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1                                  The MASPIC (Multinomial Algorithm for Spectral Profile-based Intensi
2   Each dataset is modelled using a Dirichlet-multinomial allocation (DMA) mixture model, with depende
3 o, a program that implements a wide range of multinomial analyses in a single fast package that is de
4                        With use of Dirichlet multinomial analysis and mixed models to account for rep
5                   We used linear and ordered multinomial analysis with a country fixed effect to obta
6                  Side-by-side application of multinomial and binomial models on 86 previously establi
7 osystems QSTAR fits well to a combination of multinomial and Poisson model with detector dead-time co
8              Logistic regression (binary and multinomial) and analysis of covariance were used to exa
9           Multivariable logistic (binary and multinomial) and linear regression analyses were perform
10                      Multivariable logistic, multinomial, and linear regression were used to assess a
11 tion to published data shows that use of the multinomial approach can avoid an apparent type 1 error
12 ls under the Bayesian framework: the Poisson-multinomial (ASHIC-PM) model and the zero-inflated Poiss
13 SHIC-PM) model and the zero-inflated Poisson-multinomial (ASHIC-ZIPM) model.
14                            Our tool for fast multinomial calculations provide a simple and intuitive
15 29 samples from five data sets, we trained a multinomial classifier to distinguish between four lung
16 caused by methodological errors, we obtained multinomial confidence intervals (CI) for the proportion
17 or overlap weights, was more successful with multinomial Crump and Sturmer trimming.
18  within a community should follow a zero-sum multinomial distribution (ZSM), but this has not, so far
19                                The Dirichlet-multinomial distribution allows the analyst to calculate
20 hat K-means cluster sizes generally follow a multinomial distribution and the failure probability of
21 produced, which closely matched a calculated multinomial distribution based on IBC clonality.
22 nce, and viability whose parameters define a multinomial distribution for single-spore data.
23                                    Under the multinomial distribution for the read counts and a prior
24                                            A multinomial distribution likelihood is constructed by co
25            In the present work, we propose a multinomial distribution model for assessment of Ag sele
26                                Using a quasi-multinomial distribution model, our method is able to ca
27 ts from potential candidate peptides using a multinomial distribution model.
28 framework region and CDR codons coupled with multinomial distribution studies found no substantial ev
29  this work, we provide a method based on the multinomial distribution that identifies signals of disp
30          The DMN distribution reduces to the multinomial distribution when the overdispersion paramet
31 new regression model combining the Dirichlet-multinomial distribution with recursive partitioning pro
32       Ambiguous read mapping is modeled as a multinomial distribution, and ambiguous reads are assign
33 ted with any observed sample, against a null multinomial distribution, using the likelihood-ratio sta
34 ribution associated with peak matches into a multinomial distribution.
35 ations to the pattern expected from a random multinomial distribution.
36 ations to the pattern expected from a random multinomial distribution.
37 --using a heuristic algorithm, which matches multinomial distributions of distinct viral variants ove
38 f internal categories, each characterized by multinomial distributions over words (in abstracts) and
39 ther, all four are better fitted by zero-sum multinomial distributions, characteristic of Hubbell's n
40 arity quantification method based on product multinomial distributions, demonstrate its ability to id
41 depth for all data as a mixture of Dirichlet-multinomial distributions, resulting in significant impr
42                                The Dirichlet-multinomial (DMN) distribution is a fundamental model fo
43       We develop a computationally efficient multinomial fine-mapping (MFM) approach that borrows inf
44 acteristics, including birth center, we used multinomial generalized logit models to compare the rela
45  linear (Gaussian), binomial (logistic), and multinomial GLMs.
46 trization of the parameters of the Dirichlet-Multinomial likelihood.
47                                              Multinomial log-linear regression was performed for the
48 ng equations, latent class mixed models, and multinomial logistic analysis, respectively.
49                                              Multinomial logistic and multiple linear regression mode
50                                              Multinomial logistic and Poisson regression models were
51                            A three-covariate multinomial logistic model derived from a triple-phase 4
52  sites in controlling splicing, we trained a multinomial logistic model on sets of PTBP1 regulated an
53                                            A multinomial logistic model was used to identify covariat
54 /asthmalike/both symptoms was evaluated by a multinomial logistic model.
