Pre-Submission Review

AI-generated simulated peer review to catch weaknesses before submission

What It Does

Pre-Submission Review generates a highly realistic, rigorous simulated peer review of your manuscript. Our system evaluates your methodology, results presentation, argument clarity, and overall manuscript quality, identifying strengths, weaknesses, and offering specific recommendations just like an elite journal reviewer would. Use this pre submission peer review to catch critical problems and refine your paper before it ever reaches the editor's desk, effectively serving as an advanced AI academic editing check.

How It Works

  1. Upload your Word document (.doc/.docx) or PDF
  2. Select "Pre-Submission Review" and choose your LLM provider
  3. Pay with subscription credits or card
  4. AI generates a detailed peer review of your manuscript
  5. Download the review document with specific recommendations

What You Get

Best For

Researchers who want a preliminary quality check and simulated peer review before submitting to a journal. Extremely useful for first-time submitters and manuscripts targeting high-impact journals.

FAQ — Frequently Asked Questions

How accurate is the simulated peer review?

Our system is calibrated on thousands of peer review reports from top-tier journals. While it cannot guarantee acceptance, it consistently catches major methodological flaws, unaddressed limitations, and structural issues.

Do I receive a score or probability of acceptance?

Yes, the generated report includes a quantified rubric scoring originality, methodology, and clarity, giving you a strong indicator of journal readiness.

Is my unpublished data safe during this process?

Absolutely. Our enterprise APIs have zero-retention policies. Your manuscript and data are never used to train models.

$39 per manuscript

As low as $12.25 per review with a subscription.

Available on: Student, Author, Global Author, and Lab plans. Also available as a one-time purchase.

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