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1 te patterns of recurrence and did a post-hoc survival analysis.
2 s and features uni- and multivariate regulon survival analysis.
3 Therefore, 99 countries were included in the survival analysis.
4 was calculated using parametric conditional survival analysis.
5 sessed with clinical predictors of CDI using survival analysis.
6 edding rates were determined by Kaplan-Meier survival analysis.
7 l hazards regression models and Kaplan-Meier survival analysis.
8 t from randomisation until the final overall survival analysis.
9 We present the final protocol-specified survival analysis.
10 cluster analysis, functional annotation and survival analysis.
11 e stage at a specific time with Kaplan-Meier survival analysis.
12 rtality using time-dependent competing risks survival analysis.
13 diate uveitis remission were evaluated using survival analysis.
14 d men, so we pooled data from both sexes for survival analysis.
15 s for PCs and mortality were evaluated using survival analysis.
16 aluated for up to 9 weeks using Kaplan-Meier survival analysis.
17 ically informative picture than Kaplan-Meier survival analysis.
18 x proportional hazard models were fitted for survival analysis.
19 g both standard regression and time-to-event survival analysis.
20 r a visual field of <10 degrees) eyes, using survival analysis.
21 iously reported at the first interim overall survival analysis.
22 ides a consistent mathematical framework for survival analysis.
23 Results were assessed using Kaplan-Meier survival analysis.
24 6% and 15%, respectively, using Kaplan-Meier survival analysis.
25 blindness were estimated using Kaplan-Meier survival analysis.
26 ween June 2010 and June 2015 included in the survival analysis.
27 iate Cox proportional hazards regression for survival analysis.
28 ients with available data using Kaplan-Meier survival analysis.
29 rator characteristic curves and Kaplan-Meier survival analysis.
30 rom 29 international sites were included for survival analysis.
31 ion model, including quantile regression and survival analysis.
32 Seizure recurrence was evaluated using survival analysis.
33 Kaplan-Meier curves were generated for survival analysis.
34 identification of associated predictors used survival analysis.
35 deprivation score were predictive in either survival analysis.
36 a gene expression composite score to aid in survival analysis.
37 tional glaucoma surgery were censored in the survival analysis.
38 d transplant recipients, using multivariable survival analysis.
39 d the incidence of sequelae was studied with survival analysis.
40 gression through IFE steps was assessed with survival analysis.
41 justed analyses employed flexible parametric survival analysis.
42 nd prolongation of gestation in a multilevel survival analysis.
43 zards regression analyses were performed for survival analysis.
44 e features in large-scale molecular data for survival analysis.
45 093 patients respectively were available for survival analysis.
46 to advanced AMD was evaluated using stepwise survival analysis.
48 CC was reported among variables entered into survival analysis, (2) survival information was availabl
49 CC was reported among variables entered into survival analysis, (2) survival information was availabl
50 Exclusion of early postoperative death from survival analysis, 3) Method of data extraction used, an
51 ave used pathway-level predictors for cancer survival analysis, a comprehensive comparison of pathway
53 On multivariable Cox proportional hazard survival analysis, a higher Society of Thoracic Surgeons
54 everal large-scale breast cancer datasets in survival analysis, a subset of these biological processe
57 ed lifetime risk using a modified version of survival analysis adjusted for the competing risk of dea
59 in the two groups with proportional hazards survival analysis, adjusting for key prognostic variable
60 irstly, this study aims to develop the novel survival analysis algorithms to explore the key genes an
64 as 15 months at the primary progression-free survival analysis and 24 months at the overall survival
65 nd assessed risk factors for mortality using survival analysis and a Cox proportional hazards regress
66 V QIs and mortality rates using Kaplan-Meier survival analysis and adjusted Cox proportional hazards
69 were unblinded after final progression-free survival analysis and could transition to open-label eve
71 eveloping NVG was assessed with Kaplan-Meier survival analysis and Cox proportional hazards models.
75 rning framework based on neural networks for survival analysis and evaluate it in a genomic cancer re
77 OS) was examined using Kaplan-Meier log-rank survival analysis and multivariate Cox regression analys
78 ers), which was evaluated using Kaplan-Meier survival analysis and proportional hazards modeling.
