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About MetaMamma: Breast Cancer & Nutrition

⚠️ CAUTION: AI-Generated Results

This tool uses automated algorithms to extract data from scientific abstracts. While we strive for accuracy, the extraction process may occasionally misinterpret extraction values, sample sizes, or study designs.

Always verify the extracted data against the original publication before making any clinical or research decisions. This tool is intended for exploratory and educational purposes only.

How It Works

MetaMamma is specifically designed to facilitate the rapid synthesis of evidence regarding nutritional factors and Breast Cancer. When you enter a nutritional exposure (e.g., "Coffee", "Vitamin D", "Soy"), the tool:

  1. Searches PubMed for relevant clinical trials and observational studies linking the exposure to breast cancer risk or survival.
  2. Finds Key Studies on PubMed using NLP to extract effect sizes (odds ratios, hazard ratios) and confidence sizes.
  3. Synthesizes Evidence by pooling the results using a Random-Effects Meta-Analysis model.
  4. Visualizes Results in a Forest Plot to show the overall trend.

Source of exposure list: National Institutes of Health, Office of Dietary Supplements (n.d.). Dietary supplement fact sheets.

Understanding Meta-Analysis in Breast Cancer

A Meta-Analysis is a statistical technique that combines the results of multiple scientific studies. By pooling data from various sources, we can get a more precise estimate of an effect than any single study can provide.

Interpreting Heterogeneity (I²)

The I² statistic measures the percentage of variation across studies that is due to heterogeneity (true differences in effects) rather than chance. MetaMamma interprets I² based on standard guidelines:

If a pooled effect is statistically significant but has substantial or very high heterogeneity (I² ≥ 50%), the results are flagged to be interpreted with caution due to the high variability between the included studies.

JBI Quality Appraisal

Study quality is assessed using the JBI Critical Appraisal Tools, selected automatically based on the study design identified by the LLM. Cross-Sectional is used as a fallback when the design is unclear.

JBI Checklist for Analytical Cross-Sectional Studies

  1. Were the criteria for inclusion in the sample clearly defined?
  2. Were the study subjects and the setting described in detail?
  3. Was the exposure measured in a valid and reliable way?
  4. Were objective, standard criteria used for measurement of the condition?
  5. Were confounding factors identified?
  6. Were strategies to deal with confounding factors stated?
  7. Were the outcomes measured in a valid and reliable way?
  8. Was appropriate statistical analysis used?

Scoring Criteria:

Reference: Joanna Briggs Institute. Critical appraisal tools. https://jbi.global/critical-appraisal-tools. Accessed 11 Feb 2026.