Semantic indexing of biomedical literature is usually done at the level of MeSH descriptors, representing topics of interest for the biomedical community. Several related but distinct biomedical concepts are often grouped together in a single coarse-grained descriptor and are treated as a single topic for semantic indexing. This study proposes a new method for the automated refinement of subject annotations at the level of concepts, investigating deep learning approaches. Lacking labelled data for this task, our method relies on weak supervision based on concept occurrence in the abstract of an article. The proposed approach is evaluated on an extended large-scale retrospective scenario, taking advantage of concepts that eventually become MeSH descriptors, for which annotations become available in MEDLINE/PubMed. The results suggest that concept occurrence is a strong heuristic for automated subject annotation refinement and can be further enhanced when combined with dictionary-based heuristics. In addition, such heuristics can be useful as weak supervision for developing deep learning models that can achieve further improvement in some cases.
翻译:生物医学文献的语义索引通常在MesHH描述器一级进行,它代表生物医学界感兴趣的专题。一些相关但独特的生物医学概念往往被归为单一粗略描述器,并被当作一个单一的语义索引专题处理。本研究报告提出了在概念一级自动完善主题说明的新方法,调查深层学习方法。缺乏这项任务的标签数据,我们的方法依靠基于文章抽象概念发生情况的薄弱监督。拟议方法在扩大的大规模回顾情景下进行评估,利用最终成为MESH描述器的概念,MEDLINE/PubMed对此作了说明。研究结果表明,概念的发生是自动描述改进的强烈的超脂质,如果与基于字典的文理学相结合,可以进一步强化。此外,这种超自然学可以作为薄弱监督的薄弱环节,用来开发可以在某些情况下实现进一步改进的深层次学习模式。