| name | radiology-reporting |
| description | Route an imaging-research manuscript or protocol to the correct reporting/quality guideline and audit it item-by-item for Radiology (RSNA) or Nature-portfolio submission. Use when the user mentions CLAIM, TRIPOD+AI, STARD, PRISMA-DTA, QUADAS-2, CLEAR, METRICS, RQS, IBSI, PROBAST, CONSORT-AI, FUTURE-AI, TRIPOD-LLM, the Nature Portfolio Reporting Summary / Editorial Policy Checklist, a "reporting checklist", "what's required for submission", radiomics quality, or wants to know what a reviewer will check. Produces a filled checklist with PRESENT / PARTIAL / MISSING per item, manuscript location, and concrete fixes. Do not fabricate compliance — flag missing items honestly. |
Radiology Reporting-Guideline Compliance
Use this skill to make an imaging study reviewer-proof on reporting. Radiology and the
RSNA family require the relevant EQUATOR checklist at submission, and imaging-AI / radiomics
papers are now judged against a specific, version-sensitive stack of guidelines. This skill
(1) identifies the study type, (2) selects the correct guideline(s), (3) audits the manuscript
item-by-item, and (4) returns a submission-ready checklist plus a prioritised fix list.
Core stance
- The checklist is the contract. A reviewer maps your paper to a guideline; do the same
first, in their seat.
- Report honestly. Mark each item
PRESENT, PARTIAL, or MISSING. Never label
something compliant to be agreeable. A MISSING flag you surface is cheaper than a
reviewer finding it.
- Cite the location. Every
PRESENT claim must point to a section / page / figure /
supplement. If you cannot point to it, it is PARTIAL at best.
- Versions matter. Use the current version (CLAIM 2024 Update, TRIPOD**+AI** 2024,
CLEAR 2023, METRICS 2024). Name the version you audited against.
- Reporting ≠ quality ≠ risk-of-bias. CLEAR (reporting) → METRICS / RQS (methodological
quality) → PROBAST(-AI) / QUADAS-2 (risk of bias). Different tools, different jobs; pick
the right one(s).
- Don't invent the science. This skill audits reporting; it never fabricates the missing
experiment, metric, or dataset. It tells the author what to add.
- Venue changes the stack, not the rigor. Radiology-family submissions stop at the
guideline checklist; Nature-portfolio submissions add a Reporting Summary / Editorial
Policy Checklist on top of the same guideline stack (→
nature-reporting-summary.md) —
never treat the Reporting Summary as a replacement for CLAIM/TRIPOD+AI/CLEAR.
When to use
- "Which checklist does my study need?" / "What will Radiology require at submission?"
- "Audit this manuscript against CLAIM / TRIPOD+AI / STARD / CLEAR / METRICS / RQS."
- "Is my radiomics pipeline reported reproducibly (IBSI)?"
- "Fill in the CLAIM checklist with page numbers."
- "What's my risk-of-bias exposure under PROBAST-AI / QUADAS-2?"
- Pre-submission self-audit, or triaging a reviewer comment that cites a guideline.
Routing — pick the guideline(s) before auditing
Most imaging-AI papers need two or more of these (a reporting guideline and a
quality/risk-of-bias tool).
| Study type | Primary reporting guideline | Add for quality / risk-of-bias |
|---|
| AI/ML system in medical imaging (any task) | CLAIM 2024 | TRIPOD+AI if it is a prediction model; DECIDE-AI for early clinical decision-support |
| Diagnostic/prognostic prediction model (incl. ML/DL) | TRIPOD+AI (2024) (+ TRIPOD-Cluster, TRIPOD for Abstracts) | PROBAST / PROBAST-AI (risk of bias) |
| Radiomics (hand-crafted features → model) | CLEAR (2023) for reporting | METRICS (2024) and/or RQS / RQS 2.0 for quality; IBSI for feature reproducibility |
| Diagnostic accuracy (test vs reference standard) | STARD 2015 | QUADAS-2 if part of a review; STARD-AI when finalised |
| DTA systematic review / meta-analysis | PRISMA-DTA (2018) | QUADAS-2 (+ QUADAS-C for comparative) per included study |
| Systematic review / meta-analysis (general) | PRISMA 2020 | AMSTAR-2; ROBIS |
| Observational (cohort/case-control/cross-sectional) | STROBE | (REMARK for tumour-marker prognostic studies) |
| Randomised trial of an imaging/AI intervention | CONSORT 2010 (+ CONSORT-AI) | protocol: SPIRIT (+ SPIRIT-AI) |
| Imaging biomarker / quantitative imaging | QIBA Profile reporting + STARD/TRIPOD as applicable | IBSI; phantom/repeatability (QIBA) |
Open references/guideline-router.md for the full
decision tree, including hybrid studies (e.g. a radiomics prediction model validated
for diagnostic accuracy → CLEAR + TRIPOD+AI + STARD + IBSI) and Nature-portfolio venues
(add the Reporting Summary on top of whichever stack applies).
