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1 score of the residuals based on a predefined statistical model.
2 e transcript as determined within a Bayesian statistical model.
3  of interaction between cells we developed a statistical model.
4  BRCA1 using VarCall, a Bayesian integrative statistical model.
5 k of capability to determine the most proper statistical model.
6 ch prevented application of the prespecified statistical model.
7 t motion, the stretched exponential, and the statistical model.
8 ual-based model, by approximating it using a statistical model.
9 while failing to quantify uncertainty in the statistical model.
10 led XAEM based on a more flexible and robust statistical model.
11 enome and inferring likelihoods from complex statistical models.
12 c addition reactions to imines and developed statistical models.
13 or geographic differences in FA content with statistical models.
14 oftware tools, or a dataset for applying new statistical models.
15  approaches that deploy machine learning and statistical models.
16 red by the piecemeal development of relevant statistical models.
17 wo different environments with two different statistical models.
18 raction, dimension reduction, and tree-based statistical models.
19  test composite null hypotheses in irregular statistical models.
20 mming is a powerful methodology for building statistical models.
21 iable results, which should be compared with statistical models.
22 lysis using EZ-Info, and the creation of the statistical models.
23 ed batch effects can introduce biases in the statistical models.
24 ifferences in gene expression using advanced statistical modeling.
25 nce of DRM was assessed using Bayesian-based statistical modeling.
26 vers of land-use change supported by spatial statistical modeling.
27 y have potential advantages over traditional statistical modeling.
28 ingly available genomic data and advances in statistical modelling.
29  a novel method to analyse CNP using spatial statistical modelling.
30  cycle data) in a semiblinded fashion, using statistical models, 25 mug/kg BW/d BPA [BPA(25)], or 250
31                                          Two statistical models,a general additive model (GAM) and GA
32 the residual contamination and corrected our statistical models accordingly to provide a rigorous ana
33 esponses were analysed using a mixed-effects statistical model accounting for the mean response and v
34                        Inclusive, multistage statistical models accurately predicted likelihoods of r
35                  To that end, we construct a statistical model addressing joint distributions of part
36                                              Statistical modelling (adjusted incident rate ratios [IR
37 ass spectrometry imaging in conjunction with statistical modeling allows discrimination of renal tumo
38 uired by DESI-MS imaging in conjunction with statistical modeling allows discrimination of renal tumo
39                                The resulting statistical models also allow for extrapolation to out-o
40                        We propose a Bayesian statistical model and a variational expectation maximiza
41  selection of the most proper multi-modality statistical model and downstream analysis, useful in a s
42 ng the directionality of these links through statistical modeling and verifying our findings with com
43 ant disconnect is found to exist between the statistical modelling and biological performance of pred
44 h our results are based on inference through statistical modelling and do not provide an absolute pro
45               Using single-cell RNA-seq with statistical modelling and modulation of energy metabolis
46                           We propose several statistical models and different methods to compute and
47  most of them, however, are based on complex statistical models and handle the multi-class case in an
48  aim of building and evaluating multivariate statistical models and machine learning methods for the
49                                          All statistical models and summary estimates were weighted t
50  The SM has deep connections with parametric statistical models and the theory of phase transitions i
51 ntitative information from the mass spectra, statistical modeling, and model-based analysis of LC-MS/
52 ng biodiversity data, environmental data and statistical modelling, and could also be adopted by a br
53 aracteristics, sampling, exposure, outcomes, statistical modelling, and parameters from articles.
54  From its measured performance, we develop a statistical model applicable to much larger datasets.
55                                              Statistical models applied to Year-3 data could help pre
56                          Here, we describe a statistical model approach to reliably transform passive
57                                          The statistical modeling approach developed in this study re
58                                          The statistical modeling approach proposed in this work offe
59 ophysical properties, we used a system-based statistical modeling approach to connect the multivariat
60  investigated by a combined experimental and statistical modeling approach.
61 argeted proteomic analyses using a multistep statistical modeling approach.
