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1 within and between cells that are inherently stochastic.
2 terministic even when individual defects are stochastic.
3 nges, whereas about 40% is attributed to the stochastic accumulation of mutations whose pleiotropic e
4 ata-dependent acquisition methods effectuate stochastic acquisition of data in complex mixtures, whic
5                                        Using stochastic actor-oriented models, we investigate the lon
6                Here, we present results of a stochastic agent-based microsimulation model of the COVI
7  progenitors that transition from a phase of stochastic amplification by cell division into a phase o
8 ervised learning systems using nanoscale and stochastic analog memory synapses.
9 hemical setups, the background processes are stochastic and appear at distinct frequencies that do no
10 se tracking to study model-based learning in stochastic and deterministic (pattern-based) environment
11 for a system to maintain balance between its stochastic and deterministic assembly processes (as in t
12 s life, with emphasis on the balance between stochastic and deterministic processes.
13                 We found that navigation was stochastic and did not rely on the continuous modulation
14 zation by the nuclear membrane provides both stochastic and functional buffering of transcript activi
15  together, KRAS-mediated DNA methylation are stochastic and independent of canonical downstream effec
16 ecially suitable for biological systems with stochastic and nonlinear dynamics, for which the likelih
17 dynamics between states are best captured by stochastic and reversible models.
18 racking of individual receptors are based on stochastic and transient binding between aptamers and th
19 les where dispersal is high, but may be more stochastic and unpredictable at larger scales.
20 nd and carries information on deterministic, stochastic, and control influences.
21 s, undergoing autoinhibition (TBAT) or quasi-stochastic autoacceleration (NaI) and cogenerating perfl
22 ilizing the giant spin Hall effect, enabling stochastic behavior.
23 ans strains UA159 and GS-5 were examined for stochastic behaviors in transcription of the lac operon.
24 re maintained by population asymmetry, where stochastic behaviors of multiple individual cells collec
25 e framework of the classical network theory (stochastic block model, SBM) does not take into account
26              Our model combines the class of Stochastic Block Models for community formation with Gau
27 itative datasets, (iii) the integration of a stochastic Boolean simulator, (iv) a tool to identify mi
28                              We combine this stochastic breast tumor induction model with inverted li
29                     We find that infrequent, stochastic bursts of transcription result in the co-expr
30  again and activated transcription occurs in stochastic bursts.
31  in the level of a TF that is synthesized in stochastic bursts.
32 ution or on the membrane, and we predict how stochastic but localized dephosphorylation of membrane l
33  The anchor cell is initially specified in a stochastic cell fate decision mediated by Notch signalin
34 best-fit rates and statistical intervals for stochastic cell-state transitions.
35                                              Stochastic changes in DNA methylation (i.e., spontaneous
36                                  Gradual and stochastic changes in genomic and epigenomic regulation
37                   The rate constants for the stochastic clock network are consistent with those deter
38                                 Here, we use stochastic closure analysis to determine if a genomic tr
39 urce competition, metabolic crossfeeding and stochastic colonization - can qualitatively reproduce pa
40 ministic constrains imposed by diet and age, stochastic colonization in early life has long-lasting i
41                                            A stochastic compartmental network model of SARS-CoV-2 spr
42                                            A stochastic computational framework was successfully deve
43 ted binding surface in the unbound form, and stochastic conformational changes in D1 facilitate initi
44 apture nested RNA base-pairing correlations (stochastic context-free grammars).
45 nified threshold models of survival assuming stochastic death), indicating that sensitivity toward cy
46  associated to Ag oscillations evolving into stochastic decaying fluctuations.
47             Statistical analysis disclosed a stochastic deterministic relationship between methylatio
48 ationship between organism body size and the stochastic-deterministic balance operating on community
49 to foster mutagenesis, thereby enhancing the stochastic development of acquired resistance mutations.
50 on models, e.g., chemical reaction networks, stochastic differential equations.
