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基因表达数据分析。

Gene expression data analysis.

作者信息

Brazma A, Vilo J

机构信息

European Molecular Biology Laboratory, Outstation Hinxton-The European Bioinformatics Institute, Cambridge, UK.

出版信息

FEBS Lett. 2000 Aug 25;480(1):17-24. doi: 10.1016/s0014-5793(00)01772-5.

Abstract

Microarrays are one of the latest breakthroughs in experimental molecular biology, which allow monitoring of gene expression for tens of thousands of genes in parallel and are already producing huge amounts of valuable data. Analysis and handling of such data is becoming one of the major bottlenecks in the utilization of the technology. The raw microarray data are images, which have to be transformed into gene expression matrices--tables where rows represent genes, columns represent various samples such as tissues or experimental conditions, and numbers in each cell characterize the expression level of the particular gene in the particular sample. These matrices have to be analyzed further, if any knowledge about the underlying biological processes is to be extracted. In this paper we concentrate on discussing bioinformatics methods used for such analysis. We briefly discuss supervised and unsupervised data analysis and its applications, such as predicting gene function classes and cancer classification. Then we discuss how the gene expression matrix can be used to predict putative regulatory signals in the genome sequences. In conclusion we discuss some possible future directions.

摘要

微阵列是实验分子生物学领域最新的突破之一,它能够同时监测数万个基因的表达情况,并且已经产生了大量有价值的数据。此类数据的分析和处理正成为该技术应用的主要瓶颈之一。原始的微阵列数据是图像,必须将其转换为基因表达矩阵——表格中,行代表基因,列代表各种样本,如组织或实验条件,每个单元格中的数字表征特定基因在特定样本中的表达水平。如果要提取有关潜在生物学过程的任何知识,就必须对这些矩阵进行进一步分析。在本文中,我们专注于讨论用于此类分析的生物信息学方法。我们简要讨论了监督和非监督数据分析及其应用,例如预测基因功能类别和癌症分类。然后我们讨论了基因表达矩阵如何用于预测基因组序列中的假定调控信号。最后,我们讨论了一些可能的未来发展方向。

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