Detailed Study of the Class of Chain Functions in Context of Boolean Gene Regulatory Networks
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IISER Mohali
Abstract
Gene regulatory networks (GRNs) have been modelled extensively using boolean net-
works (BNs). The network design and the regulatory logic rules (also known as
Boolean functions, or BFs) corresponding to individual nodes determine how BNs
behave. It has been demonstrated in the large-scale investigations of reconstructed
Boolean models that nested canalyzing functions (NCFs) are enriched among the
BFs. We delve into a new class of functions known as the chain functions (or chain-0
functions) proposed by Gat-Viks and Shamir. From this class, we obtained the new
class of chain-1 functions which is the dual of the chain-0 class, and altogether called
their union as the generalized chain functions class. Next, we discover that as the
number of inputs increases, the fraction of NCFs that are chain-0 (and chain-1) func-
tions falls exponentially. We look at some analytical results of the generalized chain
functions class within the NCFs and also derive the count of the chain functions for a
given number of inputs. Then, by analyzing three different datasets of reconstructed
Boolean models we find that generalized chain functions are significantly enriched
within the NCFs. . We also look at the effects of utilizing generalized chain functions
in Random Boolean Networks(RBNs) on the network dynamics.
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