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1 adjusting for confounders in a multivariable logistic model).
2 e I diastolic dysfunction (P < 0.050 for all logistic models).
3 the basis of beta estimates derived from the logistic model.
4 uted, according to a multivariate regression logistic model.
5 uses was calculated by fitting the data to a logistic model.
6 robust, Bayesian hierarchical five-parameter logistic model.
7  = 66) were analyzed by using a multivariate logistic model.
8  contributor to the explanatory ability of a logistic model.
9  as a discrete trait in a class C regressive logistic model.
10 model different from the conventional linear logistic model.
11 er the Gompertz model, it declines under the logistic model.
12 s for the mediator variable, but rather to a logistic model.
13 onse kinetic model and an empirical modified logistic model.
14 mined cause of death were identified using a logistic model.
15 motic leakage were determined using a binary logistic model.
16 mum likelihood estimator for parameters in a logistic model.
17 both symptoms was evaluated by a multinomial logistic model.
18 nt selection were studied in a mixed-effects logistic model.
19 ies using 2-level hierarchical multivariable logistic models.
20 year were compared using the chi(2) test and logistic models.
21 y hospital or patient characteristics in our logistic models.
22 ssessed by using univariate and multivariate logistic models.
23 e likelihood of becoming newly sensitized in logistic models.
24 hours, 24 hours, and 30 days in multivariate logistic models.
25 assified as users or nonusers in multinomial logistic models.
26 cases and 1,385 controls) using multivariate logistic models.
27 ure and mortality in Cox proportional hazard logistic models.
28 tics was examined by using repeated-measures logistic models.
29 ithin 1 year were assessed with hierarchical logistic models.
30 traditional stratified analysis and standard logistic models.
31 l analysis based on Classification trees and logistic models.
32  cancer (n=545) was observed in multivariate logistic models.
33  with D/R seropositivity were assessed using logistic models.
34 ns, adjusted odds ratios were estimated from logistic models.
35 erature review were included in multivariate logistic models.
36 Scale) were also introduced in multivariable logistic models.
37 ation were determined with backward stepwise logistic modeling.
38 ed in-hospital mortality using multivariable logistic modeling.
39 , age at menarche, and parity in conditional logistic model].
40 tcomes) was consistently higher than for the logistic models (0.62-0.70) despite the latter models in
41                            A three-parameter logistic model (3PL) for polytomous response was calcula
42                          In the multivariate logistic model, a history of vomiting, lower platelet co
43 d HCC development was assessed using ordinal logistic models according to five periods of time to dia
44                In 75 patients, multivariable logistic modeling accurately identified the 40 patients
45 try LDL-C was associated with SVR in a joint logistic model adjusted for HCV genotype, race, and prio
46 ere assigned -1 day in a bayesian cumulative logistic model adjusted for treatment location, age, sex
47 lated to mild-to-moderate persistent asthma (logistic model adjusted odds ratio = 1.55 (95% CI = 1.26
48 of type 2 diabetes were obtained from pooled logistic models adjusted for nondietary and dietary cova
49                                Multivariable logistic models adjusted for possible confounders (mater
50 t predictor of mortality in the multivariate logistic model (adjusted black/white OR 1.29 [1.21, 1.38
51 Among people with diabetes, in multivariable logistic models adjusting for race, sex, education, CVD
52                            In a multivariate logistic model, adjusting for differences in patient and
53                                    In simple logistic models, adolescent anxiety or depressive disord
54  were analyzed by a conditional multivariate logistic model after matching on a propensity score of b
55   A related but more complex three-parameter logistic model allows for subsequent leveling off in mor
56                                            A logistic model also confirmed that the Nut-Catheter Angl
57              Kendall Tau-B was 0.639 for the logistic model and 0.582 for the Ocular Trauma Score.
58 re surgery was created using a multivariable logistic model and a greedy matching algorithm with a 1:
59  analyzed under the Bayesian paradigm, using logistic model and areas under the receiver operating ch
60 's performance was compared with that of the logistic model and conventional eGFR-based assessment.
61 om cases and controls were used to develop a logistic model and deterioration index to predict patien
62 bles (not growth phase) for inclusion in the logistic model and nomogram.