62 r work proves the strong potential of global statistical modeling approaches to genome-wide coevoluti
63  prediction have been developed, among which statistical models approximating ENSO evolution by linea
64                           Different forms of statistical models are now being used to probe the cellu
65 taining and integrating competence data into statistical models as covariates, as the response variab
66 treating hypothetical data distributions and statistical models as if they reflect known physical law
67 APL-Py implements state-of-the-art tools and statistical models, assembled in a comprehensive workflo
68 en contains categorical variables and common statistical model assumptions rarely hold.
69                              The mechanistic statistical model based on ecological diffusion led to i
70 th a variety of different structures using a statistical model based on residue-residue co-evolution
71                                      Using a statistical model based on the Cox method of modulated r
72             We introduce NBAMSeq, a flexible statistical model based on the generalized additive mode
73                                              Statistical models built from DESI-MS imaging data allow
74                                  Data-driven statistical models calculated from the phosphorylation s
75  propose, for the first time, the use of the Statistical Model Checking Engine (SMCE), a probability-
76 puting power, and increasingly sophisticated statistical models combine to enable machines to find pa
77 achine learning algorithm, which optimises a statistical model combining Principal Component Analysis
78 cancer tissues and cell lines using a global statistical model connecting protein pairs, genes and an
79                         Although the planned statistical model could not be applied to the primary en
80 cardiovascular disease or diabetes, multiple statistical models demonstrate that icosapent ethyl subs
81                                Multivariable statistical models demonstrated age-related differences
82 s (CEGs) are a graphical representation of a statistical model derived from event trees.
83 hically using interpolation and by fitting a statistical model describing the position and width of t
84                                              Statistical models detected significant associations bet
85                                          The statistical models developed to objectively analyze the
86                      However, forecasts from statistical models (e.g. species distribution models) ra
87 ics) accomplishes this goal by extending the statistical model employed by DEseq, re-purposing the 's
88       This involves applying mechanistic and statistical modeling, establishing consistent and widely
89                                          Our statistical model estimates that culture-confirmed cases
90                                    A uniform statistical model explains 34% of these shared variants;
91                               A quantitative statistical model explains how for certain reactions, hi
92                        Our results show that statistical modeling extends the scope and potential of
93 nosa on five different media and developed a statistical model, FiTnEss, to classify genes as essenti
94  framework with more detail than established statistical modeling fitting methods.
95 a blinded fashion to develop a generalizable statistical model for comparison to extract and marker a
96 es multiple times to improve accuracy, and a statistical model for distinguishing error-enriched regi
97        Based on these findings, we develop a statistical model for each molecular process as well as
98                           Performance of the statistical model for early detection from online search
99                           Here, we present a statistical model for estimating a terror group's future
100 ts in RNA-seq reads, with our rigorous rMATS statistical model for identifying differential isoform r
101                           We first trained a statistical model for obtaining relative brain age (RBA)
102 kelihood theory in the context of a complete statistical model for sequencing counts contributed by c
103 ication from microbiome data, based on solid statistical model for SNP calling, as well as optimized
104 roach Dr Insight implements a frame-breaking statistical model for the 'hand-shake' between disease a
105 To identify MSI target genes, we developed a statistical model for the somatic background indel mutat
106  by extensive co-occurrent resistance, where statistical models for a drug include unrelated mutation
107                    We have developed several statistical models for addressing these two challenges b
108                                      Current statistical models for assessing hotspot significance do
109 trics increase the variance explained by the statistical models for clinical and information processi
110                                 We developed statistical models for completed cohort fertility at age
111  Placket-Burman and central composite design statistical models for culture condition optimisation pr
112                                     By using statistical models for dynamic network data, we are able
113   Here we propose an experimental design and statistical models for estimating genetic diversity in a
114 United States, we compare multiple competing statistical models for estimating visitation.
115                    PsiCLASS combines mixture statistical models for exonic feature selection across m
116                            We build rigorous statistical models for GWAS summary statistics to motiva
117 tabolite composition of carrots and to build statistical models for prediction purposes.
118     The results suggest that the accuracy of statistical models for protein-protein affinity predicti
119 -derived parameters used to build predictive statistical models for rates of new ligand/substrate com
120 ome tools are not compatible with downstream statistical models for somatic mutation detection.
