Comprehensive Meta-Analysis (CMA) icon
Comprehensive Meta-Analysis (CMA) icon

Comprehensive Meta-Analysis (CMA)

Comprehensive Meta-Analysis (abbreviated as CMA) is a helpful software for non-statistician researchers doing meta-analyses. Indeed, the program combines ease of use with a wide range of computational options and sophisticated graphics.

Example of analysis with CMA

Cost / License

  • Subscription
  • Proprietary

Platforms

  • Windows
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 Tags

  • meta-analysis
  • research-tool
  • systematic-reviews
  • Research
  • statistics

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Comprehensive Meta-Analysis (CMA) information

  • Developed by

    Biostat
  • Licensing

    Proprietary and Commercial product.
  • Pricing

    Subscription that costs $0 per month.
  • Alternatives

    2 alternatives listed
  • Supported Languages

    • English

AlternativeTo Category

Education & Reference
Comprehensive Meta-Analysis (CMA) was added to AlternativeTo by Jacob Sierra Díaz on and this page was last updated .
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What is Comprehensive Meta-Analysis (CMA)?

Fast and easy meta-analysis software. Research synthesis, systematic review for finding effect size, creating forest plots, and much more. Free trial option.

Features

  • Work with a spreadsheet interface
  • Compute the treatment effect (or effect size) automatically
  • Perform the meta-analysis quickly and accurately
  • Create high-resolution forest plots with a single click
  • Use cumulative meta-analysis to see how the evidence has shifted over time
  • Use a “Remove-One” analysis to gauge each study’s impact
  • Work with subsets of the data
  • Work with multiple subgroups or outcomes within studies
  • Assess the impact of moderator variables
  • Assess the potential impact of publication bias