Gene Regulatory Network Reconstruction with Multiple Dataset Fusion and Differential Equation

In this paper, we proposed a new data fusion method to infer gene regulatory networks based on differential equations model. After testing on several simulation and real data sets, and comparing with three other kinds of single fusion methods, the results show that our method is effective and better than other3 fusion methods in inferring networks.

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