Differential Expression Analysis for RNA-Seq: An Overview of Statistical Methods and Computational Software
Author(s) -
Huei–Chung Huang,
Yi Niu,
LiXuan Qin
Publication year - 2015
Publication title -
cancer informatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.606
H-Index - 31
ISSN - 1176-9351
DOI - 10.4137/cin.s21631
Subject(s) - dna microarray , computer science , computational biology , profiling (computer programming) , software , data science , identification (biology) , data mining , gene expression profiling , bioinformatics , gene expression , biology , gene , genetics , botany , programming language , operating system
Deep sequencing has recently emerged as a powerful alternative to microarrays for the high-throughput profiling of gene expression. In order to account for the discrete nature of RNA sequencing data, new statistical methods and computational tools have been developed for the analysis of differential expression to identify genes that are relevant to a disease such as cancer. In this paper, it is thus timely to provide an overview of these analysis methods and tools. For readers with statistical background, we also review the parameter estimation algorithms and hypothesis testing strategies used in these methods.
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