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1 asured compared with predicted RMR (from own regression model).
2  was analyzed using a multivariable logistic regression model.
3  identify relevant parameters for a logistic regression model.
4 rintSO2 remained significant in the multiple regression model.
5 on techniques were combined using the hybrid regression model.
6 d case fatality rates through a time-varying regression model.
7 of asthma or exacerbation after LAIV using a regression model.
8  the occurrence of BSTD using a multivariate regression model.
9 ost per bed day was projected using a linear regression model.
10 .22) using a generalized estimating equation regression model.
11 e were obtained using multivariable logistic regression model.
12 tients was examined using a modified Poisson regression model.
13  surgical revascularization using a logistic regression model.
14 alysis was carried out using multiple linear regression models.
15  assessed using multivariable competing risk regression models.
16 estimation equations and multilevel logistic regression models.
17 using multivariable Cox proportional hazards regression models.
18 imated using integrated empirical geographic regression models.
19 -effects models and Cox proportional hazards regression models.
20 on and symptomatic infection we use logistic regression models.
21  were calculated using multivariate logistic regression models.
22  with baseline characteristics of loci using regression models.
23 uring pregnancy and childhood using land-use regression models.
24 s with each dietary score (WD, PD) in linear regression models.
25 ors with incident PD using adjusted logistic regression models.
26  evaluated using univariate and multivariate regression models.
27 he BGI was tested with Cox and mixed-effects regression models.
28  were estimated using multivariable logistic regression models.
29 actors were identified and validated via Cox regression models.
30  1 were compared between groups via logistic regression models.
31 ividual outcomes were examined using Poisson regression models.
32 ariatric surgery episode using multivariable regression models.
33 dized mortality/morbidity ratio weighted cox-regression models.
34 -to-severe diarrhoea in conditional logistic regression models.
35 d risk factors for DSA development using Cox regression models.
36 linical keratoconus based in binary logistic regression models.
37 rticipant was estimated by means of land-use regression models.
38 ariable Poisson, Fine-Gray, and log-binomial regression models.
39 ), and others were estimated through Poisson regression models.
40 ng study intake variation explained by these regression models.
41 Communities study using multivariable linear regression models.
42 he two study periods were assessed using Cox regression models.
43 s were compared using multivariable logistic regression models.
44 spital mortality was analyzed using logistic regression models.
45 ment analysis using Cox proportional hazards regression modeling.
46  (0.78 [95% CI 0.77-0.78]) than the logistic regression model (0.73 [0.72-0.74]) (p < 0.001).
47  94.2%, 96.9%, 97%, and 94% for the logistic regression model; 92.7%, 100%, 100%, and 92.9% for the I
48                   In a stepwise multivariate regression model, a VDP greater than 4.28% was associate
49 ted using multivariable conditional logistic regression models, according to center, sex, age, and pe
50                             Adjusted Poisson regression models accounted for 14 resident covariates.
51          There was no difference in logistic regression model accuracy comparing the data by either f
52 from 146 IOP-associated variants in a linear regression model adjusted for central corneal thickness
53 es were compared between groups using linear regression models adjusted for age and sex with family m
54                     We used Cox proportional regression models adjusted for age, race, smoking, diet,
55                         We computed logistic regression models adjusted for age, sex, BMI, smoking st
56  were assessed using Cox proportional-hazard regression models adjusted for age, sex, education, card
57 ameters for urban air pollution using linear regression models adjusted for age, sex, smoke, time liv
58 ardiovascular risk were determined using Cox regression models adjusted for cardiovascular risk facto
59 d PROs were investigated using mixed-effects regression models adjusted for clinically-relevant confo
60 level analysis with Cox proportional hazards regression models adjusted for clustering by facility an
61  the Swiss HIV Cohort Study.We performed Cox regression models adjusted for demographic factors, base
62                 We used conditional logistic regression models adjusted for HDL cholesterol levels an
63 REE were identified, and prespecified linear regression models adjusted for nusinersen treatment (dis
64 5,276) and 15 (n = 3,446) years using linear regression models adjusted for potential confounders.
65 statin C) and ACR with cancer risk using Cox regression models adjusted for potential confounders.
