At the same time, reviewers operate within a system defined by contradiction. They are voluntary contributors, yet bound by strict timelines; essential to scholarly publishing, yet often unrecognized; expected to ensure rigor, yet restricted in their use of tools that could support their work. AI has not created these tensions. AI has just made the tensions more visible and more urgent.
This article argues that the debate is no longer about whether AI should be used in peer review, but about how to responsibly integrate its use into a system that already places uneven demands on reviewers.
The Phantom Quality
One of the most immediate effects of AI is the transformation of manuscript quality, at least at the surface level. Many submissions today are more fluent, better organized, and rhetorically polished. However, this creates a misleading signal: linguistic clarity is no longer a reliable indicator of scholarly quality.
AI-assisted tools can produce coherent and persuasive texts that mask weaknesses in research design, data analysis, or conceptual contribution. For reviewers, this means that traditional cues such as grammar, flow, and readability. are no longer sufficient. The task has shifted toward deeper interrogation: Is the methodology sound? Are the claims supported by evidence? Does the study genuinely contribute to knowledge?
In short, AI has not simplified peer review. AI has made peer review more demanding.
Yet recognition remains minimal. In some cases, reviewers do not even receive a formal acknowledgement email, let alone any form of honorarium. This is particularly striking in an era where many journals charge substantial article processing charges, raising legitimate questions about how value is distributed within the publishing system.
The situation is even more complex in contexts such as Indonesia. Manuscript reviewing is not formally recognized at all within the Beban KerjaDosenor Faculty Workload System. Although some academics attempt to include reviewer certificates under Penunjang (supporting academic activities), such efforts are informal and uncertain. Recognition ultimately depends on individual assessors. It means that peer review contributions are not systematically credited.
The result is a structural paradox: reviewers are essential to the global academic system, yet their labor remains largely invisible and inconsistently valued, particularly in Indonesia.
However, a blanket prohibition is increasingly difficult to sustain. Reviewers are already operating under pressure: voluntary yet deadline-bound, essential yet under-recognized. Now they are expected to comply with additional restrictions, including limitations on tools that could support their work.
This creates a tension between expectation and support. A system that demands efficiency and rigor, while limiting access to efficiency-enhancing tools, risks placing reviewers in an untenable position.
The AI Awakens
At the same time, publishing practices are evolving in a different direction. Some publishers are actively integrating AI into their editorial workflows. A notable example is AIRA, developed by Frontiers Media. AIRA performs multiple quality checks, flags potential ethical concerns, and supports reviewer selection, while leaving final decisions to human editors and reviewers.
Models such as AIRA are significant because they reframe the role of AI. Rather than being an external, unregulated tool, AI becomes part of a controlled and accountable infrastructure. Responsibility for data governance and confidentiality is managed by the publisher, not outsourced to individual reviewers.
From a reviewer’s perspective, this distinction is crucial. While the use of open AI tools raises legitimate ethical concerns, publisher-provided systems offer a more secure and pragmatic alternative. They acknowledge the realities of reviewer workload while maintaining necessary safeguards.
Under Pressure
The coexistence of AI prohibition and AI integration reveals a deeper contradiction in scholarly publishing. On one hand, reviewers are discouraged, or even forbidden, from using AI. On the other hand, publishers are increasingly embedding AI into their own systems.
The current state of peer review reveals a deeper structural tension within scholarly publishing. On one hand, reviewers are expected to meet high standards of rigor, deliver timely evaluations, and uphold the integrity of academic work. On the other hand, they operate within a system that relies on voluntary labor, offers limited recognition, and imposes increasing procedural constraints.
These contradictions are not merely inconvenient. They raise questions about the sustainability of peer review as a system. The issue is not simply whether AI should be used, but whether the current structure of peer review is aligned with the realities it imposes on reviewers.
Finding the Balance
A more constructive path forward is not a strict prohibition, but responsible integration. Several practical steps can be considered:
Encourage controlled AI use: Promote the use of secure, publisher-provided tools where confidentiality and data governance are ensured.
Maintain human responsibility: Reviewers must remain fully accountable for their evaluations, regardless of AI assistance.
