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1 been almost exclusively modelled by using an ordinary differential equation.
2 ng back to the lungs is calculated from this ordinary differential equation.
3 species or model them with patchy models by ordinary differential equations.
4 assumed perfectly mixed, and represented by ordinary differential equations.
5 o represent the FIM in terms of solutions of ordinary differential equations.
6 c models implemented as systems of nonlinear ordinary differential equations.
7 xtracellular (multicellular) events by using ordinary differential equations.
8 states using 15 interacting reactions and 26 ordinary differential equations.
9 isher information matrix to solving a set of ordinary differential equations.
10 ons between genes as a system of first-order ordinary differential equations.
11 ining FBA with regulatory Boolean logic, and ordinary differential equations.
12 models of biochemical systems defined using ordinary differential equations.
13 teractions cannot be directly implemented as ordinary differential equations.
14 ed using analytical solutions to a system of ordinary differential equations.
15 of the model are described by a system of 50 ordinary differential equations.
16 n transfigures the demonstrated problem into ordinary differential equations.
17 tions that are translated by Cellerator into ordinary differential equations.
18 hich are typically represented as systems of ordinary differential equations.
19 on throughout the tumor volume via a pair of ordinary differential equations.
20 no longer satisfy the uniqueness theorem for ordinary differential equations.
21 odel and systemic cytokine concentrations by ordinary differential equations.
22 ithm for dissipative quadratic n-dimensional ordinary differential equations.
23 the model as a system of coupled stochastic ordinary differential equations.
24 hronODE, an interpretable framework based on ordinary differential equations.
25 both non-stiff and stiff systems of coupled Ordinary Differential Equations.
26 ion model, expressed in terms of a system of ordinary differential equations.
27 l equations, as well as classical systems of ordinary differential equations.
28 terms of their representation as systems of ordinary differential equations.
29 nomenological dynamic growth models based on ordinary differential equations.
30 cal model of Shh aggregation using nonlinear ordinary differential equations.
31 ommonly represented as systems of autonomous ordinary differential equations.
32 ential equations is converted into nonlinear ordinary differential equations.
33 We model the HDX with a system of ordinary differential equations.
34 urrent alternatives consisting of up to 1000 ordinary differential equations.
35 cations, which are typically studied through ordinary differential equations.
36 using statistical approaches and systems of ordinary differential equations.
37 dicted pathways successfully without solving ordinary differential equations.
38 also to any system that can be described by ordinary differential equations.
39 affects the CYP1A biomarker, the model uses ordinary differential equations.
40 are inevitably modelled by stiff systems of ordinary differential equations.
41 h curves are classically modeled by means of ordinary differential equations.
42 l biology literature and defined as a set of ordinary differential equations.
43 e pathway and built a kinetic model based on ordinary differential equations.
44 ry rate ([Formula: see text])-in a system of ordinary differential equations analogous to the Suscept
46 uations of the system can be approximated by ordinary differential equations and a Ornstein-Uhlenbeck
47 igands based on the law of mass action using ordinary differential equations and agent-based modellin
48 e, and consists of a large system of coupled ordinary differential equations and algebraic equations.
