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Scaling up data curation using deep learning: An application to literature triage in genomic variation resources

Author

Listed:
  • Kyubum Lee
  • Maria Livia Famiglietti
  • Aoife McMahon
  • Chih-Hsuan Wei
  • Jacqueline Ann Langdon MacArthur
  • Sylvain Poux
  • Lionel Breuza
  • Alan Bridge
  • Fiona Cunningham
  • Ioannis Xenarios
  • Zhiyong Lu

Abstract

Manually curating biomedical knowledge from publications is necessary to build a knowledge based service that provides highly precise and organized information to users. The process of retrieving relevant publications for curation, which is also known as document triage, is usually carried out by querying and reading articles in PubMed. However, this query-based method often obtains unsatisfactory precision and recall on the retrieved results, and it is difficult to manually generate optimal queries. To address this, we propose a machine-learning assisted triage method. We collect previously curated publications from two databases UniProtKB/Swiss-Prot and the NHGRI-EBI GWAS Catalog, and used them as a gold-standard dataset for training deep learning models based on convolutional neural networks. We then use the trained models to classify and rank new publications for curation. For evaluation, we apply our method to the real-world manual curation process of UniProtKB/Swiss-Prot and the GWAS Catalog. We demonstrate that our machine-assisted triage method outperforms the current query-based triage methods, improves efficiency, and enriches curated content. Our method achieves a precision 1.81 and 2.99 times higher than that obtained by the current query-based triage methods of UniProtKB/Swiss-Prot and the GWAS Catalog, respectively, without compromising recall. In fact, our method retrieves many additional relevant publications that the query-based method of UniProtKB/Swiss-Prot could not find. As these results show, our machine learning-based method can make the triage process more efficient and is being implemented in production so that human curators can focus on more challenging tasks to improve the quality of knowledge bases.Author summary: As the volume of literature on genomic variants continues to grow at an increasing rate, it is becoming more difficult for a curator of a variant knowledge base to keep up with and curate all the published papers. Here, we suggest a deep learning-based literature triage method for genomic variation resources. Our method achieves state-of-the-art performance on the triage task. Moreover, our model does not require any laborious preprocessing or feature engineering steps, which are required for traditional machine learning triage methods. We applied our method to the literature triage process of UniProtKB/Swiss-Prot and the NHGRI-EBI GWAS Catalog for genomic variation by collaborating with the database curators. Both the manual curation teams confirmed that our method achieved higher precision than their previous query-based triage methods without compromising recall. Both results show that our method is more efficient and can replace the traditional query-based triage methods of manually curated databases. Our method can give human curators more time to focus on more challenging tasks such as actual curation as well as the discovery of novel papers/experimental techniques to consider for inclusion.

Suggested Citation

  • Kyubum Lee & Maria Livia Famiglietti & Aoife McMahon & Chih-Hsuan Wei & Jacqueline Ann Langdon MacArthur & Sylvain Poux & Lionel Breuza & Alan Bridge & Fiona Cunningham & Ioannis Xenarios & Zhiyong Lu, 2018. "Scaling up data curation using deep learning: An application to literature triage in genomic variation resources," PLOS Computational Biology, Public Library of Science, vol. 14(8), pages 1-14, August.
  • Handle: RePEc:plo:pcbi00:1006390
    DOI: 10.1371/journal.pcbi.1006390
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    References listed on IDEAS

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    1. Hayda Almeida & Marie-Jean Meurs & Leila Kosseim & Greg Butler & Adrian Tsang, 2014. "Machine Learning for Biomedical Literature Triage," PLOS ONE, Public Library of Science, vol. 9(12), pages 1-21, December.
    2. Philip E. Bourne & Jon R. Lorsch & Eric D. Green, 2015. "Perspective: Sustaining the big-data ecosystem," Nature, Nature, vol. 527(7576), pages 16-17, November.
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