63                                            A logistic model and receiver operating characteristics an
64 tcome, a number of proposed estimators use a logistic model and rely on specific assumptions or appro
65               Multivariable analysis using a logistic model and the hospital as a random variable was
66 of prevalent tuberculosis with mixed-effects logistic models and estimated adjusted hazard ratios (HR
67 endotoxin concentrations were analyzed using logistic models and forward stepwise linear regression.
68                                   Multilevel logistic models and intraclass correlation coefficient w
69                    Multivariate hierarchical logistic models and stepwise linear regression models ad
70 es were tested using multivariate linear and logistic models and structural equation models.
71 sessed using generalized estimating equation logistic models and with asthma hospital admissions usin
72 erent ages with ALS risk using unconditional logistic models and with survival after ALS diagnosis us
73 re assessed by including a product term in a logistic model, and additive interactions were assessed
74 y outcomes were modeled using a hierarchical logistic model, and count outcomes were modeled using hi
75 score was then given to each patient using a logistic model, and propensity matching was performed us
76 e probit structural equation models, 2-stage logistic models, and generalized method of moments estim
77                           Following a second logistic model applied to the matched groups to adjust f
78 eek 52 corticosteroid-free remission (n=386, logistic model area under the curve [AUC] 0.70, 95% CI 0
79                                     Adjusted logistic models assessed the associations of MPO with ma
80                                 The Bayesian logistic model (AUC = 0.79) outperformed the Framingham
81 and propensity scores were calculated with a logistic model based on patient disease and sociodemogra
82        When comparing multilevel with simple logistic models, beta values were 4 to 5 times lower and
83                          In the multivariate logistic model, BRCA1 status (odds ratio [OR] = 3.16; 95
84 d in the specific context of odds ratios and logistic modeling but is more widely applicable.
85 tive to the number of variables p, fitting a logistic model by the method of maximum likelihood produ
86  A crucial mathematical distortion under the logistics model, called "absence of collapsibility," is
87                                 More complex logistic models can be used for choices between good bun
88 ation-averaged effects, while random-effects logistic models can be used to estimate subject-specific
89                                     Finally, logistic models can quantify the explanatory power of ne
90 ore, gender, and AF types in a multivariable logistic model, Chicken Wing morphology was found to be
91 rm birth risk differences were computed from logistic model coefficients, comparing neighborhoods in
92                                  Producing a logistic model combining mean sphere, corneal power, Gul
93                                     Multiple logistic models compared HIV outcomes for participants f
94                                           In logistic models, compared with patients receiving neithe
95 e results from stratified analysis, standard logistic models, conditional logistic models, the GEE mo
96                                              Logistic model confirmed that maintenance of higher oxyg
97                                            A logistic model confirmed the joint significance of geogr
98 re assessed independently in a multivariable logistic model containing the following variables: gende
99  TH and outcomes, we created 2 multivariable logistic models controlling for confounders.
100 tion with unplanned pregnancy was studied in logistic models controlling for demographic and socioeco
101                                              Logistic models correctly predicted a blood lead elevati
102                    In the final multivariate logistic model, cumulative hours of day care attendance
103                              In the stepwise logistic model, delayed admission, advancing age, higher
104                                              Logistic modeling demonstrated that among participants t
105                           In a multivariable logistic model, depression (odds ratio [OR] 2.16, 95% co
106                A three-covariate multinomial logistic model derived from a triple-phase 4D CT scan ca
107                       A principal components logistic model discriminated healthy people from patient
108 on step, however, must be added to penalized logistic modeling due to a large number of genes and a s
109       Here, I describe and discuss different logistic models, emphasizing the underlying assumptions
110                                     A pooled logistic model estimated the per-protocol difference bet
111  hospital and OPO random effects, multilevel logistic models estimated that compared with Black patie
112                                            A logistic model evaluated association between index treat
113 ed differences by age group and by race, and logistic models examined predictors of multiple victims,
114                                Multivariable logistic models examined the utility of these markers in
115 er and clinical TNM stage in a multivariable logistic model, factors significantly associated with no
116             The exponential and-more notably-logistic models failed to describe the experimental data
117 the association calculated on the basis of a logistic model fitted with weighted observations.
118 d by comparing the estimated coefficients in logistic models fitted to the data.
119                                              Logistic model fitting of simple coal workers' pneumocon
120 l is a modification of the Olson conditional logistic model for affected relative pairs.
