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一种探索生物医学知识网络中隐式概念相关性的方法。

A method for exploring implicit concept relatedness in biomedical knowledge network.

作者信息

Bai Tian, Gong Leiguang, Wang Ye, Wang Yan, Kulikowski Casimir A, Huang Lan

机构信息

College of Computer Science and Technology, Jilin Univesity, 2699 Qianjin St, Changchun, China.

Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education, Jilin University, 2699 Qianjin St, Changchun, China.

出版信息

BMC Bioinformatics. 2016 Jul 19;17 Suppl 9(Suppl 9):265. doi: 10.1186/s12859-016-1131-5.

Abstract

BACKGROUND

Biomedical information and knowledge, structural and non-structural, stored in different repositories can be semantically connected to form a hybrid knowledge network. How to compute relatedness between concepts and discover valuable but implicit information or knowledge from it effectively and efficiently is of paramount importance for precision medicine, and a major challenge facing the biomedical research community.

RESULTS

In this study, a hybrid biomedical knowledge network is constructed by linking concepts across multiple biomedical ontologies as well as non-structural biomedical knowledge sources. To discover implicit relatedness between concepts in ontologies for which potentially valuable relationships (implicit knowledge) may exist, we developed a Multi-Ontology Relatedness Model (MORM) within the knowledge network, for which a relatedness network (RN) is defined and computed across multiple ontologies using a formal inference mechanism of set-theoretic operations. Semantic constraints are designed and implemented to prune the search space of the relatedness network.

CONCLUSIONS

Experiments to test examples of several biomedical applications have been carried out, and the evaluation of the results showed an encouraging potential of the proposed approach to biomedical knowledge discovery.

摘要

背景

存储在不同知识库中的生物医学信息和知识,无论是结构化的还是非结构化的,都可以在语义上相互关联,形成一个混合知识网络。如何有效且高效地计算概念之间的相关性,并从中发现有价值但隐含的信息或知识,这对于精准医学至关重要,也是生物医学研究界面临的一项重大挑战。

结果

在本研究中,通过跨多个生物医学本体以及非结构化生物医学知识源链接概念,构建了一个混合生物医学知识网络。为了发现本体中概念之间可能存在潜在有价值关系(隐含知识)的隐含相关性,我们在知识网络中开发了一种多本体相关性模型(MORM),为此使用集合论运算的形式推理机制在多个本体之间定义并计算相关性网络(RN)。设计并实施了语义约束,以修剪相关性网络的搜索空间。

结论

已经进行了测试多个生物医学应用示例的实验,结果评估表明所提出的生物医学知识发现方法具有令人鼓舞的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7518/4959351/0928eeef2194/12859_2016_1131_Fig1_HTML.jpg

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