Marco-Puche Guillermo, Lois Sergio, Benítez Javier, Trivino Juan Carlos
Bioinformatics Group, Sistemas Genómicos, Paterna, Spain.
Human Genetics Group, Spanish National Cancer Research Center, Madrid, Spain.
Front Genet. 2019 Nov 12;10:1152. doi: 10.3389/fgene.2019.01152. eCollection 2019.
In recent years, high-throughput next-generation sequencing technology has allowed a rapid increase in diagnostic capacity and precision through different bioinformatics processing algorithms, tools, and pipelines. The identification, annotation, and classification of sequence variants within different target regions are now considered a gold standard in clinical genetic diagnosis. However, this procedure lacks the ability to link regulatory events such as differential splicing to diseases. RNA-seq is necessary in clinical routine in order to interpret and detect among others splicing events and splicing variants, as it would increase the diagnostic rate by up to 10-35%. The transcriptome has a very dynamic nature, varying according to tissue type, cellular conditions, and environmental factors that may affect regulatory events such as splicing and the expression of genes or their isoforms. RNA-seq offers a robust technical analysis of this complexity, but it requires a profound knowledge of computational/statistical tools that may need to be adjusted depending on the disease under study. In this article we will cover RNA-seq analyses best practices applied to clinical routine, bioinformatics procedures, and present challenges of this approach.
近年来,高通量下一代测序技术通过不同的生物信息学处理算法、工具和流程,使诊断能力和精度迅速提高。不同目标区域内序列变异的识别、注释和分类现在被视为临床基因诊断的金标准。然而,这一程序缺乏将诸如可变剪接等调控事件与疾病联系起来的能力。在临床常规中,RNA测序对于解释和检测剪接事件及剪接变体等是必要的,因为它可将诊断率提高10%至35%。转录组具有非常动态的性质,会根据组织类型、细胞状况以及可能影响调控事件(如剪接和基因或其异构体的表达)的环境因素而变化。RNA测序为这种复杂性提供了强大的技术分析,但它需要对计算/统计工具的深入了解,这些工具可能需要根据所研究的疾病进行调整。在本文中,我们将介绍应用于临床常规的RNA测序分析最佳实践、生物信息学程序以及这种方法面临的挑战。