Enhancing Biomedical Semantic Annotations through a Knowledge Graph-Based Approach

Asim Abbas, Mutahira Khalid, Sebastian Chalarca, Fazel Keshtkar, S. Bukhari
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Abstract

An abundance of biomedical data is generated in the form of clinical notes, reports, and research articles available online. This data holds valuable information that requires extraction, retrieval, and transformation into actionable knowledge. However, this information has various access challenges due to the need for precise machine-interpretable semantic metadata required by search engines. Despite search engines' efforts to interpret the semantics information, they still struggle to index, search, and retrieve relevant information accurately. To address these challenges, we propose a novel graph-based semantic knowledge-sharing approach to enhance the quality of biomedical semantic annotation by engaging biomedical domain experts. In this approach, entities in the knowledge-sharing environment are interlinked and play critical roles. Authorial queries can be posted on the "Knowledge Cafe," and community experts can provide recommendations for semantic annotations. The community can further validate and evaluate the expert responses through a voting scheme resulting in a transformed "Knowledge Cafe" environment that functions as a knowledge graph with semantically linked entities. We evaluated the proposed approach through a series of scenarios, resulting in precision, recall, F1-score, and accuracy assessment matrices. Our results showed an acceptable level of accuracy at approximately 90%. The source code for "Semantically" is freely available at: https://github.com/bukharilab/Semantically        
基于知识图的生物医学语义标注方法
大量的生物医学数据以临床记录、报告和在线研究文章的形式产生。这些数据包含有价值的信息,需要提取、检索和转换为可操作的知识。然而,由于搜索引擎需要精确的机器可解释的语义元数据,这些信息具有各种访问挑战。尽管搜索引擎努力解释语义信息,但它们仍然难以准确地索引、搜索和检索相关信息。为了解决这些问题,我们提出了一种新的基于图的语义知识共享方法,通过吸引生物医学领域的专家来提高生物医学语义标注的质量。在这种方法中,知识共享环境中的实体相互联系并发挥关键作用。作者的查询可以发布在“知识咖啡馆”上,社区专家可以为语义注释提供建议。社区可以通过投票方案进一步验证和评估专家的回答,从而产生一个转换的“知识咖啡馆”环境,该环境具有语义链接实体的知识图谱。我们通过一系列场景评估了所提出的方法,得出了精度、召回率、f1分数和准确性评估矩阵。我们的结果显示,准确度在大约90%的可接受水平。“semantic”的源代码可在https://github.com/bukharilab/Semantically免费获得
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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