51  Following studies of a model system (urea), stochastic differential scanning calorimetry (SDSC) was
52 ing to show that stochastic forces (drift or stochastic dispersal) act on fungal community assembly i
53  positions, and analyze the influence of the stochastic drift on the search success.
54 methods for the analysis of large, nonlinear stochastic dynamic models, and develop computational alg
55  about one event per month, which suggests a stochastic dynamics behind beach stabilization.
56             In summary, our analysis reveals stochastic dynamics emerging from nonspecific binding of
57  we develop a master equation describing the stochastic dynamics of the probability density function
58 locities, and uncertainty quantification for stochastic effects in spatial matrix games.
59 -host relationship between selection and the stochastic effects of genetic drift, estimating an effec
60 sults address functional consequences of the stochastic effects of microbiota perturbations, whereby
61 handful of these channels, it is likely that stochastic effects play an important role in the pattern
62 y to bone marrow-both direct suppression and stochastic effects, leading to neoplasia.
63 netic, and environmental factors, as well as stochastic elements, in diverse phenotypic variance is n
64 ingly, depending on the initiation kinetics, stochastic elongation can either enhance or suppress cel
65        Collectively, these data suggest that stochastic encounters with Ag occur frequently enough to
66 ctions as a general RNA chaperone by using a stochastic, energy-intensive mechanism to promote RNA un
67                    Since microstructures are stochastic, ensembles of meso-scale simulations are requ
68 racts with a quantum annealer that plays the stochastic environment role of learning automata.
69            Fluctuating population density in stochastic environments can contribute to maintain life-
70  amplifications also tune gene expression in stochastic environments in which transcription-factor-ba
71 source availability, where depleted and more stochastic environments promote investment in each repro
72 ion of social strategies needed to thrive in stochastic environments, strategies that in our case stu
73 totic tissues such as the brain are prone to stochastic (epi-)genetic alterations that may cause incr
74  were rendered observable by extracting rare stochastic events out of an overwhelming background usin
75 thod for estimating the precise rate of such stochastic events using pedigree-based DNA methylation d
76 native protein conformations, sampled during stochastic excursions by polymorphic/metamorphic protein
77                                   Finally, a stochastic extension of the model explains non-trivial c
78 xtinctions play an equally important role to stochastic extinction, even when the disturbance itself
79 eneity, thereby increasing the likelihood of stochastic extinctions.
80 ocal success is driven largely by biotic and stochastic factors and raise the possibility that purple
81 lso found that herds with smaller K had less stochastic fluctuation in abundances around K, but highe
82 ce switches after fundamental changes versus stochastic fluctuations in reward contingencies.
83 gnaling systematically shapes the intrinsic, stochastic fluctuations of actin in the growth cone to p
84 tical framework that explicitly accounts for stochastic fluctuations of an individual consumer's ener
85 babilistic mechanism by which Abl biases the stochastic fluctuations of growth cone actin to direct a
86 m system with abundant sampling to show that stochastic forces (drift or stochastic dispersal) act on
87 l membrane show that concentration-dependent stochastic forces inside cells, compatible in magnitude
88 stable selective pressures, during which the stochastic forces of drift and mutation conspire to gene
89 ranscription-coupled activity is a source of stochastic forces that are substantially larger than the
90 is heterogeneity is impacted by climatic and stochastic forcing, but additional high-resolution paleo
91 c rate, which is the product of an intrinsic stochastic fractal rate and a global modulatory gain.
92 d structure) manner by exploiting underlying stochastic fracturing process.
93         The simulations are carried out in a stochastic framework that naturally captures rare events
94                      Our results demonstrate stochastic gene expression dependent on positioning rela
95                    We investigated impact of stochastic gene expression on pattern formation, focusin
96      We investigate a multihousehold dynamic stochastic general equilibrium (DSGE) model in which pas
97 he human microbiome, and investigate whether stochastic generalized Lotka-Volterra models could repro
98 olleagues, that show how programmed but also stochastic generation of variation in cellular circadian
99 further examination in random matrix theory, stochastic geometry, and related topics.
