Artificial intelligence-aided assignment of journal submissions to associate editors-a feasibility study on IEEE transactions on medical imaging.

IF 6 4区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Xuanang Xu, Joshua Yan, Gloria Nwachukwu, Hongming Shan, Uwe Kruger, Ge Wang
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Abstract

Efficient and accurate assignment of journal submissions to suitable associate editors (AEs) is critical in maintaining review quality and timeliness, particularly in high-volume, rapidly evolving fields such as medical imaging. This study investigates the feasibility of leveraging large language models for AE-paper matching in IEEE Transactions on Medical Imaging. An AE database was curated from historical AE assignments and AE-authored publications, and extracted six key textual components from each paper title, four categories of structured keywords, and abstracts. ModernBERT was employed locally to generate high-dimensional semantic embeddings, which were then reduced using principal component analysis (PCA) for efficient similarity computation. Keyword similarity, derived from structured domain-specific metadata, and textual similarity from ModernBERT embeddings were combined to rank the candidate AEs. Experiments on internal (historical assignments) and external (AE Publications) test sets showed that keyword similarity is the dominant contributor to matching performance. Contrarily, textual similarity offers complementary gains, particularly when PCA is applied. Ablation studies confirmed that structured keywords alone provide strong matching accuracy, with titles offering additional benefits and abstracts offering minimal improvements. The proposed approach offers a practical, interpretable, and scalable tool for editorial workflows, reduces manual workload, and supports high-quality peer reviews.

Abstract Image

Abstract Image

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人工智能辅助期刊提交给副编辑的分配——IEEE医学成像交易的可行性研究。
有效和准确地将期刊投稿分配给合适的副编辑(ae)对于保持评审质量和及时性至关重要,特别是在医学成像等高容量、快速发展的领域。本研究探讨利用大型语言模型进行IEEE医学影像汇刊电子论文匹配的可行性。从AE的历史作业和AE撰写的出版物中整理出AE数据库,并从每篇论文标题、四类结构化关键词和摘要中提取出六个关键文本成分。利用ModernBERT局部生成高维语义嵌入,然后利用主成分分析(PCA)对其进行约简,实现高效的相似度计算。从结构化领域特定元数据中获得的关键字相似度和来自ModernBERT嵌入的文本相似度被结合起来对候选ae进行排名。在内部(历史作业)和外部(AE出版物)测试集上的实验表明,关键词相似度是影响匹配性能的主要因素。相反,文本相似度提供互补增益,特别是在应用PCA时。消融研究证实,结构化关键词本身提供了很强的匹配准确性,标题提供了额外的好处,摘要提供了最小的改进。所建议的方法为编辑工作流程提供了一个实用的、可解释的和可扩展的工具,减少了手工工作量,并支持高质量的同行评审。
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来源期刊
CiteScore
5.60
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0.00%
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