Meta-Analysis Proportion in MedCalc: Complete Step-by-Step Guide for Biomedical Research

Introduction

Meta-analysis is an advanced statistical technique used to combine findings from multiple independent studies. When the outcome of interest is expressed as a percentage, prevalence, incidence, or proportion, researchers use Meta-Analysis of Proportions.

This method is widely applied in biomedical research, epidemiology, public health, and clinical studies to estimate an overall pooled proportion from several studies. Examples include disease prevalence, vaccination coverage, treatment success rates, infection rates, and recovery proportions.

In this tutorial, we demonstrate how to perform Meta-Analysis Proportion in MedCalc, explain every option available in the software, interpret forest and funnel plots, and discuss the results obtained from the attached MedCalc output.

What is Meta-Analysis Proportion?

Meta-Analysis Proportion combines proportions from multiple studies to obtain an overall pooled estimate.

The proportion is calculated as:

Proportion=Positive CasesTotal Cases\text{Proportion} = \frac{\text{Positive Cases}}{\text{Total Cases}}

For example:

  • Disease prevalence
  • Infection rate
  • Treatment success rate
  • Vaccination coverage
  • Recovery rate

Biomedical Example

Suppose researchers investigate the prevalence of hypertension in adults across several hospitals.

Each hospital reports:

  • Total participants examined
  • Number diagnosed with hypertension

Meta-analysis combines these results to estimate the overall prevalence.

Example Dataset

StudyTotal CasesPositive Cases
Study 120070
Study 218060
Study 325095
Study 422080
Study 5300120
Study 6280105
Study 724088
Study 826098

📥 Download Dataset

Download the Excel dataset used in this tutorial:

8 KB

Understanding the Variables

Study

Represents the study identifier.

Examples:

  • Hospital A
  • Hospital B
  • Clinical Trial 1

Total Cases

Total number of participants included in the study.

Example:

200 participants examined.

Positive Cases

Number of participants showing the condition of interest.

Example:

70 participants diagnosed with hypertension.

How Proportion is Calculated

For Study 1:

Positive Cases = 70

Total Cases = 200

Calculation:

70 ÷ 200 = 0.35

Percentage:

35%

For Study 5:

120 ÷ 300 = 0.40

Percentage:

40%

These percentages become the effect sizes used in the meta-analysis.

Step-by-Step Meta-Analysis Proportion in MedCalc

Step 1: Open MedCalc

Navigate to:

Statistics → Meta-analysis → Proportion

Step 2: Select Variables

Studies

Select:

Study

Total Number of Cases

Select:

Total_Cases

Number of Positive Cases

Select:

Positive_Cases

Step 3: Configure Options

Choose:

✔ Forest Plot

✔ Random Effect Model Weights

✔ Plot Pooled Effect – Random Effects Model

✔ Diamonds for Pooled Effects

✔ Funnel Plot

Step 4: Run Analysis

Click:

OK

MedCalc will generate:

  • Forest plot
  • Funnel plot
  • Pooled prevalence estimate
  • Heterogeneity statistics
  • Publication bias tests

Explanation of MedCalc Options

Forest Plot

The forest plot visually summarizes all studies.

It displays:

Recommended:

✔ Enabled

Marker Size Relative to Study Weight

The square size reflects study importance.

Larger sample sizes receive larger weights.

Fixed Effect Model Weights

Assumes:

All studies estimate exactly the same underlying proportion.

Suitable when heterogeneity is negligible.

Random Effect Model Weights

Assumes:

The true proportion varies between studies.

Most biomedical meta-analyses use this approach.

Recommended:

✔ Enabled

Plot Pooled Effect – Fixed Effects

Displays pooled estimate using fixed effect assumptions.

Optional.

Plot Pooled Effect – Random Effects

Displays pooled estimate using random effects assumptions.

Recommended:

✔ Enabled

Diamonds for Pooled Effects

The diamond shape represents:

Recommended:

✔ Enabled

Funnel Plot

Evaluates:

  • Publication bias
  • Small study effects

Recommended:

✔ Enabled

Results Interpretation

According to the MedCalc output, eight studies were included with a combined sample size of 1,930 participants.

Individual Study Results

StudySample SizeProportion (%)Interpretation
Study 120035.0Moderate prevalence
Study 218033.3Moderate prevalence
Study 325038.0High prevalence
Study 422036.4Moderate prevalence
Study 530040.0Highest prevalence
Study 628037.5High prevalence
Study 724036.7Moderate prevalence
Study 826037.7High prevalence

These results indicate prevalence values ranging from approximately 33% to 40%.

Pooled Proportion Result

Fixed Effects Model

  • Pooled proportion = 37.142%
  • 95% CI = 34.986% to 39.338%

Random Effects Model

  • Pooled proportion = 37.142%
  • 95% CI = 35.005% to 39.306%

Interpretation:

Approximately 37% of participants across all studies were positive for hypertension.

Forest Plot Interpretation

The diamond is centered near 37%, indicating the overall pooled prevalence.

Because most confidence intervals overlap substantially, study results appear highly consistent.

Test for Heterogeneity

MedCalc reported:

StatisticValue
Q2.7445
Degrees of Freedom7
P-value0.9076
I²0.00%

Interpretation

Q Test

P = 0.9076

Since:

P > 0.05

There is no significant heterogeneity.

I² Statistic

I² = 0%

Interpretation:

  • 0–25% = Low heterogeneity
  • 25–50% = Moderate heterogeneity
  • 50–75% = Substantial heterogeneity
  • 75% = High heterogeneity

Result:

✔ Very low heterogeneity

✔ Studies are highly consistent

Funnel Plot Interpretation

The funnel plot assesses publication bias.

In an ideal situation:

  • Studies form a symmetrical funnel shape
  • No publication bias is present

Publication Bias Assessment

Egger’s Test

  • Intercept = -7.0929
  • P = 0.0003

Begg’s Test

  • Kendall’s Tau = -0.7857
  • P = 0.0065

Both tests are statistically significant.

Interpretation of Publication Bias

Because:

  • Egger’s test P < 0.05
  • Begg’s test P < 0.05

There may be publication bias.

Possible explanation:

  • Smaller studies with lower prevalence estimates may not have been published.
  • Positive findings may be overrepresented.

Researchers should interpret pooled results with caution.

Advantages of Meta-Analysis Proportion

✔ Combines evidence from multiple studies

✔ Increases statistical power

✔ Provides precise prevalence estimates

✔ Improves clinical decision-making

✔ Supports evidence-based medicine

Applications in Biomedical Research

Meta-analysis proportion is commonly used for:

  • Disease prevalence studies
  • Vaccine effectiveness research
  • Infection rate estimation
  • Treatment success evaluation
  • Public health surveillance
  • Epidemiological investigations

Conclusion

Meta-Analysis Proportion in MedCalc is an effective statistical approach for combining prevalence and proportion data from multiple studies. In this tutorial, we learned how to prepare data, configure MedCalc options, interpret forest and funnel plots, evaluate heterogeneity, and assess publication bias.

The analysis demonstrated an overall pooled prevalence of approximately 37.1%, with virtually no heterogeneity among studies (I² = 0%). Although the pooled estimate was highly consistent, publication bias tests suggested potential reporting bias that should be considered when interpreting the findings.

This method is widely used in epidemiology, clinical research, and public health because it provides a reliable summary estimate from multiple studies and strengthens evidence-based conclusions.

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