Outlier detection and influence diagnostics in network meta‐analysis

Network meta-analysis has been gaining prominence as an evidence synthesis method that enables the comprehensive synthesis and simultaneous comparison of multiple treatments. In many network meta-analyses, some of the constituent studies may have markedly different characteristics from the others, and may be influential enough to change the overall results. The inclusion of these "outlying" studies might lead to biases, yielding misleading results. In this article, we propose effective methods for detecting outlying and influential studies in a frequentist framework. In particular, we propose suitable influence measures for network meta-analysis models that involve missing outcomes and adjust the degree of freedoms appropriately. We propose three influential measures by a leave-one-trial-out cross-validation scheme: (1) comparison-specific studentized residual, (2) relative change measure for covariance matrix of the comparative effectiveness parameters, (3) relative change measure for heterogeneity covariance matrix. We also propose (4) a model-based approach using a likelihood ratio statistic by a mean-shifted outlier detection model. We illustrate the effectiveness of the proposed methods via applications to a network meta-analysis of antihypertensive drugs. Using the four proposed methods, we could detect three potential influential trials involving an obvious outlier that was retracted because of data falsifications. We also demonstrate that the overall results of comparative efficacy estimates and the ranking of drugs were altered by omitting these three influential studies. This article is protected by copyright. All rights reserved.

[1]  Dan Jackson,et al.  Consistency and inconsistency in network meta-analysis: model estimation using multivariate meta-regression‡ , 2012, Research synthesis methods.

[2]  Yinghui Wei,et al.  Estimating within-study covariances in multivariate meta-analysis with multiple outcomes , 2012, Statistics in medicine.

[3]  R. Little,et al.  The prevention and treatment of missing data in clinical trials. , 2012, The New England journal of medicine.

[4]  Peter J. Rousseeuw,et al.  Robust Regression and Outlier Detection , 2005, Wiley Series in Probability and Statistics.

[5]  AE Ades,et al.  Consistency and inconsistency in network meta-analysis: concepts and models for multi-arm studies‡ , 2012, Research synthesis methods.

[6]  Li-sheng Liu,et al.  Treatment of hypertension in patients 80 years of age or older. , 2008, The New England journal of medicine.

[7]  Anna Chaimani,et al.  Visualizing Assumptions and Results in Network Meta-analysis: The Network Graphs Package , 2015 .

[8]  Ian R. White,et al.  Multivariate Random-effects Meta-analysis , 2009 .

[9]  I. J. P. Howard Meta-Analysis withR , 2015 .

[10]  S. Yusuf,et al.  Effects of the angiotensin-receptor blocker telmisartan on cardiovascular events in high-risk patients intolerant to angiotensin-converting enzyme inhibitors: a randomised controlled trial , 2008, The Lancet.

[11]  N. Tajima,et al.  RETRACTED: Valsartan in a Japanese population with hypertension and other cardiovascular disease (Jikei Heart Study): a randomised, open-label, blinded endpoint morbidity-mortality study , 2007, The Lancet.

[12]  Georgia Salanti,et al.  Indirect and mixed‐treatment comparison, network, or multiple‐treatments meta‐analysis: many names, many benefits, many concerns for the next generation evidence synthesis tool , 2012, Research synthesis methods.

[13]  Guobing Lu,et al.  Modeling between-trial variance structure in mixed treatment comparisons. , 2009, Biostatistics.

[14]  S. R. Searle,et al.  Generalized, Linear, and Mixed Models , 2005 .

[15]  L. Hedges,et al.  Statistical Methods for Meta-Analysis , 1987 .

[16]  S Dias,et al.  Checking consistency in mixed treatment comparison meta‐analysis , 2010, Statistics in medicine.

[17]  Wolfgang Viechtbauer,et al.  Outlier and influence diagnostics for meta‐analysis , 2010, Research synthesis methods.

[18]  Johannes B Reitsma,et al.  Bivariate analysis of sensitivity and specificity produces informative summary measures in diagnostic reviews. , 2005, Journal of clinical epidemiology.

[19]  G. Molenberghs,et al.  Linear Mixed Models for Longitudinal Data , 2001 .

[20]  Dan Jackson,et al.  A random effects variance shift model for detecting and accommodating outliers in meta-analysis , 2011, BMC medical research methodology.

[21]  Georgia Salanti,et al.  Evaluation of networks of randomized trials , 2008, Statistical methods in medical research.

[22]  Ian R. White,et al.  Multivariate Random-effects Meta-regression: Updates to Mvmeta , 2011 .

[23]  Dario Cecilio Fernandes,et al.  Mixed models for longitudinal data , 2016 .

[24]  Dan Jackson,et al.  Multivariate meta-analysis: Potential and promise , 2011, Statistics in medicine.

[25]  A Whitehead,et al.  Borrowing strength from external trials in a meta-analysis. , 1996, Statistics in medicine.

[26]  Bradley P Carlin,et al.  Detecting outlying trials in network meta‐analysis , 2015, Statistics in medicine.

[27]  Dimitris Mavridis,et al.  A practical introduction to multivariate meta-analysis , 2013, Statistical methods in medical research.

[28]  David A. Belsley,et al.  Regression Analysis and its Application: A Data-Oriented Approach.@@@Applied Linear Regression.@@@Regression Diagnostics: Identifying Influential Data and Sources of Collinearity , 1981 .

[29]  W. Elliott Antihypertensive Treatment and Development of Heart Failure in Hypertension: A Bayesian Network Meta-analysis of Studies in Patients With Hypertension and High Cardiovascular Risk , 2011 .

[30]  Hisashi Noma,et al.  Permutation inference methods for multivariate meta‐analysis , 2018, Biometrics.

[31]  W. Elliott Valsartan in a Japanese population with hypertension and other cardiovascular disease (Jikei Heart Study): a randomised, open-label, blinded endpoint morbidity-mortality study , 2008 .

[32]  Hisashi Noma,et al.  Bartlett‐type corrections and bootstrap adjustments of likelihood‐based inference methods for network meta‐analysis , 2018, Statistics in medicine.

[33]  Ian R. White,et al.  Network Meta-analysis , 2015 .

[34]  Joseph Beyene,et al.  Statistical methods for detecting outlying and influential studies in meta-analysis of diagnostic test accuracy studies , 2020, Statistical methods in medical research.

[35]  S. Chatterjee,et al.  Influential Observations, High Leverage Points, and Outliers in Linear Regression , 1986 .