Clarify policies: Journals should provide explicit, realistic guidelines on acceptable AI use.
Recognize reviewer labor: Institutions and publishers must address the persistent lack of recognition, integrating reviewing into formal workload systems where possible.
Such measures would better align expectations with realities, supporting reviewers without compromising ethical standards.
Return of the Reviewers
AI is not a future disruption. AI is a present condition of scholarly publishing. For reviewers, the challenge is not to resist AI, but to navigate its role within an already strained system.
However, the deeper issue is structural. A system that relies on voluntary labor, imposes strict deadlines, offers little recognition, and restricts supportive tools risks undermining its own foundations.
In this context, “Mission Impossible? Rethinking Peer Review Without AI” is not merely a provocative title. It reflects a growing disconnect between what reviewers are expected to do and the conditions under which they are asked to do it.
Addressing this disconnect requires more than regulating AI. It requires rethinking peer review itself so that expectations, recognition, and tools are brought into meaningful alignment.
Keywords
Peer Review
Artificial Intelligence
Scholarly Publishing
AI-Assisted Writing
Research Integrity
Reviewer Workload
Editorial Ethics
AI Governance
Academic Publishing
Manuscript Evaluation
Abdul Syahid
Abdul Syahid has been teaching English since 1995 and earned his doctorate in English Language Teaching from the State University of Malang in 2015. Since 2020, he has served as a faculty member at Universitas Islam Negeri Palangka Raya, Indonesia. His research focuses on language testing and assessment. He actively collaborates with scholars from Indonesia, Malaysia, Iran, and the United States, including Professor Donald Freeman, on a nationwide teacher training initiative based on a global framework. He has reviewed over 120 manuscripts and serves on editorial boards such as SAGE Open while valuing time with his family.
The views and opinions expressed in this article are those of the author(s) and do not necessarily reflect the official policy or position of their affiliated institutions, the Asian Council of Science Editors (ACSE), or the Editor’s Café editorial team.
Comments
Durga Mani Gautam
05 May, 2026
I have never used AI tools while reviewing a manuscript. In my opinion, peer reviewers should not use AI. I usually focus on the strengths and weaknesses in the manuscript.
Some manuscripts are very rough and need refinement. Many duplications and poor discussions is noticed. In my opinion, authors may use, editorial boards can use, but peer reviewers should not use. Very seldom did I make comments directly on the manuscript.
Abdul Syahid
10 May, 2026
Thank you for sharing your perspective, Prof. Durga Mani Gautam. You raise an important point that peer review ultimately depends on human judgement, critical reading, and scholarly responsibility.
I also appreciate your emphasis on carefully identifying both strengths and weaknesses in a manuscript, especially when dealing with rough drafts, duplication, or weak discussion sections. Your experience adds a valuable perspective to this conversation.
Dr.G. M. Shamsul Kabir
05 May, 2026
Very good and appreciable.
Dr. Afroz Alam
05 May, 2026
Very well composed and relevant article regarding AI uses.
Thanks and Regards
Md. Abdul Karim
10 May, 2026
I have never used AI tools while reviewing a manuscript. My opinion is that peer reviewers can use AI only for improvement of their reviewing quality. I usually focus on the strengths and weaknesses in the manuscript.
Some manuscripts are very rough and need refinement and even rewritten. Many duplications and poor discussions is noticed. I used to make comments directly on the manuscript.
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Durga Mani Gautam
05 May, 2026I have never used AI tools while reviewing a manuscript. In my opinion, peer reviewers should not use AI. I usually focus on the strengths and weaknesses in the manuscript.
Some manuscripts are very rough and need refinement. Many duplications and poor discussions is noticed. In my opinion, authors may use, editorial boards can use, but peer reviewers should not use. Very seldom did I make comments directly on the manuscript.
10 May, 2026
Thank you for sharing your perspective, Prof. Durga Mani Gautam. You raise an important point that peer review ultimately depends on human judgement, critical reading, and scholarly responsibility.
I also appreciate your emphasis on carefully identifying both strengths and weaknesses in a manuscript, especially when dealing with rough drafts, duplication, or weak discussion sections. Your experience adds a valuable perspective to this conversation.