55                                 Logistic and multinomial logistic models were constructed to estimate
56                                 Multivariate multinomial logistic models were used to assess changes
57 omen were classified as users or nonusers in multinomial logistic models.
58                                              Multinomial logistic regression (adjusted for state or j
59                                        Using multinomial logistic regression (MLR), we compared the 3
60         Calibrators included ridge-penalized multinomial logistic regression (MR) and Platt scaling b
61  from immediate graft function recipients in multinomial logistic regression (odds ratio, 0.77; P<0.0
62 to predict HCM status was performed by using multinomial logistic regression adjusting for age, sex,
63                                 We performed multinomial logistic regression analyses adjusted for so
64                                              Multinomial logistic regression analyses indicated that
65                                              Multinomial logistic regression analyses were conducted
66  loss of sexual activity were assessed using multinomial logistic regression analyses.
67                                              Multinomial logistic regression analysis identified peri
68                                 We performed multinomial logistic regression analysis to assess the w
69                 We performed a multivariable multinomial logistic regression analysis to estimate odd
70                               We performed a multinomial logistic regression analysis to estimate the
71                                      We used multinomial logistic regression analysis to examine fact
72                                              Multinomial logistic regression analysis was performed t
73                                              Multinomial logistic regression analysis was used to fit
74 positively charged amino acids, according to multinomial logistic regression analysis.
75 e development of each asthma phenotype using multinomial logistic regression analysis.
76                                              Multinomial logistic regression analyzed the relationshi
77                                              Multinomial logistic regression and linear regression we
78 maging biomarkers with OI was examined using multinomial logistic regression and simple linear regres
79 ample, analytic methods such as quantile and multinomial logistic regression can describe the effects
80                     Data were analyzed using multinomial logistic regression controlling for age, gen
81 ion of glucose tolerance were assessed using multinomial logistic regression corrected for familial c
82                                              Multinomial logistic regression estimated AHOs odds rati
83                                              Multinomial logistic regression estimated separate ORs f
84 alized US adults aged 18 years or older, and multinomial logistic regression examines whether variabl
85                                              Multinomial logistic regression for clustered data indic
86 ear regression for continuous phenotypes and multinomial logistic regression for skeletal malocclusio
87                            However, adjusted multinomial logistic regression indicates each unit incr
88                          Analyses included a multinomial logistic regression model for early- and lat
89                     A conservative penalized multinomial logistic regression model identified 14 vari
90                                            A multinomial logistic regression model showed that optoac
91 uate vital registration system; we applied a multinomial logistic regression model to vital registrat
92                                            A multinomial logistic regression model was used to differ
93                                            A multinomial logistic regression model was used to infer
94                                A person-time multinomial logistic regression model was used to simult
95 tes were analyzed using a first-order Markov multinomial logistic regression model with 11 different
96                   Our method is based on the multinomial logistic regression model with a tree-guided
97 sed levels of HBD-2 (Pearson correlation and multinomial logistic regression model).
98                              In the adjusted multinomial logistic regression model, a serum bicarbona
99  high-incidence) as dependent variables in a multinomial logistic regression model.
100 R: 0.85; 95% CI: 0.54, 1.34) in the adjusted multinomial logistic regression model.
101 on behavior were analyzed in a multivariable multinomial logistic regression model.
102 iles of comorbid symptoms, and multivariable multinomial logistic regression modeling examined associ
103                                              Multinomial logistic regression modeling indicated that
104 02) but not after 6- and 9-y of follow-up in multinomial logistic regression models adjusted for base
105              We used sex-specific linear and multinomial logistic regression models adjusted for demo
106                                        Using multinomial logistic regression models adjusted for pati
107 sion models and as a categorical variable in multinomial logistic regression models adjusted for sex,
108 s of BMI and WHR with DR were assessed using multinomial logistic regression models adjusting for age
109         Data were analyzed with logistic and multinomial logistic regression models controlling for d
110                                              Multinomial logistic regression models estimated the ass
111                                              Multinomial logistic regression models examined the asso
112                        Results from adjusted multinomial logistic regression models indicated that re
113                             We used adjusted multinomial logistic regression models to estimate odds
114                                              Multinomial logistic regression models were fit to deter
115                                          Two multinomial logistic regression models were used to anal
116                                              Multinomial logistic regression models were used to asse
117                                              Multinomial logistic regression models were used to comp
118                                              Multinomial logistic regression models were used to esta
119                                              Multinomial logistic regression models were used to exam
120                                              Multinomial logistic regression models were used to exam
121 esonance imaging using linear regression and multinomial logistic regression models.
