Network Meta-analysis Workshop
Advance Your Research Skills with Network Meta-Analysis Techniques & Evidence Synthesis.
Why Choose Network Meta-analysis Workshop?
At Research Nexus, we offer a diverse range of programs designed to empower your research journey and align with your goals.
Comprehensive Network Meta-Analysis Workshop
Enhance your research expertise through our Network Meta-analysis Workshop, designed to help participants understand advanced evidence synthesis methods, compare multiple interventions simultaneously, and interpret complex statistical outcomes with confidence. This workshop provides practical insights into systematic reviews, indirect comparisons, data interpretation, and real-world applications for academic and healthcare research.
Course Outline
Module 1: Foundations of Network Meta-Analysis
Introduction to Network Meta-Analysis (NMA)
- What is NMA? Definition and purpose
- Distinguishing NMA from pairwise meta-analysis
- When to use NMA in clinical and policy decision-making contexts
Core Concepts
- Direct vs. indirect evidence
- Transitivity assumption and its importance
- Consistency vs. inconsistency in networks
- Understanding network geometry and graphs
Module 2: Formulating the Research Question
Extending PICO for NMA
- Defining populations, interventions, comparators, and outcomes
- Handling multiple interventions and multi-arm trials
Protocol Development
- Registering NMA protocols (PROSPERO, OSF)
- PRISMA-NMA extension for reporting standards
Module 3: Systematic Review for NMA
Literature Search Strategies
- Comprehensive search across multiple databases:
- PubMed
- Cochrane Library
- Embase
- Others
- Identifying trials with multiple intervention arms
- Searching for unpublished and ongoing trials
Study Selection and Data Extraction
- Screening using Rayyan AI or Covidence
- Extracting data for multiple comparisons
Handling correlated data from multi-arm trials
Module 4: Risk of Bias and Quality Assessment
Assessing Individual Studies
- Using ROB-2 (Risk of Bias 2.0) for randomized trials
- ROBINS-I for non-randomized studies
Assessing Confidence in NMA Evidence
- CINeMA (Confidence in Network Meta-Analysis) framework
- GRADE approach for NMA
Module 5: Statistical Foundations
Understanding Effect Measures
- Odds ratios
- Risk ratios
- Mean differences
- Standardized mean differences
Fixed-Effect vs. Random-Effects Models in NMA
- When to use each approach
Heterogeneity in NMA
- Measuring and addressing heterogeneity
Module 6: R Programming for Network Meta-Analysis
Introduction to R for NMA
- Installing and loading NMA packages:
- netmeta
- gemtc
- BUGSnet
Data Preparation
- Structuring long-format data for NMA
- Handling multi-arm trials
Conducting NMA in R
- Generating network graphs
- Running fixed-effect and random-effects models
- Obtaining league tables and ranking probabilities
Advanced R Applications
- Node-splitting analysis for inconsistency assessment
- Meta-regression in NMA
- Generating:
- Forest plots
- Rankograms
- SUCRA (Surface Under the Cumulative Ranking) plots
Module 7: Interpreting and Presenting NMA Results
Network Graphs
- Visualizing treatment networks
League Tables
- Presenting pairwise comparisons with confidence intervals
Ranking Metrics
- Understanding SUCRA and P-scores
- Presenting rankograms
Inconsistency Assessment
- Global and local inconsistency testing
Module 8: Advanced Topics (Optional / Extended)
Bayesian Network Meta-Analysis
- Introduction to Bayesian methods using gemtc or BUGSnet
- Understanding priors, convergence, and model diagnostics
Network Meta-Analysis of Diagnostic Test Accuracy
- Special considerations for diagnostic studies
Individual Patient Data (IPD) Network Meta-Analysis
- Overview and applications
Module 9: Publication and Dissemination
Manuscript Preparation
- Structuring an NMA manuscript
- PRISMA-NMA checklist
Targeting High-Impact Journals
- Journals that publish NMA:
- BMJ
- JAMA Network
- Lancet specialty journals
Team Management
- Distributing tasks among team members
- Timeline management for submission within 45–60 days