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1 corporating uncertainty through a stochastic differential equation.
2 ity levels from the corresponding stochastic differential equation.
3 n mathematics as a linear, parabolic partial-differential equation.
4  single variable problem of a diffusion-only differential equation.
5   We model the HDX with a system of ordinary differential equations.
6  model is represented by a system of partial differential equations.
7 ulting in a set of 6 minimally parameterized differential equations.
8 ct of cancer development through a system of differential equations.
9 ternatives consisting of up to 1000 ordinary differential equations.
10 which are typically studied through ordinary differential equations.
11 oupled two-phase two-layer system of partial differential equations.
12 ten modeled using reaction-diffusion partial differential equations.
13 ulations are understood as coupled nonlinear differential equations.
14  circumvents the need for solving 12th order differential equations.
15 atistical approaches and systems of ordinary differential equations.
16 raction terms in a system of partial integro-differential equations.
17 thways successfully without solving ordinary differential equations.
18 any system that can be described by ordinary differential equations.
19 itably modelled by stiff systems of ordinary differential equations.
20 oscopic state variables as an alternative to differential equations.
21  it as a set of nonlinear coupled stochastic differential equations.
22 e.g., chemical reaction networks, stochastic differential equations.
23 the CYP1A biomarker, the model uses ordinary differential equations.
24  literature and defined as a set of ordinary differential equations.
25 rk to tackle this difficulty using impulsive differential equations.
26 pathways, and are based on simple non-linear differential equations.
27  and built a kinetic model based on ordinary differential equations.
28 are classically modeled by means of ordinary differential equations.
29 or model them with patchy models by ordinary differential equations.
30 perfectly mixed, and represented by ordinary differential equations.
31 nt the FIM in terms of solutions of ordinary differential equations.
32 licable, because they hold for any system of differential equations.
33  systems are typically modelled by nonlinear differential equations.
34 implemented as systems of nonlinear ordinary differential equations.
35 lar (multicellular) events by using ordinary differential equations.
36 ing 15 interacting reactions and 26 ordinary differential equations.
37  for a population of newts using a system of differential equations.
38 s the discretization and solution of partial differential equations.
39 tional algorithms based on discretization of differential equations.
40 gures the demonstrated problem into ordinary differential equations.
41 l as a system of coupled stochastic ordinary differential equations.
42 d the dynamics of T cell density via partial differential equations.
43 , expressed in terms of a system of ordinary differential equations.
44 tiotemporal dynamical evolution from partial differential equations.
45 notypic formation as a cohesive system using differential equations, a different approach-systems map
46  is proposed to solve the temporal auxiliary differential equations (ADEs) with a high degree of effi
47  outperforms its truncated rival and a delay differential equation alternative in recapitulating obse
48 [Formula: see text])-in a system of ordinary differential equations analogous to the Susceptible-Expo
49 erface with support for arbitrary functions, differential equation and kinetic system integration, an
50          VCell provides a number of ordinary differential equation and stochastic numerical solvers f
51 nsists of a large system of coupled ordinary differential equations and algebraic equations.
52 t and approximate solutions of the continuum differential equations and compare to kinetic Monte Carl
53 e cortisol dynamics using nonlinear ordinary differential equations and estimated the kinetic paramet
54  the calculations such as the solving of the differential equations and of the associated sensitivity
55          We construct a model based on delay differential equations and parameterize and validate the
56 id computational model comprised of ordinary differential equations and stochastic simulation.
57 e group selection model by solving a partial differential equation, and that it is mathematically imp
58 ) equilibrium of a linear system of ordinary differential equations, and (ii) deterministic data.
59 ow that an instance with 156 parameters, 144 differential equations, and 1,704 experimental data poin
60  problems with up to 2,352 parameters, 2,304 differential equations, and 20,352 data points in less t
61 atory mediators is described through partial differential equations, and immune cells (neutrophils an
62 model by designing and solving the system of differential equations, and obtaining computationally pr
63 matching approach has been proposed to solve differential equations approximately.
64 design and advanced numerical integration of differential equations are developed.
