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1 , death) was compared between regimens using Poisson regression.
2 ors for ESBL-E acquisition in hospital using Poisson regression.
3                 Subgroups were compared with Poisson regression.
4 os for women versus men were estimated using Poisson regression.
5 d non-Indigenous children by use of modified Poisson regression.
6 -15) using data from a systematic review and Poisson regression.
7  who remained to be treated using a modified Poisson regression.
8  as an absolute margin of 0.5% determined by Poisson regression.
9 the increase in 2017-2019 vs 2014-2016 using Poisson regression.
10 fferences by AIDS status and over time using Poisson regression.
11 s determined using multilevel, mixed-effects Poisson regression.
12 d factors associated with viral rebound with Poisson regression.
13  were also assessed in donors using modified Poisson regression.
14  using relative and absolute risk models via Poisson regression.
15 ed incidence rates of WL were analyzed using Poisson regression.
16 pre-vaccination (baseline) were evaluated by Poisson regression.
17 gnosed asthma were computed using a modified Poisson regression.
18 h experiencing a serious adverse event using Poisson regression.
19 1 or PM2.5 were evaluated with a time-series Poisson regression.
20 g Fisher's exact test and bivariate modified Poisson regression.
21 mple) by treatment arm were calculated using Poisson regression.
22 r age, sex, race/ethnicity, and season using Poisson regression.
23 oup, and relative rates were estimated using Poisson regression.
24   CLABSI incidence rates were compared using Poisson regression.
25 cidence rate ratios (IRRs) were estimated by Poisson regression.
26 d using generalized estimating equations for Poisson regression.
27 ence rate ratios (IRRs) were estimated using Poisson regression.
28  95% confidence intervals were calculated by Poisson regression.
29 x proportional hazards, competing risks, and Poisson regression.
30 trends were estimated by linear or piecewise Poisson regression.
31  who remained to be treated using a modified Poisson regression.
32 sis were respectively analysed using Cox and Poisson regression.
33 ons, and mortality between HEU and HUU using Poisson regression.
34 s and rate differences were determined using Poisson regression.
35 lence ratios with 95% CIs from multivariable Poisson regression.
36 ulated, and trend tests were conducted using Poisson regression.
37 infection in each period were assessed using Poisson regression.
38 ciated with MVPA were estimated using survey Poisson regressions.
39 yndrome and outcome using generalized linear Poisson regression adjusted for age, injury mechanism, I
40              The analysis used multivariable Poisson regression adjusted for historical clinic-level
41                                Multivariable Poisson regression adjusted for sex, age, weight group,
42 dence rate ratio (IRRs) were estimated using Poisson regressions, adjusted for sociodemographics, com
43 atios were estimated following multivariable Poisson regression, adjusting for age, sex, ethnicity, s
44 ce rate ratios (aIRRs) were calculated using Poisson regression, adjusting for demographic and clinic
45 al and FVC of <80% predicted) using modified Poisson regression, adjusting for relevant confounders.
46 revalence ratios (PRs) and differences using Poisson regression, also examining sex-specific relation
47                                Zero-inflated Poisson regression analyses showed that the likelihood o
48                       Multivariable modified Poisson regression analyses were performed to assess the
49 rounding buffer zones, through multivariable Poisson regression analyses.
50 diovascular death was assessed using Cox and Poisson regression analyses.
51 ce ratios (SIRs) and, for SCC, multivariable Poisson regression analysis of SIR ratios, adjusting for
52                             We used modified Poisson regression analysis to evaluate the independent
53                                              Poisson regression analysis was performed to determine w
54 econd, based on results from the first step, Poisson regression analysis was used to derive the final
55                                              Poisson regression analysis was used to estimate the inc
56  22 calendar years, 14 geographic areas, and Poisson regression analysis was used to quantify the eff
57                                  In multiple Poisson regression analysis, the incidence rate ratio in
58 idence rate ratios (IRRs) were calculated by Poisson regression analysis.
59 incidence rate ratios obtained in log-linear Poisson regression analysis.
60 ates per active person-year using multilevel Poisson regression and empirical Bayes methods.