121  with individual-level animal movement, most statistical models for telemetry data are not equipped t
122 phore conformation, then used it to generate statistical models for the accurate prediction of lambda
123 stantial literature of ChR variants to train statistical models for the design of high-performance Ch
124 structure of personality traits derived from statistical models (for example, Big Five) is often assu
125 protein characterization, and of appropriate statistical modeling, for reproducible, accurate and eff
126                To address this, we propose a statistical modeling framework to estimate high frequenc
127 y and patient stratification, and provides a statistical modeling framework to incorporate additional
128 mber of samples, (ii) introducing a flexible statistical modeling framework, including multi-group an
129                This study employs multilevel statistical models from social network analysis to explo
130           In the primary analysis, a 3-class statistical model generated a p(EoE) score based on comm
131 mpare them with those of other, conventional statistical models (GWR and LME) by within-sample model
132                                The developed statistical model has a c-index of 0.895.
133                                     A strong statistical model has been established between RS format
134                                            A statistical model has been reported to predict Tmax of i
135                         But the module-based statistical model has not been adequately addressed for
136                                              Statistical modeling has suggested that this genetic con
137                                      Various statistical models have been developed to model the sing
138 etic trees, multiple sequence alignments and statistical models (hidden Markov models (HMMs)).
139                                              Statistical modeling, however, indicates that the FTSJ3
140                           Three multivariate statistical models, i.e. PCA/LDA, SELECT/LDA and PLS-DA,
141                  Within household compounds, statistical models identified two interfaces for exchang
142 nces in phenotype using the most appropriate statistical model in a given population.
143         The results were used to construct a statistical model in which bouton addition, elimination,
144 tative approaches that apply mechanistic and statistical models in a systems-wide approach are illumi
145            PAIRADISE outperforms alternative statistical models in simulation studies.
146                                            A statistical model including additive genetic factors and
147                                            A statistical model including carbon dioxide, temperature,
148 y factor associated with fine-root traits in statistical models including mycorrhizal association and
149 ined differences in total events using other statistical models, including Andersen-Gill, Wei-Lin-Wei
150                                              Statistical models indicated that increasing atmospheric
151 he gains in accuracy achieved by introducing statistical models into fusion detection, and pave the w
152 ern discovery and comparison by transferring statistical models into visual clues.
153 h other analytic approaches and note that no statistical model is a panacea to rectify limitations of
154                                         This statistical model is capable of quantitative prediction
155                                            A statistical model is developed through training on monom
156                                            A statistical model is then developed that accounts for bi
157 zed using unsupervised machine learning, and statistical modelling is used to relate compositional va
158          This work indicates that predictive statistical modeling methods may be complementary to des
159             Traditional machine learning and statistical models minimize the impact of confounders by
160 it model of pathogen entry and spread with a statistical model of detection and use a stochastic opti
161                             In this study, a Statistical Model of Integrated Phenology and Physiology
162 ons and sequence coevolution, we generated a statistical model of interaction energy for the clustere
163                                        Joint statistical model of longitudinal prostate-specific anti
164    Here, we present a simple, coarse-grained statistical model of niche construction coupled to speci
165                                            A statistical model of relative value that includes a term
166                            Here we outline a statistical model of strength that resembles a fishnet p
167                           Here, we develop a statistical model of the short-term dynamics of spike tr
168                                          The statistical modeling of CDC kinetics reveals the signifi
169                                              Statistical modeling of measurements and thorough valida
170                          Despite progress in statistical modeling of neural responses and deep learni
171                                 We show that statistical modeling of single drug response from drug c
172                                              Statistical modeling of structural features described by
173                                 Drawing from statistical modeling of survey data from German resident
174                                         Both statistical modeling of the population level covariation
175                                              Statistical modelling of absolute growth trajectories re
176 for schizophrenia, with recent evidence from statistical modelling of twin data suggesting direct cau
177 ritability that sometimes arise from popular statistical models of additive genetic variation.
178 erm goal of developing clinically applicable statistical models of biological processes to measure, t
179       In contrast to methods based solely on statistical models of data, the ESS method leverages the
180                                  Using novel statistical models of different aspects of the recogniti
181 sets are routinely dissected and analyzed by statistical models of ever-increasing complexity.
182                                      Current statistical models of haplotypes are limited to panels o
183 SMBuilder is a software package for building statistical models of high-dimensional time-series data.
184                                  Descriptive statistical models of neural responses generally aim to
185  the stochastic dynamics of state-of-the-art statistical models of neuronal spiking activity.