121                          Moreover, the final logistic model for AgP diagnosis included gender (p = 0.
122                  In this article, assuming a logistic model for disease risk for different study desi
123 conjunction with a deterministic generalised logistic model for humans-forest interaction and we eval
124                 Assuming a proportional odds logistic model for risk of a common outcome, we propose
125 the independent predictors in a multivariate logistic model for the diagnosis of NASH.
126 ty and malignancy was examined by creating a logistic model for the prospectively assessed data set.
127       We developed hierarchical multivariate logistic models for (1) superficial SSI, (2) deep/organ-
128                               They developed logistic models for each of 16 health indicators to exam
129 tion data failed to improve physiology-based logistic models for hospital and 1-yr survival (p > .15
130 nd significance of associations, and general logistics modelling for direction and significance of th
131                              A mixed-effects logistic model found that use of the TA (odds ratio [OR]
132 porating prior biological knowledge within a logistic modeling framework by using network-level const
133 SN status for inclusion in a multiple binary logistic model from which a nomogram was elaborated.
134         A 48-hour simulation showed that the logistic model had a higher area under the curve than th
135                                 The modified Logistic model has never been used in food drying areas
136  and dispersal, we show that distance-driven logistic models have strong power to predict dispersal p
137                            In a hierarchical logistic model, heart failure (odds ratio, 3.06, 95% con
138                                      Using a logistic model, heart rate (HR) and mean arterial pressu
139                           In the prospective logistic model, high density (odds ratio, 6.6), irregula
140                   Multivariable hierarchical logistic models identified predictors of revascularizati
141  prediction, murine studies, and time-course logistic modeling, identified metabolites were screened
142  because of possible misspecification of the logistic model: If the underlying model is linear, the l
143 on for sepsis assessed using a mixed-effects logistic model in a 3-level hierarchical structure based
144        The c-statistic for the multivariable logistic model in our cohort was 0.64 (95 % CI = 0.61-06
145                                    The final logistic model in T2 for RP included the following items
146                                    The final logistic model in the final examination included: 1) for
147 ximation I consider a spatial single-species logistic model in which offspring are dispersed across a
148       Potential covariates considered in the logistic model included age, sex, race, history of reope
149 not undergoing bone densitometry in adjusted logistic models included male patient sex and premenopau
150                                Multivariable logistic model including serum MIOX, discharge serum cre
151                                              Logistic models, including both exposures, compared the
152 ve (AUC) and goodness of fit of prespecified logistic models, including pretreatment (eg, age, cancer
153 ated TM by univariate analysis; therefore, a logistic model incorporating these effects was construct
154                         In the multivariable logistic model, independent predictors of seroconversion
155                                              Logistic modeling indicates hepatic SHH expression and p
156 stic mixed models and those from conditional logistic models indicates that there is little or no bia
157                  Using a multivariate binary logistic model, log MR-proADM (odds ratio 4.22) and log
158 duration and recency of exposure to ERT in a logistic model may leave the mistaken impression that it
159                                              Logistic models may be used to quantify a variety of beh
160        Against the predictions of the linear logistic model, neither all-cause nor cardiovascular dea
161  and [Formula: see text] Under the classical logistic model of population growth with linear density
162 the number of expected outcomes based on the logistic model of the French study with observed outcome
163                                          The logistic model of total disease burden (severe and exten
164                               A multivariate logistic model of variables available at the time of arr
165                                 Multivariate logistic models of early mortality (<72 hrs) and overall
166                 The authors fit multivariate logistic models of preterm birth, stratified by neighbor
167 ntrolling splicing, we trained a multinomial logistic model on sets of PTBP1 regulated and unregulate
168                   First, we developed linear logistic models on national and regional geographic scal
169            SPAGE fits a genotype-independent logistic model only once across the genome-wide analysis
170                              A multivariable logistic model, optimized for assessment of corticostero
171                              A multivariable logistic model, optimized for prior corticosteroid use,
172 ral decisions based either on a multivariate logistic model or on the criterion of an FEV1 of less th
173 ors apply constant, linear, exponential, and logistic models or approaches based on socioeconomic var
174 002 and 2018, were computed using multilevel logistic models (overall and by FAS groups).
