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SDEAP: a splice graph based differential transcript expression analysis tool for population data

机译:SDEAP:基于剪接图的差异转录表达分析工具,用于总体数据

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Motivation: Differential transcript expression (DTE) analysis without predefined conditions is critical to biological studies. For example, it can be used to discover biomarkers to classify cancer samples into previously unknown subtypes such that better diagnosis and therapy methods can be developed for the subtypes. Although several DTE tools for population data, i.e. data without known biological conditions, have been published, these tools either assume binary conditions in the input population or require the number of conditions as a part of the input. Fixing the number of conditions to binary is unrealistic and may distort the results of a DTE analysis. Estimating the correct number of conditions in a population could also be challenging for a routine user. Moreover, the existing tools only provide differential usages of exons, which may be insufficient to interpret the patterns of alternative splicing across samples and restrains the applications of the tools from many biology studies.
机译:动机:没有预定条件的差异转录表达(DTE)分析对生物学研究至关重要。例如,它可以用于发现生物标记物,以将癌症样品分类为以前未知的亚型,从而可以为亚型开发更好的诊断和治疗方法。尽管已经发布了几种用于人口数据的DTE工具,即没有已知生物学条件的数据,但这些工具要么假定输入群体中存在二进制条件,要么要求条件数量作为输入的一部分。将条件数量固定为二进制是不现实的,并且可能会使DTE分析的结果失真。对于普通用户来说,估计人群中正确的疾病数量也可能是一项挑战。而且,现有工具仅提供外显子的不同用法,这可能不足以解释样品之间的可变剪接模式,并限制了许多生物学研究中工具的应用。

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