80 rkers were analyzed in Kaplan-Meier log-rank survival analysis and then multivariate Cox regression m
82 tate of the art machine learning methods for survival analysis, and describe a framework for interpre
84 ction in intraocular pressure from baseline, survival analysis, and reduction in the number of antigl
85 vax recurrence was estimated by Kaplan-Meier survival analysis, and risk factors for first and recurr
89 le logistic regression and interval-censored survival analysis, as well as with graft failure and mor
94 and the risk of second eye involvement using survival analysis based on the presence of OSAS, indicat
97 ncluding baseline CAC was evaluated by using survival analysis, C-statistics, net reclassification im
98 imary neuronal model in which a longitudinal survival analysis can be performed by following the over
103 3 participants, our final cohort for overall survival analysis comprised 129 (64%) participants.
105 recautions in a multivariable, discrete time survival analysis, controlling for patient demographics,
106 t Precautions in multivariable discrete-time survival analysis, controlling for patient demographics,
109 b emtansine after the second interim overall survival analysis crossed the prespecified overall survi
111 onsumer sensory acceptance determined by the survival analysis demonstrated that the rosemary extract
117 outperforms the conventional Cox regression survival analysis, especially for data sets with modest
127 vital signs were utilized in a discrete-time survival analysis framework to predict the combined outc
129 r software capable of conducting genome-wide survival analysis (genipe, SurvivalGWAS_SV and GWASTools
134 ese signatures with lower mortality based on survival analysis (HR 0.36; 95% confidence interval, 0.1
136 To explore this hypothesis, we also perform survival analysis in 2315 patients aged </= 40 years at
138 n of single genes is not straightforward and survival analysis in specific GEO datasets is not possib
142 lts of the first pre-planned interim overall survival analysis indicated that everolimus might be ass
146 an unknown follow-up were excluded from the survival analysis, leaving 231684 patients in this cohor
150 ology showed anaplasia (n = 8; excluded from survival analysis); low risk/completely necrotic (n = 7;
152 n-free survival analysis and interim overall survival analysis (May 31, 2019), median progression-fre
153 b emtansine after the second interim overall survival analysis (median follow-up duration 24.1 months
154 lock (March 21, 2018) for the final overall survival analysis, median follow-up was 7.4 months (IQR
156 ds (reactive doses) during BL DPT, using the survival analysis method, in order to suggest optimal st
167 h time from ALS diagnosis to death through a survival analysis of 145 ALS patients enrolled during 20
170 esults from a prespecified, interim, overall survival analysis of ALCYONE with more than 36 months of
172 intention-to-treat primary progression-free survival analysis of ICON8, which defined progression-fr
173 nterim analysis, this second interim overall survival analysis of IMpassion130 indicates no significa
174 Here we report a statistical method SURVIV (Survival analysis of mRNA Isoform Variation), designed f
176 d a cross-sectional analysis and prospective survival analysis of patients who had undergone a Fontan
182 port the prespecified second interim overall survival analysis of the phase 3 IMpassion130 study asse
186 observed without a change in cell growth or survival; analysis of such pairs identifies drug equival
187 and clinical data were then used to preform survival analysis on a gene by gene basis on sub-populat
189 g exposure data, which enabled us to perform survival analysis on drug-stratified subpopulations of c
194 On Cox proportional hazards multivariable survival analysis, previous XRT remained an independent
206 r overall survival was crossed, this overall survival analysis serves as the final and confirmatory a
217 er, we provide a use case where we performed survival analysis showing that a loss of phosphorylation
219 ling plotting, correlation analysis, patient survival analysis, similar gene detection and dimensiona
232 mixed effects models, pairwise analyses, and survival analysis to address sampling-related bias that
236 Within severity stratum, we used parametric survival analysis to compare length of stay by timing of
237 lepsy surgery between 1990 and 2010 and used survival analysis to detect preoperatively identifiable
239 population, we performed a multivariable Cox survival analysis to determine the effect of the burden
241 were compared using unadjusted Kaplan-Meier survival analysis to estimate risk of and time to compli
242 rn in 1905 and 1915 in Denmark, we performed survival analysis to estimate risk of mortality for majo
244 atios were calculated using a time-dependent survival analysis to estimate the effect of (131)I thera
248 aplan-Meier estimates and applied parametric survival analysis to examine proportions of patients wit
251 ge and selection operator (LASSO) method for survival analysis to select the best predictors of incid
253 uration was calculated, and a competing risk survival analysis undertaken to assess multiple factors.
254 d against disease severity markers including survival analysis using all-cause mortality from diagnos
274 ated by proteome microarray and Kaplan-Meier survival analysis was used to determine survival differe
283 gene expression data and combining this with survival analysis, we show that the expression of putati
284 variable logistic and linear regressions and survival analysis were performed depending on outcomes:
293 y of myocardial injury in ARDS and performed survival analysis with primary outcome of in-hospital de
294 using hospital discharge data, discrete-time survival analysis with propensity score adjustment, and