| name | radiology-prereview |
| description | Run a rigorous pre-submission mock peer review of an imaging-AI / radiomics / radiogenomics manuscript โ simulate the methods, statistics, reporting-guideline, figure, citation/claim-verification, and data-sharing reviewer a top journal would assign, and surface the issues that cause desk-reject or major revision before submission. Use when the user wants a mock review, pre-submission audit, "ๆ็จฟๅ้ขๅฎก/ๆจกๆๅฎก็จฟ", "find the holes before a reviewer does", a two-pass abstract/figure/table claim audit, or a readiness check. Returns a reviewer-style report with Blocker / Major / Minor issues, each tied to the manuscript location and the reporting-guideline or methodological risk, plus an editor-style recommendation and a prioritised fix order. Never fabricates compliance or papers over a real weakness. |
Pre-submission Mock Review
Use this skill to be the harshest fair reviewer before the real one is. It reads the
manuscript the way a methods-literate Radiology/Lancet-DH/Nature-Medicine reviewer would,
finds the dealbreakers, and returns a reviewer-style report you can act on โ so issues are fixed
on your terms, not surfaced in a rejection.
Core stance
- Adversarial but on the author's side. Hunt for the weakness a reviewer will weaponise, then
hand back the fix โ not just the criticism.
- Dealbreakers first. No patient-level split, data leakage, no external validation, undefined
labels, unclear segmentation, incomplete statistics, overclaiming โ these decide the outcome.
Triage them before cosmetics.
- Map to the guideline. Tie each issue to the specific CLAIM/CLEAR/TRIPOD+AI/STARD/IBSI item
or methodological risk a reviewer would cite (โ radiology-reporting).
- Check the claims against the evidence. Does the abstract/Discussion overstate AUC,
correlation, or retrospective results? Flag every claim the data don't support.
- Honest readiness verdict. Give an editor-style recommendation (ready / minor / major / not
yet) with the reasons โ don't reassure.
- Integrity. Never invent compliance, never wave through a real weakness to be encouraging.
When to use
- "Mock-review my paper before I submit." / "ๆ็จฟๅๅธฎๆๆจกๆๅฎก็จฟใๅ้ขๅฎกใ"
- "Find the holes a reviewer will find."
- "Is this ready for [target journal], or what must I fix first?"
- After drafting, before
radiology-journal selection and submission.
When to open extra files
| File | Open when |
|---|
| references/review-dimensions.md | The full set of dimensions to review (design, data, labels, leakage, stats, reporting, figures, claims, sharing) |
| references/dealbreakers.md | The hard issues that trigger desk-reject / major revision, with how to detect and fix each |
| references/review-report-format.md | The reviewer-report + editor-recommendation output structure |
| references/pre-submission-hard-gates.md | Final submission readiness audit, rejected-paper rescue, contribution map, reviewer objection register, or when deciding whether a paper is truly ready |
| references/ai-radiogenomics-pitfall-audit.md | Imaging-AI, foundation-model, VLM, radiomics, deep radiomics, or radiogenomics manuscripts need a targeted audit for leakage, external validation, site/scanner confounding, superficial XAI, weak clinical utility, or mechanism overclaim |
| references/claim-verification-gate.md | Submission-facing abstract, Key Results, figure legend, table, graphical abstract, novelty, comparison, and numerical claims need two-pass extraction and verification |
Workflow
- Intake โ manuscript (or sections), study type, target journal/tier if known.
- Classify the study and load the dimensions (review-dimensions.md); pull the right
guideline stack via
radiology-reporting.
- For final readiness checks, open
pre-submission-hard-gates.md and score each hard
gate as PASS / CONDITIONAL / FAIL before writing softer reviewer comments.
- Hunt dealbreakers (dealbreakers.md) โ partition hygiene, leakage, external validation,
labels/reference standard, segmentation reproducibility, statistical completeness, overclaim,
data/code availability.
- For AI/radiogenomics manuscripts, open
ai-radiogenomics-pitfall-audit.md and audit
the common failures that make a high-AUC paper look untrustworthy.
- Review each dimension โ record
Issue | Severity (Blocker/Major/Minor) | Location | Guideline/risk | Fix.
- Run two-pass claim audit for submission-facing text โ abstract, Key Results, figure
legends, tables, graphical abstract, and Discussion comparison/novelty claims should be
extracted first, then verified via
references/claim-verification-gate.md.
- Check claims vs evidence โ abstract, Key Results, Discussion: is every claim bounded by the
data?
- Write the report (review-report-format.md) โ reviewer comments by severity + an editor-style
recommendation + a prioritised fix order (what unlocks the most).
Output contract
Summary assessment โ 3โ5 sentences: what the paper does, its real strength, its decisive
weakness, and the readiness verdict.
Major/Blocker comments โ numbered, reviewer-style, each with location, the guideline/risk,
and the concrete fix.
Minor comments โ numbered, smaller issues.
Claims vs evidence โ overclaims and the bounded rewording.
Claim audit status โ for final readiness: extraction complete? verification complete?
unsupported/numerical/visual-table claims remaining?
Hard-gate table โ if final readiness is requested: contribution, data integrity,
validation, statistics, reporting, figures, citation, ethics/data availability, and reviewer
objection status.
Editor-style recommendation โ ready / minor revision / major revision / not yet, with
reasons.
Fix order โ prioritised, routed to the relevant skill (stats, reporting, design, etc.).
Quality bar
A good mock review predicts the real reviews: it catches the dealbreakers, cites the exact item a
reviewer would, separates fatal from cosmetic, and tells the author the order to fix things โ
without inventing compliance or softening a genuine blocker.
Handoffs
- Checklist item-by-item audit โ
radiology-reporting.
- Statistical completeness (CIs, calibration, DCA, multiplicity) โ
radiology-stats.
- Leakage specifics โ
radiology-radiomics / radiology-deep-learning.
- Missing external validation / reader study โ
radiology-design / radiology-translation.
- Data/code/ethics gaps โ
radiology-data / radiology-ethics.
- Rewriting overclaims / sections โ
radiology-writing / radiology-polishing.
- Then choose the venue โ
radiology-journal; reviewer replies later โ radiology-response.