100 gh-dimensional loss function, typically by a stochastic gradient descent (SGD) strategy.
101 and why simple optimization schemes, such as stochastic gradient descent, do not end up trapped in lo
102 and optimized through spectral embedding and stochastic gradient descent.
103    We consider a simplified model based on a stochastic growth process driven by a continuous time ra
104             Across all coral taxa, projected stochastic growth rates (lambda(s) ) were found to be lo
105 on control treatment [CCT] scenarios), EPA's Stochastic Human Exposure and Dose Simulation (SHEDS)-Mu
106  analysis, fractional Brownian motion with a stochastic Hurst exponent was used to interpret, for the
107 tions of wetlandscape connectivity driven by stochastic hydroclimatic forcing, conceptualizing wetlan
108 nsically limited because of volume-dependent stochastic ice formation at subzero temperatures.
109  then quantified how explicit spatial and/or stochastic implementations alter outcomes, even when all
110  suggest that DNA methylation changes may be stochastic in nature, while other groups propose distinc
111 n bacteria to humans has been observed to be stochastic in nature: toggling between active and inacti
112               Although neural responses were stochastic in time, cue identity could be read out from
113                                  We simulate stochastic infection curves incorporating core elements
114 l lines have relied on frameshifts caused by stochastic insertion/deletion in all alleles.
115 bitrary probability functions and controlled stochastic interaction or correlation between probabilis
116  Stochastic Resonance at one common level of stochastic intracellular noise across days from 6 to 36
117 resilience, initial resilience and intrinsic stochastic invariability) using first-order multivariate
118                                 ICC-SS fired stochastic localized Ca(2+) transients.
119 el based on environmental stochasticity, the stochastic logistic model, quantitatively predicts the t
120                           Antibiotics caused stochastic loss of members of the microbiota, but the mi
121 tion between the two sites in a repeated and stochastic manner, and average dwell times in the respec
122            These hinge angles fluctuate in a stochastic manner, and perfectly cylindrical microtubule
123  generate spontaneous Ca(2+) transients in a stochastic manner.
124 d carbonate delta(238)U data) with a coupled stochastic mass balance model.
125 ce onset were characterized and a multiscale stochastic mathematical model was proposed to link the i
126                                              Stochastic mathematical modeling provides insight to the
127  analyse patterns in root trajectories and a stochastic-mechanical theory to establish how root defle
128 h/field observations with spatially explicit stochastic metapopulation models to study the near-term
129 nsferase alleles revealed that intracellular stochastic methylation generates a mosaic of methylomes
130  methylation patterns in C. neoformans, rare stochastic methylation loss and gain events, and the act
131                                            A stochastic model confirms the presence of an autocatalyt
132           Here, by developing a system-level stochastic model constrained by a large set of single-ce
133                                            A stochastic model demonstrated the separation of TF input
134 larization model based on coupling between a stochastic model for the segregation of signaling molecu
135 nalysis of disease progression is based on a stochastic model of a population of infectious agents in
136                        Using a parameterized stochastic model of expansion, we find that this slowdow
137 erty line can be derived from an agent-based stochastic model of market exchange, combining all expen
138                            Here we develop a stochastic model of severe acute respiratory syndrome co
139             We then apply our framework to a stochastic model of the rocky intertidal food web, parti
140 nd replicated experimental system and in our stochastic model simulations points to potential fundame
141                         To fit the resulting stochastic model to data from FRAP measurements and to e
142                                 By fitting a stochastic model to the observed mRNA distributions, we
143 gical implement for control is a large scale stochastic model with countless parameters lacking robus
144                          We also developed a stochastic model with physically meaningful parameters t
145 yses of these dependencies by establishing a stochastic model.
