Literature DB >> 27487843

An overview of methods for network meta-analysis using individual participant data: when do benefits arise?

Thomas Pa Debray1,2, Ewoud Schuit1,2,3, Orestis Efthimiou4,5, Johannes B Reitsma1,2, John Pa Ioannidis3, Georgia Salanti4,5,6, Karel Gm Moons1,2.   

Abstract

Network meta-analysis (NMA) is a common approach to summarizing relative treatment effects from randomized trials with different treatment comparisons. Most NMAs are based on published aggregate data (AD) and have limited possibilities for investigating the extent of network consistency and between-study heterogeneity. Given that individual participant data (IPD) are considered the gold standard in evidence synthesis, we explored statistical methods for IPD-NMA and investigated their potential advantages and limitations, compared with AD-NMA. We discuss several one-stage random-effects NMA models that account for within-trial imbalances, treatment effect modifiers, missing response data and longitudinal responses. We illustrate all models in a case study of 18 antidepressant trials with a continuous endpoint (the Hamilton Depression Score). All trials suffered from drop-out; missingness of longitudinal responses ranged from 21 to 41% after 6 weeks follow-up. Our results indicate that NMA based on IPD may lead to increased precision of estimated treatment effects. Furthermore, it can help to improve network consistency and explain between-study heterogeneity by adjusting for participant-level effect modifiers and adopting more advanced models for dealing with missing response data. We conclude that implementation of IPD-NMA should be considered when trials are affected by substantial drop-out rate, and when treatment effects are potentially influenced by participant-level covariates.

Entities:  

Keywords:  Meta-analysis; individual participant data; missing data; mixed treatment comparison; network meta-analysis; repeated measurements

Mesh:

Substances:

Year:  2016        PMID: 27487843     DOI: 10.1177/0962280216660741

Source DB:  PubMed          Journal:  Stat Methods Med Res        ISSN: 0962-2802            Impact factor:   3.021


  24 in total

1.  Deworming children for soil-transmitted helminths in low and middle-income countries: systematic review and individual participant data network meta-analysis.

Authors:  Vivian Andrea Welch; Alomgir Hossain; Elizabeth Ghogomu; Alison Riddle; Simon Cousens; Michelle Gaffey; Paul Arora; Robert Black; Donald Bundy; Mary Christine Castro; Li Chen; Omar Dewidar; Alison Elliott; Henrik Friis; T Déirdre Hollingsworth; Sue Horton; Charles H King; Huong Le Thi; Chengfang Liu; Fabian Rohner; Emily K Rousham; Rehana Salam; Erliyani Sartono; Peter Steinmann; Taniawati Supali; Peter Tugwell; Emily Webb; Franck Wieringa; Pattanee Winnichagoon; Maria Yazdanbakhsh; Zulfiqar A Bhutta; George A Wells
Journal:  J Dev Effect       Date:  2019-12-06

Review 2.  Neuropsychological Interventions for Cancer-Related Cognitive Impairment: A Network Meta-Analysis of Randomized Controlled Trials.

Authors:  Andy S K Cheng; Xiaoming Wang; Niu Niu; Minyu Liang; Yingchun Zeng
Journal:  Neuropsychol Rev       Date:  2022-01-29       Impact factor: 7.444

3.  Network meta-analysis: a technique to gather evidence from direct and indirect comparisons.

Authors:  Fernanda S Tonin; Inajara Rotta; Antonio M Mendes; Roberto Pontarolo
Journal:  Pharm Pract (Granada)       Date:  2017-03-15

4.  Statistical analyses and quality of individual participant data network meta-analyses were suboptimal: a cross-sectional study.

Authors:  Ya Gao; Shuzhen Shi; Muyang Li; Xinyue Luo; Ming Liu; Kelu Yang; Junhua Zhang; Fujian Song; Jinhui Tian
Journal:  BMC Med       Date:  2020-06-01       Impact factor: 8.775

5.  Understanding the relation between Zika virus infection during pregnancy and adverse fetal, infant and child outcomes: a protocol for a systematic review and individual participant data meta-analysis of longitudinal studies of pregnant women and their infants and children.

