» Articles » PMID: 36043400

Multi-label Classification for Biomedical Literature: an Overview of the BioCreative VII LitCovid Track for COVID-19 Literature Topic Annotations

Abstract

The coronavirus disease 2019 (COVID-19) pandemic has been severely impacting global society since December 2019. The related findings such as vaccine and drug development have been reported in biomedical literature-at a rate of about 10 000 articles on COVID-19 per month. Such rapid growth significantly challenges manual curation and interpretation. For instance, LitCovid is a literature database of COVID-19-related articles in PubMed, which has accumulated more than 200 000 articles with millions of accesses each month by users worldwide. One primary curation task is to assign up to eight topics (e.g. Diagnosis and Treatment) to the articles in LitCovid. The annotated topics have been widely used for navigating the COVID literature, rapidly locating articles of interest and other downstream studies. However, annotating the topics has been the bottleneck of manual curation. Despite the continuing advances in biomedical text-mining methods, few have been dedicated to topic annotations in COVID-19 literature. To close the gap, we organized the BioCreative LitCovid track to call for a community effort to tackle automated topic annotation for COVID-19 literature. The BioCreative LitCovid dataset-consisting of over 30 000 articles with manually reviewed topics-was created for training and testing. It is one of the largest multi-label classification datasets in biomedical scientific literature. Nineteen teams worldwide participated and made 80 submissions in total. Most teams used hybrid systems based on transformers. The highest performing submissions achieved 0.8875, 0.9181 and 0.9394 for macro-F1-score, micro-F1-score and instance-based F1-score, respectively. Notably, these scores are substantially higher (e.g. 12%, higher for macro F1-score) than the corresponding scores of the state-of-art multi-label classification method. The level of participation and results demonstrate a successful track and help close the gap between dataset curation and method development. The dataset is publicly available via https://ftp.ncbi.nlm.nih.gov/pub/lu/LitCovid/biocreative/ for benchmarking and further development. Database URL https://ftp.ncbi.nlm.nih.gov/pub/lu/LitCovid/biocreative/.

Citing Articles

Is metadata of articles about COVID-19 enough for multilabel topic classification task?.

Xu S, Zhang Y, Chen L, An X Database (Oxford). 2024; 2024.

PMID: 39432499 PMC: 11492800. DOI: 10.1093/database/baae106.


Integrating deep learning architectures for enhanced biomedical relation extraction: a pipeline approach.

Sarol M, Hong G, Guerra E, Kilicoglu H Database (Oxford). 2024; 2024.

PMID: 39197056 PMC: 11352595. DOI: 10.1093/database/baae079.


Transformer models in biomedicine.

Madan S, Lentzen M, Brandt J, Rueckert D, Hofmann-Apitius M, Frohlich H BMC Med Inform Decis Mak. 2024; 24(1):214.

PMID: 39075407 PMC: 11287876. DOI: 10.1186/s12911-024-02600-5.


Machine learning models for abstract screening task - A systematic literature review application for health economics and outcome research.

Du J, Soysal E, Wang D, He L, Lin B, Wang J BMC Med Res Methodol. 2024; 24(1):108.

PMID: 38724903 PMC: 11080200. DOI: 10.1186/s12874-024-02224-3.


Taiyi: a bilingual fine-tuned large language model for diverse biomedical tasks.

Luo L, Ning J, Zhao Y, Wang Z, Ding Z, Chen P J Am Med Inform Assoc. 2024; 31(9):1865-1874.

PMID: 38422367 PMC: 11339499. DOI: 10.1093/jamia/ocae037.


References
1.
Huang C, Lu Z . Community challenges in biomedical text mining over 10 years: success, failure and the future. Brief Bioinform. 2015; 17(1):132-44. PMC: 4719069. DOI: 10.1093/bib/bbv024. View

2.
Wei C, Harris B, Li D, Berardini T, Huala E, Kao H . Accelerating literature curation with text-mining tools: a case study of using PubTator to curate genes in PubMed abstracts. Database (Oxford). 2012; 2012:bas041. PMC: 3500520. DOI: 10.1093/database/bas041. View

3.
Du J, Chen Q, Peng Y, Xiang Y, Tao C, Lu Z . ML-Net: multi-label classification of biomedical texts with deep neural networks. J Am Med Inform Assoc. 2019; 26(11):1279-1285. PMC: 7647240. DOI: 10.1093/jamia/ocz085. View

4.
Skrlj B, Martinc M, Lavrac N, Pollak S . autoBOT: evolving neuro-symbolic representations for explainable low resource text classification. Mach Learn. 2021; 110(5):989-1028. PMC: 8550026. DOI: 10.1007/s10994-021-05968-x. View

5.
Lee J, Yoon W, Kim S, Kim D, Kim S, So C . BioBERT: a pre-trained biomedical language representation model for biomedical text mining. Bioinformatics. 2019; 36(4):1234-1240. PMC: 7703786. DOI: 10.1093/bioinformatics/btz682. View