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1 terval [CI], 0.46 to 0.90 by pair-stratified Cox model).
2 s and 3-year survival was determined using a Cox model.
3 to relapse were evaluated by a mixed effects Cox model.
4 s and stayers were compared using a marginal Cox model.
5  and conducted multivariate analysis using a Cox model.
6 t analyses, such as fitting a time-dependent Cox model.
7 ing an inverse probability weighted marginal Cox model.
8 CI, 0.61 to 1.12; P = .214) from an adjusted Cox model.
9 in the literature, kernel Cox regression and Cox model.
10 ing 95% confidence interval estimated from a Cox model.
11 g the exposure period using a time-dependent Cox model.
12 vival were assessed by using a multivariable Cox model.
13 were handled as time-dependent covariates in Cox models.
14 ndard ambulatory care and investigated using Cox models.
15 ar disease outcomes using crude and adjusted Cox models.
16 were estimated with the use of multivariable Cox models.
17 ause mortality with the use of multivariable Cox models.
18  examined all-cause mortality using adjusted Cox models.
19 with mortality through day 365 post-HCT with Cox models.
20 ted adjusted hazard ratios with time-varying Cox models.
21           Survival predictors were tested in Cox models.
22  were estimated using adjusted discrete-time Cox models.
23 r periods were estimated from time-dependent Cox models.
24 re assessed using Kaplan-Meier estimates and Cox models.
25  and required the use of marginal structural Cox models.
26 RP, and D-dimer levels were calculated using Cox models.
27 tios (HRs) and 95% CIs derived from adjusted Cox models.
28 ion between STILs and RFS was evaluated with Cox models.
29  1.50; 95% CI, 1.07-2.12) in fixed-covariate Cox models.
30 dictors of ASCVD events in the multivariable Cox models.
31 ized estimating equations (GEE) and extended Cox models.
32 bserved in time-dependent or fixed-covariate Cox models.
33 ent AF by trajectory group was examined with Cox models.
34 ectable viral load (VL, >/=400 cps/mL) using Cox models.
35 clinical events with logistic regression and Cox models.
36 al failure were assessed using multivariable Cox models.
37 ART due to presumed treatment failure, using Cox models.
38  and 95% CIs were computed by using adjusted Cox models.
39 nalyzed using Kaplan-Meier and multivariable Cox models.
40 n-recipients (n=131,358) using multivariable Cox models.
41 sted for several potential confounders using Cox models.
42 al red meat consumption and diabetes risk in Cox models.
43 and stratified univariable and multivariable Cox models.
44 t cancer and 95% CIs were estimated by using Cox models.
45 phthalmitis were examined using multivariate Cox models.
46 F were evaluated with multivariable adjusted Cox models.
47 rvival based on cross-validated multivariate Cox models.
48  were explored as predictors of mortality in Cox models.
49 d with Kaplan-Meier curves and multivariable Cox models.
50 covery at week 48, and death by week 48 with Cox models.
51 ied and contrasted with CHD and stroke using Cox models.
52 art failure (n=216) were determined by using Cox models.
53 ney transplant on the basis of multivariable Cox modeling.
54 ected relative risk and an interval-censored Cox model accurately estimate VES and only require serol
55                           In a multivariable Cox model adjusted for age, coronary artery disease, pro
56                                         In a Cox model adjusted for age, sex, and smoking history, dr
57                                      We used Cox models adjusted for age and melanoma risk factors.
58 erminal peptide (PINP)) were estimated using Cox models adjusted for age at diagnosis, diagnostic cer
59                                Multivariable Cox models adjusted for age, body mass index, surgery, a
60 c graft loss and death were determined using Cox models adjusted for baseline donor, recipient, and t
61  studied through landmark and time-dependent Cox models adjusted for baseline tumor load, occurrence
62                                           In Cox models adjusted for clinical risk factors, 29 protei
63 rd ratios and 95% confidence intervals using Cox models adjusted for confounders.
64 n of TMAO with cardiovascular outcomes using Cox models adjusted for potential confounders (demograph
65                                              Cox models adjusted for potential confounders were used
66                                           In Cox models adjusted for risk factors for coronary artery
67 e (CHD), stroke, and ESRD was examined using Cox models adjusted for sociodemographic characteristics
68                                         From Cox models adjusted for sociodemographic, behavioral, an
69 g the Kaplan-Meier method and compared using Cox models adjusted for treatment and stratification fac
70 a were thereafter combined, and a stratified Cox model, adjusted for covariates, was fitted in order
71 rm (hazard ratio, 0.6; 95% CI, 0.43 to 0.75; Cox model-adjusted P < .001).
