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Mathematical and theoretical biology, or biomathematics, is a branch of biology which employs theoretical analysis, mathematical models and abstractions of living organisms to investigate the principles that govern the structure, development and behavior of the systems, as opposed to experimental biology which deals with the conduction of ...
The approximating equation for insulin resistance, in the early model, used a fasting plasma sample, and was derived by use of the insulin-glucose product, divided by a constant: (assuming normal-weight, normal subjects < 35 years, having 100% β-cell function an insulin resistance of 1)
1.4 Biology. 1.5 Economics. ... Download as PDF; Printable version; In other projects ... This is a list of equations, by Wikipedia page under ...
McKendrick–von Foerster equation in age structure modeling; Nernst–Planck equation in ion flux across biological membranes; Price equation in evolutionary biology; Reaction-diffusion equation in theoretical biology. Fisher–KPP equation in nonlinear traveling waves; FitzHugh–Nagumo model in neural activation; Replicator dynamics in ...
In mathematics, a Jacobi form is an automorphic form on the Jacobi group, which is the semidirect product of the symplectic group Sp(n;R) and the Heisenberg group (,). The theory was first systematically studied by Eichler & Zagier (1985) .
In mathematics, a differential-algebraic system of equations (DAE) is a system of equations that either contains differential equations and algebraic equations, or is equivalent to such a system. The set of the solutions of such a system is a differential algebraic variety , and corresponds to an ideal in a differential algebra of differential ...
Multi-index notation is a mathematical notation that simplifies formulas used in multivariable calculus, partial differential equations and the theory of distributions, by generalising the concept of an integer index to an ordered tuple of indices.
Machine-learning – Unlike these classical scoring functions, machine-learning scoring functions are characterized by not assuming a predetermined functional form for the relationship between binding affinity and the structural features describing the protein-ligand complex. [16] In this way, the functional form is inferred directly from the data.