Utilizing image and caption information for biomedical document classification

Abstract Motivation Biomedical research findings are typically disseminated through publications. To simplify access to domain-specific knowledge while supporting the research community, several biomedical databases devote significant effort to manual curation of the literature—a labor intensive pro...

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Bibliographic Details
Published inBioinformatics Vol. 37; no. Supplement_1; pp. i468 - i476
Main Authors Li, Pengyuan, Jiang, Xiangying, Zhang, Gongbo, Trabucco, Juan Trelles, Raciti, Daniela, Smith, Cynthia, Ringwald, Martin, Marai, G Elisabeta, Arighi, Cecilia, Shatkay, Hagit
Format Journal Article
LanguageEnglish
Published England Oxford University Press 12.07.2021
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Summary:Abstract Motivation Biomedical research findings are typically disseminated through publications. To simplify access to domain-specific knowledge while supporting the research community, several biomedical databases devote significant effort to manual curation of the literature—a labor intensive process. The first step toward biocuration requires identifying articles relevant to the specific area on which the database focuses. Thus, automatically identifying publications relevant to a specific topic within a large volume of publications is an important task toward expediting the biocuration process and, in turn, biomedical research. Current methods focus on textual contents, typically extracted from the title-and-abstract. Notably, images and captions are often used in publications to convey pivotal evidence about processes, experiments and results. Results We present a new document classification scheme, using both image and caption information, in addition to titles-and-abstracts. To use the image information, we introduce a new image representation, namely Figure-word, based on class labels of subfigures. We use word embeddings for representing captions and titles-and-abstracts. To utilize all three types of information, we introduce two information integration methods. The first combines Figure-words and textual features obtained from captions and titles-and-abstracts into a single larger vector for document representation; the second employs a meta-classification scheme. Our experiments and results demonstrate the usefulness of the newly proposed Figure-words for representing images. Moreover, the results showcase the value of Figure-words, captions and titles-and-abstracts in providing complementary information for document classification; these three sources of information when combined, lead to an overall improved classification performance. Availability and implementation Source code and the list of PMIDs of the publications in our datasets are available upon request.
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ISSN:1367-4803
1460-2059
1367-4811
DOI:10.1093/bioinformatics/btab331