61          Mortality rates were analyzed using Poisson regression and indirect standardization.
62  concurrent medications were estimated using Poisson regression and inverse probability of treatment
63             Retrospective cohort study using Poisson regression and inverse probability of treatment
64  were compared between treatment groups with Poisson regression and one-inflated beta regression, res
65         The number of events was analyzed by Poisson regression and other outcomes with repeated-meas
66                                              Poisson regression and purely temporal, spatial, and spa
67              Time trends were explored using Poisson regression and reported as annual percent change
68 sk ratios (RRs) were obtained using modified Poisson regression and weighted risk differences (RDs) u
69 nal hazards regression, logistic regression, Poisson regression, and generalized linear model with ga
70                         Logistic or modified Poisson regression, as appropriate, was used to estimate
71                             On multivariable Poisson regression, asplenia was the only predictive var
72                                              Poisson regression assessed trends in 6- and 12-month co
73 asis' (RAMMIE) method and the improved quasi-Poisson regression-based method known as 'Farrington Fle
74 rming within each city were characterized as Poisson regression coefficients describing change in abu
75 Rs) and 95% confidence intervals (CIs) using Poisson regression, controlling for potential confoundin
76 , and socioeconomic status were estimated by Poisson regression distribution models.
77                                     Modified Poisson regression estimated perinatal mental illness ri
78                                     Modified Poisson regression estimated perinatal mental illness ri
79                                Multivariable Poisson regression estimated the adjusted effect of BMI
80                   Rates were generated using Poisson regression estimated via generalized estimating
81                                              Poisson regression examined trends in LT registration, b
82 nce rate ratios (IRRs) were calculated using Poisson regression for DLBCL risk in relation to HLA mis
83                 MAPS adopts a zero-truncated Poisson regression framework to explicitly remove system
84                                              Poisson regression identified clinical, laboratory and d
85 tiation and continuation were assessed using Poisson regression in univariate and multivariate analys
86                                     Multiple Poisson regression indicated that a 1-standard-deviation
87 ted PrEP uptake and continuation, and robust Poisson regression methods were used to identify correla
88 5 compared with previous 3-year intervals on Poisson regression model (P=0.001).
89 analyses evaluated day 0-69 findings using a Poisson regression model accounting for overdispersion.
90 d as 1 - relative risk derived from a robust Poisson regression model adjusted for age.
91 ot in outbreak over the same period, using a Poisson regression model adjusting for correlation withi
92                           In a multivariable Poisson regression model adjusting for potential confoun
93 phils >/=300 cells per muL), analysed with a Poisson regression model corrected for overdispersion wi
94 2016 were analyzed, including a multivariate Poisson regression model of incidence rates.
95                                 We applied a Poisson regression model to analyze the longitudinal cha
96                We used a Bayesian space-time Poisson regression model to examine the relationship bet
97                               A longitudinal Poisson regression model was estimated controlling for t
98                                 A multilevel Poisson regression model was used to estimate the risks
99         A facility-level fixed-effects quasi-Poisson regression model was used to examine the inciden
100 al logistic regression model and conditional Poisson regression model were used to estimate the risks
101 using negative binomial regression model and Poisson regression model with a robust variance estimato
102 blocker use and outcomes were analyzed using Poisson regression model with robust standard errors for
103 significant overdispersion (invalidating the Poisson regression model) and residual autocorrelation (
104 els with results from an unweighted adjusted Poisson regression model.
105  risk of incident HF was analyzed by using a Poisson regression model.
106 ea improvement were examined with a modified Poisson regression model.
107 -cohort (APC) analysis was performed using a Poisson regression model.
108 sitemia were identified using a multivariate Poisson regression model.
109 their patients was examined using a modified Poisson regression model.
110 es status was adjusted for in a multivariate Poisson regression model.
111                                      We used Poisson regression modeling to calculate the prevalence
112             We calculated HIV incidence with Poisson regression modelling as events per person-years
113 gistic regression for AF detection rate, and Poisson regression modelling for CHA2DS2-VASc scores.
114                                     Adjusted Poisson regression models accounted for 14 resident cova
115                                     Multiple Poisson regression models adjusted for age, sex, smoking
116                  Using hierarchical modified Poisson regression models adjusted for patient and pract
117                       Multivariable modified Poisson regression models adjusting for confounding by a
118 thma at ages 5-9 years were calculated using Poisson regression models and pooled.
