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Grant Mock Reviewer

Simulates NIH study section peer review for grant proposals. Triggers when user wants mock review, critique, or evaluation of a grant proposal before submiss...
Simulates NIH study section peer review for grant proposals. Triggers when user wants mock review, critique, or evaluation of a grant proposal before submiss...
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概述

Grant Mock Reviewer

A simulated NIH study section reviewer that provides structured, rigorous critique of grant proposals using the official NIH scoring criteria and methodology.

Capabilities

  1. NIH Scoring Rubric Application: Official 1-9 scale scoring across all 5 criteria
  2. Weakness Identification: Systematic detection of common proposal flaws
  3. Critique Generation: Structured written critiques for each review criterion
  4. Summary Statement: Complete mock Summary Statement output
  5. Revision Guidance: Prioritized, actionable recommendations for improvement

Usage

Command Line

# Full mock review with Summary Statement
python3 scripts/main.py --input proposal.pdf --format pdf --output review.md

# Review Specific Aims only
python3 scripts/main.py --input aims.pdf --section aims --output aims_review.md

# Targeted review (specific criterion focus)
python3 scripts/main.py --input proposal.pdf --focus approach --output approach_critique.md

# Generate NIH-style scores only
python3 scripts/main.py --input proposal.pdf --scores-only --output scores.json

# Compare before/after revision
python3 scripts/main.py --original original.pdf --revised revised.pdf --compare

As Library

from scripts.main import GrantMockReviewer

reviewer = GrantMockReviewer()
result = reviewer.review(
    proposal_text=proposal_content,
    grant_type="R01",
    section="full"
)
print(result.summary_statement)
print(result.scores)

Parameters

ParameterTypeDefaultRequiredDescription
-------------------------------------------------
--inputstring-YesPath to proposal file (PDF, DOCX, TXT, MD)
--formatstringautoNoInput file format (pdf, docx, txt, md)
--sectionstringfullNoSection to review (full, aims, significance, innovation, approach)
--grant-typestringR01NoGrant mechanism (R01, R21, R03, K99, F32)
--focusstring-NoFocus on specific criterion (significance, investigator, innovation, approach, environment)
--scores-onlyflagfalseNoOutput scores only (JSON)
--output, -ostringstdoutNoOutput file path
--originalstring-NoOriginal proposal for comparison
--revisedstring-NoRevised proposal for comparison
--compareflagfalseNoEnable comparison mode

NIH Scoring System

Overall Impact Score (1-9)

The single most important score reflecting the likelihood of the project to exert a sustained, powerful influence on the research field.

ScoreDescriptorLikelihood of Funding
-----------------------------------------
1ExceptionalVery High
2OutstandingHigh
3ExcellentGood
4Very GoodModerate
5GoodLow-Moderate
6SatisfactoryLow
7FairVery Low
8MarginalUnlikely
9PoorNot Fundable

Individual Criteria (1-9 each)

  1. Significance: Does the project address an important problem? Will scientific knowledge be advanced?
  2. Investigator(s): Are the PIs well-suited? Adequate experience and training?
  3. Innovation: Does it challenge current paradigms? Novel concepts, approaches, methods?
  4. Approach: Sound research design? Appropriate methods? Adequate controls? Address pitfalls?
  5. Environment: Adequate institutional support? Scientific environment conducive to success?

Score Interpretation

  • 1-3 (High Priority): Compelling, well-developed proposals with strong approach
  • 4-5 (Medium Priority): Good proposals with some weaknesses
  • 6-9 (Low Priority): Significant weaknesses that diminish enthusiasm

Review Output Format

1. Score Summary

Overall Impact: [Score] - [Descriptor]

Criterion Scores:
- Significance: [Score]
- Investigator(s): [Score]
- Innovation: [Score]
- Approach: [Score]
- Environment: [Score]