66      Bivariate analyses followed by logistic regression models adjusted for relevant confounders were
67 ed to sleep characteristics were assessed in regression models adjusted for sociodemographic and card
68                         Multivariable linear regression models (adjusted for mid-childhood body mass
69 tbreak over the same period, using a Poisson regression model adjusting for correlation within hospit
70 ) over time was assessed with a linear mixed regression model adjusting for the effects of baseline M
71               Multivariable modified Poisson regression models adjusting for confounding by age, race
72                  We fitted mixed-effects Cox regression models adjusting for multiple pregnancies per
73 was estimated using a multivariable logistic regression model, adjusting for age, sex, indigenous sta
74                                   A logistic regression model after the intention-to-treat principle
75           From a statistical analysis of the regression model and by using the Cramer-Rao lower bound
76           In particular, linear log-contrast regression model and Dirichlet regression model are prop
77                       First, we fitted a Cox regression model and estimated the 10-year predicted ris
78                 The accuracy of the logistic regression model and generalizability of the ISOLD score
79                                     Adjusted regression models and a meta-analysis were performed.
80                                     Logistic regression models and accuracy performance tests were es
81                          We specify logistic regression models and adjust for a range of covariates a
82 erate-severe or severe food insecurity using regression models and algorithmic weighting procedures.
83     We used interrupted time series logistic regression models and estimated marginal effects to exam
84  series of multilevel multivariable logistic regression models and geospatially visualising unexplain
85 ctomy type (partial/radical)-to fit logistic regression models and grouped patients according to degr
86                            Adjusted logistic regression models and meta-analyses were performed.
87                                     Logistic regression models and random forest models classified T
88 2) and persistence from 12 to 24 months into regression models and tested for the mediating effect of
89 sociations were estimated with quasi-Poisson regression models and then pooled by random-effects meta
90 ariate analysis were fed into a multivariate regression model, and models were built by combining ind
91 ch of the response using a univariate linear regression model, and to select predictors that meet a p
92 ence rates, hazard ratios using adjusted cox-regression models, and standardized mortality/morbidity
93  log-contrast regression model and Dirichlet regression model are proposed to estimate the causal dir
94                                     Logistic regression models assessed correlates of non-RTW, adjust
95                                Random effect regression models assessed group differences in brain vo
96                     Cox proportional hazards regression models assessed the association between plasm
97                     We created multivariable regression models at the year, day, and visit level afte
98 ment and validation of a new signature-based regression model, augmented with a particular choice of
99                                  Regularized regression models built using 5hmC densities in genes pe
100 n discrimination in a multivariable logistic regression model (C-statistic 0.82 vs 0.78; p = 0.0009).
101                         In a multiple linear regression model, c.
102  multivariable-adjusted conditional logistic regression models, caffeic acid (ORlog2: 0.55; 95% CI: 0
103                     A multivariable logistic regression model calculated the odds ratio (OR) for SCAD
104                     We fit mixed-effects Cox regression models (center as random effect) to evaluate
105                                 The logistic regression model combining T2-weighted SI ratio with T2-
106                                     Logistic regression models combining T2-weighted SI and T2-weight
107           Multivariable conditional logistic regression modeling compared the odds of undergoing scre
108                                       Linear regression models compared changes over time by SWAD/STA
109                                       Linear regression models comparing cognitive scores between par
110 ared risks of SPM using a cause-specific Cox regression model considering death as a competing risk f
111 ivariate ordinary least squares and logistic regression models controlling for a wide range of contro
112               In both multivariable logistic regression models correcting for propensity score 1 (aOR
113 Using the discovery cohort, multivariate Cox regression modeling defined a minimal model including wh
114                                  The optimal regression model demonstrated R(2) values of 0.92 and 0.
115 ciated with results reporting using logistic regression models, described sponsor-level reporting, ex
116                           We tested logistic regression model discrimination using the C-index and ca
117 est; Spearman's correlation and log-binomial regression model estimated the association between MMPs
118                                     Logistic regression models estimated ORs of scoring low on 1 of 4
119                          Linear and quantile regression models estimated the association between PPYE
120                                              Regression model estimates indicated different spatial r
121                 We compared OLS and quantile regression models estimating SACE to calculate the effec
122 ss index (BMI) <25 or >=25 kg/m(2); logistic regression models evaluated preconception lipid concentr