122 imated through relative risk ratios (RRR) by multinomial logistic regression models.
123          These were used as covariates in 10 multinomial logistic regression models.
124 atus and genetic ancestry using logistic and multinomial logistic regression models.
125 ffect of baseline factors was assessed using multinomial logistic regression models.
126                                 Logistic and multinomial logistic regression of outcomes, estrogen re
127                                 Logistic and multinomial logistic regression of the data were conduct
128                                              Multinomial logistic regression provides an attractive f
129                                              Multinomial logistic regression revealed that being with
130                                              Multinomial logistic regression showed that country, age
131                                Fixed effects multinomial logistic regression showed that shortened di
132                                      We used multinomial logistic regression to assess whether charac
133                                       We use multinomial logistic regression to correlate the yearly
134                                      We used multinomial logistic regression to estimate unadjusted a
135                                      We used multinomial logistic regression to evaluate associations
136                                      We used multinomial logistic regression to evaluate the relation
137 g hemodialysis in the United States, we used multinomial logistic regression to evaluate whether prio
138                                      We used multinomial logistic regression to generate covariates o
139                                      We used multinomial logistic regression to identify baseline fac
140 a to identify linear growth trajectories and multinomial logistic regression to identify covariates t
141                                 We also used multinomial logistic regression to identify factors asso
142                                              Multinomial logistic regression was performed to compare
143 f distress and depression were examined, and multinomial logistic regression was performed.
144                                            A multinomial logistic regression was then used to predict
145                                              Multinomial logistic regression was used to ascertain fa
146                                              Multinomial logistic regression was used to assess the i
147                                              Multinomial logistic regression was used to determine as
148                                              Multinomial logistic regression was used to determine de
149                                              Multinomial logistic regression was used to determine th
150                                 Logistic and multinomial logistic regression was used to determine th
151                                     Weighted multinomial logistic regression was used to estimate ass
152                                              Multinomial logistic regression was used to estimate ORs
153                                              Multinomial logistic regression was used to estimate the
154                                 Multivariate multinomial logistic regression was used to estimate the
155                                              Multinomial logistic regression was used to evaluate fac
156                                              Multinomial logistic regression was used to evaluate the
157                                              Multinomial logistic regression was used to examine fact
158                                              Multinomial logistic regression was used to examine the
159                                              Multinomial logistic regression was used to identify bas
160                                              Multinomial logistic regression was used to identify pot
161                                              Multinomial logistic regression was used to identify pot
162                                              Multinomial logistic regression was used to investigate
163                                              Multinomial logistic regression was used to report unadj
164                                              Multinomial logistic regression was used to test the ass
165                                    Penalized multinomial logistic regression was utilized to create a
166                ANOVA comparison and adjusted multinomial logistic regression were used to evaluate cl
167                   Descriptive statistics and multinomial logistic regression were used to explore mat
168 were estimated in a hip-based analysis using multinomial logistic regression with adjustment for age,
169  Risk was assessed through multivariable and multinomial logistic regression with adjustment for rele
170 equate vital registration; we used a similar multinomial logistic regression with verbal autopsy data
171              Hospital characteristics (using multinomial logistic regression) and survival (using Cox
172 vents after starting treatment (P = .005, by multinomial logistic regression) but not death.
173 dds of increased out-of-pocket costs (survey multinomial logistic regression, adjusted odds ratios [O
174                                   Subsequent multinomial logistic regression, MultiPhen and Random Fo
175 sing 2-level logistic regression and 2-level multinomial logistic regression, respectively.
176                                        Using multinomial logistic regression, risk ratios of > +0.5 d
177                                        Using multinomial logistic regression, the authors found that
178                                        Using multinomial logistic regression, we examined the associa
179                               Using weighted multinomial logistic regression, we modeled each barrier
180             Risk factors were modelled using multinomial logistic regression.
181 tures of the 3 organisms were compared using multinomial logistic regression.
182 r of siblings and AMD were assessed by using multinomial logistic regression.
183 tization and risk factors were studied using multinomial logistic regression.
184 valuated the association between the 2 using multinomial logistic regression.
185 orical obesity status was predicted by using multinomial logistic regression.
