Tiangang Cui’s research while affiliated with Monash University (Australia) and other places

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Publications (2)


Figure 2 Simulation results and experimental data of the regulatory network for neutrophil differentiation Red solid line: experimental microarray data; Blue star dash line: simulation of the regulatory network. (A) Gene Gata1; (B) gene PU.1; (C) gene Ets1; (D) gene Tal1. Full-size  DOI: 10.7717/peerj.9065/fig-2
Figure 3 Predicted genetic regulatory network of erythrocyte pathway. The genetic regulatory network predicted by the Extended Forward Search Algorithm with 11 genes and 41 non-linear terms (NLTs) (14 isolated NLTs excluded) after edges deletion test, which is related to the fate determination of erythrocyte pathway: regulatory network for hematopoietic stem cells differentiate to megakaryocyte-erythroid progenitors. The network is visualized by Cytoscape software. Full-size  DOI: 10.7717/peerj.9065/fig-3
A non-linear reverse-engineering method for inferring genetic regulatory networks
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April 2020

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116 Reads

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6 Citations

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Tiangang Cui

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Tianhai Tian

Hematopoiesis is a highly complex developmental process that produces various types of blood cells. This process is regulated by different genetic networks that control the proliferation, differentiation, and maturation of hematopoietic stem cells (HSCs). Although substantial progress has been made for understanding hematopoiesis, the detailed regulatory mechanisms for the fate determination of HSCs are still unraveled. In this study, we propose a novel approach to infer the detailed regulatory mechanisms. This work is designed to develop a mathematical framework that is able to realize nonlinear gene expression dynamics accurately. In particular, we intended to investigate the effect of possible protein heterodimers and/or synergistic effect in genetic regulation. This approach includes the Extended Forward Search Algorithm to infer network structure (top-down approach) and a non-linear mathematical model to infer dynamical property (bottom-up approach). Based on the published experimental data, we study two regulatory networks of 11 genes for regulating the erythrocyte differentiation pathway and the neutrophil differentiation pathway. The proposed algorithm is first applied to predict the network topologies among 11 genes and 55 non-linear terms which may be for heterodimers and/or synergistic effect. Then, the unknown model parameters are estimated by fitting simulations to the expression data of two different differentiation pathways. In addition, the edge deletion test is conducted to remove possible insignificant regulations from the inferred networks. Furthermore, the robustness property of the mathematical model is employed as an additional criterion to choose better network reconstruction results. Our simulation results successfully realized experimental data for two different differentiation pathways, which suggests that the proposed approach is an effective method to infer the topological structure and dynamic property of genetic regulations.

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Citations (2)


... In the past twenty years, many modeling approaches have been developed to infer GRN architectures using "omics" data [9,[13][14][15]. GRN inference models can be broadly categorized into three distinct categories, based on the algorithms and hypotheses they employ (see reviews: [16][17][18][19][20][21][22][23][24]): (i) data-driven static models, which do not simulate the biological processes such as transcription or translation, but hypothesize that interacting genes have correlated expression and use the correlations to infer GRN architecture [25,26]; (ii) discrete models, which simulate the time evolution of discrete variables that qualitatively describe the activity of genes [27,28]; and (iii) continuous dynamical models which simulate the dynamics of gene expression processes in a quantitative manner based a set of linear [29] or non-linear [30,31] ordinary differential equations (ODEs). ...

Reference:

Inferring gene regulatory networks using transcriptional profiles as dynamical attractors
A non-linear reverse-engineering method for inferring genetic regulatory networks

... Some renown examples include perfect adaptation in signalling network (Araujo and Liotta, 2018), autonomous oscillatory behaviour in circadian rhythm (Ocone et al., 2013), fate determination in cell differentiation (Wu et al., 2018) (Joshi and Skromne, 2020) etc. In contrast, attractor analysis of Boolean network provides a feasible yet costeffective approach to analysing biological long-term behaviour. ...

Mathematical Modelling of Genetic Network for Regulating the Fate Determination of Hematopoietic Stem Cells
  • Citing Conference Paper
  • December 2018