119 cific associations were estimated with quasi-Poisson regression models and then pooled by random-effe
120                                              Poisson regression models estimated adjusted relative ri
121 ppression CD4 count <200 and >=200 cells/uL, Poisson regression models estimated hospitalization inci
122                                              Poisson regression models estimated prevalence ratios (P
123                                              Poisson regression models estimated trends in HCV incide
124                                Multivariable Poisson regression models examined admission risk factor
125 s of viral suppression were determined using Poisson regression models incorporating RDS-II weights.
126 P. vivax parasite prevalence, and multilevel Poisson regression models showed that such differences w
127                                      We used Poisson regression models stratified by gender to test i
128 lyzed for incident asthma exacerbations with Poisson regression models that included clinical measure
129                             We used modified Poisson regression models to assess the associations bet
130                          We applied modified Poisson regression models to assess the strength of asso
131                        We used multivariable Poisson regression models to calculate adjusted incidenc
132                                      We used Poisson regression models to compare the incidences of p
133 a, and used generalized estimating equations Poisson regression models to estimate incidence rate rat
134                     We used linear and quasi-Poisson regression models to explore the associations be
135              A 5% claims sample was used for Poisson regression models to quantify visit trends.
136                       Site-specific modified Poisson regression models were constructed to assess the
137                  Univariate and multivariate Poisson regression models were fit for the outcomes.
138                     Among HEU, multivariable Poisson regression models were fit to evaluate associati
139                                     Modified Poisson regression models were fit to obtain relative ri
140                                              Poisson regression models were fitted to determine the e
141                     Among HEU, multivariable Poisson regression models were fitted to evaluate associ
142                                        Mixed Poisson regression models were fitted to examine associa
143                                              Poisson regression models were used to assess the interv
144 nt discharge data, multistate and log-linear Poisson regression models were used to calculate hospita
145                                              Poisson regression models were used to compare baseline
146                                              Poisson regression models were used to compare outcomes
147                    Conditional fixed-effects Poisson regression models were used to determine inciden
148                                              Poisson regression models were used to estimate incidenc
149                                     Modified Poisson regression models were used to estimate relative
150                                              Poisson regression models were used to estimate the age-
151      Coarsened exact matching techniques and Poisson regression models were used to estimate the risk
152                                              Poisson regression models were used to evaluate associat
153                                Multivariable Poisson regression models were used to evaluate the simu
154                                              Poisson regression models were used to identify changes
155                                              Poisson regression models were used to identify changes
156                                      Cox and Poisson regression models were used.
157 alent and incident DSPN were estimated using Poisson regression models with a robust error variance a
158 edding (VL > 40 copies/mL) were estimated by Poisson regression models with generalized estimating eq
159                                      We used Poisson regression models with log link functions to est
160                                Multivariable Poisson regression models with robust error estimates we
161                                              Poisson regression models with robust error variance wer
162                                Multivariable Poisson regression models with robust error variance wer
163                                              Poisson regression models with robust standard errors we
164 ence after IRS were assessed by season using Poisson regression models with robust standard errors, c
165                                              Poisson regression models with robust variance were used
166                                    We fitted Poisson regression models with year as the exposure and
167 fic mental disorder, we estimated MRRs using Poisson regression models, adjusting for sex, age, and c
168                                Multivariable Poisson regression models, disaggregated by key populati
169                                      We used Poisson regression models, reporting B coefficients, to
170                             In multivariable Poisson regression models, vignette portrayals of untrea
171                                  Using quasi-Poisson regression models, we estimated rate ratios (RRs
172  and 10 year of follow-up using logistic and Poisson regression models.
173 nces in obesity at age 4 were compared using Poisson regression models.
174  were evaluated using multivariable modified Poisson regression models.
175 vival to hospital discharge using multilevel Poisson regression models.
176 relative risks of outcomes were estimated by Poisson regression models.
177  and year of diagnosis, were estimated using Poisson regression models.
178  age and sex, were examined using linear and Poisson regression models.
179 ith incidence rates were assessed by fitting Poisson regression models.
180 ty was analyzed in 381 participants by using Poisson regression models.
181 ctious disease incidence was evaluated using Poisson regression models.
