Data Mining Based Collaborative Analysis of Microarray Data

G. Tsiliki, S. Kossida, Natalja Friesen, S. Rüping, M. Tzagarakis, N. Karacapilidis
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引用次数: 1

Abstract

Biomedical research has recently seen a vast growth in publicly and instantly available information, which are often complementary or overlapping. As the available resources become more specialized, there is a growing need for multidisciplinary collaborations between biomedical researchers to address complex research questions. We present an application of a data-mining algorithm to gene-expression data in a collaborative decision-making support environment, as a typical example of how multidisciplinary researchers can collaborate in analyzing and biologically interpreting gene-expression micro array data. Through the proposed approach, researchers can easily decide about which data repositories should be considered, analyze the algorithmic results, discuss the weaknesses of the patterns identified, and set up new iterations of the data mining algorithm by defining other descriptive attributes or integrating other relevant data.
基于数据挖掘的微阵列数据协同分析
生物医学研究最近看到了公开和即时可用信息的巨大增长,这些信息往往是互补或重叠的。随着可用资源变得更加专业化,生物医学研究人员之间越来越需要多学科合作来解决复杂的研究问题。我们提出了一种数据挖掘算法在协同决策支持环境中对基因表达数据的应用,作为多学科研究人员如何合作分析和生物学解释基因表达微阵列数据的典型例子。通过提出的方法,研究人员可以很容易地决定应该考虑哪些数据存储库,分析算法结果,讨论识别出的模式的弱点,并通过定义其他描述性属性或集成其他相关数据来建立新的数据挖掘算法迭代。
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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