Journal ArticleParallel publicationPublished versionDOI: 10.48548/pubdata-3771

Reflections on the impact of artificial intelligence on peer-review practices and its implications for greener scientific evaluation

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Date of first publication2026-04-25
Date of publication in PubData 2026-06-10

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English

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Variant form of DOI: 10.1016/j.greeac.2026.100349
Fuente-Ballesteros, A., & Zuin Zeidler, V. G. (2026). Reflections on the impact of artificial intelligence on peer-review practices and its implications for greener scientific evaluation. Green Analytical Chemistry, 17, Article 100349.
Published in ISSN: 2772-5774
Green Analytical Chemistry

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Abstract

Artificial intelligence (AI) is becoming a common presence in scientific publishing, yet its use in peer-review has received much less attention than its role in manuscript preparation. This article aims to analyze the use the structural pressures that drive reviewers toward AI use, including time constraints, reviewer scarcity, and performance-based incentives. It contrasts critical human reading with automated or template-based reports, identifies recurrent signals of AI-assisted reviews, and examines their ethical, emotional, and sustainability implications. Attention is given to how AI may influence metric-based evaluations and reinforce superficial or score-driven interpretations of scientific quality. We argue that the central risk is not simply factual error, but the gradual normalization of procedural evaluation over intellectual scrutiny. As automation becomes routine, peer-review may shift from a space of critical dialogue to a system of opaque filters. To address this challenge, we propose the need for “meta-assessment” frameworks capable of evaluating not only scientific methods, but also the quality and transparency of the evaluation process itself. Moving forward, peer-review must integrate AI with human oversight and transparent standards, so that efficiency supports rather than replaces critical evaluation, contributing to greener and more sustainable practices in our community.

Keywords

Generative AI (GenAI); Large Language Models (LLMs); ChatGPT; Peer-review; Scholarly Publishing; Research Integrity; Sustainability; Green Analytical Chemistry

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