scientific-skills/Academic Writing/academic-highlight-generator/SKILL.md
Generates submission-ready Elsevier/SCI Highlights from manuscript text or extracted PDF/DOCX/TXT content. Use when a user needs 3-5 concise, evidence-grounded highlight bullets for a research paper, review, meta-analysis, case report, or bioinformatics manuscript.
npx skillsauth add aipoch/medical-research-skills academic-highlight-generatorInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Generate journal-ready Highlights that can be pasted directly into a submission system. This skill is for academic writing output, not for inventing missing results.
Highlights section for a manuscript submission..doc file. This package supports .txt, .pdf, and .docx; convert .doc before continuing.Provide one of the following:
scripts/extract_text.py: .txt, .pdf, or .docx.Recommended metadata if available:
Always return:
Highlights
- <bullet 1>
- <bullet 2>
- <bullet 3>
[- <bullet 4>]
[- <bullet 5>]
Hard requirements:
3-5 bullets.85 characters per English bullet.we, our).Use the provided text directly. This is the preferred path for speed and determinism.
Use:
python scripts/extract_text.py <file_path>
Supported formats:
.txt.pdf.docxUnsupported format:
.doc -> ask the user to convert to .docx or .pdf first.Before writing anything, confirm the source contains enough signal to identify:
If not, stop and use the refusal template in ## Fallback and Refusal Contract.
If the user provided a file instead of text, run:
python scripts/extract_text.py <file_path>
If extraction fails:
Use references/prompts.md to classify the manuscript into one of:
Select the matching generation prompt from references/prompts.md.
Coverage priorities by type:
Use the critique and refinement prompts in references/prompts.md.
The final output must satisfy all of these checks:
3-5 bulletsIf the source is unsuitable or insufficient, respond with this structure:
Cannot generate submission-ready Highlights yet.
Reason: <insufficient source / unsupported article type / unsupported file format>
Detected type: <type or Unknown>
Minimum additional input needed:
- <item 1>
- <item 2>
Use this refusal contract when:
Other / Unclear,Highlights.Before returning the final answer, verify:
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