182 ries was estimated by multivariable modified Poisson regression models.
183  and individual outcomes were examined using Poisson regression models.
184 sed with multivariable hierarchical modified Poisson regression models.
185 s with no recorded thyroid dysfunction using Poisson regression models.
186 he United States using negative binomial and Poisson regression models.
187 edication, and comorbidity were estimated by Poisson regression models.
188 ine (3TC), and others were estimated through Poisson regression models.
189 tes of pcsAION and sAION were compared using Poisson regression models.
190 for incident tuberculosis with mixed-effects Poisson regression models.
191 HF re-hospitalizations were calculated using Poisson regression models.
192 tiveness was estimated by using multivariate Poisson regression models; effectiveness was allowed to
193 tiveness (VE), using unadjusted and adjusted Poisson regression of cytology (HSIL) and histopathology
194 ons and delivery outcomes were assessed with Poisson regression or analysis of variance.
195  risk factor associations were determined by Poisson regression (plaque presence), negative binominal
196                                              Poisson regression revealed that VT was a significant pr
197  (CIMT) at baseline (2004) and used modified Poisson regression (robust error variance) to estimate p
198 tage renal disease (ESRD) were calculated by Poisson regression stratified by age and adjusted for et
199                                Multivariable Poisson regression survival models and Cox analyses were
200 n, region, and ethnicity were examined using Poisson regression, taking clustering within general pra
201                             We used modified Poisson regression to assess the relationship between ra
202                                      We used Poisson regression to calculate prevalence ratios for th
203                                      We used Poisson regression to calculate the annual percentage re
204 omist-drawn blood cultures was modeled using Poisson regression to compare the 12-month intervention
205                                      We used Poisson regression to compare the annual relative increa
206                                      We used Poisson regression to compare the frequency of days on w
207 te of the first offered appointment; we used Poisson regression to compare the proportion of women wh
208 y state and age group, we used mixed-effects Poisson regression to determine individual-level and dis
209           Our primary analysis used modified Poisson regression to determine the association between
210 d by trajectory group and performed adjusted Poisson regression to estimate adjusted incidence rate r
211                                      We used Poisson regression to estimate incidence rate ratios (IR
212                        We used a conditional Poisson regression to estimate incidence rate ratios.
213  or decompensations, excluding HCC) and used Poisson regression to estimate incidence rate ratios.
214                                      We used Poisson regression to estimate relative risks and 95% co
215  infection with the general population, used Poisson regression to evaluate anal cancer incidence amo
216                                      We used Poisson regression to evaluate relative VE (RVE) in prev
217 verse probability of treatment weighting and Poisson regression to evaluate RVE in preventing influen
218  families, we used Mantel-Haenszel tests and Poisson regressions to estimate incidence rate ratios fo
219                                    We used a Poisson regression tree model to estimate an optimal VDP
220 ge involved a county-level time series quasi-Poisson regression, using a distributed lag nonlinear mo
221                                              Poisson regression was used to analyze overall and subgr
222                                              Poisson regression was used to analyze the relation betw
223                                     Adjusted Poisson regression was used to assess associations betwe
224                                              Poisson regression was used to assess between-group diff
225                                              Poisson regression was used to assess differences betwee
226 eometric mean reproductive hormones, whereas Poisson regression was used to assess risk of sporadic a
227                                              Poisson regression was used to assess temporal change ov
228                                     Modified Poisson regression was used to assess the effect of cran
229                                              Poisson regression was used to calculate crude and adjus
230                                              Poisson regression was used to calculate incidence rates
231                                              Poisson regression was used to compare incidence rates b
232                                              Poisson regression was used to compare rates between dia
233  accounting for the competing risk of death; Poisson regression was used to compare rates of NCD occu
234                                     Modified Poisson regression was used to compare risks of the outc
235                                              Poisson regression was used to compute relative risks (R
236                                              Poisson regression was used to determine prevalence rati
237                                              Poisson regression was used to estimate county-specific
238                                              Poisson regression was used to estimate prevalence ratio
239                                              Poisson regression was used to estimate relative risks (
240                                              Poisson regression was used to estimate relative risks (
241                                Multivariable Poisson regression was used to estimate the incidence ra
242                                              Poisson regression was used to evaluate the association
243                                              Poisson regression was used to evaluate the effect of ag
244                                Multivariable Poisson regression was used to examine the relation betw
245                       Multivariable-adjusted Poisson regression was used to identify factors associat
246                                     Modified Poisson regression was used to model adjusted risk facto
247                                              Poisson regression was used to model dementia incidence
248                                        Using Poisson regression, we assessed the association between
249                                        Using Poisson regression, we assessed the association of socio
250                                        Using Poisson regression, we calculated adjusted relative risk
251                                        Using Poisson regression, we calculated incidence rates (IRs)
252                                        Using Poisson regression, we estimated incidence rate ratios (
253 se within anatomic strata) by using modified Poisson regression were assessed.
