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     Quick Explanation



    I can’t yet answer β€œmeta-analysis: radiomics predicting post-pancreatic surgery diabetes (external validation)” from the research payload you provided: none of the included full-text entries concern *post-pancreatic surgery diabetes* or *radiomics external validation in that setting*. What I *can* do right now is visualize radiomics external-validation performance from an actually-provided radiomics example (HCC CT radiomics predicting micronecrosis) and outline a rigorous meta-analytic checklist you can apply once the correct pancreatic-surgery-diabetes radiomics studies are available.


     Long Explanation



    Radiomics β†’ Post-pancreatic-surgery Diabetes Meta-analysis (External Validation): Evidence Status

    Evidence mismatch (critical): In the provided research payload, I see radiomics models for hepatocellular carcinoma (HCC) and other unrelated biomedical meta-analyses, but no studies about radiomics predicting diabetes after pancreatic surgery, nor any external-validation DTA/meta-analysis in that specific clinical target.

    Therefore, any attempt to compute pooled external-validation performance (e.g., pooled AUC/sensitivity/specificity) for the pancreatic-surgery-diabetes question would require studies that are not present in your supplied data.

    What I *can* visualize now (from provided radiomics example)

    The only provided radiomics study with explicit external testing is an HCC CT radiomics model predicting tumor micronecrosis. I visualize its transport to an external set to demonstrate the exact metric types you’ll later pool for your pancreatic target.

    1) AUC: Development vs Internal Test vs External Test

    Observed pattern: AUC drops from 0.83 (development) β†’ 0.80 (internal) β†’ 0.76 (external), consistent with the common phenomenon that external transport is harder than internal validation.

    2) Sensitivity/Specificity/Accuracy: Development vs External Test

    Note the trade-off: external sensitivity (0.559) is lower than development (0.724), while external specificity is higher (0.820 vs 0.781) in this example.

    3) Class prevalence by split (why sensitivity/specificity can shift)

    Prevalence differs across splits (e.g., external test ~0.595), which can influence sensitivity/specificity depending on thresholds and calibration.

    How to perform the requested meta-analysis (rigorous checklist)

    Below is a target-agnostic but external-validation DTA meta-analysis-ready workflow. Once you provide the pancreatic-surgery-diabetes radiomics papers (with external cohorts), we can compute pooled performance and quantify heterogeneity.

    • Inclusion definition: radiomics predicting post-pancreatic surgery diabetes with an external validation cohort (not just internal random split). (Right now, that evidence isn’t in the payload.)
    • Extract: AUC/ROC metrics plus sensitivity & specificity (and the positivity threshold used), ideally with sample sizes and event counts.
    • Model transport & calibration: report whether external performance used the same preprocessing, segmentation protocol, and scanner harmonization. External test performance is often worse (as in the example study), so heterogeneity matters.
    • Meta-analytic layer: choose a DTA framework that respects threshold variability (e.g., bivariate HSROC / Reitsma-style approaches). Also consider meta-regression for scanner/protocol differences.
    • Bias checks: assess publication bias and selective reporting (radiomics often has β€œwinner’s curse” risk). The example highlights that code/data were not fully public, which can hamper replication.

    Scientific critical note (why I’m stopping short)

    The specific requested target (post-pancreatic surgery diabetes) is not represented in the supplied evidence. I’m therefore not computing a pancreatic-surgery pooled estimateβ€”because doing so would require study-level data that I do not have.



    Feedback:   

    Updated: March 31, 2026

     Top Data Sources ExportMCP



     Analysis Wizard



    It extracts radiomics external-validation metrics (AUC, sensitivity, specificity, event counts) from provided pancreatic-surgery-diabetes full texts, computes pooled estimates and heterogeneity, and outputs DTA-ready tables and forest plots.



     Hypothesis Graveyard



    Assuming that a higher internal AUC guarantees good external calibration is unlikely: the external AUC drop and metric trade-offs observed even in a separate radiomics context argue against that blanket assumption.

     Science Art


    Meta-analysis: radiomics predicting post-pancreatic surgery diabetes external validation overview Science Art

     Science Movie



    Make a narrated HD Science movie for this answer ($32 per minute)




     Discussion








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