Change in Expression after modifying fix_b?

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Presentation transcript:

Change in Expression after modifying fix_b? Fixed b = fix_b set to 1 Estimated b = fix_b set to 0

Gene regulatory Network HMO1_profile43

Estimated b: weighted network

Fixed b: weighted network

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

GRNmap model Fixed b Estimated b

Estimated vs. fixed b