Authors:  Annelies Wilder-Smith; Yinghui Wei; Thalia Velho Barreto de Araújo; Maria VanKerkhove; Celina Maria Turchi Martelli; Marília Dalva Turchi; Mauro Teixeira; Adriana Tami; João Souza; Patricia Sousa; Antoni Soriano-Arandes; Carmen Soria-Segarra; Nuria Sanchez Clemente; Kerstin Daniela Rosenberger; Ludovic Reveiz; Arnaldo Prata-Barbosa; Léo Pomar; Luiza Emylce Pelá Rosado; Freddy Perez; Saulo D Passos; Mauricio Nogueira; Trevor P Noel; Antônio Moura da Silva; Maria Elisabeth Moreira; Ivonne Morales; Maria Consuelo Miranda Montoya; Demócrito de Barros Miranda-Filho; Lauren Maxwell; Calum N L Macpherson; Nicola Low; Zhiyi Lan; Angelle Desiree LaBeaud; Marion Koopmans; Caron Kim; Esaú João; Thomas Jaenisch; Cristina Barroso Hofer; Paul Gustafson; Patrick Gérardin; Jucelia S Ganz; Ana Carolina Fialho Dias; Vanessa Elias; Geraldo Duarte; Thomas Paul Alfons Debray; María Luisa Cafferata; Pierre Buekens; Nathalie Broutet; Elizabeth B Brickley; Patrícia Brasil; Fátima Brant; Sarah Bethencourt; Andrea Benedetti; Vivian Lida Avelino-Silva; Ricardo Arraes de Alencar Ximenes; Antonio Alves da Cunha; Jackeline Alger
Journal:  BMJ Open       Date:  2019-06-18       Impact factor: 2.692

6.  Internet-Based Cognitive Behavioral Therapy for Depression: A Systematic Review and Individual Patient Data Network Meta-analysis.

Authors:  Eirini Karyotaki; Orestis Efthimiou; Clara Miguel; Frederic Maas Genannt Bermpohl; Toshi A Furukawa; Pim Cuijpers; Heleen Riper; Vikram Patel; Adriana Mira; Alan W Gemmil; Albert S Yeung; Alfred Lange; Alishia D Williams; Andrew Mackinnon; Anna Geraedts; Annemieke van Straten; Björn Meyer; Cecilia Björkelund; Christine Knaevelsrud; Christopher G Beevers; Cristina Botella; Daniel R Strunk; David C Mohr; David D Ebert; David Kessler; Derek Richards; Elizabeth Littlewood; Erik Forsell; Fan Feng; Fang Wang; Gerhard Andersson; Heather Hadjistavropoulos; Heleen Christensen; Iony D Ezawa; Isabella Choi; Isabelle M Rosso; Jan Philipp Klein; Jason Shumake; Javier Garcia-Campayo; Jeannette Milgrom; Jessica Smith; Jesus Montero-Marin; Jill M Newby; Juana Bretón-López; Justine Schneider; Kristofer Vernmark; Lara Bücker; Lisa B Sheeber; Lisanne Warmerdam; Louise Farrer; Manuel Heinrich; Marcus J H Huibers; Marie Kivi; Martin Kraepelien; Nicholas R Forand; Nicky Pugh; Nils Lindefors; Ove Lintvedt; Pavle Zagorscak; Per Carlbring; Rachel Phillips; Robert Johansson; Ronald C Kessler; Sally Brabyn; Sarah Perini; Scott L Rauch; Simon Gilbody; Steffen Moritz; Thomas Berger; Victor Pop; Viktor Kaldo; Viola Spek; Yvonne Forsell
Journal:  JAMA Psychiatry       Date:  2021-04-01       Impact factor: 21.596

7.  A two-stage prediction model for heterogeneous effects of treatments.

Authors:  Konstantina Chalkou; Ewout Steyerberg; Matthias Egger; Andrea Manca; Fabio Pellegrini; Georgia Salanti
Journal:  Stat Med       Date:  2021-05-27       Impact factor: 2.497

8.  Multivariate and network meta-analysis of multiple outcomes and multiple treatments: rationale, concepts, and examples.

Authors:  Richard D Riley; Dan Jackson; Georgia Salanti; Danielle L Burke; Malcolm Price; Jamie Kirkham; Ian R White
Journal:  BMJ       Date:  2017-09-13

9.  Conduct and reporting of individual participant data network meta-analyses need improvement.

Authors:  Anna Chaimani
Journal:  BMC Med       Date:  2020-06-02       Impact factor: 8.775

10.  Self-help plus for refugees and asylum seekers; study protocol for a series of individual participant data meta-analyses.

Authors:  Eirini Karyotaki; Marit Sijbrandij; Marianna Purgato; Ceren Acarturk; Daniel Lakin; Della Bailey; Emily Peckham; Ersin Uygun; Federico Tedeschi; Johannes Wancata; Jura Augustinavicius; Ken Carswell; Maritta Välimäki; Mark van Ommeren; Markus Koesters; Mariana Popa; Marx Ronald Leku; Minna Anttila; Rachel Churchill; Ross White; Sarah Al-Hashimi; Tella Lantta; Teresa Au; Thomas Klein; Wietse A Tol; Pim Cuijpers; Corrado Barbui
Journal:  Eur J Psychotraumatol       Date:  2021-07-05
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