254                    Annual rates estimated by Poisson regression were stratified by sex, care setting,
255                  Extended Cox regression and Poisson regression were used for statistical analysis.
256                   Multivariable logistic and Poisson regression were used to assess the impact of the
257         Generalized estimating equations for Poisson regression were used to investigate the relation
258                         Multivariable survey Poisson regressions were applied to estimate RR and 95%
259           Mixed model linear regressions and Poisson regressions were used to estimate continuous and
260                                Multivariable Poisson regressions were used to test the association be
261                                   Linear and Poisson regressions were used, with adjustment for mater
262  Incidence rate ratios were calculated using Poisson regressions while adjusting for sociodemographic
263                                    Piecewise Poisson regression with a discontinuity was used to esti
264                                      We used Poisson regression with adjustment for individual and ar
265                Analysis was by multivariable Poisson regression with adjustment for maternal characte
266  and vaccine eligibility using multivariable Poisson regression with an offset for person-years.
267                                              Poisson regression with cluster robust SEs was used to a
268                                              Poisson regression with cluster robust standard errors w
269  calculated the yearly SSTI incidences using Poisson regression with clustering by patient.
270 and were related to SGA risk with the use of Poisson regression with confounder adjustment; linear sp
271 bic-restricted splines and multivariable log-Poisson regression with empirical standard errors were u
272                                              Poisson regression with generalized estimating equations
273                   Analysis included modified Poisson regression with generalized estimating equations
274  HIV incidence estimated using multivariable Poisson regression with generalized estimating equations
275 nce intervals were estimated from log-linked Poisson regression with generalized estimating equations
276          Bivariate analyses using log-linked Poisson regression with generalized estimating equations
277 quipment use was examined using multivariate Poisson regression with generalized estimating equations
278 s analyzed in separate models using modified Poisson regression with interaction terms.
279  months after each of these were analysed by Poisson regression with invasive interval cancer screen
280  Survey of Family Growth using multivariable Poisson regression with multiple covariates and adjustme
281                                      We used Poisson regression with random effects for state and yea
282 -adjusted DDLT rates using nested multilevel Poisson regression with random intercepts for DSA and tr
283 s of no return to baseline were estimated by Poisson regression with robust error variance and adjust
284                                              Poisson regression with robust error variance, clustered
285                                              Poisson regression with robust error variance, clustered
286 morbid neurologic function were estimated by Poisson regression with robust error variance.
287 s, were calculated in STATA using a modified Poisson regression with robust error variances to obtain
288                                              Poisson regression with robust standard errors was used
289                                 Multivariate Poisson regression with robust standard errors was used
290 owth and obesity were assessed by linear and Poisson regression with robust standard errors, adjustin
291  rate ratios were computed using conditional Poisson regression with robust standard errors.
292 012 and 2015 for several risk factors, using Poisson regression with robust variance and a bootstrap-
293                                              Poisson regression with robust variance estimation provi
294                             We used modified Poisson regression with robust variance estimation to es
295                                     Modified Poisson regression with robust variance estimation was u
296             Associations were assessed using Poisson regression with robust variance estimation.
297 avior, and clinical characteristics, we used Poisson regression with robust variance to estimate prev
298 d incidence rate ratios were estimated using Poisson regression with robust variance while accounting
299 ios (IRRs) associated with abortion, we used Poisson regression with the logarithm of woman-years at
300 (adults only) were calculated using modified Poisson regression, with 2009-2010 as baseline.

 
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