about
Peer review of grant applications: a simple method to identify proposals with discordant reviews.Propensity score to detect baseline imbalance in cluster randomized trials: the role of the c-statistic.Increased risk of type I errors in cluster randomised trials with small or medium numbers of clusters: a review, reanalysis, and simulation study.Propensity score analysis with partially observed covariates: How should multiple imputation be used?Timeline cluster: a graphical tool to identify risk of bias in cluster randomised trials.Performance of principal scores to estimate the marginal compliers causal effect of an intervention.[Cluster randomised trials].The quality of reporting of pilot and feasibility cluster randomised trials: a systematic review.A comparison of imputation strategies in cluster randomized trials with missing binary outcomes.Quality of reporting of pilot and feasibility cluster randomised trials: a systematic review.Cluster randomized trials with a small number of clusters: which analyses should be used?Trimethoprim use for urinary tract infection and risk of adverse outcomes in older patients: cohort study.Propensity scores used for analysis of cluster randomized trials with selection bias: a simulation study.Propensity score methods for estimating relative risks in cluster randomized trials with low-incidence binary outcomes and selection biasPropensity scores using missingness pattern information: a practical guideDoes internet-accessed STI (e-STI) testing increase testing uptake for chlamydia and other STIs among a young population who have never tested? Secondary analyses of data from a randomised controlled trialIntervention effect estimates in cluster randomized versus individually randomized trials: a meta-epidemiological studyEstimating treatment effects with partially observed covariates using outcome regression with missing indicators
P50
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P50
description
onderzoeker
@nl
researcher ORCID ID = 0000-0002-4097-4577
@en
name
Clémence Leyrat
@ast
Clémence Leyrat
@en
Clémence Leyrat
@nl
type
label
Clémence Leyrat
@ast
Clémence Leyrat
@en
Clémence Leyrat
@nl
prefLabel
Clémence Leyrat
@ast
Clémence Leyrat
@en
Clémence Leyrat
@nl
P106
P31
P496
0000-0002-4097-4577