146                         One such case is the stochastic modeling approach, which can be important whe
147 lts using Monte Carlo simulation in a tiered stochastic modeling approach: exposures were the highest
148                                            A stochastic modeling framework was developed to depict th
149                                              Stochastic modeling using reasonable biophysical paramet
150                                              Stochastic modelling and experimental data demonstrated
151 boundary layer, but we found that Lagrangian stochastic modelling is effective at predicting flight m
152                         Spatially structured stochastic models can capture these important features o
153                              Alignment-free, stochastic models derived from k-mer distributions repre
154 r experimental results with predictions from stochastic models of transcription, which indicated that
155 nce and model selection for deterministic or stochastic models using (i) standard rejection ABC or se
156 and this difference across aluminosilicates, stochastic molecular models of the various aluminosilica
157 ks for understanding the dynamics of complex stochastic molecular systems.
158 imate change need to account for large-scale stochastic mortality events to preserve critical habitat
159                                 We show that stochastic motor force not only enhances diffusion but a
160 lations of DNA to simulate deterministic and stochastic motor models.
161 ansmission, and operations-the Johns Hopkins Stochastic Multistage Integrated Network Expansion Model
162 accuracy of their energy functions and their stochastic nature imposes generation of a large number o
163                                          The stochastic nature of bond-based interactions facilitates
164 ypes, which is typically associated with the stochastic nature of gene expression processes.
165 ncy only in neuronal cells and emphasize the stochastic nature of lytic versus latency decision of HS
166 m both clinically and scientifically, as the stochastic nature of metastatic lesion formation introdu
167                                  Despite the stochastic nature of our small-scale, short-term, and ra
168 ocial behaviors, we need to measure both the stochastic nature of the behavior of isolated individual
169 landslide dynamics is challenging due to the stochastic nature of the environment.
170                      We define the duration, stochastic nature, and molecular mechanisms of IFNgamma-
171 imensionality reduction method t-Distributed Stochastic Neighbor Embedding (t-SNE) to plot the distri
172 lassification model, utilizing t-distributed stochastic neighbor embedding (t-SNE)-enhanced ensemble
173 s and methadone users, we demonstrate, via t-Stochastic Neighbor Embedding and k-means cluster analys
174 negative matrix factorization, t-distributed stochastic neighbor embedding, and uniform manifold appr
175  of mass spectrometry imaging: t-distributed stochastic neighborhood embedding (t-SNE) and uniform ma
176                           Like t-distributed Stochastic Neighborhood Embedding, the model can produce
177  Bayesian networks can be implemented by our stochastic network.
178                                              Stochastic networks for the clock were identified by ens
179 ain processes information accurately despite stochastic neural activity is a longstanding question(1)
180 hich model parameters agree with complex and stochastic neural data presents a significant challenge.
181  and bi-stable seizure end-points arise when stochastic noise is included.
182 ations are challenging as DS transitions are stochastic, non-repeatable and often strongly coupled ac
183  are well captured by a simple model for the stochastic nonlinear dynamics of the cells, which reveal
184 in early neural development is the origin of stochastic nuclear movement between apical and basal sur
185                       As a result, neutrally stochastic null models such as the SAR and rarefaction a
186                              A data movie of stochastic optical localization nanoscopy contains spati
187                                We use direct stochastic optical reconstruction microscopy (dSTORM) an
188  microscopy (AFM) in conjunction with direct stochastic optical reconstruction microscopy (dSTORM), m
189 otoactivated localization microscopy (PALM), stochastic optical reconstruction microscopy (STORM) and
190 chnique to remove autofluorescent noise from stochastic optical reconstruction microscopy (STORM) dat
191                                       Direct stochastic optical reconstruction microscopy resolved a
192                                        Using stochastic optical reconstruction microscopy we identifi
193 h a statistical model of detection and use a stochastic optimisation routine to identify which arrang
194                                       We use stochastic optimization to derive triggers that ensure h
195 whether promiscuous gene expression (PGE) is stochastic or coordinated, we sequenced transcriptomes o
196 ness aspect of the otherwise inefficient and stochastic OSKM reprogramming.
197 nations of dosage and treatment time lead to stochastic outcomes, with some simulation replicas showi
198  learning about the expectation, or mean, of stochastic outcomes.
