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Log-Sum Heuristic Recovery for Automated Isoform Discovery and Abundance Estimation from RNA-Seq data

机译:从Log-Sum启发式恢复中自动进行亚型发现和RNA-Seq数据的丰度估算

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The recent RNA-Seq technology brings computational challenges in transcriptome assembly and analysis. Lasso-type methods were designed to address the ambiguity and unidentifiability issues in isoform discovery and abundance estimation from RNA-Seq data. However, typical Lasso-type methods are confined to taking the l norm to approximate the desired l norm, but such approximation has been shown to be limited in analytical performance and modeling of the specific computational problem. The isoform discovery and quantification tasks still face the challenge of high-level false positiveegative predictions. In this paper, we propose the Log-Sum Heuristic Recovery for Automated Isoform Discovery and Abundance Estimation method, which is attempted at a closer approximation to the l norm and more effective modeling of the parsimony principle involved in isoform discovery. The method is applied to transcriptome analysis with RNA-Seq data. Both simulation and real data experiments demonstrate that the proposed method is promising to be an effective computational tool for isoform discovery and quantification.
机译:最新的RNA-Seq技术给转录组组装和分析带来了计算难题。套索类型的方法旨在解决异构体发现和RNA-Seq数据的丰度估计中的歧义和无法识别的问题。但是,典型的套索类型方法仅限于采用l范数逼近所需的l范数,但是这种近似已显示出在分析性能和特定计算问题的建模方面受到限制。同工型发现和定量任务仍然面临高级假阳性/阴性预测的挑战。在本文中,我们提出了用于自动同工型发现和丰度估计的对数和启发式恢复,该方法试图更接近于l范数,并且更有效地建模了同工型发现中涉及的简约原理。该方法适用于具有RNA-Seq数据的转录组分析。仿真和实际数据实验均表明,该方法有望成为一种有效的异构体发现和定量计算工具。

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