Charlotte Nachtegael, Jacopo De Stefani, Anthony Cnudde, Tom Lenaerts
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To overcome the hurdles associated with the number of unlabelled instances and the cost of expertise, active learning (AL) was used to optimize the annotation, thus getting assistance in finding the most informative subset of samples to label. By pre-annotating 85 full-text articles containing the relevant relations from the Oligogenic Diseases Database (OLIDA) with PubTator, text fragments featuring potential digenic variant combinations, i.e. gene-variant-gene-variant, were extracted. The resulting fragments of texts were annotated with ALAMBIC, an AL-based annotation platform. The resulting dataset, called DUVEL, is used to fine-tune four state-of-the-art biomedical language models: BiomedBERT, BiomedBERT-large, BioLinkBERT and BioM-BERT. More than 500 000 text fragments were considered for annotation, finally resulting in a dataset with 8442 fragments, 794 of them being positive instances, covering 95% of the original annotated articles. 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引用次数: 0
摘要
生物医学关系提取(bioRE)数据集有助于开发支持从文本中提取单个变异体的生物化方法,但尽管有文献报道不同位点(或基因)变异体组合之间的表观效应对了解疾病病因很重要,但目前还没有数据集可用于提取双基因甚至寡基因变异体关系。这项工作展示了一个独特的寡源变异组合数据集的创建过程,该数据集旨在培训有助于科学文献整理的工具。为了克服与未标注实例数量和专业知识成本相关的障碍,我们采用了主动学习(AL)来优化标注,从而帮助找到信息量最大的标注样本子集。通过使用 PubTator 对包含寡核苷酸疾病数据库(OLIDA)中相关关系的 85 篇全文文章进行预标注,提取出具有潜在二基因变异组合(即基因-变异体-基因-变异体)特征的文本片段。由此产生的文本片段使用基于 AL 的注释平台 ALAMBIC 进行注释。得到的数据集称为 DUVEL,用于微调四种最先进的生物医学语言模型:BiomedBERT、BiomedBERT-large、BioLinkBERT 和 BioM-BERT。在标注过程中考虑了 500 000 多个文本片段,最终形成了一个包含 8442 个片段的数据集,其中 794 个为正例,覆盖了原始标注文章的 95%。在应用于基因变异对检测时,BiomedBERT-large 在微调后获得了最高的 F1 分数(0.84),与未微调的模型相比有了显著改善,突出了 DUVEL 数据集的相关性。这项研究显示了 AL 如何在创建生物RE 数据集的过程中发挥重要作用,使其适用于生物医学研究应用。DUVEL 提供了一个独特的生物医学语料库,侧重于两个基因和两个变体之间的 4ary 关系。该语料库在 GitHub 和 Hugging Face 上免费供研究使用。数据库网址:https://huggingface.co/datasets/cnachteg/duvel 或 https://doi.org/10.57967/hf/1571。
DUVEL: an active-learning annotated biomedical corpus for the recognition of oligogenic combinations.
While biomedical relation extraction (bioRE) datasets have been instrumental in the development of methods to support biocuration of single variants from texts, no datasets are currently available for the extraction of digenic or even oligogenic variant relations, despite the reports in literature that epistatic effects between combinations of variants in different loci (or genes) are important to understand disease etiologies. This work presents the creation of a unique dataset of oligogenic variant combinations, geared to train tools to help in the curation of scientific literature. To overcome the hurdles associated with the number of unlabelled instances and the cost of expertise, active learning (AL) was used to optimize the annotation, thus getting assistance in finding the most informative subset of samples to label. By pre-annotating 85 full-text articles containing the relevant relations from the Oligogenic Diseases Database (OLIDA) with PubTator, text fragments featuring potential digenic variant combinations, i.e. gene-variant-gene-variant, were extracted. The resulting fragments of texts were annotated with ALAMBIC, an AL-based annotation platform. The resulting dataset, called DUVEL, is used to fine-tune four state-of-the-art biomedical language models: BiomedBERT, BiomedBERT-large, BioLinkBERT and BioM-BERT. More than 500 000 text fragments were considered for annotation, finally resulting in a dataset with 8442 fragments, 794 of them being positive instances, covering 95% of the original annotated articles. When applied to gene-variant pair detection, BiomedBERT-large achieves the highest F1 score (0.84) after fine-tuning, demonstrating significant improvement compared to the non-fine-tuned model, underlining the relevance of the DUVEL dataset. This study shows how AL may play an important role in the creation of bioRE dataset relevant for biomedical curation applications. DUVEL provides a unique biomedical corpus focusing on 4-ary relations between two genes and two variants. It is made freely available for research on GitHub and Hugging Face. Database URL: https://huggingface.co/datasets/cnachteg/duvel or https://doi.org/10.57967/hf/1571.