65                          Both Petri nets and differential equations are important modeling tools for
66  machine) that, when its non-linear ordinary differential equations are integrated numerically, shows
67  be used even in cases where models based on differential equations are not applicable, for example,
68        The simultaneous first-order ordinary-differential equations are solved numerically for the co
69        The simultaneous first-order ordinary-differential equations are solved numerically for the re
70 only five state variables linked by integral-differential equations are sufficient to describe the on
71 ptions and hypotheses formulated as ordinary differential equations) are separated from the experimen
72    In this article, we show that the partial differential equations arising from classical elastic mo
73 hey often involve highly nonlinear and stiff differential equations as well as many experimental data
74 unctional response, we here analyze a set of differential equations as well as simulations employing
75                                The system of differential equations associated with the proposed cons
76 e and time, whereas existing models based on differential equations average over space and consequent
77           We limit our analysis to nonlinear differential equation based inference methods.
78 niques of these models can be classified as "differential equation based" (DE) or "agent based" (AB).
79               We show that a simple model of differential equations based on chemical kinetics accura
80 r competition using a system of two ordinary differential equations based on the Lotka-Volterra model
81                                    We used a differential-equation based poliovirus transmission and
82    In this work, we present an ODE (Ordinary Differential Equation)-based model of the expression of
83                                     Ordinary Differential Equation-based (ODE) models are useful when
84                                  An ordinary differential equation-based mathematical model was devel
85                                    We used a differential equation-based model to characterize the dy
86                                    We used a differential equation-based model to simulate the dynami
87                               We show that a differential equation captures the details of the tempor
88                A set of first order, partial differential equations comprise the model and were solve
89 a system of partial differential and integro-differential equations containing a flux term to represe
90  networks is produced by a system of partial differential equations coupling landscape evolution dyna
91 se laws typically take the form of nonlinear differential equations depending on parameters; dynamica
92 modeled by a pair of first order, non-linear differential equations, derived from the Lotka-Volterra
93              Parameters derived from partial differential equation describing the process of gradient
94 ere exists an analytical solution of partial differential equations describing mass transfer in ACE.
95 ound that equilibrium properties of ordinary differential equations describing the dynamics in local
96                          We propose a set of differential equations describing the dynamics of: (1) a
97 metabolism with a system of coupled ordinary differential equations describing the individual metabol
98 l model, in the form of a system of ordinary differential equations, describing dynamics of platinum-
99 a potential-like function using a stochastic differential equation description (Langevin/Fokker-Planc
100  be simulated using either the VCell partial differential equations deterministic solvers or the Smol
101 r model using a displacement integro-partial differential equation (DiPDE) population density model.
102                              In our Ordinary Differential Equation examples the crossing of infinity
103                                 A stochastic differential equation for supersaturation predicts that
104  we reduce the problem to a single nonlinear differential equation for the luminal radius.
105                  This model is expanded into differential equations for five-site NMR chemical exchan
106  potential dynamics, and a system of partial differential equations for myoplasmic and lumenal free C
107 we obtain a low-dimensional set of nonlinear differential equations for the evolution of two-synapse
108  we derive and solve the systems of ordinary differential equations for the two lower-order moments o
109 ltine and Rawlings (HR), is a combination of differential equations for traditional deterministic mod
110 ugh the use of mathematical models by way of differential equations, for example, reaction-diffusion
111                               We developed a differential equation framework of cyst growth and emplo
112 tion from standard text files, conversion to differential equations, generating stand-alone Python so
113 reduce the generated mechanisms, an ordinary differential equations generator and solver to solve the
114 l approaches to cellular mechanisms based on differential equations, graph models, and other techniqu
115 ily of methods for solving continuum partial differential equations has shown promise in realizing pa
116 the need for solving complex single-molecule differential equations has the potential to address some
117 fast approximation of numerical solutions of differential equations in general.
118 e parsed by Pycellerator and translated into differential equations in Python, and Python code is aut
119 rvation laws, which are expressed as partial differential equations in space and time.
120 aplace Approximation with Stochastic Partial Differential Equation, INLA-SPDE) is used to predict the
121 de speedups relative to a CPU-based ordinary differential equation integrator.
122  space of a parameterized system of ordinary differential equations into regions for which the system
123 thm that incorporates the system of ordinary differential equations into the neural networks.