2. Strengths

Bullet-point list of major strengths by criterion

3. Weaknesses

Bullet-point list of major weaknesses by criterion

4. Detailed Critique

Paragraph-form critique for each criterion following NIH style

5. Summary Statement

Complete narrative synthesis of the review

6. Revision Recommendations

Prioritized, actionable suggestions for improvement

Common Weaknesses Detected

Significance

  • Insufficient justification for the research problem
  • Incremental rather than transformative impact
  • Unclear connection to human health/disease
  • Overstatement of clinical significance without evidence

Investigator

  • Lack of relevant expertise for proposed aims
  • Insufficient track record in key methodologies
  • PI overcommitted (excessive effort on other grants)
  • Missing key collaborator expertise

Innovation

  • Straightforward extension of published work
  • Methods are standard rather than novel
  • No challenging of existing paradigms
  • Incremental rather than breakthrough potential

Approach

  • Aims too ambitious for timeframe
  • Insufficient preliminary data
  • Inadequate experimental controls
  • No discussion of pitfalls and alternatives
  • Statistical analysis plan missing or inadequate
  • Sample size/power calculations absent

Environment

  • Inadequate institutional resources
  • Missing core facility access
  • Lack of relevant equipment
  • Insufficient collaborative environment

Technical Difficulty

High - Requires deep understanding of NIH peer review processes, ability to apply standardized scoring rubrics consistently, and generation of clinically/scientifically accurate critique across diverse research domains.

Review Required: Human verification recommended before deployment in production settings.

References

  • references/nih_scoring_rubric.md - Complete NIH scoring guidelines
  • references/review_criteria_explained.md - Detailed criterion descriptions
  • references/common_weaknesses_catalog.md - Database of typical proposal flaws
  • references/summary_statement_templates.md - NIH-style statement templates
  • references/score_calibration_guide.md - Score assignment guidelines

Best Practices for Users

  1. Provide Complete Proposals: The tool works best with full Research Strategy sections
  2. Include Preliminary Data: Approach critique depends on feasibility evidence
  3. Review Multiple Times: Use iteratively as you revise
  4. Compare Versions: Track improvement between drafts
  5. Consider Multiple Perspectives: Supplement with human reviewer feedback

Limitations

  1. Cannot access external literature to verify claims
  2. May not capture domain-specific methodological nuances
  3. Scoring is simulated and may not match actual study section scores
  4. Best used as preparatory tool, not replacement for human review

Version

1.0.0 - Initial release with NIH R01/R21/R03 support

Risk Assessment

Risk IndicatorAssessmentLevel
-----------------------------------
Code ExecutionPython/R scripts executed locallyMedium
Network AccessNo external API callsLow
File System AccessRead input files, write output filesMedium
Instruction TamperingStandard prompt guidelinesLow
Data ExposureOutput files saved to workspaceLow

Security Checklist

  • [ ] No hardcoded credentials or API keys
  • [ ] No unauthorized file system access (../)
  • [ ] Output does not expose sensitive information
  • [ ] Prompt injection protections in place
  • [ ] Input file paths validated (no ../ traversal)
  • [ ] Output directory restricted to workspace
  • [ ] Script execution in sandboxed environment
  • [ ] Error messages sanitized (no stack traces exposed)
  • [ ] Dependencies audited
  • Prerequisites

# Python dependencies
pip install -r requirements.txt

Evaluation Criteria

Success Metrics

  • [ ] Successfully executes main functionality
  • [ ] Output meets quality standards
  • [ ] Handles edge cases gracefully
  • [ ] Performance is acceptable

Test Cases

  1. Basic Functionality: Standard input → Expected output
  2. Edge Case: Invalid input → Graceful error handling
  3. Performance: Large dataset → Acceptable processing time

Lifecycle Status

  • Current Stage: Draft
  • Next Review Date: 2026-03-06
  • Known Issues: None
  • Planned Improvements:
  • Performance optimization
  • Additional feature support

版本历史

共 1 个版本

  • v0.1.0 当前
    2026-05-07 10:04 安全 安全

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