186 nse and EPS classification was identified by multinomial logistic regression.
187 ent strategy were evaluated in multivariable multinomial logistic regression.
188 TW patterns were assessed using multivariate multinomial logistic regression.
189 GERD, non-GERD, or EoE) were estimated using multinomial logistic regression.
190 nitive change categories were examined using multinomial logistic regression.
191 se outcomes were then tested with the use of multinomial logistic regression.An ED, HF, and LFD dieta
192                                              Multinomial logistic regressions and propensity score ma
193  cause-specific mortality fractions applying multinomial logistic regressions using adequate VR for l
194 oncentrations (>/=14 ng/L) using Poisson and multinomial logistic regressions, respectively.
195 ors and clinical outcome were analyzed using multinomial logistic regressions.
196 fspring allergic disease were estimated with multinomial logistic regressions.
197                                              Multinomial logistical regression analysis was used to i
198                                              Multinomial logit analysis was used to examine the assoc
199                                            A multinomial logit and a latent class logit model was use
200                           We used a Bayesian multinomial logit Gaussian process model to produce esti
201 neralised linear latent and mixed model with multinomial logit link to adjust for clustering within h
202                                              Multinomial logit modeling also accounts for the impact
203 hness or wildflower viewing utility based on multinomial logit models of revealed preferences, rankin
204                          We used conditional multinomial logit models to examine differences in hospi
205                        Data were analyzed by multinomial logit models.
206                                 Multivariate multinomial logit regression investigated the associatio
207                                              Multinomial logit regression was used to examine the inc
208     A best-worst scaling survey, analyzed by multinomial-logit models, was used to calculate normaliz
209                            We propose simple multinomial methods, including generalized principal com
210 d the application of prior construction to a multinomial mixture model when labels are unknown, which
211                                    Dirichlet multinomial mixture modeling, Markov chain analysis, and
212 he course of 12-18 months, we used Dirichlet multinomial mixture models to partition the data into co
213 se multivariate methods based on Poisson and multinomial mixture models to segment SIMS images into c
214                                    Dirichlet multinomial mixtures identified four compositionally dis
215 ension of optimal Bayesian classification to multinomial mixtures where data sets are both small and
216                                              Multinomial model and Focused binomial test demonstrated
217                                          The multinomial model combines the database search results a
218                    We suggest the use of the multinomial model for all future analysis of Ag selectio
219  of random matches, we employ a marginalized multinomial model for small values of cross-correlation
220                                          The multinomial model is derived as a standardized Poisson m
221 riance against mean conductance by fitting a multinomial model that incorporated both spatial variati
222 power calculations make use of the Dirichlet-Multinomial model to describe and generate abundances.
223 y model used for spectratype analysis is the multinomial model with n, the total number of counts, in
224  between the evolutionary tree model and the multinomial model with that of marginalized tests applie
225 Among nine predictor variables included in a multinomial model, only female gender and days in ICU wi
226 ach that ensures that one remains within the multinomial model.
227     This extra information is then used in a multinomial modeling approach for estimating parent-of-o
228 sociation studies using either log-linear or multinomial modeling approaches.
229                               Log-linear and multinomial modeling offer a flexible framework for gene
230 es of the eight groups were determined using multinomial models combining data from 435 individuals w
231                         The results from our multinomial models suggest that A(+)N(-) and A(+)N(+) we
232 RRD repair and used multilevel mixed effects multinomial models to characterize variation in repair t
233 nt MicroBVS, an R package for Dirichlet-tree multinomial models with Bayesian variable selection, for
234 ependent models, two-hypothesis binomial and multinomial models, which use the hypergeometric probabi
235 and sex by including these covariates in the multinomial models.
