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LitMC-BERT: Transformer-Based Multi-Label Classification of Biomedical Literature With An Application on COVID-19 Literature Curation

Qingyu Chen, Jingcheng Du, Alexis Allot, Zhiyong Lu

2022IEEE/ACM Transactions on Computational Biology and Bioinformatics39 citationsDOIOpen Access PDF

Abstract

The rapid growth of biomedical literature poses a significant challenge for curation and interpretation. This has become more evident during the COVID-19 pandemic. LitCovid, a literature database of COVID-19 related papers in PubMed, has accumulated over 200,000 articles with millions of accesses. Approximately 10,000 new articles are added to LitCovid every month. A main curation task in LitCovid is topic annotation where an article is assigned with up to eight topics, e.g., Treatment and Diagnosis. The annotated topics have been widely used both in LitCovid (e.g., accounting for ∼18% of total uses) and downstream studies such as network generation. However, it has been a primary curation bottleneck due to the nature of the task and the rapid literature growth. This study proposes LITMC-BERT, a transformer-based multi-label classification method in biomedical literature. It uses a shared transformer backbone for all the labels while also captures label-specific features and the correlations between label pairs. We compare LITMC-BERT with three baseline models on two datasets. Its micro-F1 and instance-based F1 are 5% and 4% higher than the current best results, respectively, and only requires ∼18% of the inference time than the Binary BERT baseline. The related datasets and models are available via https://github.com/ncbi/ml-transformer.

Topics & Concepts

Computer scienceBottleneckTransformerInferenceAnnotationCoronavirus disease 2019 (COVID-19)Natural language processingBaseline (sea)Artificial intelligenceInformation retrievalF1 scoreMachine learningBiologyMedicineDiseaseFisheryInfectious disease (medical specialty)Embedded systemVoltageQuantum mechanicsPhysicsPathologyBiomedical Text Mining and OntologiesTopic ModelingNatural Language Processing Techniques
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