124 Modeling of dynamical systems using ordinary differential equations is a popular approach in the fiel
125 Modeling of dynamical systems using ordinary differential equations is a popular approach in the fiel
126      A system of nonlinear transient partial differential equations is solved numerically using cell-
127  representing mycelia as a system of partial differential equations is used to simulate combat betwee
128 d model, posed as a set of nonlinear partial differential equations, is a continuous treatment of the
129 Because our model comprises only 17 ordinary differential equations, its computational cost is orders
130 metry theory through Lokta-Volterra ordinary differential equations (LVODE) into an R-based computing
131  only be described by such a complex partial differential equation model and not by ordinary differen
132                                This ordinary differential equation model could be fit to both inflamm
133                        Based on a stochastic differential equation model for a single genetic regulat
134 le acceleration and recruitment by forming a differential equation model for ATP mediated calcium-cel
135                    Here, we used an ordinary differential equation model for CML, which explicitly in
136  of this study was to develop and validate a differential equation model for energy balance during pr
137   In this paper we present a simple ordinary differential equation model for wound healing in which a
138                We formulate a simple partial differential equation model in an effort to qualitativel
139           The methods are based on fitting a differential equation model incorporating the processes
140                                  An ordinary differential equation model is developed and the antibio
141 cell level, a mechanistic nonlinear ordinary differential equation model is used to calculate the tra
142 ination with a previously validated ordinary differential equation model of apoptosis to simulate the
143                  Here, we show that a simple differential equation model of normalization explains th
144 ate an individual-based model and an integro-differential equation model of reversible phenotypic evo
145                   We constructed an ordinary differential equation model of SHR and SCR in the QC and
146            We here present a simple ordinary differential equation model of the intrahost immune resp
147 formulate a deterministic nonlinear ordinary differential equation model of the sterol regulatory ele
148 d an agent-based model (ABM) and an ordinary differential equation model of tumor regression after ad
149 ase in more detail, we developed an ordinary differential equation model that accounts for two system
150 ks the position of individuals and a partial differential equation model that describes locust densit
151 one or more cytokines to develop an ordinary differential equation model that includes the effect of
152                            We used a partial differential equation model that postulates three morpho
153 ved in efficacy, here we develop an ordinary differential equation model that predicts bacterial grow
154 formulated a minimal one-dimensional partial differential equation model that reproduced the range of
155 on principal component analysis, an ordinary differential equation model was constructed, consisting
156                We also developed an ordinary differential equation model which is the Kolmogorov forw
157                     We combine a mechanistic differential equation model with a nonparametric statist
158 mic trends more effectively than an ordinary differential equation model with generalized mass action
159 n the development of a Monod-equation based, differential equation model, which produces computer sim
160 iological systems is by creating a nonlinear differential equation model, which usually contains many
161 e evolution of CML according to our ordinary differential equation model.
162 xperimental data, resulting in a logic-based differential equation model.
163 re for mixed-effects modeling with a partial differential equation model.
164                           First, we derive a differential equations model of midgut resizing and show
165                              Here, we used a differential equations model of the signalling network t
166  circadian pattern of DNA replication, and a differential equations model that describes time-depende
167      In this article, we formulate a partial-differential-equation model to describe the interaction
168                   We also derived an integro-differential equation modeling a second, dynamic phase i
169 atocytes with interaction graph and ordinary differential equation modeling, we identify and experime
170               We use stochastic and ordinary-differential-equation modeling frameworks to examine var
171            In this review we present several differential equation models and assess their relative s
172  on the notion that all mechanistic ordinary differential equation models can be coupled with a laten
173  rebinding and show that well-mixed ordinary differential equation models can use this probability to
174                                   Continuous differential equation models do not recapitulate this ph
175                                              Differential equation models have also been used to mode
176  evaluate potentially vast sets of candidate differential equation models in light of experimental an
177                                        Delay-differential equation models include lags but no variati
178  we developed a series of nonlinear ordinary differential equation models that are direct representat
179 inescence experiments and in silico ordinary differential equation models, and will lead to a better
180 ferential equation model and not by ordinary differential equation models.
181 trophy and typical Alzheimer's disease using differential equation models.
182 tures intracellular dynamics through partial differential equation models.
183                     We therefore propose two differential-equation models of dengue fever (DF) with d
184 works): it builds dynamic (based on ordinary differential equation) models, which can be used for mec
185 blem appear in the form of nonlinear partial differential equations (NPDEs) against the conservation
186 rection of Smoluchowski's 1918 full Ordinary Differential Equation (ODE) approach to the PBM is anoth
187 ivity analysis of large and complex ordinary differential equation (ODE) based models.
