基于顿悟的PubMed假设驱动的二次网络挖掘

Jesmin, H. Jamil
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引用次数: 0

摘要

生物对象的不完全知识和一套通用规则可以指导PubMed文献的探索,聚合知识进行二次网络推理。Epiphany是一种新颖的文本挖掘架构,其中用户能够表达对对象的已知信息、适用于得出结论的一般规则以及期望的假设。一旦声明,Epiphany首先挖掘PubMed摘要,以生成一个可能的主要加权和注释交互网络,然后从更相关的出版物子集中生成一个次要和更高级别的交互网络。该候选网络作为最后一步二级网络预测的基础。本文描述了Epiphany作为生命科学中更高层次的文本挖掘工具的拟议架构,并提出了一个仅从文献挖掘中预测登革热病毒机制的案例研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hypothesis Driven Secondary Network Mining from PubMed Using Epiphany
Incomplete knowledge about biological objects and a universal set of rules can be used to guide the exploration of PubMed literature to aggregate knowledge for secondary network inferencing. Epiphany is a novel text mining architecture in which users are able to express what is known about an object, what general rules apply for conclusion drawing, and what hypothesis is being expected. Once stated, Epiphany mines the PubMed abstracts first to generate a possible primary weighted and annotated interaction network, and then generate a secondary and higher level interaction network from a subset of more relevant publications. This candidate network serves as a basis for secondary network prediction as a final step. This paper describes the proposed architecture of Epiphany as a higher level text mining tool in Life Sciences and presents a case study in which the mechanism of Dengue virus has been predicted solely from literature mining.
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