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Exploring Logistic Functions as Robust Alternatives to Hill Functions in Genetic Network Modeling
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Hill functions dominate gene regulatory network (GRN) modeling, but their fractional exponents create analytical pathologies when the Hill coefficient $n$ is non-integer -- a ubiquitous occurrence in experimental fits. We replace the Hill activation $h^+(x,\theta,n)=x^n/(x^n+\theta^n)$ and repression $h^-(x,\theta,n)=\theta^n/(x^n+\theta^n)$ with the logistic counterparts $f^+(x,\theta,\lambda)=1/(1+e^{-\lambda(x-\theta)})$ and $f^-(x,\theta,\lambda)=1/(1+e^{\lambda(x-\theta)})$. The matching $\lambda=n/\theta$ preserves the slope at the half-maximal concentration. Four families of Hill pathologies appear for non-integer $n$: derivative singularities at the origin ($h^{+\prime}(x)\to\infty$ as $x\to 0^+$ for $0<n<1$; higher-order derivatives diverging for $n\in(k,k+1)$); integrals requiring hypergeometric functions; multivalued fractional-power inversions; and logarithmic small-$n$ approximations diverging at low expression. Each is resolved by a structural property of the logistic: the uniform bound $|\partial f^\pm/\partial x|\le\lambda/4$, the closed-form logit inverse, an elementary antiderivative, and the nonzero basal output $f^+(0)=1/(1+e^{\lambda\theta})>0$. We prove the product-of-logistics GRN model admits globally unique, smooth, uniformly bounded solutions with explicit Lipschitz constant $L_F\le M=\max_i(\kappa_i\sum_j L_i^j+\gamma_i)$. The identity $h^+(x,\theta,n)=\sigma(n\ln(x/\theta))$ shows the Hill is a logistic of the log-ratio, but the change of variable $s=\ln(x/\theta)$ introduces a state-dependent factor $e^{-s}$ on the production side, so the two ODE models are nonequivalent. They encode different hypotheses -- multiplicative-increment versus additive-threshold sensitivity -- and the structural advantages of the logistic framework hold under either.
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Cited by 2 Pith papers
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Logistic Gene Regulatory Networks: Prevention of Expression Shutdown, and Numerical Stability Beyond Hill Function
Logistic functions replace Hill functions in gene regulatory network ODE models to ensure global smoothness, real-valued trajectories, positive basal production, and stable numerical integration across small and large...
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Beyond Linear Additive and Hill Functions: A General Logistic Reformulation of Delay-Coupled Gene Regulatory Networks with Equilibrium Analysis, Hopf Bifurcation, and Lipschitz Stability
Logistic reformulations of delay-coupled gene regulatory networks are globally smooth and positive at zero, with matched parameters, unique equilibria, Hopf bifurcation at critical delays, and substantially smaller Li...
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