188                         We built an ordinary differential equation (ODE) model describing pathway act
189                                  An ordinary differential equation (ODE) model further supported the
190 o (MCMC) method for the sampling of ordinary differential equation (ode) model parameters.
191                   Using a nonlinear ordinary differential equation (ODE) model that accounts for acti
192 We previously developed a nonlinear ordinary differential equation (ODE) model to explain the dynamic
193              In fact, commonly used ordinary differential equation (ODE) models of genetic circuits a
194 ally, in the special case of linear ordinary differential equation (ODE) models, we explore how wrong
195 cer were developed with the help of ordinary differential equation (ODE) models.
196 ool for building compartmentalized, ordinary differential equation (ODE) models.
197                               Using ordinary differential equation (ODE)-based modeling, we show that
198 Most models of viral infections use ordinary differential equations (ODE) that reproduce the average
199 ults to solutions from a continuum, ordinary differential equations (ODE)-based model.
200 al dynamics described by a group of ordinary differential equations (ODE).
201 lutions of renovated boundary layer ordinary differential equations (ODEs) are attained by a proficie
202 ly described by Lotka-Volterra-type ordinary differential equations (ODEs) for continuous population
203                    Next, we derived ordinary differential equations (ODEs) from the data relating the
204                                 The ordinary differential equations (ODEs) that describe the degradat
205                             We used ordinary differential equations (ODEs) to describe the transcript
206                                     Ordinary differential equations (ODEs) with polynomial derivative
207 ting and simulating models that use ordinary differential equations (ODEs).
208 ed by systems of coupled non-linear ordinary differential equations (ODEs).
209  meshes and solvers for ordinary and partial differential equations (ODEs/PDEs).
210 attice IBM leads to a single partial integro-differential equation of the same form as proposed by Sh
211 scriptions to a model in terms of stochastic differential equations of Langevin type, which we use to
212 alleles, p(i),i=1,...,k, satisfy a system of differential equations of the form (1.2).
213 nuum mechanical model and associated partial differential equations of the GC model have remained lac
214 ed a previously developed model that employs differential equations of the main biochemical interacti
215 el, in the form of a system of five ordinary differential equations, of the core of this control syst
216 (in this case an advection-diffusion partial differential equation on a growing domain) which describ
217 gle S4 segment using the Langevin stochastic differential equation or the behavior of a population of
218 k-based simulation methods, such as ordinary differential equations or Gillespie's algorithm, provide
219 er of candidate models, including parametric differential equations or their corresponding non-parame
220  on ordinary differential equations, partial differential equations, or the Gillespie stochastic simu
221 e previous models that are based on ordinary differential equations, our mathematical model takes int
222 n population-based methods based on ordinary differential equations, partial differential equations,
223                   Reaction-diffusion partial differential equation (PDE) models have been only occasi
224        The solution to the diffusion partial differential equation (PDE) that mimics the evolutionary
225  of the governing reaction-diffusion partial differential equation (PDE).
226 model converges to the solution of a partial differential equation (PDE).
227                                      Partial differential equations (PDE) were built to model a radia
228                                  The partial differential equations (PDEs) are derived using the exte
229            The numerical solution of partial differential equations (PDEs) is challenging because of
230                   Therefore, fitted ordinary differential equations provide a basis for single-trial
231         Mechanistic models based on ordinary differential equations provide powerful and accurate mea
232 have integrated a set of structured ordinary differential equations quantifying T7 replication and an
233 extensively for dynamic networks of ordinary differential equations ranging up to 30 interacting node
234 s macroparasite model, which comprises three differential equations representing the host, attached p
235 such as solving a linear system or solving a differential equation require a large number of computin
236 tz diffusion dynamics, which is a stochastic differential equation (SDE).
237                                   Stochastic Differential Equations (SDE) are often used to model the
238 he first model, posed as a set of stochastic differential equations (SDE), we propose that a simple b
239           We describe a system of stochastic differential equations (SDEs) which model the interactio
240 ntified using models described by stochastic differential equations (SDEs).
