Biases in small RNA deep sequencing data

被引:159
作者
Raabe, Carsten A. [1 ]
Tang, Thean-Hock [2 ]
Brosius, Juergen [1 ]
Rozhdestvensky, Timofey S. [1 ]
机构
[1] Univ Munster, Inst Expt Pathol ZMBE, D-48149 Munster, Germany
[2] Univ Sains Malaysia, Adv Med & Dent Inst AMDI, George Town 13200, Malaysia
关键词
RIBONUCLEIC-ACID LIGASE; GENE-EXPRESSION; MOLECULAR-BIOLOGY; VIBRIO-CHOLERAE; MESSENGER-RNA; IDENTIFICATION; PCR; POLYMERASE; MICRORNAS; TRANSCRIPTOME;
D O I
10.1093/nar/gkt1021
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
High-throughput RNA sequencing (RNA-seq) is considered a powerful tool for novel gene discovery and fine-tuned transcriptional profiling. The digital nature of RNA-seq is also believed to simplify meta-analysis and to reduce background noise associated with hybridization-based approaches. The development of multiplex sequencing enables efficient and economic parallel analysis of gene expression. In addition, RNA-seq is of particular value when low RNA expression or modest changes between samples are monitored. However, recent data uncovered severe bias in the sequencing of small non-protein coding RNA (small RNA-seq or sRNA-seq), such that the expression levels of some RNAs appeared to be artificially enhanced and others diminished or even undetectable. The use of different adapters and barcodes during ligation as well as complex RNA structures and modifications drastically influence cDNA synthesis efficacies and exemplify sources of bias in deep sequencing. In addition, variable specific RNA G/C-content is associated with unequal polymerase chain reaction amplification efficiencies. Given the central importance of RNA-seq to molecular biology and personalized medicine, we review recent findings that challenge small non-protein coding RNA-seq data and suggest approaches and precautions to overcome or minimize bias.
引用
收藏
页码:1414 / 1426
页数:13
相关论文
共 114 条
[1]   Bacteriophage observations and evolution [J].
Ackermann, HW .
RESEARCH IN MICROBIOLOGY, 2003, 154 (04) :245-251
[2]   Analyzing and minimizing PCR amplification bias in Illumina sequencing libraries [J].
Aird, Daniel ;
Ross, Michael G. ;
Chen, Wei-Sheng ;
Danielsson, Maxwell ;
Fennell, Timothy ;
Russ, Carsten ;
Jaffe, David B. ;
Nusbaum, Chad ;
Gnirke, Andreas .
GENOME BIOLOGY, 2011, 12 (02)
[3]   Barcoding bias in high-throughput multiplex sequencing of miRNA [J].
Alon, Shahar ;
Vigneault, Francois ;
Eminaga, Seda ;
Christodoulou, Danos C. ;
Seidman, Jonathan G. ;
Church, George M. ;
Eisenberg, Eli .
GENOME RESEARCH, 2011, 21 (09) :1506-1511
[4]   microRNAs: Tiny regulators with great potential [J].
Ambros, V .
CELL, 2001, 107 (07) :823-826
[5]   Expression in bladder transitional cell carcinoma by real-time quantitative reverse transcription polymerase chain reaction array of 65 genes at the tumor suppressor locus 9q34.1-2: Identification of 5 candidates tumor suppressor genes [J].
Amira, N ;
Cancel-Tassin, G ;
Bernardin, S ;
Cochand-Priolliet, B ;
Bittard, H ;
Mangin, P ;
Fournier, G ;
Latil, A ;
Cussenot, O .
INTERNATIONAL JOURNAL OF CANCER, 2004, 111 (04) :539-542
[6]   The Coded Functions of Noncoding RNAs for Gene Regulation [J].
An, Sojin ;
Song, Ji-Joon .
MOLECULES AND CELLS, 2011, 31 (06) :491-496
[7]  
[Anonymous], REGULATORY RNAS
[8]   Identification and characterization of small RNAs involved in RNA silencing [J].
Aravin, A ;
Tuschl, T .
FEBS LETTERS, 2005, 579 (26) :5830-5840
[9]   Analysis of microRNA signatures using size-coded ligation-mediated PCR [J].
Arefian, Ehsan ;
Kiani, Jafar ;
Soleimani, Masoud ;
Shariati, S. Ali M. ;
Aghaee-Bakhtiari, Seyed Hamid ;
Atashi, Amir ;
Gheisari, Yousof ;
Ahmadbeigi, Naser ;
Banaei-Moghaddam, Ali M. ;
Naderi, Mahmood ;
Namvarasl, Nabiolah ;
Good, Liam ;
Faridani, Omid R. .
NUCLEIC ACIDS RESEARCH, 2011, 39 (12) :e80
[10]   MicroRNA profiling: separating signal from noise [J].
Baker, Monya .
NATURE METHODS, 2010, 7 (09) :687-692