50 se theoretical models are generally based on ordinary differential equations and become intractable w
51 In CDSM, interactions are represented by ordinary differential equations and compared across cond
52 odeled the cortisol dynamics using nonlinear ordinary differential equations and estimated the kineti
53 ifferential equations, including subcellular ordinary differential equations and extracellular reacti
54 squares formulation that handles systems of ordinary differential equations and is implemented in Ma
55 valuated using data simulated with nonlinear ordinary differential equations and known cyclic network
56 complex partial differential equations into ordinary differential equations and solves them using th
57 ed a hybrid computational model comprised of ordinary differential equations and stochastic simulatio
59 oximate simulators of these systems, such as ordinary differential equations and t-Leaping approximat
60 molecular mechanisms into sets of nonlinear ordinary differential equations and use standard analyti
61 suming (i) equilibrium of a linear system of ordinary differential equations, and (ii) deterministic
62 computing machine) that, when its non-linear ordinary differential equations are integrated numerical
66 ive assumptions and hypotheses formulated as ordinary differential equations) are separated from the
67 thematical model that is used to derive this ordinary differential equation assumes that the partial
68 odel their competition using a system of two ordinary differential equations based on the Lotka-Volte
72 re studied using numerical simulations of an ordinary differential equation-based multi-compartment m
73 In recent years, sophisticated mechanistic, ordinary differential equation-based pathways models tha
77 r simulations (e.g. numerical integration of ordinary differential equations defined in SBML or BNGL
78 rowth models, each consisting of a system of ordinary differential equations, derived from the bi-exp
80 ion kinetics have been limited to systems of ordinary differential equations describing spatially ave
81 , it is found that equilibrium properties of ordinary differential equations describing the dynamics
82 ycolytic metabolism with a system of coupled ordinary differential equations describing the individua
83 thematical model, in the form of a system of ordinary differential equations, describing dynamics of
84 transduction pathways traditionally employs ordinary differential equations, deterministic models ba
87 essible to analysis by reduction to a set of ordinary differential equations for the amplitudes of sh
89 sulting probability densities are coupled to ordinary differential equations for the bulk myoplasmic
92 Instead, we derive and solve the systems of ordinary differential equations for the two lower-order
93 formulated in terms of tractable systems of ordinary differential equations for which we provide an
95 entifying governing equations in the form of ordinary differential equations from noisy experimental
96 isting of low-dimensional systems of coupled ordinary differential equations, from these more complex
97 three proof-of-concept applications: solving ordinary differential equations, generating ultra-wideba
98 odule to reduce the generated mechanisms, an ordinary differential equations generator and solver to
99 ystems modeling, particularly via systems of ordinary differential equations, has been used to effect
100 Dynamical models in the form of systems of ordinary differential equations have become a standard t
101 we modeled the integrin signaling network as ordinary differential equations in multiple compartments
102 ters of people and their vaccination status, Ordinary Differential Equation integration between fixed
104 parameter space of a parameterized system of ordinary differential equations into regions for which t
105 ng algorithm that incorporates the system of ordinary differential equations into the neural networks
106 s/deterministic model, expressed as a set of ordinary differential equations, into a discrete/stochas
108 tabolic pathways through mechanistic sets of ordinary differential equations is a piece of the genoty
112 and allometry theory through Lokta-Volterra ordinary differential equations (LVODE) into an R-based
114 holded fashion, and a simple two-compartment ordinary differential equation model correctly predicts
116 affecting responses to ICIs, we construct an ordinary differential equation model describing in vivo
120 e single-cell level, a mechanistic nonlinear ordinary differential equation model is used to calculat
121 s in combination with a previously validated ordinary differential equation model of apoptosis to sim
128 developed an agent-based model (ABM) and an ordinary differential equation model of tumor regression
129 matory phase in more detail, we developed an ordinary differential equation model that accounts for t
131 tions of one or more cytokines to develop an ordinary differential equation model that includes the e
132 lus involved in efficacy, here we develop an ordinary differential equation model that predicts bacte
135 in part on principal component analysis, an ordinary differential equation model was constructed, co
139 tion dynamic trends more effectively than an ordinary differential equation model with generalized ma
142 mouse hepatocytes with interaction graph and ordinary differential equation modeling, we identify and
143 enz equations, a system of three-dimensional ordinary differential equations modeling atmospheric con
146 ethods based on specific parameterization of ordinary differential equation models and demonstrate a
149 is based on the notion that all mechanistic ordinary differential equation models can be coupled wit
150 of rapid rebinding and show that well-mixed ordinary differential equation models can use this proba
152 this work we developed a series of nonlinear ordinary differential equation models that are direct re
154 sed on parameter inference of stochastic and ordinary differential equation models using Approximate
155 article, a new hybrid algorithm integrating ordinary differential equation models with dynamic Bayes
156 ro bioluminescence experiments and in silico ordinary differential equation models, and will lead to
159 autonomous oscillations in yeast, we analyze ordinary differential equations models of large populati
160 ction networks): it builds dynamic (based on ordinary differential equation) models, which can be use
161 structed computationally by use of a coupled ordinary differential equation network (CODE) in a 2D la
163 n (ASR) that identifies links among nodes of ordinary differential equation networks, given a small s