123                                     Logistic regression models evaluated the relation of baseline wei
124                        We constructed linear regression models evaluating the association between bas
125                       Ordinary least squares regression models examined associations between burn siz
126              Multilevel mixed-effects linear regression models examined effects of age and sex.
127 ransition status, and multivariable logistic regression models examined factors associated with satis
128                         Multivariable linear regression models examined the association between CBH s
129 hed NK cell subpopulations implicated in the regression model exhibited enhanced effector functions a
130                             The multi-linear regression models explain about 89% to 96% of the variat
131                          Our multiple linear regression model explained 61.1% of the variance in 2017
132                                       In Cox regression models, factors associated with a trend for r
133                             Visualization of regression models fitted to the data imply that youth wi
134                                            A regression model for frataxin which included HAX-1, grou
135  assessed using a linear and binary logistic regression modeling for the continuous and categorical o
136         Newly derived multivariable logistic regression models for 5-year survival in new cohorts had
137 nalyses were best fit with quartic and cubic regression models for CT and FSSC/BSSC, respectively.
138 used Poisson generalized estimating equation regression models for longitudinal binary outcomes.
139 net, RF, XGBoost, LightGBM) to commonly used regression models for prediction of undiagnosed T2DM.
140 ional hazards models and hierarchical linear regression models for the primary outcomes of all-cause
141 , we assessed 33 982 HCTs using multivariate regression models for the role of HLA mismatching on out
142                               We fit Weibull regression models for time to viral load >1000 copies/mL
143                   A Cox proportional-hazards regression model found that the adjusted hazard rate for
144               In risk-adjusted multivariable regression models, history of previous abdominal surgery
145 ge of the fact that the conditional logistic regression model (i.e. the SSF) is likelihood-equivalent
146                                              Regression models identified 17 variables that were sign
147                             Multivariate Cox regression models identified other predictors of disease
148                                              Regression models identified variables associated with d
149 type-associated SNPs in a joint multiple-SNP regression model in GWAS.
150    We derived an estimated CNS from a linear regression model in which we regressed the observed CNS
151                          The binary logistic regression model included the minimal corneal thickness,
152                                     A linear regression model including breast volume at the start of
153                        In a multivariate Cox regression model including each of the clinical and gene
154  the strongest factor in the multiple linear regression model, independently from cord atrophy.
155   Measurements and predictions of a land-use regression model indicate moderate spatial correlation b
156                         Multinomial logistic regression modeling indicated that Drymarchon couperi ha
157                                              Regression models indicated that %ViableSperm of bulls w
158                                      A ridge regression model is constructed to identify the critical
159                           In a multivariable regression model, K. aerogenes BSI, relative to Ecc BSI,
160               Furthermore, in a multivariate regression model, KEi(EDV) E/A ratio and 4D flow derived
161 n the multivariable Cox proportional hazards regression model, major vascular complications (P=0.044)
162 d predicted response to ICS through logistic regression models.Measurements and Main Results: We iden
163 he unmeasured CpG sites using the mixture of regression model (MRM) of radial basis functions, integr
164 an be achieved using a multivariate logistic regression model of MRI parameters after thresholding th
165                                              Regression modeling of epigenetic states at cCREs and ge
166           By fitting three multiple logistic regression models (one for each delivery mode), we calcu
167                                  In adjusted regression models, patients with large burns tended to s
168             Of the five partial least square regression models (PLSR) developed, protein, fiber and p
169  than the previous state-of-the-art logistic regression model (PPV of 17% [SD: 0.06]) and the baselin
170        We evaluated a multivariable logistic regression model predicting 5-year survival derived from
171 uated the utility of the DHIs using multiple regression models predicting moose abundance by administ
172                                  In adjusted regression models, prior APT was not associated with hae
173                     The multivariable linear regression models reported here can inform crolibulin do
174 ne learning algorithm and traditional linear regression model, respectively, with soil temperature an
175                                   A logistic regression model revealed that CCC was associated with F
176                                          The regression models revealed a small subgroup of diagnosed
177 troscopy with 1D-CNN as a classification and regression model show a good performance, and such a met
