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1 olume but not low-volume aSAH (multivariable logistic regression).
2 as appropriate) and multivariable analyses (logistic regressions).
3 equency (%) was compared using unconditional logistic regression.
4 c associations with multivariable polytomous logistic regression.
5 study arms were modeled using multivariable logistic regression.
6 tors of CICU mortality were identified using logistic regression.
7 kness loss were identified with multivariate logistic regression.
8 through univariate analysis and multivariate logistic regression.
9 ng linear regression and with glaucoma using logistic regression.
10 ng non-parametric bivariate or multivariable logistic regression.
11 Conventional approaches used logistic regression.
12 for confounders, were estimated by means of logistic regression.
13 se with results generated from multivariable logistic regression.
14 vel between 1-1,000 U/ml was estimated using logistic regression.
15 ons and FTR was evaluated with multivariable logistic regression.
16 d adjusted risk differences (ARDs) following logistic regression.
17 sion (<1000 copies per mL) at 6 months using logistic regression.
18 R, which absorbs the merits of both SCCA and logistic regression.
19 s associated with eGFR <90 mL/min/1.73 m2 by logistic regression.
20 of women using contraception with fractional logistic regression.
21 ment and severity was examined using ordinal logistic regression.
22 ons and mortality were assessed using binary logistic regression.
23 tal mortality were assessed in multivariable logistic regression.
24 II (2012-2013; N=36,309) were analyzed using logistic regression.
25 tors associated with PIR were assessed using logistic regression.
26 able predictors of cPR were identified using logistic regression.
27 mphetamine using bivariate and multivariable logistic regression.
28 score matching and multilevel, multivariable logistic regression.
29 iminate between phenotypes was assessed with logistic regression.
30 idence intervals (CIs) were determined using logistic regression.
31 redicting mortality using backwards stepwise logistic regression.
32 d interactions were determined by linear and logistic regressions.
33 d marbling values were verified by linear or logistic regressions.
34 t, were determined using univariate Bayesian logistic regressions.
39 ol/mol]), were estimated using multivariable logistic regression adjusted for the same hypothesised c
40 er first-ever intracerebral hemorrhage using logistic regression, adjusting for known predictors of o
41 by ancestry was assessed using multivariate logistic regression, adjusting for parity, and maternal
44 GBD) super-regions, with adjusted linear and logistic regression analyses examining associations with
45 -19 after their stroke, were included in two logistic regression analyses examining which features we
49 escriptive analyses and multivariable binary logistic regression analyses were conducted on weighted
55 e obtained for the entire lung, and multiple logistic regression analyses with areas under the curve
56 (descriptive, sequence pattern analyses, and logistic regression analyses) aimed to detect any combin
58 ng novel intracountry risk-adjusted UR trend logistic regression analyses, can be translated to other
71 umab under local sedation using multivariate logistic regression analysis to control for potentially
79 values of less than 0.1 were considered for logistic regression analysis which identified predictors
82 aracteristic analysis, time-series analysis, logistic regression analysis, and multilevel modeling fo
97 postoperative mortality was evaluated using logistic regression and Cox proportional hazards models.
100 into development and validation cohorts: the logistic regression and gradient boosting machine models
101 tions between ESW and AR using multivariable logistic regression and interval-censored survival analy
108 Performance of the ANN was evaluated against logistic regression and the standard grading system by a
110 btype specific risks were estimated by using logistic regression, and absolute risks were calculated.
