9, Olga Ilie10,11, Sören Bellenberg7, Paul Wilmes6, Ansgar Poetsch12,8,13, Wolfgang Sand14,15,16, Mario Vera17,18, Igor V Pivkin10,11, Ran Friedman19,20, Mark Dopson7.
Abstract
BACKGROUND: Network inference is an important aim of systems biology. It enables the transformation of OMICs datasets into biological knowledge. It consists of reverse engineering gene regulatory networks from OMICs data, such as RNAseq or mass spectrometry-based proteomics data, through computational methods. This approach allows to identify signalling pathways involved in specific biological functions. The ability to infer causality in gene regulatory networks, in addition to correlation, is crucial for several modelling approaches and allows targeted control in biotechnology applications.Entities:
Keywords: Acidophiles; Approximate Bayesian computation; Biological signalling simulations; Biomining; Gene regulatory networks; Machine learning; Multispecies bacterial community interactions
Mesh:
Year: 2020 PMID: 31964336 PMCID: PMC6975020 DOI: 10.1186/s12859-019-3337-9
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Fig. 1RNA cluster 1’s directed GRN estimated by ABC of computer simulations compared to different observed datasets. a Axenic cultures of L. ferriphilum or S. thermosulfidooxidans compared to their mixed culture, b axenic cultures of L. ferriphilum or S. thermosulfidooxidans compared to their mixed culture also containing A. caldus. Green and purple nodes represent genes belonging to L. ferriphilum and S. thermosulfidooxidans, respectively. Links with continuous (→) and dashed () lines represent activation and inhibition interactions, respectively
Fig. 2RNA cluster 2’s directed GRN estimated by ABC of computer simulations compared to different observed datasets. a Axenic cultures of L. ferriphilum or S. thermosulfidooxidans compared to their mixed culture, b axenic cultures of L. ferriphilum or S. thermosulfidooxidans compared to their mixed culture also containing A. caldus. Green and purple nodes represent genes belonging to L. ferriphilum and S. thermosulfidooxidans, respectively. Links with continuous (→) and dashed () lines represent activation and inhibition interactions, respectively
Fig. 3Protein cluster’s directed GRN estimated by ABC of computer simulations compared to the dataset obtained from axenic cellular cultures. Axenic cultures of L. ferriphilum compared to mixed cultures also containing S. thermosulfidooxidans. Links with continuous (→) lines represent activating interactions
Comparison of the methodology applied to single-cell data [15] and our method on averaged data
| Signalling | Posterior | Correctness | Agreement |
|---|---|---|---|
| interaction | probability (%) | with [ | |
| PLC → PIP2 | 25.5 | n | n |
| PLC → PIP3 | 28.1 | y | n |
| PIP3 → PIP2 | 58.7 | y | y |
| PIP3 → AKT | 35.4 | n | y |
| ERK → AKT | 70.8 | y | y * |
| PKC → JNK | 100 | y | y |
| PKC → P38 | 100 | y | y |
| PKC → PKA | 0 | n | n * |
| PKC → RAF | 50.9 | y | y |
| PKC → MEK | 89.9 | y | y |
| PKA → JNK | 100 | y | y |
| PKA → P38 | 100 | y | y |
| PKA → RAF | 100 | y | y |
| PKA → MEK | 100 | y | y |
| PKA → ERK | 100 | y | y |
| PKA → AKT | 100 | y | y |
| RAF → MEK | 48.3 | n | n |
| MEK → ERK | 87.5 | y | y |
| PLC → PKC | 95.6 | y | y |
| PIP2 → PKC | 57.3 | y | n |
Signalling interactions are represented by the molecular components of the signaling cascades detailed in reference [15]
*Inferred as novel in reference [15]
rat
e due to missing information measured [12, 16], the flux of the signal could be accurately determined with the presented method. In addition, the presence of intermediate components in the signalling network, that are not detected by OMICs experiments, does not affect the analysis dramatically as the steady-state simulation method is able to cope with missing information on non-detected intermediates. Although hidden confounders generally remain a potential problem in network reverse engineering, it was previously shown that consistent results could be obtained with an increase of 60% of the nodes in an analyzed network [25].