178                                          The regression model showed a 37% (P < .001) reduction in cS
179                                       Linear regression model showed serum PCT to be a significant pr
180            Baseline stroke severity adjusted regression model showed that changes within 96-hour post
181                                   A logistic regression model showed that non-obese patients (BMI < 3
182                                       Linear regression model showed that SSPiM in the inner nuclear
183                     Results from our spatial regression models showed biome stability, rainfall seaso
184  using three-level random-intercept logistic regression models, showing no differences in neonatal or
185                              In multivariate regression models, strength was associated with FA (b =
186                       Multivariable logistic regression models tested associations of geography and/o
187 inus the adjusted odds ratio from a logistic regression model that compared vaccination history for w
188               For AAAs smaller than 50 mm, a regression model that included both baseline WSS and lum
189    The method is based on a piecewise linear regression model that was developed to predict the bound
190                       In a multiple logistic regression model the factor wound irrigation with polyhe
191                                  In logistic regression models, the likelihood that RGS was perceived
192 d a multivariable, multilevel random-effects regression model to analyze current factors associated w
193                             We used logistic regression model to develop Model 1 by retaining the pre
194 ctivity, and trained a linear support vector regression model to estimate verbal memory performance b
195 ultivariate response random effects logistic regression model to simultaneously examine variation and
196             We used multilevel multivariable regression modeling to assess the association between da
197                              We used Poisson regression modeling to calculate the prevalence ratios (
198                    We used negative binomial regression modeling to determine whether daily maximum t
199 tive outcomes, we used multivariate logistic regression models to adjust for clinical and demographic
200 vidual descriptors and clusters, we used Cox regression models to assess associations with time from
201 encounter, and we used multivariate logistic regression models to assess demographic and clinical fac
202 nd, in a post-hoc analysis, we used logistic regression models to assess the association between demo
203                                  We used Cox regression models to calculate overall hazard ratios and
204                                     Logistic regression models to determine covariate risk contributi
205            We used propensity score-adjusted regression models to determine the impact of high bundle
206           We used proportional probabilities regression models to estimate fecundability ratios (FR)
207                     We used time-varying Cox regression models to examine the association between 1-
208         We employed Cox proportional hazards regression models to investigate associations of PA leve
209                        We used multivariable regression models to quantify the proportion of the vari
210                      We used adjusted linear regression models to study the relation between aMED and
211                            Here, we use beta regression models to study the socioeconomic and geograp
212                            We built logistic regression models to test for associations between house
213                                   A logistic regression model trained using samples collected during
214          We compare the method with a random regression model using MTG2 and BLUPF90 software and qua
215 or glaucoma versus nonglaucoma from logistic regression models using MRW-BMO values from all sectors
216  permutational multivariate ANOVA and hurdle regression models using the negative binomial distributi
217 omic disadvantage with hierarchical logistic regression models, using practices serving the fewest so
218               A Sparse Partial Least Squares regression model was able to explain the combination of
219 tistical analysis, the cause-specific hazard regression model was applied, with clinically relevant C
220 d progressive number of procedures, a linear regression model was applied.
221                    In this study, a logistic regression model was developed to quantify the risk of r
222                                        A Cox regression model was fitted to ascertain the all-cause m
223                                        A Cox regression model was used for statistical analyses.
224                                    A profile regression model was used to identify sensitive time per
225         A propensity score-weighted logistic regression model was used to mitigate potential bias ass
226                        A multilevel logistic regression model was used to test the association.
227                     Cox proportional hazards regression modeling was used to determine hazard ratios
228                                              Regression modelling was used for a statistical analysis
229                             Using a multiple regression model, we show that the combination of both t
230               Using Cox proportional-hazards regression modeling, we estimated the risk of hepatocell
231                                        Using regression models, we investigated group difference in l
232 ated a significant difference), and binomial regression model were used to analyze differences across
