The performance of statistical methods is often evaluated by means of simulation studies. In case of network meta-analysis of binary data, however, simulations are not currently available for many practically relevant settings. We perform a simulation study for sparse networks of trials under between-trial heterogeneity and including multi-arm trials. Results of the evaluation of two popular frequentist methods and a Bayesian approach using two different prior specifications are presented. Methods are evaluated using coverage, width of intervals, bias, and root mean squared error (RMSE). In addition, deviations from the theoretical surface under the cumulative rankings (SUCRAs) or P-scores of the treatments are evaluated. Under low heterogeneity and when a large number of trials informs the contrasts, all methods perform well with respect to the evaluated performance measures. Coverage is observed to be generally higher for the Bayesian than the frequentist methods. The width of credible intervals is larger than those of confidence intervals and is increasing when using a flatter prior for between-trial heterogeneity. Bias was generally small, but increased with heterogeneity, especially in netmeta. In some scenarios, the direction of bias differed between frequentist and Bayesian methods. The RMSE was comparable between methods but larger in indirectly than in directly estimated treatment effects. The deviation of the SUCRAs or P-scores from their theoretical values was mostly comparable over the methods but differed depending on the heterogeneity and the geometry of the investigated network. Multivariate meta-regression or Bayesian estimation using a half-normal prior scaled to 0.5 seems to be promising with respect to the evaluated performance measures in network meta-analysis of sparse networks.
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Grad Univ Adv Studies, Sch Multidisciplinary Sci, Dept Stat Sci, Tokyo, Japan
Asahi Kasei Pharma Corp, Diagnost Dept, Tokyo, JapanGrad Univ Adv Studies, Sch Multidisciplinary Sci, Dept Stat Sci, Tokyo, Japan
Hamaguchi, Yuta
Noma, Hisashi
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Inst Stat Math, Dept Data Sci, 10-3 Midori Cho, Tachikawa, Tokyo 1908562, JapanGrad Univ Adv Studies, Sch Multidisciplinary Sci, Dept Stat Sci, Tokyo, Japan
Noma, Hisashi
Nagashima, Kengo
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Inst Stat Math, Res Ctr Med & Hlth Data Sci, Tokyo, JapanGrad Univ Adv Studies, Sch Multidisciplinary Sci, Dept Stat Sci, Tokyo, Japan
Nagashima, Kengo
Yamada, Tomohide
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Univ Tokyo, Grad Sch Med, Dept Diabet & Metab Dis, Tokyo, JapanGrad Univ Adv Studies, Sch Multidisciplinary Sci, Dept Stat Sci, Tokyo, Japan
Yamada, Tomohide
Furukawa, Toshi A.
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Kyoto Univ, Grad Sch Med, Sch Publ Hlth, Dept Hlth Promot & Human Behav, Kyoto, JapanGrad Univ Adv Studies, Sch Multidisciplinary Sci, Dept Stat Sci, Tokyo, Japan
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Inst Publ Hlth, MRC Biostat Unit, Cambridge CB2 0SR, EnglandInst Publ Hlth, MRC Biostat Unit, Cambridge CB2 0SR, England
Higgins, Julian P. T.
Whitehead, Anne
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Univ Lancaster, Dept Math & Stat, Med & Pharmaceut Stat Res Unit, Lancaster LA1 4YF, EnglandInst Publ Hlth, MRC Biostat Unit, Cambridge CB2 0SR, England
Whitehead, Anne
Simmonds, Mark
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Queen Mary Univ London, Wolfson Inst Prevent Med, Barts & London Sch Med & Dent, London EC1M 6BQ, EnglandInst Publ Hlth, MRC Biostat Unit, Cambridge CB2 0SR, England
机构:
Hannover Med Sch, Midwifery Res & Educ Unit OE 6410, Carl Neuberg Str 1, D-30625 Hannover, GermanyHannover Med Sch, Midwifery Res & Educ Unit OE 6410, Carl Neuberg Str 1, D-30625 Hannover, Germany
Spineli, Loukia M.
Kalyvas, Chrysostomos
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MSD Europe Inc, Dept Biostat & Res Decis Sci, Clos Lynx 5, B-1200 Brussels, BelgiumHannover Med Sch, Midwifery Res & Educ Unit OE 6410, Carl Neuberg Str 1, D-30625 Hannover, Germany