Utility of Correlation Measures in Analysis of Gene Expression

Anthony Almudevar , Lev B. Klebanov , Xing Qiu , Peter Salzman , Andrei Y. Yakovlev
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引用次数: 19

Abstract

Summary

The role of the correlation structure of gene expression data are two-fold: It is a source of complications and useful information at the same time. Ignoring the strong stochastic dependence between gene expression levels in statistical methodologies for microarray data analysis may deteriorate their performance. However, there is a host of valuable information in the correlation structure that deserves a closer look. A proper use of correlation measures can remedy deficiencies of currently practiced methods that are focused too heavily on strong effects in terms of differential expression of genes. The present paper discusses the utility of correlation measures in microarray data analysis and gene regulatory network reconstruction, along with various pitfalls in both research areas that have been uncovered in methodological studies. These issues have broad applicability to all genomic studies examining the biology, diagnosis, and treatment of neurological disorders.

相关测度在基因表达分析中的应用
基因表达数据的相关结构具有双重作用:它既是并发症的来源,同时也是有用信息的来源。在微阵列数据分析的统计方法中,忽略基因表达水平之间的强随机依赖性可能会降低其性能。然而,相关性结构中有许多有价值的信息值得仔细研究。适当使用相关措施可以弥补目前实践方法的缺陷,这些方法过于关注基因差异表达方面的强烈影响。本文讨论了相关测量在微阵列数据分析和基因调控网络重建中的应用,以及在方法学研究中发现的两个研究领域的各种陷阱。这些问题广泛适用于所有研究神经系统疾病的生物学、诊断和治疗的基因组研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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