233 Descriptive statistics and a binary logistic regression model were used to analyze the data.
234                                              Regression model were used to evaluate the relationship
235                                          Cox regression models were applied to analyze the associatio
236 idual univariable and multivariable logistic regression models were assessed for each time-weighted-a
237 squared (PLS)-discriminant analysis, and PLS-regression models were assessed to examine relations bet
238                Bayesian linear mixed effects regression models were constructed to evaluate associati
239          Hierarchical multivariable logistic regression models were constructed to evaluate the assoc
240         Univariate and multivariate logistic regression models were created.
241                                     Logistic regression models were developed using lncRNAs and/or el
242                                 Multivariate regression models were established using Akaike informat
243             Unadjusted estimates from linear regression models were expressed as percentage differenc
244                                              Regression models were fit comparing circulating miRNAs
245                                              Regression models were fitted to assess association betw
246                                     Logistic regression models were fitted to determine the associati
247                                     Bayesian regression models were fitted to survival outcomes and e
248                          Three complementary regression models were generated for number of patients
249                                              Regression models were generated to predict carbonate su
250                              Multiple linear regression models were performed to estimate percentage
251  comparison between groups, and multivariate regression models were used for association between MRI
252                Kaplan-Meier and landmark Cox Regression models were used for survival estimates.
253                         Conditional logistic regression models were used to adjust for potential conf
254 ate and multivariate Cox proportional hazard regression models were used to analyze predictors of sur
255                                     Logistic regression models were used to analyze risk factors for
256                            Multivariable Cox regression models were used to analyze the relationship
257                                          Cox regression models were used to assess associations betwe
258                            Multivariable Cox regression models were used to assess associations of as
259  survival curves and Cox proportional hazard regression models were used to assess clinical character
260       Univariable and multivariable logistic regression models were used to assess predictors of mort
261                                              Regression models were used to assess the associations b
262               Multivariable Cox and logistic regression models were used to assess the independent re
263              Adjusted path analysis logistic regression models were used to assess the role of pre-pr
264                       Unconditional logistic regression models were used to calculate lung cancer odd
265                                Fixed-effects regression models were used to compare within-person eff
266                        Hierarchical logistic regression models were used to determine associations be
267                  Flexible semi-nonparametric regression models were used to estimate associations bet
268             Multivariate logistic and linear regression models were used to estimate associations bet
269                       Unconditional logistic regression models were used to estimate odds ratios and
270                          Polytomous logistic regression models were used to estimate ORs and 95% CIs
271                                     Logistic regression models were used to estimate progression by b
272                       Multivariable logistic regression models were used to estimate the odds of in-h
273                                     Logistic regression models were used to estimate the odds ratio (
274                                     Logistic regression models were used to evaluate associations of
275                                       Linear regression models were used to examine associations betw
276                     Generalized linear mixed regression models were used to examine the association b
277                                     Logistic regression models were used to examine the effect of cli
278                                              Regression models were used to investigate the associati
279                                       Random regression models were used to jointly analyse live body
280                     Cox proportional hazards regression models were used to obtain age- and sex-adjus
281                       Multivariable logistic regression models were used to provide adjusted rates of
282                         Multivariable linear regression models were used to relate cumulative SSB con
283                                       Linear regression models were used to relate measures of neonat
284                                              Regression models were used to test associations in PWH.
285                                 Linear mixed regression models were used.
286                                     Logistic regression models were utilized to estimate the probabil
287 ymptom onset was examined in a multivariable regression model, which was reduced by stepwise backward
288 ared with those of a commonly adopted linear regression model, which we refer to here as linear trend
289 rion in a stepwise fashion to build logistic regression models, which were then translated into predi
290             Calibration data fitted a linear regression model with R(2) were values highest to 0.984.
291 ffects on the quantitative trait by a linear regression model with random effects and develop efficie
292  was calculated, and a multivariate logistic regression model with random intercepts was used to comp
293                It was based on the optimized regression model with standard-sample bracketing (ORM-SS
294 results among outpatients using mixed-effect regression models with a random effect for study site ho
295 s for mortality were calculated by using Cox regression models with emphysema as the main predictor.
296                              We used Poisson regression models with log link functions to estimate ri
297               We used multivariable logistic regression models with medical school-specific fixed eff
298 adjusted cluster Chi-square and hierarchical regression models with program-level intercepts measured
299                Univariable and multivariable regression models with standardized regression coefficie
300                         In a binary logistic regression model, young age (P = 0.033), history of PEP

 
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