72  and this finding persisted on multivariable Cox modeling adjusting for demographic, clinical, and tr
73 [Apo] A1 and B) with CVD were compared using Cox models adjusting for classical risk factors, and pre
74                          Marginal structural Cox models adjusting for time-dependent confounding were
75 ) with risk of dementia (until 2015) using a Cox model, adjusting for age, sex, demographics, cardiov
76                                            A Cox model, adjusting for pack-years of cigarette smoking
77 as implemented in a time-dependent covariate Cox model, adjusting for treatment with other glucose-lo
78 idence intervals (CIs) were calculated using Cox modeling, adjusting for risk factors associated with
79  In such scenarios, the relative merits of a Cox model, an accelerated failure time model, a mileston
80 ysis was performed by using the conventional Cox model, an artificial survival benefit of metformin w
81           Forest plots were created based on Cox model analysis.
82                                              Cox models analyzed time to first ARI (upper or lower) b
83 d survival were analyzed using multivariable Cox modeling and restricted cubic spline function.
84 VD outcome and mortality were compared using Cox models and adjusting for atherosclerotic risk factor
85           Survival analysis was performed by Cox models and component-wise boosting.
86   Adjusted associations were estimated using Cox models and event rates and population attributable f
87  electrocardiogram vs. no AF) using adjusted Cox models and explored an interaction with exercise tra
88                  Nomograms were created from Cox models and internally validated by use of bootstrap
89                Using unadjusted and adjusted Cox models and Kaplan-Meier analysis, there was no signi
90                                      We used Cox models and mixed-effects models to, first, estimate
91  were evaluated using multivariable-adjusted Cox models and multiplicative interactions of CAC with s
92 ere assessed by using multivariable adjusted Cox models and restricted cubic splines.
93                       Based on multivariable Cox models and stepwise selection, the 3 most discrimina
94  revascularization rates were compared using Cox modeling, and patients were matched by propensity sc
95 e log rank test, univariate and multivariate Cox models, and propensity score-matched analyses.
96      Hazard ratios (HRs) were estimated from Cox models, and survival curves were estimated by the Ka
97 ing demographics-adjusted, cohort-stratified Cox models, and we compared models using Akaike's inform
98 000 to 2009 were analyzed for ITT-OS using a Cox model; and tumor recurrence using 2 competitive risk
99                           BP was analyzed in Cox models as the cumulative average of serially measure
100 tive incidence differences and multivariable Cox models assessed the association between dialysis fac
101 es related to survival outcome; however, the Cox model assumes proportional hazards (PH), which is un
102 djustment for transplant in a time-dependent Cox model attenuated the higher risk of death in obese b
103 ndicating higher accuracy) and compared with Cox models based on clinical (age and Karnofsky performa
104                                              Cox model-based SMRs were computed with and without adju
105                               In an adjusted Cox model, brincidofovir exposure remained associated wi
106                           In a multivariable Cox model, compared with unexposed patients, the risk of
107  end points were evaluated using conditional Cox models comparing new SGLT2i users with other antihyp
108                          In the multivariate Cox models comparing patients with an improved LVEF with
109                                    The final Cox model consisted of 4 habitat evolution-based feature
110                                              Cox modeling demonstrated that PSC patients have a posit
111                   In addition, multivariable Cox modeling demonstrated that treatment with adjuvant c
112                                     Adjusted Cox models demonstrated that body mass index greater tha
113                       Additionally, adjusted Cox models determined that every additional carbapenem d
114                            In a multivariate Cox model, DSA with DGF was an independent predictor for
115                                              Cox models estimated hazard ratios (HRs) with 95% CIs ac
116 vent by using marginal structural models and Cox models extended to accommodate time-dependent variab
117 .09; 90% CI, 0.81 to 1.46; P = .58) did not (Cox model for interaction of study arm and RAS status: P
118                               A multivariate Cox model for OS using allogeneic hematopoietic cell tra
119                                            A Cox model for predictors of time-to-incident visual fiel
120 h inverse probability of treatment weighting Cox modeling for the composite end point of cardiovascul
121       Prediction models were developed using Cox models for (a) mortality, (b) allograft loss (death
122 ained risk scores on the basis of GCE versus Cox models for cancer-specific mortality and all-cause m
123 ipient characteristics, we fit multivariable Cox models for death-censored graft failure and examined
124 atment and outcomes was analyzed by separate Cox models for each outcome.
