分析不一致性促进生物分子数据库整合

Y. Chen, Qingfeng Chen
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引用次数: 5

摘要

生物数据库的快速增长不仅为生物学家提供了丰富的数据,而且在数据分析方面也提出了巨大的挑战。许多数据分析方法,如数据挖掘、信息检索和机器学习,已被用于从不同的生物数据库中提取频繁的模式。但是,由于数据库结构及其术语的差异,这些差异导致了互操作性的严重缺乏。尽管基于本体论的方法已被用于整合生物数据库,但生物数据库的不一致分析却被大大忽视了。本文提出了一种测量生物数据库间不一致程度的方法。它不仅为正确、高效地集成数据库提供了指导,而且为数据挖掘和知识发现提供了高质量的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing Inconsistency Toward Enhancing Integration of Biological Molecular Databases
The rapid growth of biological databases not only provides biologists with abundant data but also presents a big challenge in relation to the analysis of data. Many data analysis approaches such as data mining, information retrieval and machine learning have been used to extract frequent patterns from diverse biological databases. However, the discrepancies, due to the differences in the structure of databases and their terminologies, result in a significant lack of interoperability. Although ontology-based approaches have been used to integrate biological databases, the inconsistent analysis of biological databases has been greatly disregarded. This paper presents a method by which to measure the degree of inconsistency between biological databases. It not only presents a guideline for correct and efficient database integration, but also exposes high quality data for data mining and knowledge discovery.
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