175                             In multivariable logistic models, patients with risk, injury, failure, lo
176                                            A logistic model performed a conditional multivariate anal
177 onal value of ACT guidance, we analyzed with logistic modeling peri-percutaneous coronary interventio
178                            Four multivariate logistic models (phenotype; genotype; phenotype + genoty
179  and random-intercept fixed-slope multilevel logistic models portrayed different structural realities
180 For every 5 mg/dL increase in sTTR levels, a logistic model predicted a 31.6% relative reduction in o
181         An age-, income-, and state-adjusted logistic model predicting mammography use for 2.9 millio
182                                              Logistic models predicting 30-day readmission were compa
183                                        A log-logistic model predicts a dose affecting 50% of animals
184                                           In logistic modeling, previous mammography alone explained
185 rall sensitivity/specificity results for the logistic model produced using the ConeLocationMagnitudeI
186                                              Logistic models provided the adjusted odds of study end
187  environmental stochasticity, the stochastic logistic model, quantitatively predicts the three macroe
188 omputed on the basis of the relative size of logistic model regression coefficients.
189                                          Our logistic models reveal two alternative requirements for
190                                Multivariable logistic modeling revealed a lower baseline platelet cou
191                                 Multivariate logistic modeling revealed that older age (> or =0.55 ye
192             A significant interaction in the logistic model showed a differential effect of sport and
193                                          The logistic model showed good discrimination ability (area
194                       The final multivariate logistic model showed that the number of teeth (OR = 1.0
195                             The multivariate logistic model showed that the type of leak, namely a hi
196                                Mixed-effects logistic modeling showed similar odds of high FT over ti
197                                  The 2-stage logistic models showed standard errors up to 40% larger
198 s and generalized estimating equations (GEE) logistic models showed that reinfection risk was signifi
199 phPad Prism(R) version 7 five-parameter (5P) logistic model, SigmaPlot(R) version 14.0, Microsoft Exc
200                                            A logistic model suggested that the interplay between the
201                                 We propose a logistic model taking quality scores as covariates.
202                                         In a logistic model that adjusted for age, gender, body mass
203                             In a conditional logistic model that adjusted for vehicle (rollover, weig
204                                         In a logistic model that adjusts for bNAb epitopes and challe
205             In a multivariable mixed-effects logistic model that controlled for all individual- and c
206 e primary analysis was a bayesian cumulative logistic model that included all patients enrolled with
207 ment change was calculated from a multilevel logistic model that included variables assessing clinica
208 plements a latent-variable proportional-odds logistic model that relates inheritance patterns to the
209 propose a latent-variable, proportional-odds logistic model that relates inheritance patterns to the
210 k for senior faculty women were confirmed in logistic models that accounted for a wide range of other
211                                           In logistic models that included age, body mass index, soci
212                                           In logistic models that included maternal sociodemographic
213 isks persisted even in the most conservative logistic models that removed the shared effects of comor
214 serologic phenotypes was studied in separate logistic models that were adjusted for covariates.
215 stochastic properties can be obtained from a logistic model, that is, without interactions, even the
216                                         In a logistic model, the case management effect was limited t
217                                In a multiple logistic model, the independent effects of HbA(1c) level
218 lysis, standard logistic models, conditional logistic models, the GEE models, and random-effects mode
219                                              Logistic models then determined feature selection with b
220                                        Under logistic models, this biotic rebound should be exponenti
221 g for relatedness, and then used an adjusted logistic model to evaluate the effect size of the varian
222 nalyses were performed using a 2-level mixed logistic model to examine the independent associations a
223                           We used a standard logistic model to infer the district-specific yellow fev
224 ses of TL encephalitis and used multivariate logistic modeling to identify radiologic predictors of H
225                          Data were fitted to logistic models to derive instantaneous growth and N cap
226 derived for three antibiotics by fitting log-logistic models to end points calculated from minimum in
227 ifferences in bivariate frequencies and used logistic models to examine adjusted associations with 2-
228 L (7.9% of the sample) and used multivariate logistic models to identify independent predictors of hy
229                                  Constrained logistic models to predict bacterial infection were fit
230 s were developed using multivariable ordinal logistic models to predict the cognitive status using UE
231                                          The logistic model tree (LMT) method yielded the best result
232     In this paper, we propose a new model of Logistic Model Tree for predicting miRNA-Disease Associa
233                    According to the modified logistic model, tryptophan concentration was critical fo
234 point nomogram was constructed employing the logistic model using a weighted point system.
