从科学文献中提取基因与黑色素瘤关系的注释数据集。

IF 1.6 3区 工程技术 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Roberto Zanoli, Alberto Lavelli, Theresa Löffler, Nicolas Andres Perez Gonzalez, Fabio Rinaldi
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引用次数: 1

摘要

背景:黑色素瘤是最不常见但最致命的皮肤癌之一。当细胞的基因受损或失效时,这种癌症就开始了,识别与黑色素瘤有关的基因对于理解黑色素瘤的肿瘤发生至关重要。每年都有成千上万的关于人类黑色素瘤的出版物出现。然而,虽然数据的生物管理是昂贵和耗时的,但迄今为止,机器学习在从文本中提取基因-黑色素瘤关系方面的应用受到缺乏注释资源的严重限制。结果:为了克服黑素瘤资源的不足,我们利用黑素瘤基因数据库(melanoma Gene Database, MGDB)的信息,自动构建PubMed摘要中出现的基因与黑素瘤实体之间二元关系的注释数据集。这些实体由最先进的文本挖掘工具自动注释。它们的注释包括提及文本范围和规范化概念标识符。实体之间的关系在概念和提及级别进行注释。概念级注释是利用MGDB中基因的信息产生的,以确定在整个摘要中基因与黑色素瘤概念之间是否存在关系。该数据集的可利用性通过传统的机器学习和基于神经网络的模型(如BERT)进行了测试。这些模型随后被用于从生物医学文献中自动提取基因与黑色素瘤的关系。当前的大多数模型使用目标实体的上下文感知表示来建立它们之间的关系。为了方便研究人员进行实验,我们生成了一个提及级注释来支持概念级注释。提及级注释是通过自动链接基因和黑色素瘤同时出现在MGDB中建立基因与黑色素瘤关联的句子中的提及而生成的。结论:本文提出了一个包含基因-黑色素瘤注释关系的语料库。此外,它还讨论了实验,这些实验显示了这种语料库对于训练能够从文献中挖掘基因-黑色素瘤关系的系统的有用性。研究人员可以使用语料库开发和比较他们自己的模型,并产生可能与现有结构化知识数据库集成的结果,这反过来又可能促进医学研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

An annotated dataset for extracting gene-melanoma relations from scientific literature.

An annotated dataset for extracting gene-melanoma relations from scientific literature.

An annotated dataset for extracting gene-melanoma relations from scientific literature.

An annotated dataset for extracting gene-melanoma relations from scientific literature.

Background: Melanoma is one of the least common but the deadliest of skin cancers. This cancer begins when the genes of a cell suffer damage or fail, and identifying the genes involved in melanoma is crucial for understanding the melanoma tumorigenesis. Thousands of publications about human melanoma appear every year. However, while biological curation of data is costly and time-consuming, to date the application of machine learning for gene-melanoma relation extraction from text has been severely limited by the lack of annotated resources.

Results: To overcome this lack of resources for melanoma, we have exploited the information of the Melanoma Gene Database (MGDB, a manually curated database of genes involved in human melanoma) to automatically build an annotated dataset of binary relations between gene and melanoma entities occurring in PubMed abstracts. The entities were automatically annotated by state-of-the-art text-mining tools. Their annotation includes both the mention text spans and normalized concept identifiers. The relations among the entities were annotated at concept- and mention-level. The concept-level annotation was produced using the information of the genes in MGDB to decide if a relation holds between a gene and melanoma concept in the whole abstract. The exploitability of this dataset was tested with both traditional machine learning, and neural network-based models like BERT. The models were then used to automatically extract gene-melanoma relations from the biomedical literature. Most of the current models use context-aware representations of the target entities to establish relations between them. To facilitate researchers in their experiments we generated a mention-level annotation in support to the concept-level annotation. The mention-level annotation was generated by automatically linking gene and melanoma mentions co-occurring within the sentences that in MGDB establish the association of the gene with melanoma.

Conclusions: This paper presents a corpus containing gene-melanoma annotated relations. Additionally, it discusses experiments which show the usefulness of such a corpus for training a system capable of mining gene-melanoma relationships from the literature. Researchers can use the corpus to develop and compare their own models, and produce results which might be integrated with existing structured knowledge databases, which in turn might facilitate medical research.

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来源期刊
Journal of Biomedical Semantics
Journal of Biomedical Semantics MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
4.20
自引率
5.30%
发文量
28
审稿时长
30 weeks
期刊介绍: Journal of Biomedical Semantics addresses issues of semantic enrichment and semantic processing in the biomedical domain. The scope of the journal covers two main areas: Infrastructure for biomedical semantics: focusing on semantic resources and repositories, meta-data management and resource description, knowledge representation and semantic frameworks, the Biomedical Semantic Web, and semantic interoperability. Semantic mining, annotation, and analysis: focusing on approaches and applications of semantic resources; and tools for investigation, reasoning, prediction, and discoveries in biomedicine.
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