186  holistic, data-driven workflow for deriving statistical models of one set of reactions that can be u
187 f direct phyletic couplings, based on global statistical models of phylogenetic profiles.
188 ions of surface tumbles set a foundation for statistical models of run-and-tumble surface motion diff
189                              Here we present statistical models of severe primary neuronal degenerati
190 rast trees provide a lack-of-fit measure for statistical models of such statistics, or for the comple
191                                Here, we used statistical modeling on a regional database covering 179
192                       Using a combination of statistical modeling on data from several warming experi
193 sting methods, however, either lack explicit statistical models, or use models based on simplistic as
194                       By combining different statistical models, our approach outperforms current sta
195 t neuropeptide measures were included in the statistical model, OXT compared with placebo treatment s
196  results exist for radioactive isotopes, and statistical-model predictions typically have large uncer
197        Here, we explored the potential for a statistical model, previously developed for Peruvian sun
198 unctional HBD catalysis through an iterative statistical modeling process.
199 ack of spatial sense in the method, one uses statistical modeling, reaction-diffusion in continuous m
200 ficient alkenes to develop a three-parameter statistical model relating enantioselectivity to physica
201               The approach works by creating statistical models relating gene expression to drug resp
202                                 We developed statistical models relating seasonal temperature and pre
203                                            A statistical model represents a hypothesis about the unde
204                                          Via statistical modelling, several characteristics in the po
205                                              Statistical models showed that surgical residents expose
206 his conclusion was robust to a wide array of statistical model specifications.
207                                   Parametric statistical models such as ones assuming exponential gro
208            The data show that sequence-based statistical models suffice to specify proteins and provi
209                                          Our statistical modeling suggests that apparent priming effe
210 ning-based classification, segmentation, and statistical modelling system was developed to guide colo
211                    We develop a parsimonious statistical model that accurately predicts the probabili
212 and trends in neonatal mortality by use of a statistical model that can be used to assess progress in
213 s' variable responses and build a predictive statistical model that can be used to personalize mexile
214                           Here, we present a statistical model that captures both the underlying stru
215                                            A statistical model that combined the outcomes was used to
216                                            A statistical model that combines these observations corre
217 ted flood thresholds are established using a statistical model that considers predicted tide and proj
218  MRI metrics alone and to determine the best statistical model that explains better EDSS and SDMT.
219  We developed a new deep mutational scanning statistical model that generates error estimates for eac
220 ost mixing ratio, which is explained using a statistical model that includes both shifts of the host'
221 ed variant effect on regulation), a Bayesian statistical model that incorporates expression data to p
222                        Finally, we develop a statistical model that incorporates the uncertainty in i
223                           We developed a new statistical model that jointly estimated unintended preg
224                                            A statistical model that predicts the appearance of strong
225                               We construct a statistical model that separates fragile sites from regi
226                      We developed a flexible statistical model that uses patterns of aggregation in p
227                                      Through statistical modeling that combines individual genetic an
228 ke train recordings often relies on abstract statistical models that allow for principled parameter e
229                                We have built statistical models that include confounding factors such
230                    Therefore, we developed a statistical model, the separable Nonlinear Input Model,
231               Combined with mathematical and statistical modelling, this has improved the predictabil
232               Applying a track-pattern-based statistical model to 22 Coupled Model Intercomparison Pr
233  the accuracy of cell-scaffold contact for a statistical model to be 62.6% with 76.7% precision and f
234                      In addition, we build a statistical model to characterize correlations in the sp
235                                    Fitting a statistical model to data from studies of influenza vacc
236 ut of which sounds are composed, we employ a statistical model to extract such components.
237           Our aim is to build and validate a statistical model to forecast future platelet demand and
238                               We developed a statistical model to generate estimates and projections
239 level Lyme disease case data in a panel data statistical model to investigate prior effects of climat
240                              Here, we used a statistical model to partition the variability of seven
241                                 We develop a statistical model to predict June-July-August (JJA) dail
242 etition of multiple miRNAs into account in a statistical model to predict their target sites.
