The Times Australia
Fisher and Paykel Appliances
The Times World News

.

How AI can undermine peer review

  • Written by Timothy Hugh Barker, Senior Research Fellow, School of Public Health, University of Adelaide

Earlier this year I received comments on an academic manuscript of mine as part of the usual peer review process, and noticed something strange.

My research focuses on ensuring trustworthy evidence is used to inform policy, practice and decision making. I often collaborate with groups like the World Health Organization to conduct systematic reviews to inform clinical and public health guidelines or policy. The paper I had submitted for peer review was about systematic review conduct.

What I noticed raised my concerns about the growing role artificial intelligence (AI) is playing in the scientific process.

A service to the community

Peer review is fundamental to academic publishing, ensuring research is rigorously critiqued prior to publication and dissemination. In this process researchers submit their work to a journal where editors invite expert peers to provide feedback. This benefits all involved.

For peer reviewers, it is favourably considered when applying for funding or promotion as it is seen as a service to the community. For researchers, it challenges them to refine their methodologies, clarify their arguments, and address weaknesses to prove their work is publication worthy. For the public, peer review ensures that the findings of research are trustworthy.

Even at first glance the comments I received on my manuscript in January this year seemed odd.

First, the tone was far too uniform and generic. There was also an unexpected lack of nuance, depth or personality. And the reviewer had provided no page or line numbers and no specific examples of what needed to be improved to guide my revisions.

For example, they suggested I “remove redundant explanations”. However, they didn’t indicate which explanations were redundant, or even where they occurred in the manuscript.

They also suggested I order my reference list in a bizarre manner which disregarded the journal requirements and followed no format that I have seen replicated in a scientific journal. They provided comments pertaining to subheadings that didn’t exist.

And although the journal required no “discussion” section, the peer reviewer had provided the following suggestion to improve my non-existent discussion: “Addressing future directions for further refinement of [the content of the paper] would enhance the paper’s forward-looking perspective”.

AI chatbot open on a smartphone, next to a laptop, headphones and notebook.
The output from ChatGPT about the manuscript was similar to the comments from a peer reviewer. Diego Thomazini/Shutterstock[1]

Testing my suspicions

To test my suspicions the review was, at least in part, written by AI, I uploaded my own manuscript to three AI models – ChatGPT-4o, Gemini 1.5Pro and DeepSeek-V3. I then compared comments from the peer review with the models’ output.

For example, the comment from the peer reviewer regarding the abstract read:

Briefly address the broader implications of [main output of paper] for systematic review outcomes to emphasise its importance.

The output from ChatGPT-4o regarding the abstract read:

Conclude with a sentence summarising the broader implications or potential impact [main output of paper] on systematic reviews or evidence-based practice.

The comment from the peer reviewer regarding the methods read:

Methodological transparency is commendable, with detailed documentation of the [process we undertook] and the rationale behind changes. Alignment with [gold standard] reporting requirements is a strong point, ensuring compatibility with current best practices.

The output from ChatGPT-4o regarding the methods read:

Clearly describes the process of [process we undertook], ensuring transparency in methodology. Emphasises the alignment of the tool with [gold standard] guidelines, reinforcing methodological rigour.

But the biggest red flag was the difference between the peer-reviewer’s feedback and the feedback of the associate editor of the journal I had submitted my manuscript to. Where the associate editor’s feedback was clear, instructive and helpful, the peer reviewer’s feedback was vague, confusing, and did nothing to improve my work.

I expressed my concerns directly to the editor-in-chief. To their credit, I was met with immediate thanks for flagging the issues and for documenting my investigation – which, they said, was “concerning and revealing”.

A woman sitting at a wooden desk typing on a computer, with a notepad by her side.
The feedback about the manuscript from the journal’s associate editor was clear, instructive and helpful. Mikhail Nilov/Pexels[2]

Careful oversight is needed

I do not have definitive proof the peer review of my manuscript was AI-generated. But the similarities between the comments left by the peer reviewer, and the output from the AI models was striking.

AI models make research faster, easier and more accessible[3]. However, their implementation as a tool to assist in peer review requires careful oversight, with current guidance on AI use in peer review being mixed[4], and its effectiveness unclear[5].

If AI models are to be used in peer review, authors have the right to be informed and given the option to opt out. Reviewers also need to disclose the use of AI in their review. However, the enforcement of this remains an issue and needs to fall to the journals and editors to ensure peer reviewers who use AI models inappropriately are flagged.

I submitted my research for “expert” review by my peers in the field, yet received AI-generated feedback that ultimately failed to improve my work. Had I accepted these comments without question – and if the associate editor had not provided such exemplary feedback – there is every chance this could have gone unnoticed.

My work may have been accepted for publication without being properly scrutinised, disseminated into the public as “fact” corroborated by my peers, despite my peers not actually reviewing this work themselves.

References

  1. ^ Diego Thomazini/Shutterstock (www.shutterstock.com)
  2. ^ Mikhail Nilov/Pexels (www.pexels.com)
  3. ^ AI models make research faster, easier and more accessible (www.nature.com)
  4. ^ mixed (pmc.ncbi.nlm.nih.gov)
  5. ^ unclear (pmc.ncbi.nlm.nih.gov)

Read more https://theconversation.com/vague-confusing-and-did-nothing-to-improve-my-work-how-ai-can-undermine-peer-review-251040

Times Magazine

Q&A with Freya Alexander – the young artist transforming co-working spaces into creative galleries

As the current Artist in Residence at Hub Australia, Freya Alexander is bringing colour and creativi...

This Christmas, Give the Navman Gift That Never Stops Giving – Safety

Protect your loved one’s drives with a Navman Dash Cam.  This Christmas don’t just give – prote...

Yoto now available in Kmart and The Memo, bringing screen-free storytelling to Australian families

Yoto, the kids’ audio platform inspiring creativity and imagination around the world, has launched i...

Kool Car Hire

Turn Your Four-Wheeled Showstopper into Profit (and Stardom) Have you ever found yourself stand...

EV ‘charging deserts’ in regional Australia are slowing the shift to clean transport

If you live in a big city, finding a charger for your electric vehicle (EV) isn’t hard. But driv...

How to Reduce Eye Strain When Using an Extra Screen

Many professionals say two screens are better than one. And they're not wrong! A second screen mak...

The Times Features

5 Ways to Protect an Aircraft

Keeping aircraft safe from environmental damage and operational hazards isn't just good practice...

Are mental health issues genetic? New research identifies brain cells linked to depression

Scientists from McGill University and the Douglas Institute recently published new research find...

What do we know about climate change? How do we know it? And where are we headed?

The 2025 United Nations Climate Change Conference (sometimes referred to as COP30) is taking pla...

The Industry That Forgot About Women - Until Now

For years, women in trades have started their days pulling on uniforms made for someone else. Th...

Q&A with Freya Alexander – the young artist transforming co-working spaces into creative galleries

As the current Artist in Residence at Hub Australia, Freya Alexander is bringing colour and creativi...

Indo-Pacific Strength Through Economic Ties

The defence treaty between Australia and Indonesia faces its most difficult test because of econ...

Understanding Kerbside Valuation: A Practical Guide for Property Owners

When it comes to property transactions, not every situation requires a full, detailed valuation. I...

What’s been happening on the Australian stock market today

What moved, why it moved and what to watch going forward. 📉 Market overview The benchmark S&am...

The NDIS shifts almost $27m a year in mental health costs alone, our new study suggests

The National Disability Insurance Scheme (NDIS) was set up in 2013[1] to help Australians with...