When to open extra files
Workflow
- Classify the study. Determine task (classification / detection / segmentation /
prediction / diagnostic accuracy / discovery), data provenance, whether a model is
developed and/or validated, and whether the endpoint is accuracy, prognosis, or biology.
- Select guideline(s) from the routing table. State which version. If the study is
hybrid, select the stack and say why each applies.
- Load the relevant reference file(s) and audit every item. For each item record:
Item ID | Requirement (short) | Status (PRESENT/PARTIAL/MISSING/NA) | Location | Fix.
- Prioritise fixes. Group into
Blocker (will trigger major revision / desk reject),
Should-fix (reviewer will likely ask), Polish. Tie each blocker to the specific
reviewer risk.
- Cross-check integrity hot-spots (see below) — the items reviewers weaponise most.
- If the target is a Nature-portfolio venue, also complete the Reporting Summary /
Editorial Policy Checklist (
nature-reporting-summary.md) — additive, not a substitute.
- Return the filled checklist + a one-screen executive summary + the prioritised fix
list. Offer to draft the missing text/Methods sentences (hand off to
radiology-writing).
Integrity hot-spots (audit these even if not asked)
These are the recurring reasons imaging-AI/radiomics papers get rejected:
- Data leakage / partition hygiene. Train/validation/test split made at the
patient level (not slice/lesion); no test-set tuning; preprocessing, feature
selection, harmonisation, and normalisation fit on training data only; augmentation
never crosses the split. (CLAIM, TRIPOD+AI, METRICS, CLEAR all probe this.)
- External / independent validation. Internal CV alone is weak. State the validation
type (internal resampling, temporal, geographic, fully external) and cohort source.
- Reference standard & ground truth. Who labelled, how many readers, expertise,
blinding, adjudication, and the reference standard's own accuracy. (STARD, CLAIM.)
- Class/prevalence & spectrum. Report disease prevalence; flag artificial 1:1 sampling;
describe the clinical spectrum (STARD spectrum bias; QUADAS-2 patient selection).
- Radiomics reproducibility. Software + version, image preprocessing (resampling,
discretisation/bin width, intensity normalisation), segmentation method and
inter-observer reproducibility (ICC), feature definitions IBSI-compliant, and
scanner/protocol harmonisation (e.g. ComBat). (CLEAR, METRICS, IBSI.)
- Sample size / EPV. Events-per-variable, or a stated sample-size rationale (Riley et al.
for prediction models). High-dimensional features vs. n is the classic overfitting trap.
- Metrics match the task & prevalence. AUC alone is insufficient; report calibration and
clinical-utility (decision-curve) for prediction models; report CIs everywhere.
(Hand off computation to
radiology-stats.)
- Code / model / data availability. Statement present and specific. (Hand off to
radiology-data.)
Output contract
Return, in this order:
Study classification — task, design, endpoint, and the selected guideline stack
(with versions).
Checklist — a table with Item | Status | Location | Fix for every item of each
selected guideline. Use NA only with a one-line justification.
Compliance summary — counts (PRESENT / PARTIAL / MISSING / NA) per guideline and
an overall readiness read (e.g. "CLAIM 31/42 present; 4 blockers").
Prioritised fixes — Blocker / Should-fix / Polish, each tied to the reviewer risk
and the manuscript location to edit.
Author input needed — questions only the authors can answer (e.g. "Was the test set
sampled at patient level?").
If the user pastes only part of a manuscript, audit what is present and mark the rest
Cannot assess — section not provided rather than guessing.
Quality bar
A good audit reads like a rigorous methods reviewer who is on the author's side: it
finds the holes before submission, points to the exact item and location, and hands back
the precise sentence the Methods needs — without ever inventing compliance the paper
doesn't have.
Handoffs
- Missing statistics →
radiology-stats (compute/report AUC CIs, DeLong, ICC, calibration, DCA).
- Missing Methods/Results prose →
radiology-writing.
- Data/code availability wording, DICOM de-identification, Extended Data/Source Data →
radiology-data.
- Radiogenomics-specific design/leakage →
radiology-radiogenomics.
- Figure that proves an item (ROC, calibration, flow diagram) →
radiology-figure.
- Explainability/uncertainty items for a DL model →
radiology-deep-learning/interpretability-uncertainty.md.
- Checklist complete; want a full adversarial pre-submission read →
radiology-prereview.