236 sity score-adjusted and probability-weighted multinomial multivariable logistic regression was used t
237          The best classification system is a multinomial naive Bayes classifier trained on manually a
238  periods were associated with atopic asthma (multinomial odds ratio (MOR) = 2.79, 95% confidence inte
239 : 1.21, 1.87) but less atopy alone (adjusted multinomial odds ratio = 0.80, 95% confidence interval:
240 sition (SEP) had more asthma alone (adjusted multinomial odds ratio = 1.50, 95% confidence interval:
241 o introduce solids at age 4 months (adjusted multinomial odds ratio [aMOR], 1.21; 95% CI, 1.02-1.45;
242 by 22 years was higher in men than in women (multinomial odds ratio [M-OR] 2.0, 95% CI 1.2-3.2, p=0.0
243                                      We used multinomial or logistic regression to explore the associ
244 model specification for predicting exposure (multinomial or logistic regression) and characterization
245                                              Multinomial ordinal logistic regression confirmed that i
246  risk factor affects certain categories of a multinomial outcome but not others, outcome heterogeneit
247  used across various scientific disciplines: multinomial, Poisson, hypergeometric, and Bernoulli prod
248                          Instead, we use the multinomial-Poisson hierarchy model and demonstrate that
249 nal affective disorder was compared by using multinomial probability distribution tests.
250  A protein identification probability is the multinomial probability of observing the given set of pe
251          Results were analyzed with adjusted multinomial propensity score.
252   In conclusion, our proposed definitions of multinomial PS trimming methods were beneficial within o
253 ized the trimming definitions by considering multinomial PSs, one for each treatment, and proved that
254 ous year at ages 16 years and 21 years), and multinomial regression (lifetime self-harm with and with
255 ts who reported having used alcohol, Cox and multinomial regression analyses were used to assess the
256     Univariate and multivariable and ordinal multinomial regression analyses were used to test associ
257                                            A multinomial regression analysis was performed to identif
258                                              Multinomial regression analysis was used to determine th
259 onutrients was investigated using linear and multinomial regression analysis.
260     Statistical significance was assessed by multinomial regression and multiple linear regression an
261 d with detection of G. vaginalis clades, and multinomial regression assessed factors associated with
262                                              Multinomial regression demonstrated that lung function w
263                                              Multinomial regression evaluated the effects of graphica
264                        We performed Bayesian multinomial regression in 16 664 stroke cases and 32 792
265  manuscript, we propose a Bayesian Dirichlet-Multinomial regression model which uses spike-and-slab p
266 ed from 2006 to 2010 and analysed by using a multinomial regression model.
267 s with rectal viral load were explored using multinomial regression modeling.
268                                      We used multinomial regression models to evaluate the effect of
269                                              Multinomial regression models were used to estimate risk
270 positive [A(+)N(+)]) cross-sectionally using multinomial regression models.
271               Time trends were analyzed with multinomial regression models.
272                                              Multinomial regression showed that participants with kne
273 e derived from parameter estimates (beta) of multinomial regression stratified according to study par
274                                        Using multinomial regression the five variables with the large
275                     We used log-binomial and multinomial regression to calculate adjusted relative ri
276                                      We used multinomial regression to identify frailty correlates.
277 of carbon monoxide on platinum, we implement multinomial regression via neural network ensembles to l
278                                              Multinomial regression was used to ascertain which clima
279                                     Weighted multinomial regression was used to assess the relationsh
280                                              Multinomial regression was used to assess which covariat
281 pontaneous survival [SS]) were obtained with multinomial regression, and observed-to-expected ratios
282 ion and asthma/COPD/ACOS were examined using multinomial regression.
283 riate analysis and multivariate logistic and multinomial regression.
284 rweight and obesity were estimated by use of multinomial regression.
285 re assessed using multivariable logistic and multinomial regression.
286                                    We fitted multinomial regressions for each state and subgroup to e
287 d/or type of alteration, follow binomial and multinomial sampling distributions, respectively.
288 d signature fitting, by explicitly factoring multinomial sampling into the objective function.
289  model yields the Wright-Fisher model (i.e., multinomial sampling of genes) if and only if the viabil
290 ling of genotypes generally does not lead to multinomial sampling of genes.
291                                        Thus, multinomial sampling of genotypes generally does not lea
292   Three different derivations of models with multinomial sampling of genotypes in a finite population
293 negative controls, we show UMI counts follow multinomial sampling with no zero inflation.
294                                    Utilizing multinomial statistics, we found that attraction rates t
295                                              Multinomial Sturmer and Walker trimming were more succes
296 applies conventional methods appropriate for multinomial tables to statistics calculated from EBQP ta
297  kidney injury and daily mental status using multinomial transition models adjusting for demographics
298 hen examined the performance of the proposed multinomial trimming methods in the setting of 3 treatme
299 the generalized logit model for binomial and multinomial variables adjusted for age, sex, education,
300 deviations were determined by estimating the multinomial variance associated with each element of the

 
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