about
Law enforcement duties and sudden cardiac death among police officers in United States: case distribution studyLifetime Prevalence of Suicide Attempts Among Sexual Minority Adults by Study Sampling Strategies: A Systematic Review and Meta-AnalysisImpact of Molecular Diagnostics for Tuberculosis on Patient-Important Outcomes: A Systematic Review of Study MethodologiesStatistical tests, P values, confidence intervals, and power: a guide to misinterpretationsQuantitative bias analysis in an asthma study of rescue-recovery workers and volunteers from the 9/11 World Trade Center attacksMethods to explore uncertainty and bias introduced by job exposure matricesCautionary tales in the interpretation of observational studies of effects of clinical interventions.Application of Probabilistic Multiple-Bias Analyses to a Cohort- and a Case-Control Study on the Association between Pandemrix™ and Narcolepsy.Pandemic influenza vaccine & narcolepsy: simulations on the potential impact of bias.Learning About Missing Data Mechanisms in Electronic Health Records-based Research: A Survey-based Approach.Quantification of missing prescriptions in commercial claims databases: results of a cohort study.Explaining Racial Disparities in Child Asthma Readmission Using a Causal Inference Approach.Rheumatoid arthritis increases the risk of nontuberculosis mycobacterial disease and active pulmonary tuberculosis.Model Averaging for Improving Inference from Causal Diagrams.A comparison of sensitivity-specificity imputation, direct imputation and fully Bayesian analysis to adjust for exposure misclassification when validation data are unavailable.Probabilistic multiple-bias modelling applied to the Canadian data from the INTERPHONE study of mobile phone use and risk of glioma, meningioma, acoustic neuroma, and parotid gland tumors.Examining the quality of evidence to support the effectiveness of interventions: an analysis of systematic reviewsUsing expert opinion to quantify unmeasured confounding bias parametersAdjustment for tobacco smoking and alcohol consumption by simultaneous analysis of several types of cancer.Increased Risk of Stroke in Patients of Concussion: A Nationwide Cohort StudyCohort profile: the Right to Care Clinical HIV Cohort, South Africa.Does occupational exposure to formaldehyde cause hematotoxicity and leukemia-specific chromosome changes in cultured myeloid progenitor cells?A comparison of Bayesian and Monte Carlo sensitivity analysis for unmeasured confounding.Evidence for Detection Bias by Medication Use in a Cohort Study of Breast Cancer Survivors.Probabilistic bias analysis in pharmacoepidemiology and comparative effectiveness research: a systematic review.Invited Commentary: Multigenerational Social Determinants of Health—Opportunities and Challenges.Cytochrome P-450 2D6 (CYP2D6) Genotype and Breast Cancer Recurrence in Tamoxifen-Treated Patients: Evaluating the Importance of Loss of Heterozygosity.On the Need for Quantitative Bias Analysis in the Peer-Review Process.A probabilistic bias analysis for misclassified categorical exposures, with application to oral anti-hyperglycaemic drugs.Risk Factors for Legionella longbeachae Legionnaires' Disease, New Zealand.Caution: work in progress : While the methodological "revolution" deserves in-depth study, clinical researchers and senior epidemiologists should not be disenfranchised.Importance of bias analysis in epidemiologic research.A commentary on 'A comparison of Bayesian and Monte Carlo sensitivity analysis for unmeasured confounding'.Applying quantitative bias analysis to estimate the plausible effects of selection bias in a cluster randomised controlled trial: secondary analysis of the Primary care Osteoarthritis Screening Trial (POST).Instrumental Variable Analyses in Pharmacoepidemiology: What Target Trials Do We Emulate?Bias from outcome misclassification in immunization schedule safety research.An ad hoc method for dual adjusting for measurement errors and nonresponse bias for estimating prevalence in survey data: Application to Iranian mental health survey on any illicit drug use.Study protocol for the dabigatran, apixaban, rivaroxaban, edoxaban, warfarin comparative effectiveness research study.Hierarchical semi-Bayes methods for misclassification in perinatal epidemiology.The Impact of Nondifferential Exposure Misclassification on the Performance of Propensity Scores for Continuous and Binary Outcomes: A Simulation Study.
P2860
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P2860
description
2014 nî lūn-bûn
@nan
2014年の論文
@ja
2014年学术文章
@wuu
2014年学术文章
@zh
2014年学术文章
@zh-cn
2014年学术文章
@zh-hans
2014年学术文章
@zh-my
2014年学术文章
@zh-sg
2014年學術文章
@yue
2014年學術文章
@zh-hant
name
Good practices for quantitative bias analysis.
@en
Good practices for quantitative bias analysis.
@nl
type
label
Good practices for quantitative bias analysis.
@en
Good practices for quantitative bias analysis.
@nl
prefLabel
Good practices for quantitative bias analysis.
@en
Good practices for quantitative bias analysis.
@nl
P2093
P2860
P356
P1476
Good practices for quantitative bias analysis.
@en
P2093
George Maldonado
Lawrence C McCandless
Matthew P Fox
Richard F MacLehose
Sander Greenland
Timothy L Lash
P2860
P304
P356
10.1093/IJE/DYU149
P577
2014-07-30T00:00:00Z