164 HOENIX, a modeling framework based on neural ordinary differential equations (NeuralODEs) and Hill-La
165 Resurrection of Smoluchowski's 1918 full Ordinary Differential Equation (ODE) approach to the PBM
166 We model the gene expression dynamics by an ordinary differential equation (ODE) based formalism.
168 his paper is that change of variables in the ordinary differential equation (ODE) for the competition
172 onte Carlo (MCMC) method for the sampling of ordinary differential equation (ode) model parameters.
175 ts are negligible and we modify the standard ordinary differential equation (ODE) model to accommodat
180 cluding parameter reduction versus canonical ordinary differential equation (ODE) models, analytical
181 edge in Boolean networks, Bayesian networks, ordinary differential equation (ODE) models, or other mo
186 r the identification of links among nodes of ordinary differential equation (ODE) networks, given a s
188 C signal is cast explicitly as a first-order ordinary differential equation (ODE) with total titrant
189 port JUMPt, a software package using a novel ordinary differential equation (ODE)-based mathematical
192 s reactions deterministically as a system of ordinary differential equations (ODE) and uses a Monte C
193 ost existing methods of dynamic modeling use ordinary differential equations (ODE) for individual gen
194 it remains challenging to parameterize these Ordinary Differential Equations (ODE) for large scale ki
195 inty upon the estimation of parameters in an ordinary differential equations (ODE) model of a cell si
197 mic model, expressed in terms of a system of ordinary differential equations (ODE), developed by Stil
201 ral Networks (RhINNs) for solving systems of Ordinary Differential Equations (ODEs) adopted for compl
202 i) Boolean logic, (ii) deterministic kinetic ordinary differential equations (ODEs) and (iii) stochas
203 erical solutions of renovated boundary layer ordinary differential equations (ODEs) are attained by a
205 nomial neural networks and polynomial neural ordinary differential equations (ODEs) are two recent an
206 esent Cellbox, a recently proposed system of ordinary differential equations (ODEs) based model that
207 network (GRN) models that are formulated as ordinary differential equations (ODEs) can accurately ex
208 nd commonly described by Lotka-Volterra-type ordinary differential equations (ODEs) for continuous po
211 In particular, the use of sets of nonlinear ordinary differential equations (ODEs) has been proposed
212 deaths) and corresponds to the standard SIR ordinary differential equations (ODEs) in the infinite p
213 fusion, we transform the governing PDEs into ordinary differential equations (ODEs) representing the
214 stochastic differential equations (SDEs) and ordinary differential equations (ODEs) that addresses th
215 o numerically solve the system of non-linear ordinary differential equations (ODEs) that are created
218 based on SIRM data uses sets of simultaneous ordinary differential equations (ODEs) to quantitatively
220 ystem of coupled self-similar and non-linear ordinary differential equations (ODEs) with boundary res
222 ethods of modelling biochemical pathways are ordinary differential equations (ODEs), and logical/grap
223 thematical model, in the form of a system of ordinary differential equations (ODEs), governing cancer
224 try, characterized by highly coupled sets of ordinary differential equations (ODEs), is dynamically s
225 ower-dimensional, in the form of a system of ordinary differential equations (ODEs), solves the contr
226 linear dynamic system models, represented by ordinary differential equations (ODEs), using noisy and
227 rical approximations to solve the underlying ordinary differential equations (ODEs), which can compro
228 a non-autonomous nonlinear system (NANLS) of ordinary differential equations (ODEs), with coefficient
229 ess this, we have used an integrated coupled ordinary differential equations (ODEs)-based framework d
234 iii) solving the non-linear stiff systems of ordinary differential equations (ODEs); (iv) bifurcation
235 tical model, in the form of a system of five ordinary differential equations, of the core of this con
236 of network-based simulation methods, such as ordinary differential equations or Gillespie's algorithm
237 Unlike previous models that are based on ordinary differential equations, our mathematical model
238 s, including forward and inverse problems of ordinary differential equations, partial differential eq
