ieee-transactions-on-medical-imaging
GitHub用于评估医学图像方法论文是否适合IEEE TMI期刊。检查贡献的医学影像特异性、数据集与验证严谨性、格式规范及拒稿风险,辅助投稿决策与重构。
Trigger Scenarios
Install
npx skills add brycewang-stanford/Awesome-Journal-Skills --skill ieee-transactions-on-medical-imaging -g -y
SKILL.md
Frontmatter
{
"name": "ieee-transactions-on-medical-imaging",
"description": "Use when targeting IEEE Transactions on Medical Imaging (TMI) or deciding whether a medical-imaging methods manuscript fits this venue. Encodes the journal's fit, the imaging-specific-method-with-proper-validation bar, dataset and evaluation rigor, house style, official-submission re-check, and desk-reject heuristics."
}
IEEE Transactions on Medical Imaging (ieee-transactions-on-medical-imaging)
Journal positioning
IEEE Transactions on Medical Imaging (TMI), published jointly by several IEEE societies, is a flagship archival venue for methods in medical image formation, reconstruction, and analysis across modalities (MRI, CT, PET/SPECT, ultrasound, optical, and microscopy), including registration, segmentation, quantification, and machine learning for medical imaging. The defining expectation is a method whose contribution is specific to medical imaging and validated with appropriate data and proper technical and, where relevant, clinical evaluation — not a generic computer-vision method run on a medical dataset as an afterthought. Papers without medical-imaging specificity, or evaluated on tiny/unrepresentative data without rigorous protocol, are a poor fit. This skill is a fit / venue-selection / re-framing tool. It does not replace the journal's current official author information. Before submitting, re-check the live IEEE TMI author guidance and submission system.
When to trigger
- The author names TMI for an image reconstruction, registration, segmentation, or imaging-ML manuscript and wants a fit/framing check.
- A method must be re-framed so the medical-imaging-specific contribution — the physics, the modality, or the clinical task — is central, not a generic CV result.
- The author is unsure whether the contribution belongs in TMI (imaging methods) or a broader biomedical/translation venue.
- The author needs TMI's dataset-and-validation bar and desk-reject heuristics.
Scope & topic fit
- Image formation and reconstruction: inverse problems and model-based or learning-based reconstruction for MRI, CT, PET/SPECT, ultrasound, and optical imaging.
- Image analysis: segmentation, registration, detection, and quantification with a medical-imaging-specific methodological advance.
- Machine learning for medical imaging when the method addresses imaging-specific challenges (modality physics, limited/heterogeneous labels, domain shift, artifacts).
- Quantitative imaging, biomarker extraction, and motion/artifact correction tied to a defined imaging or clinical task.
- Imaging-system and acquisition methods (sampling, hardware-aware reconstruction) evaluated on realistic or measured data.
- Computational/physics models of image formation validated against acquired data.
Method & evidence bar
- The contribution must be imaging-specific: exploit modality physics, acquisition model, or clinical task; a generic network applied to images does not clear the bar.
- Validation must use appropriate datasets with adequate size and diversity; report data source, acquisition, ground-truth/reference standard, and any patient/ethics provenance.
- Evaluation must use task-appropriate metrics with statistics: reconstruction fidelity, segmentation overlap/boundary error, registration accuracy, detection performance — with confidence intervals or significance where claimed.
- Compare against the right baselines (established imaging methods, not only one CV model), with matched preprocessing and fair tuning; ablate key components.
- Address generalization and robustness: cross-site/scanner/protocol variation, out-of-distribution behavior, and failure modes relevant to clinical use.
- Reproducibility: enough detail (and ideally code and data access per policy) to reproduce the reported results.
Structure & house style
- IEEE double-column format; TMI publishes full-length Papers — match the contribution to that archival scope and re-check current article types and length policy on the live guide.
- The introduction motivates the imaging/clinical gap and the methodological need, then states the contribution; avoid framing it as a generic-CV improvement.
- Figures are load-bearing: example images with the relevant overlays, quantitative comparison plots, and failure cases; include clinically meaningful visualizations.
- The methods section must specify the imaging model, data, and evaluation protocol precisely enough to reproduce.
- A results section with quantitative tables across datasets and baselines is central.
Official-submission checklist
- Before giving submission-ready advice, read
../../resources/source-basis.mdand../../resources/official-source-map.md; start from the IEEE Author Center anchors, then cite the current TMI-specific page you checked. - Search the live site for "IEEE Transactions on Medical Imaging information for authors" and follow the current ScholarOne/IEEE version.
- Re-check article types, page/length limits and overlength policy, and the IEEE double-column template.
- Confirm data/code-availability, human-subjects/ethics/IRB, and any de-identification and reporting requirements.
- Re-check ORCID, competing-interests, funding, author-contribution, and AI-use disclosure requirements, and IEEE open-access options.
- If the live official instructions conflict with this skill, the official instructions win.
Pre-submission self-check
- The contribution is medical-imaging-specific (physics/modality/clinical task), not a generic CV method on medical data.
- Validation uses appropriate, adequately sized and diverse datasets with documented reference standards.
- Metrics are task-appropriate and reported with statistics; baselines are the right imaging methods.
- Generalization across site/scanner/protocol and failure modes are addressed.
- Ethics/IRB and data provenance/de-identification are documented.
- Article type and length fit current TMI limits; methods are reproducible.
Common desk-reject triggers
- A generic computer-vision/deep-learning method with no medical-imaging-specific contribution.
- Evaluation on a tiny, single-site, or unrepresentative dataset with no rigorous protocol.
- Missing or inappropriate baselines; unfair comparisons or no ablation of the claimed novelty.
- No ethics/IRB statement or data provenance for human-subject imaging data.
- Clinical-utility claims with no clinically meaningful validation or appropriate reference standard.
Re-routing decision
- Broader biomedical engineering (devices, biosignals, non-imaging) →
ieee-transactions-on-biomedical-engineering. - Highest-significance clinical translation/impact story →
nature-biomedical-engineering. - Core contribution is a general signal-processing method →
ieee-transactions-on-signal-processing. - Surgical/medical-robotics contribution as the core →
ieee-transactions-on-robotics. - General computer-vision advance with no medical specificity → a computer-vision venue.
Output format
[Fit] High / Medium / Low (one-line reason)
[Target] IEEE Transactions on Medical Imaging
[Topic tags] <2–3 closest medical-imaging subtopics>
[Imaging-specific contribution] <what makes the method imaging-specific in one line>
[Method/evidence] <do the dataset + metrics + baselines clear TMI's validation bar?>
[Top risk] <the single most likely reason for rejection>
[Article type] Paper
[Official items to re-check] <article type / length / template / data-ethics / disclosures>
[Re-route suggestion] <if not a fit, a better-matched venue>
Version History
- 1839142 Current 2026-07-05 12:55