199 Integrated Nested Laplace Approximation with Stochastic Partial Differential Equation, INLA-SPDE) is
200                  Inspired by restraining the stochastic paths of particles in the vicinity of the ele
201 mented ecology, are then vulnerable to small stochastic perturbations that further reduce the populat
202                                              Stochastic phase transformations within individual cryst
203 on-level changes in tissues can be driven by stochastic plasticity, meaning rare stochastic transitio
204  distinguishing error-enriched regions among stochastic polymerase errors.
205                                   As such, a stochastic process can produce cellular behaviours that
206 -like receptors (KIR) in human NK cells is a stochastic process exclusive to subsets of mature NK cel
207                                The time of a stochastic process first passing through a boundary is i
208                 Mathematical modeling of the stochastic process of cancer evolution can be used to de
209             Gene expression is an inherently stochastic process(1,2); however, organismal development
210              As opposed to an indiscriminate stochastic process, we find pronounced demethylation of
211 ukaryotic protein synthesis is an inherently stochastic process.
212 the population to the detrimental effects of stochastic processes (i.e. low densities where random ba
213 sed upon null modeling results, we show that stochastic processes drove molecular properties while bi
214                                          How stochastic processes give rise to the robust outcomes th
215 king the relative importance of adaptive and stochastic processes in insular evolution difficult to a
216 erlooked, but potentially important, role of stochastic processes in stabilising population dynamics
217                 Ultimately, these inherently stochastic processes manifest as noise in gene expressio
218 g and particle-associated communities, where stochastic processes play a larger role.
219                                 By contrast, stochastic processes tended to dominate soil fungal comm
220 rs how SOC cycling rates are governed by the stochastic processes that influence the proximity betwee
221 ata allowed us to reject the hypothesis that stochastic processes were responsible for community asse
222 ad using a hybrid model of deterministic and stochastic processes, fitted to previously published HTL
223 elatively more influenced by dispersal-based stochastic processes, while larger ones (fungi, protists
224 d because motion at the atomic scale follows stochastic processes.
225 pulations more susceptible to the effects of stochastic processes.
226 ntal volatility described by continuous-time stochastic processes.
227 ction exerted by the plant host, rather than stochastic processes.
228                                              Stochastic pulsatile dynamics have been observed in an i
229 showed that flagellar genes are activated in stochastic pulses without the means of feedback.
230                                              Stochastic pulsing of gene expression can generate pheno
231                  Our results demonstrate how stochastic pulsing of gene expression can play a key rol
232                            Here, we show how stochastic pulsing of gene expression enables spatial pa
233 ants maximize the expected carbon gain under stochastic rainfall in a competitive environment.
234  in Hittorf's and fibrous phosphorus to seed stochastic ("random") structure searches over hundreds o
235 y reversed mechanical hypersensitivity, with stochastic rate modulation achieving the highest efficac
236 ors in the neocortex of mice may result from stochastic rather than deterministic processes.
237 w that kinetic proofreading results from the stochastic removal and reformation of promoter nucleosom
238                                              Stochastic resonance (SR) is an ingenious phenomenon obs
239                                              Stochastic resonance (SR) is one of those astounding phe
240 microfluidics provided evidence for only one Stochastic Resonance at one common level of stochastic i
241      On the other hand, in processes such as stochastic resonance, noise can improve the detection of
242  describe our observations in the context of stochastic resonance, which we propose as a mechanism by
243 n the single cell oscillations away from the stochastic resonance.
244 rceptible transcriptional changes induced by stochastic responses to the cessation of biological func
245 s related to updating current beliefs during stochastic reversal learning.
246 nd responding to the immediate experience of stochastic rewards.
247 ssfully retrieved is an emergent property of stochastic sampling, requiring no explicit mechanism to
248 ees and optimal pipelines discovered using a stochastic search method called genetic programing.
249          Consequently, the efficiency of the stochastic search process of CTLs in the ECM should stro
250                       Our recent advances in stochastic separability of highdimensional data have pro
251 ng process, the result of each cell making a stochastic, signal-based decision.