125                          One-year and 3-year Cox models for posttransplant survival were fitted with
126 formed time-to-event analysis using separate Cox models for risk to develop delayed and recurrent sei
127                                              Cox models for RSClin were compared with RS alone and cl
128                                              Cox models for the primary composite cardiovascular outc
129                                              Cox models for these outcomes were adjusted for age, sex
130                                              Cox models for three metrics landmarked at 12 weeks and
131 ciations were examined in naive and adjusted Cox models (for time-to-event analyses) and logistic reg
132 ackward selection to derive the best-fitting Cox model, from which we derived a multivariable fractio
133  of hip fracture in a multivariable-adjusted Cox model (hazard ratio, 0.35; 95% CI, 0.22-0.54).
134 range, 0-3) MeDi score in the fully adjusted Cox model (hazard ratio, 0.59; 95% confidence interval,
135 interval, 0.997-1.002; P=0.856) and adjusted Cox models (hazards ratio, 1.000; 95% confidence interva
136                             In multivariable Cox models, higher number of vessels with PAD was associ
137 en treatment and ejection fraction (p = 0.10 Cox model); however, pre-specified subgroup analysis sug
138 endent variable by generating time-dependent Cox models; HRs at an ELF threshold of 10.51 were 1.94 (
139                                            A Cox model identified receipt of radiation therapy plus c
140                                Multivariable Cox modeling identified age (HR, 1.06; 95% CI, 1.04-1.08
141 h TLI were estimated through a multivariable Cox model in both sets.
142 TDM approach with that of the time-dependent Cox model in the presence of immortal time.
143 ischemic stroke using multivariable-adjusted Cox models in a nationwide cohort of 547 441 black and 2
144 9, and 0.007, respectively) in multivariable Cox models in AA TNBCs but not White TNBCs.
145  risk for each patient was determined from a Cox model incorporating age, nodal status, tumor size an
146 events at both univariable and multivariable Cox modeling, independent of FRS (P < .001).
147                             Results from the Cox model indicated that the hazard of graft failure dur
148 iovascular disease events were assessed with Cox models, log-rank tests, and mediation (path) analyse
149 ection bias, we additionally used a weighted Cox model (marginal structural model) that accounts for
150 sion (in or out of hospital), analysed using Cox models measuring time from admission.
151                              In multivariate Cox models, metabolically healthy overweight women, defi
152                       Compared with separate Cox models, multistate models allow for dissection of pr
153                             In multivariable Cox models, neither injectable (adjusted hazard ratio [a
154                            Furthermore, in a Cox model of 3976 propensity-matched pairs, patients who
155                                 Multivariate Cox models of 10-year survival and overall indicated tha
156                   Comparing the GCE model to Cox models of cause-specific mortality or all-cause mort
157       Recursive partitioning with univariate Cox models of event-free survival ("survival tree regres
158              Discrimination was tested using Cox models of MAGGIC score stratified by race, and combi
159 6 with group 4 tumours) in our multivariable Cox models of progression-free and overall survival.
160                                         In a Cox-model of predefined variables, age, FLT3-ITD and >1
161         Three factors were selected into the Cox model offering significant protection from GVHD deve
162                         In the multivariable Cox model, older age (adjusted hazard ratio [aHR] 1.31 [
163  grade, and performance status (multivariate Cox model P < .05, log-rank P < .001).
164 ng a backward procedure in the multivariable Cox model (patient's age, tumour size, Federation Franca
165                              In the adjusted Cox Model, patients who traveled >360 miles had a slight
166                                Risk-adjusted Cox models predicting hazard of mortality by LN count sh
167                           In a multivariable Cox model, prevalent CVD was significantly associated wi
168 and at the National Hospital and assessed in Cox models providing 6-week mortality rate ratios (MRRs)
169 ion on hospitalization risk were assessed in Cox models providing overall and major disease-group inc
170 and at the National Hospital and assessed in Cox-models providing 6-week Mortality Rate Ratios (MRRs)
171                       Time-dependent frailty Cox models quantified the association between RPM use an
172  survival in all LVAD patients (n=111) using Cox modeling, receiver-operator characteristic (ROC) cur
173 , was assessed using logistic regression and Cox models, respectively.
174 e transplant using multivariate logistic and Cox models, respectively.