111 tion, and delayed graft function (DGF) using logistic regression, and length of stay (LOS) using nega
112 expression prediction methods and two novel logistic regression approaches across five GTEx v8 tissu
115 Odds ratios were estimated using conditional logistic regression by comparing the occurrence of switc
119 s, of which 38 loci would be missed within a logistic regression framework with a binary phenotype de
121 ure to cure was analyzed using multivariable logistic regression in the total population and in salva
122 were estimated using mixed-effects linear or logistic regression, including a random effect to adjust
124 For this study, traditional multivariate logistic regression (LR) identified seven predictors of
127 tic curve (0.78 [95% CI 0.77-0.78]) than the logistic regression model (0.73 [0.72-0.74]) (p < 0.001)
128 brillation discrimination in a multivariable logistic regression model (C-statistic 0.82 vs 0.78; p =
129 e advantage of the fact that the conditional logistic regression model (i.e. the SSF) is likelihood-e
135 ccuracy can be achieved using a multivariate logistic regression model of MRI parameters after thresh
139 ed as 1 minus the adjusted odds ratio from a logistic regression model that compared vaccination hist
142 ayesian multivariate response random effects logistic regression model to simultaneously examine vari
146 opulation was calculated, and a multivariate logistic regression model with random intercepts was use
147 ortality was estimated using a multivariable logistic regression model, adjusting for age, sex, indig
153 fier were 94.2%, 96.9%, 97%, and 94% for the logistic regression model; 92.7%, 100%, 100%, and 92.9%
155 onse were assessed using a linear and binary logistic regression modeling for the continuous and cate
162 eloping a series of multilevel multivariable logistic regression models and geospatially visualising
163 nd nephrectomy type (partial/radical)-to fit logistic regression models and grouped patients accordin
168 ated multivariate ordinary least squares and logistic regression models controlling for a wide range
171 y body mass index (BMI) <25 or >=25 kg/m(2); logistic regression models evaluated preconception lipid
173 ared by transition status, and multivariable logistic regression models examined factors associated w
175 postoperative outcomes, we used multivariate logistic regression models to adjust for clinical and de
176 an index encounter, and we used multivariate logistic regression models to assess demographic and cli
177 models, and, in a post-hoc analysis, we used logistic regression models to assess the association bet
180 ted AUC for glaucoma versus nonglaucoma from logistic regression models using MRW-BMO values from all
181 Individual univariable and multivariable logistic regression models were assessed for each time-w
202 ere computed using multivariable conditional logistic regression models, according to center, sex, ag
203 Using multivariable-adjusted conditional logistic regression models, caffeic acid (ORlog2: 0.55;
204 tics associated with results reporting using logistic regression models, described sponsor-level repo
205 estigated using three-level random-intercept logistic regression models, showing no differences in ne
207 socioeconomic disadvantage with hierarchical logistic regression models, using practices serving the
208 ion criterion in a stepwise fashion to build logistic regression models, which were then translated i
217 ession and predicted response to ICS through logistic regression models.Measurements and Main Results
220 pendently, (ROC analysis, followed by binary logistic regression) only Ultrasound depth is a signific
223 ity of illness and should be dosed "enough," logistic regression, propensity score matching, and inve
224 ate analyses using traditional multivariable logistic regression, propensity score matching, propensi
226 redictive algorithms were developed based on logistic regression, random forests, gradient boosted tr
228 dress the problem: sparse label-noise-robust logistic regression (Rlogreg), robust elastic net based
233 n: Despite the heterogeneous patient cohort, logistic regression TCP models showed a strong associati
234 (n = 8,327), we used adjusted multivariable logistic regression to assess the associations of each c
238 ffects models to estimate tree densities and logistic regression to estimate mortality by size class.
240 ied case-crossover analysis with conditional logistic regression to estimate the association between
245 time trends during the study period and used logistic regression to examine sociodemographic and clin
250 he intervention group, we used multivariable logistic regression to identify patient and medication c
251 chest, or orthopedic and used multivariable logistic regression to model 30-, 90-, and 180-day posto
252 multiple imputation for missing covariates, logistic regression to model the association between PFA
253 ation or marriage), and first birth and used logistic regression to show the change in prevalence of
254 rotective titres were estimated using scaled-logistic-regression to model pre-transmission titre agai
255 54 algorithms, the best performing model was logistic regression, using 1000 features, 100 stop words
256 set of independent variables was selected by logistic regression, using the derivation set to create
268 ive medical records review was performed and logistic regression was used to assess OPAT and other ou
285 sing descriptive statistics and multivariate logistic regression, we examined the association (P < .0
286 te, a case-crossover design, and conditional logistic regression, we examined the association between
291 The Fisher exact test and multivariable logistic regression were used to evaluate association of
294 evaluated using network analysis; linear and logistic regressions were used to compare groups based o
295 Descriptive statistics and multivariate logistic regressions were used to examine associations b
297 r combinations to predict GGG 1 vs >1, using logistic regression with a nested leave-pair out cross v
298 ectiveness (VE) was estimated by conditional logistic regression, with adjustment for reported contac
299 h outcomes were determined using conditional logistic regression within surveys, adjusting for prespe