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.
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 youβll later pool for your pancreatic target.
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.
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.
Prevalence differs across splits (e.g., external test ~0.595), which can influence sensitivity/specificity depending on thresholds and calibration.
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.
The specific requested target (post-pancreatic surgery diabetes) is not represented in the supplied evidence. Iβm therefore not computing a pancreatic-surgery pooled estimateβbecause doing so would require study-level data that I do not have.
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