175 dian follow-up of 55 months, a multivariable Cox model revealed no significant differences for distan
176                                              Cox models revealed that men with circulating antibodies
177 hin-subject correlation (ignored in a simple Cox model, robust standard errors in a variance-correcti
178                                Risk-adjusted Cox modeling showed esophagectomy was associated with im
179                                 Multivariate Cox modelling showed that HALT-HCC was significantly ass
180                     Propensity score-matched Cox models showed an independent and protective associat
181                                     Adjusted Cox models showed that each additional point in the Acut
182 CT-P13 versus RP in a multivariable marginal Cox model situated within prespecified margins (0.80 to
183                                Multivariable Cox models stratified by center, age, and sex and adjust
184      Hazard ratios (HRs) were estimated from Cox models stratified by matched set and adjusted for po
185 95% CIs were estimated through multivariable Cox models stratified by trial.
186                            In a multivariate Cox model, subclinical ABMR at 1 year was independently
187                             Results from the Cox model suggest a strong effect of adrenalectomy on lo
188 ios (HRs) with 95% CIs derived from adjusted Cox models; survival estimates are reported at 2 and 5 y
189                       Multivariable-adjusted Cox models tested the association between CHIP and incid
190                                Multivariable Cox models tested the association between time-dependent
191        A hazard ratio (HR) from a stratified Cox model that exceeded 1.18 for TC6 versus TaxAC was pr
192 the composite risk value was obtained from a Cox model that incorporated age; nodal status; tumor siz
193 higher discrimination for both PFS and OS in Cox models that included MRD (as opposed to CR) for resp
194 rvival analyses were performed with weighted Cox models that used inverse probability of censoring we
195 or TLG42% variable was used for a univariate Cox model, the Akaike information criterion difference o
196                                         In a Cox model, the association between lower UPSIT score and
197                           Using the weighted Cox model, the death hazard rate (HR) of EVS was 0.71 (9
198                           In a multivariable Cox model, the interaction term between LNR and receipt
199 To address this question, we examined, using Cox models, the predictive effects of school achievement
200                         In the most adjusted Cox models, the risk of HF was 39% and 62% lower among m
201                                           In Cox models, there was no difference with regard to risk
202 covariates, we controlled for confounding in Cox models through inverse probability of treatment weig
203   We used the Andersen-Gill extension of the Cox model to estimate the effects of previous infections
204                   We applied a multivariable Cox model to examine whether patient and hospital factor
205 ivariable analyses were performed by using a Cox model to identify variables associated with time to
206 -dependent covariates were entered in: (1) a Cox model to investigate their impact on full-blown PML-
207                           Using hierarchical Cox modeling to adjust for imbalanced baseline character
208                   We also used multivariable Cox modelling to assess whether GARD was independently a
209                                      We used Cox models to adjust for age and melanoma risk factors.
210                                      We used Cox models to assess factors associated with both cancer
211                        We used multivariable Cox models to assess mortality risk with adjustment for
212                               Time-dependent Cox models to assess risk for NHL in treatment-naive pat
213                 Measurements: Time-dependent Cox models to assess risk for NHL in treatment-naive pat
214             We used stratified multivariable Cox models to assess the prognostic associations of peri
215                                      We used Cox models to assess whether PH (PASP>35 mm Hg) was asso
216                                      We used Cox models to calculate hazard ratios (HRs), adjusted fo
217                                      We used Cox models to calculate hazard ratios and 95% confidence
218                                      We used Cox models to determine mortality hazard ratios, control
219                        We used multivariable Cox models to determine the associations between hyperte
220 haracteristics at listing and at HT and used Cox models to determine whether myocarditis is independe
221                         We used sex-specific Cox models to establish the independent effects of each
222                                      We used Cox models to estimate cause-specific hazard ratios (HRs
223 sentation of cardiovascular disease and used Cox models to estimate cause-specific hazard ratios (HRs
224                        We used multivariable Cox models to estimate hazard ratios (HRs) for the prima
225                       We used time-dependent Cox models to estimate the association between current a
226                         We used time-varying Cox models to estimate the association between recipient
227                           We used stratified Cox models to estimate unadjusted and adjusted (for sex,
228 ormed competing risk-adjusted cause-specific Cox models to evaluate the effects of metabolic traits (
229 sed recursive partitioning and multivariable Cox models to identify associations between colorectal c
230                                      We used Cox models to investigate associations between baseline
231 ogical testing of participants once, while a Cox model using only symptomatic infections returns bias
232 the parameter estimates of the multivariable Cox model was computed for all patients.