243 self-organizing communities, and developed a statistical model to quantitatively characterize the two
244 gm of uniting simulation and experiment in a statistical model to study the structure of protein exci
245                        By fitting a flexible statistical model to tuberculosis drug resistance survei
246             Here, we use live microscopy and statistical modeling to demonstrate that L. monocytogene
247                       Cancer drivers require statistical modeling to distinguish them from passenger
248 that integrates dimensionality reduction and statistical modeling to grapple with the heterogeneity.
249 ric Bayesian framework based on multivariate statistical modeling to identify driver genes in an unsu
250  detection (DEEPEST), an algorithm that uses statistical modeling to minimize false-positives while i
251 genome sequencing, detailed phenotyping, and statistical modeling to predict biometric traits in a co
252               GBD 2017 employed a variety of statistical models to determine the number of deaths fro
253 al of combining new types of data with novel statistical models to enable a more integrative monitori
254 aerosol optical depth (AOD) measurements and statistical models to estimate ground-level PM2.5 is a p
255                                     We apply statistical models to estimate household transmission dy
256               The authors recently developed statistical models to estimate the effect size on IQ of
257 ns in the Amazon River floodplain, we fitted statistical models to explain landscape-scale variation
258                                   We coupled statistical models to inland water area inventories to e
259                                 We developed statistical models to predict current and reference conc
260 ng station, are identified and used to build statistical models to predict seasonal wind speed and so
261  associated with KIN-193 and further created statistical models to predict the treatment effect of KI
262 ological mechanism, and have led to applying statistical models to quantify causal microbiome effects
263 , and it seeks to develop formal idiographic statistical models to represent these individual process
264      This paper deploys several multivariate statistical models to test whether different aspects of
265               Bayesian networks are powerful statistical models to understand causal relationships in
266 c trajectories and newly developed localized statistical models, to predict quantitative selectivitie
267 in the state of Nebraska, USA, combined with statistical models, to quantify the contribution of cool
268                                Point process statistical models trained on initial portions of each p
269 on workflow presents an opportunity to build statistical models unifying various modes of activation
270                                          The statistical model used here provides a robust framework
271                                          The statistical models used in previous studies are primaril
272 peculiarities of specific sensor data to the statistical models used, highlighting at the same time t
273 nt of blood-brain barrier passage-predictive statistical models using partial least-squares (PLS) reg
274                       A linear mixed-effects statistical model was used to compare detection accuracy
275                                              Statistical modeling was also used to discriminate whisk
276 ns with clinical outcomes were analyzed, and statistical modeling was used to identify risk factors f
277                                      Using a statistical model, we estimated the emergence date and s
278                 Using a generalized additive statistical model, we examined the longest data set on f
279               Using quantitative imaging and statistical modeling, we demonstrate that denticle numbe
280 nt concentrations combined with multivariate statistical modeling, we fingerprint and quantify the ab
281                                        Using statistical models, we analyze multiyear data from 166 l
282                                      Fitting statistical models, we validate our data and find that h
283                                              Statistical models were constructed to classify weight m
284             In response to these challenges, statistical models were developed in this paper to predi
285                     Cox, logistic, or linear statistical models were used depending on the outcome st
286       Automated brain mapping algorithms and statistical models were used to evaluate the relationshi
287                                              Statistical models were used to test nine quantitative v
288                                      All the statistical models were validated both by using a test s
289 nseling, and genetic ancestry predicted by a statistical model, were compared for concordance.
290   Transcriptomic data is often used to build statistical models which are predictive of a given pheno
291           We aimed to develop and evaluate a statistical model, which included known pre-treatment fa
292 with existing theories of visual processing, statistical modeling will increasingly drive the evoluti
293 alysis using Ez-Info and the creation of the statistical model with combinations of responses for mol
294 vious study performed by the authors using a statistical model with similar input features that prese
295                                 We trained a statistical model with these 52 measurements to infer th
296 hematical analyses and Bayesian hierarchical statistical modeling with diverse data sources.
297       This study demonstrates that combining statistical modeling with public RNA-seq data can be pow
298                                    We tested statistical models with fusion as a higher-level bistabl
299                                 By combining statistical models with highly scalable computational to
300 olution and HRMAS data produced very similar statistical models, with high classification accuracy.

 
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