252                          We then present the stochastic simulation of an example case of a four node
253                            We used in silico stochastic simulation of future hybrid performance in a
254                                        Using stochastic simulations and a synthetic biology approach
255 show that the tQSSA can be used for accurate stochastic simulations at a lower computational cost tha
256 ally-resolved human cell model and performed stochastic simulations for up to 15 minutes of biologica
257                                              Stochastic simulations of transmitter release from vesic
258       We use mean-field equations as well as stochastic simulations to derive the epidemic threshold,
259                        Further, we performed stochastic simulations to evaluate if identified differe
260 tional experiments: each averaged over 1,000 stochastic simulations.
261               We then explore its use on the stochastic SIR model to predict the final size distribut
262  coarse-grained model of SUHI coupled with a stochastic soil water balance is developed to demonstrat
263 ndividual-level variation into a two-species stochastic spatial Ricker model, we provide evidence tha
264 omplex flow of electrical activity driven by stochastic spatio-temporal synaptic input streams in the
265 k building block implemented with inherently stochastic spintronic devices based on the natural physi
266 ithin the workflow included repeated runs of stochastic steps and cell subsampling.
267 hieved by a combination of two intrinsically stochastic steps: random receptor generation by VDJ reco
268                                              Stochastic strategies are more robust in some cases due
269 s at very high levels of missing data, where stochastic strategies, like acquaintance immunization, b
270 tupalong-Balukhali Expansion Site, we used a stochastic Susceptible Exposed Infectious Recovered (SEI
271 nificantly different than those predicted by stochastic switching alone.
272 ive random access memory (RRAM) suffers from stochastic switching due to the random kinetic motion of
273 , we perform experiments on thermally driven stochastic switching in the gamma ray environment.
274  models are non-Markovian, recent results on stochastic systems with random delays allow us to rigoro
275 ations with the number of variables in large stochastic systems.
276  estimates suggested no such learning in the stochastic task.
277           Overall, the results indicate that stochastic tegument packaging provides a mechanism enabl
278 l, which constituted no heatwave but natural stochastic temperature variability (0HW), two treatments
279 velocity, pausing and slipping are primarily stochastic temporal events.
280                                        Using stochastic thermodynamics, we compute the total energy c
281 earns a probabilistic model of 1-dimensional stochastic trajectories generated from higher-dimensiona
282 ELs from post-transcriptional modifications, stochastic transcription errors, and technical noise, im
283                     The relationship between stochastic transcriptional bursts and dynamic 3D chromat
284  underlying design principles for generating stochastic transcriptional pulses without feedback.
285 ptor phosphorylation events as a sequence of stochastic transitions between discrete biochemical stat
286 riven by stochastic plasticity, meaning rare stochastic transitions of single-cell phenotype.
287               Quantifying the rates of these stochastic transitions requires time-intensive experimen
288 tween multiple species and subspecies with a stochastic translocation pattern into the bloodstream.
289                               We developed a stochastic transmission model, parameterised to the COVI
290 n, single-stranded regions formed because of stochastic uncoupling of the leading-strand DNA polymera
291 s that are not efficient in representing the stochastic variables in a Bayesian network that encode t
292 ertain schizophrenia risk loci can influence stochastic variation in gene expression through epigenet
293 F12 functions heterochronically to fine-tune stochastic variation in wild type floral number and simi
294          Our data indicate that, rather than stochastic variation, read-level CpG methylation pattern
295 lay more heterogeneity because of the higher stochastic variations in n.
296 splay a more uniform uptake, reflecting less-stochastic variations in n.
297               However, debate remains on how stochastic versus deterministic assembly processes influ
298 y, and flooded) that represent a gradient of stochastic versus deterministic assembly processes.
299 e expression (either in a deterministic or a stochastic way), the interaction between different cell
300                       The occurrence of this stochastic yield catastrophe does not depend on model de

 
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