241 merical simulations of the governing partial differential equations, showing that concentration-depen
242 ameters embedded within a system of ordinary differential equations, similar to the well-known suscep
243 e applied to traditional ordinary or partial differential equation simulations as well as agent-based
244 ferential expression analysis with in silico differential equation simulations to yield accurate, qua
245                   Our approach uses ordinary differential equations, solved implicitly and numericall
246 ting capabilities of a deterministic partial differential equation solver with a popular particle-bas
247 e of cell-cycle-phase times, and an ordinary differential equation system to capture single-cell prot
248                MANTIS wraps a C/C++ ordinary-differential equations system and Runge-Kutta solver int
249 ntionally, plant clock models have comprised differential equation systems based on Michaelis-Menten
250 ffExPy proposed ensembles of several minimal differential equation systems for each differentially ex
251 ands out as the dispersive nonlinear partial differential equation that plays a prominent role in the
252  squares solution of simultaneous, nonlinear differential equations that account for free cortisol ap
253 nally demanding time stepping of the partial differential equations that are often used to model Ca(2
254  physical systems are described by nonlinear differential equations that are too complicated to solve
255                                 The ordinary differential equations that define this model were numer
256                            We thereby obtain differential equations that describe how nonlinearity ca
257 ast the master equation in terms of ordinary differential equations that describe the time evolution
258  method with a set of simultaneous nonlinear differential equations that described nuclear magnetic r
259 r-dimensional, non-linear system of ordinary differential equations that describes the dynamic intera
260 stem cell systems are based on deterministic differential equations that ignore the natural heterogen
261 se models are usually formulated in terms of differential equations that relate the growth rate of th
262                Here we show that a system of differential equations that support a subcritical Hopf b
263  causal models-state space models based upon differential equations-that can be used to distinguish s
264 y a closure ansatz to obtain a closed set of differential equations; that can become the basis for th
265 uum limit of this model is a system of Delay Differential Equations, the analysis of which reveals cl
266                                  For Partial Differential Equations, the crossing of infinity may per
267 ries of patient-specific iodine mass-balance differential equations, the solutions to which provided
268 iques from nonlinear dynamics and stochastic differential equation theories, providing a systematic f
269  model that starts from a well-known partial differential equation to describe the dithering of an at
270 examine the ability of each class of partial differential equation to support travelling wave solutio
271 e multivariable problem of kinetic-diffusive differential equations to a single variable problem of a
272 alized model of RVF and the related ordinary differential equations to assess disease spread in both
273 roplets requires analysis by complex coupled differential equations to derive diffusion coefficients.
274                     We developed a system of differential equations to describe acute liver injury du
275 c melanoma, we developed a set of stochastic differential equations to describe the dynamics of heter
276 f Ca(2+) and buffer and use these stochastic differential equations to determine the magnitude of [Ca
277  nonlinear system of enzymatic functions and differential equations to mathematically model molecular
278 lving Navier-Stokes and diffusion-convection differential equations to optimize the coupling between
279   The mathematical model presented here uses differential equations to predict the effects of intrace
280     Network mapping makes use of a system of differential equations to quantify the rule by which tra
281 this paper, we construct a model of ordinary differential equations to study the dynamics of virus sh
282 ion framework that enables us to compare the differential equation version with an agent-based versio
283       A mathematical model with one ordinary differential equation was used to estimate translation (
284                         A system of ordinary differential equations was used to calculate protein tur
285  By incorporating this relation in a partial differential equation, we demonstrate that this model co
286                       Then, using stochastic differential equations, we assess statistical relationsh
287                                     Ordinary differential equations were applied to describe the subs
288 estigate the approximate dynamics of several differential equations when the solutions are restricted
289 ient description of the dynamics in terms of differential equations which capture the statistics of t
290 ives rise to 22 different classes of partial differential equation, which can include Allee kinetics
291 es, there are natural bases derived from the differential equations, which promote sparsity.
292 iological phenomena as solutions to ordinary differential equations, which, when parameters in them a
293 nty in the model topology through stochastic differential equations whose trajectories contain inform
294             A system of 16 non-linear, delay differential equations with 66 parameters is developed t
295                   Using a system of ordinary differential equations with a pair approximation techniq
296                        We adapted stochastic differential equations with diffusion approximation (a c
297 as an optimal control problem for stochastic differential equations with jumps.
298 t the system-level lead to a set of ordinary differential equations with many unknown parameters that
299 blem for gene regulatory networks modeled by differential equations with unknown parameters, such as
300 ical processes are often modeled by ordinary differential equations with unknown parameters.

 
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