4.5 Article

Comparing methods for handling missing covariates in meta-regression

相关参考文献

注意:仅列出部分参考文献,下载原文获取全部文献信息。
Article Substance Abuse

Exploratory Analyses for Missing Data in Meta-Analyses and Meta-Regression: A Tutorial

Jacob M. Schauer et al.

Summary: This tutorial discusses methods for exploring missingness in a dataset to identify sources and extent of missingness. Using exploratory missingness analysis (EMA) on substance abuse intervention meta-analysis data, it examines patterns of missing covariates and relationships among variables, highlighting gaps in evidence base.

ALCOHOL AND ALCOHOLISM (2022)

Article Mathematical & Computational Biology

On the bias of complete- and shifting-case meta-regressions with missing covariates

Jacob M. Schauer et al.

Summary: This article discusses two common approaches for handling missing covariates in fitting meta-regression models: complete-case analysis and shifting units of analysis. The conditions for generating unbiased estimates of regression coefficients are clarified. The bias of estimation can be substantial assuming a log-linear model of missingness.

RESEARCH SYNTHESIS METHODS (2022)

Review Education & Educational Research

Methodological Guidance Papers: High-Quality Meta-Analysis in a Systematic Review

Terri D. Pigott et al.

REVIEW OF EDUCATIONAL RESEARCH (2020)

Article Public, Environmental & Occupational Health

Accounting for missing data in statistical analyses: multiple imputation is not always the answer

Rachael A. Hughes et al.

INTERNATIONAL JOURNAL OF EPIDEMIOLOGY (2019)

Article Mathematical & Computational Biology

A history of meta-regression: Technical, conceptual, and practical developments between 1974 and 2018

Elizabeth Tipton et al.

RESEARCH SYNTHESIS METHODS (2019)

Article Mathematical & Computational Biology

Current practices in meta-regression in psychology, education, and medicine

Elizabeth Tipton et al.

RESEARCH SYNTHESIS METHODS (2019)

Review Statistics & Probability

Multiple Imputation: A Review of Practical and Theoretical Findings

Jared S. Murray

STATISTICAL SCIENCE (2018)

Article Psychology, Applied

Multiple Imputation of Missing Data for Multilevel Models: Simulations and Recommendations

Simon Grund et al.

ORGANIZATIONAL RESEARCH METHODS (2018)

Article Statistics & Probability

Multiple Imputation with Diagnostics (mi) inR: Opening Windows into the Black Box

Yu-Sung Su et al.

Journal of Statistical Software (2015)

Article Statistics & Probability

mice: Multivariate Imputation by Chained Equations inR

Stef van Buuren et al.

Journal of Statistical Software (2015)

Article Health Care Sciences & Services

Multiple imputation of covariates by fully conditional specification: Accommodating the substantive model

Jonathan W. Bartlett et al.

STATISTICAL METHODS IN MEDICAL RESEARCH (2015)

Article Ecology

Using multiple imputation to estimate missing data in meta-regression

E. Hance Ellington et al.

METHODS IN ECOLOGY AND EVOLUTION (2015)

Article Psychology, Multidisciplinary

Small Sample Adjustments for Robust Variance Estimation With Meta-Regression

Elizabeth Tipton

PSYCHOLOGICAL METHODS (2015)

Article Psychology, Multidisciplinary

metaSEM: an R package for meta-analysis using structural equation modeling

Mike W. -L. Cheung

FRONTIERS IN PSYCHOLOGY (2015)

Article Biology

On the stationary distribution of iterative imputations

Jingchen Liu et al.

BIOMETRIKA (2014)

Article Psychology, Applied

Missing Data: Five Practical Guidelines

Daniel A. Newman

ORGANIZATIONAL RESEARCH METHODS (2014)

Article Computer Science, Interdisciplinary Applications

Conducting Meta-Analyses in R with the metafor Package

Wolfgang Viechtbauer

JOURNAL OF STATISTICAL SOFTWARE (2010)

Article Mathematical & Computational Biology

Bias and efficiency of multiple imputation compared with complete-case analysis for missing covariate values

Ian R. White et al.

STATISTICS IN MEDICINE (2010)

Article Mathematical & Computational Biology

Robust variance estimation in meta-regression with dependent effect size estimates

Larry V. Hedges et al.

RESEARCH SYNTHESIS METHODS (2010)

Article Mathematics, Interdisciplinary Applications

A note on the use of missing auxiliary variables in full information maximum likelihood-based structural equation models

Craig K. Enders

STRUCTURAL EQUATION MODELING-A MULTIDISCIPLINARY JOURNAL (2008)

Article Psychology, Multidisciplinary

A model for integrating fixed-, random-, and mixed-effects meta-analyses into structural equation modeling

Mike W. -L. Cheung

PSYCHOLOGICAL METHODS (2008)

Article Mathematical & Computational Biology

The design of simulation studies in medical statistics

Andrea Burton et al.

STATISTICS IN MEDICINE (2006)

Article Mathematical & Computational Biology

Improved tests for a random effects meta-regression with a single covariate

G Knapp et al.

STATISTICS IN MEDICINE (2003)

Article Health Care Sciences & Services

Missing predictors in models of effect size

TD Pigott

EVALUATION & THE HEALTH PROFESSIONS (2001)