235             Our results show that a Bayesian logistic model using full-information continuous predict
236 ach physiologic variable was included in the logistic model using indicator variables; none was signi
237                                            A logistic model using pPIB was able to classify 90.5% of
238 tem-scale evaluation, and detailed last-mile logistics modeling using the city of San Francisco as an
239 with willingness to take MDR TPT, a marginal logistic model was fitted using generalized estimating e
240                 Finally, interaction under a logistic model was highly significant, as TNF2A carriage
241                                   A weighted logistic model was optimized to predict vision outcomes.
242                                   The linear logistic model was rejected by the Framingham data.
243                                            A logistic model was set up using the same variables.
244                                            A logistic model was used for the probability of cure, mix
245                               A multivariate logistic model was used to adjust for risk factors and d
246 sured at three different visits, and a mixed logistic model was used to assess left ventricular hyper
247                               A multivariate logistic model was used to derive the odds ratios of a p
248                                 A multilevel logistic model was used to estimate the association of c
249                                  An additive logistic model was used to examine the joint effects of
250                              A multivariable logistic model was used to generate risk score values an
251                                A multinomial logistic model was used to identify covariates associate
252                              A multivariable logistic model was used to identify factors mediating 90
253                                    Iterative logistic modeling was performed to investigate variables
254                               Random effects logistic modeling was used for data analysis.
255                                   Sequential logistic modeling was used to assess outcome.
256                          Using multivariable logistic models we determined factors independently asso
257                          Finally, by using a logistic model, we predict that 75% of discoverable gene
258                    Using Bayes' theorem in a logistic model, we used 8 baseline predictors-age, sex,
259                                        Using logistic modeling, we analyzed this deletion in a large
260 the occurrence of periodontitis in the final logistic model were: MetS (odds ratio [OR] = 2.02; P = 0
261                 Contingency tests and binary logistic modeling were used to identify baseline predict
262                                Multivariable logistic models were constructed combining conventional
263      After adjudication, simple and multiple logistic models were constructed to determine baseline v
264                                 Hierarchical logistic models were constructed to estimate association
265                     Logistic and multinomial logistic models were constructed to estimate the associa
266                  Among children with asthma, logistic models were created to examine the effects of u
267                   Multivariable hierarchical logistic models were developed to identify system and ph
268               Both standard and hierarchical logistic models were developed to predict readmission ri
269                    Multilevel, multivariable logistic models were employed, with odds ratios (ORs) us
270                                              Logistic models were estimated for dichotomous outcomes,
271                             Episode-specific logistic models were estimated regressing hospital parti
272                  Bivariate and multivariable logistic models were estimated to examine temporal trend
273                                              Logistic models were fit for screening mammography, and
274  "achieved" or "not achieved." Multivariable logistic models were fitted adjusting for age, overweigh
275                                              Logistic models were fitted for these outcomes as a func
276                                Multivariable logistic models were fitted to examine the effects of pa
277                                              Logistic models were fitted to relate adult overweight a
278                                          Log-logistic models were fitted to the survival distribution
279                                              Logistic models were then used to assess the impact of e
280                                Mixed-effects logistic models were used for multivariable analyses.
281                                   Linear and logistic models were used to assess associations between
282                McNemar tests or hierarchical logistic models were used to assess associations between
283                     Multivariate multinomial logistic models were used to assess changes in RWHAP/Unc
284                        Multivariable Cox and logistic models were used to assess long-term clinical o
285                                              Logistic models were used to determine the association b
286                Logistic regression and mixed logistic models were used to estimate the odds of being
287  linear growth-curve models and hierarchical logistic models were used to examine relations between i
288                                Mixed-effects logistic models were used to identify potential factors
289                                              Logistic models were used to predict independent surviva
290 were well correlated with Verma and modified Logistic models which gave the best fitting for CD and H
291      Although interaction tests based on the logistic model-which approximates the multiplicative ris
292 odel: If the underlying model is linear, the logistic model will be misspecified.
293                           In a multivariable logistic model with a spline transformation for ACT, the
294 istic curve for MR-proADM, NTproBNP, and the logistic model with both markers were 0.77, 0.79, and 0.
295                                          The logistic model with both markers yielded a larger area u
296                    We developed a multilevel logistic model with both state- and nested county-level
297                                   Consider a logistic model with independent features in which n and
298  associations were tested using hierarchical logistic models with log volume as the exposure, adjusti
299                                  In weighted logistic models with NHWs as the reference group and con
300 luated using generalized estimating equation logistic models with robust standard errors.

 
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