233                                   A weighted Cox model was created to determine the effect of SP on t
234                                            A Cox model was developed, adjusting for propensity scores
235                                          The Cox model was employed to assess variables independently
236                              A multivariable Cox model was fitted for each time point, which showed t
237                                            A Cox model was used to calculate hazard ratios for ischem
238                   A time-dependent covariate Cox model was used to determine the effect of donor-reci
239                                            A Cox model was used to examine and identify predictors of
240                                 Multivariate Cox modeling was used to assess the impact of CARV isola
241 nts who completed neoadjuvant AI, stratified Cox modeling was used to assess whether time to recurren
242                                Multivariable Cox modeling was used to compare the likelihood of outpa
243 entional Cox regression model and a weighted Cox model, we did not find a survival benefit for patien
244                                      Using a Cox model, we first estimated hazard ratios of amyotroph
245 en optimizing the parameter estimates in the Cox model, we modified the R package survival; covariate
246                                         In a Cox model, we noted that districts with higher populatio
247 ing demographics-adjusted, cohort-stratified Cox models, we assessed associations between anal cancer
248      Kaplan-Meier method, log-rank test, and Cox model were used for analysis.
249                Propensity score matching and Cox modeling were used for analysis.
250  stratum, hazard ratios based on conditional Cox models were 0.98 (95% CI: 0.94, 1.02) and 1.17 (95%
251 ompeting mortality, whereas risk scores from Cox models were associated with both increased cancer-sp
252                     Adjusted, sex-stratified Cox models were constructed.
253                                  METHODS AND Cox models were derived from SPRINT trial data and valid
254                                              Cox models were fitted to associate HDP with incident ca
255                  Multivariable mixed-effects Cox models were fitted to evaluate the influence of depr
256 tratified by study) hazard ratios (HRs) from Cox models were obtained for deferred/intermittent ART v
257                                          The Cox models were then used to estimate the absolute reduc
258                  Univariate and multivariate Cox models were used to analyze the relationship between
259                                              Cox models were used to assess cardiovascular risk assoc
260                               Sex-stratified Cox models were used to assess cardiovascular risk.
261                      Kaplan-Meier curves and Cox models were used to assess genotype-specific cumulat
262                                Multivariable Cox models were used to assess graft survival.
263                                 Multivariate Cox models were used to assess the hazard ratios (HRs) o
264                                              Cox models were used to assess the independent prognosti
265                              Pair-stratified Cox models were used to calculate 95% confidence interva
266             Logistic regression and adjusted Cox models were used to compare LapDP and OpenDP with re
267                                              Cox models were used to compare outcomes by CMV risk and
268                                              Cox models were used to determine associations between m
269                                Multivariable Cox models were used to determine the association betwee
270                                              Cox models were used to estimate associations of time-va
271             Kaplan-Meier curves and adjusted Cox models were used to estimate cumulative probabilitie
272                                Multivariable Cox models were used to estimate hazard ratios (HRs) and
273                                Multivariable Cox models were used to estimate hazard ratios (HRs) and
274                                              Cox models were used to estimate multivariable-adjusted
275                                     Adjusted Cox models were used to evaluate the associations of bas
276                                              Cox models were used to examine (1) the hazard ratios fo
277                                Multivariable Cox models were used to examine how the event risk chang
278                                              Cox models were used to examine whether sex modified the
279 zation AF/AT was prospectively assessed, and Cox models were used to test the independent association
280 just for patient and lifestyle factors), and Cox models were used.
281                                Multivariable Cox models were used.
282                 Mixed effect regression (and Cox) models were used to assess the association between
283 ial logistic regression) and survival (using Cox modeling) were examined across terciles.
284 ined independent statistical significance in Cox models when adjusted for the covariates of age and M
285                                            A Cox model, which adjusted incidence for participant demo
286  patients who did not, using a multivariable Cox model with inverse probability weighting according t
287   Time to CAV diagnosis was assessed using a Cox model with occurrence of clinical rejection analyzed
288                                            A Cox model with restricted cubic splines identified the l
289 pes were studied as censored variables using Cox models with age as time scale.
290                                              Cox models with exposure to sulfonylureas and DPP-4 inhi
291                       Multivariable adjusted Cox models with non-HDL cholesterol lower than 2.6 mmol/
292 repeated yearly measures and fixed-covariate Cox models with only baseline values after controlling f
293                                              Cox models with QRISK3 predictors and a frailty (random
294 hemotherapy and survival was evaluated using Cox models with restricted cubic splines.
295                                              Cox models with time-varying number of RFs in control we
296 tors of revascularization, and multivariable Cox models with treatment strategy as a 3-level time-var
297 ascular disease, infection, and cancer using Cox models with year of kidney transplant as the primary
298                   In a proportional hazards (Cox) model with adjustment for relevant covariates and m
299 tically with these 2 genotype groups under a Cox model, with P values of 0.000999 and 0.00366, respec
300 ) were explored using separate multivariable Cox models within a competing risks framework.

 
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