239 cient than population-based methods based on ordinary differential equations, partial differential eq
241 od is successfully implemented to solve ODE (ordinary differential equation) problems with various co
244 stem, we have integrated a set of structured ordinary differential equations quantifying T7 replicati
245 teristic extensively for dynamic networks of ordinary differential equations ranging up to 30 interac
246 ntial equation), and reaction rate equation (ordinary differential equation) representations for CRNs
247 e model was formulated as a set of nonlinear ordinary differential equations represented with power-l
248 ractions, we have constructed a system of 29 ordinary differential equations representing different p
249 he partial differential equation, and so the ordinary differential equation should not be used if an
250 e new parameters embedded within a system of ordinary differential equations, similar to the well-kno
252 arying transmission rate over a selection of ordinary differential equation solvers and tuning parame
253 ral modeling frameworks: agent-based models, ordinary differential equations, stochastic reaction sys
254 omplex bio-models and supports deterministic Ordinary Differential Equations; Stochastic Differential
256 nheritance of cell-cycle-phase times, and an ordinary differential equation system to capture single-
259 we present DeepVelo, a neural network-based ordinary differential equation that can model complex tr
260 ion, and we derive its continuum limit as an ordinary differential equation that generalizes the repl
261 tions that are translated by Cellerator into ordinary differential equations that are numerically sol
262 versatile control framework based on neural ordinary differential equations that automatically learn
265 nts can be calculated by solving a system of ordinary differential equations that depend only on the
266 system are characterized by four non-linear, ordinary differential equations that describe rates of c
267 model takes the form of a set of nonlinear, ordinary differential equations that describe the change
268 developed that solves a system of algebraic-ordinary differential equations that describe the phenom
269 el of the infection described by six coupled ordinary differential equations that describe the time c
270 We cast the master equation in terms of ordinary differential equations that describe the time e
271 e pathogenesis of periodontitis by employing ordinary differential equations that described the dynam
272 is a four-dimensional, non-linear system of ordinary differential equations that describes the dynam
273 the co-culture's behavior using a system of ordinary differential equations that enable us to predic
274 s a result, techniques that are based on the ordinary differential equation to calculate the mixed-ve
276 mpartmentalized model of RVF and the related ordinary differential equations to assess disease spread
277 a and formulated a compartmental model using ordinary differential equations to investigate how the c
279 ed a varying coefficient model with multiple ordinary differential equations to learn a series of net
280 he human gut microbiota, we used a system of ordinary differential equations to model mathematically
282 this protein, we introduced a new system of ordinary differential equations to model regulatory netw
286 eveloped a set of models using compartmental ordinary differential equations to systematically invest
287 dy applied an age-structured model, based on ordinary differential equations, to describe an oyster p
292 cancer cells in the body, using a system of ordinary differential equations which gives rates of cha
293 on the space of solutions to the associated ordinary differential equations which no longer satisfy
294 terms of coupled non-homogeneous first-order ordinary differential equations, which have a dynamic re
295 dynamic biological phenomena as solutions to ordinary differential equations, which, when parameters
296 , the model is constructed as a system of 10 ordinary differential equations with 27 parameters chara
298 actions at the system-level lead to a set of ordinary differential equations with many unknown parame
299 a simplified mechano-chemical model based on ordinary differential equations with three major protein
300 Biological processes are often modeled by ordinary differential equations with unknown parameters.