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一种使用外显子和HTA阵列识别差异剪接的随机效应模型(REIDS)。

A random effects model for the identification of differential splicing (REIDS) using exon and HTA arrays.

作者信息

Van Moerbeke Marijke, Kasim Adetayo, Talloen Willem, Reumers Joke, Göhlmann Hinrick W H, Shkedy Ziv

机构信息

Interuniversity Institute for Biostatistics and Statistical Bioinformatics, Hasselt University, Hasselt, 3500, Belgium.

Wolfson Research Institute for Health and Wellbeing, Durham University, Durham, UK.

出版信息

BMC Bioinformatics. 2017 May 25;18(1):273. doi: 10.1186/s12859-017-1687-8.

Abstract

BACKGROUND

Alternative gene splicing is a common phenomenon in which a single gene gives rise to multiple transcript isoforms. The process is strictly guided and involves a multitude of proteins and regulatory complexes. Unfortunately, aberrant splicing events do occur which have been linked to genetic disorders, such as several types of cancer and neurodegenerative diseases (Fan et al., Theor Biol Med Model 3:19, 2006). Therefore, understanding the mechanism of alternative splicing and identifying the difference in splicing events between diseased and healthy tissue is crucial in biomedical research with the potential of applications in personalized medicine as well as in drug development.

RESULTS

We propose a linear mixed model, Random Effects for the Identification of Differential Splicing (REIDS), for the identification of alternative splicing events. Based on a set of scores, an exon score and an array score, a decision regarding alternative splicing can be made. The model enables the ability to distinguish a differential expressed gene from a differential spliced exon. The proposed model was applied to three case studies concerning both exon and HTA arrays.

CONCLUSION

The REIDS model provides a work flow for the identification of alternative splicing events relying on the established linear mixed model. The model can be applied to different types of arrays.

摘要

背景

可变剪接是一种常见现象,即单个基因可产生多种转录异构体。该过程受到严格调控,涉及众多蛋白质和调控复合物。不幸的是,确实会发生异常剪接事件,这些事件与遗传疾病有关,如多种类型的癌症和神经退行性疾病(Fan等人,《理论生物学与医学模型》3:19,2006年)。因此,了解可变剪接机制并识别患病组织和健康组织之间剪接事件的差异,在生物医学研究中至关重要,具有在个性化医疗以及药物开发中应用的潜力。

结果

我们提出了一种线性混合模型,即用于识别差异剪接的随机效应模型(REIDS),以识别可变剪接事件。基于一组分数,即外显子分数和阵列分数,可以做出关于可变剪接的决策。该模型能够区分差异表达基因和差异剪接外显子。所提出的模型应用于三个关于外显子阵列和HTA阵列的案例研究。

结论

REIDS模型提供了一种基于已建立的线性混合模型来识别可变剪接事件的工作流程。该模型可应用于不同类型的阵列。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a021/5445373/7bf2f13436da/12859_2017_1687_Fig1_HTML.jpg

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