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Complementary feature selection from alternative splicing events and gene expression for phenotype prediction

机译:从替代剪接事件和基因表达中选择辅助特征以进行表型预测

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Motivation: A central task of bioinformatics is to develop sensitive and specific means of providing medical prognoses from biomarker patterns. Common methods to predict phenotypes in RNA-Seq datasets utilize machine learning algorithms trained via gene expression. Isoforms, however, generated from alternative splicing, may provide a novel and complementary set of transcripts for phenotype prediction. In contrast to gene expression, the number of isoforms increases significantly due to numerous alternative splicing patterns, resulting in a prioritization problem for many machine learning algorithms. This study identifies the empirically optimal methods of transcript quantification, feature engineering and filtering steps using phenotype prediction accuracy as a metric. At the same time, the complementary nature of gene and isoform data is analyzed and the feasibility of identifying isoforms as biomarker candidates is examined.
机译:动机:生物信息学的中心任务是开发灵敏而具体的手段,以根据生物标志物模式提供医学预后。预测RNA-Seq数据集中表型的常用方法是利用通过基因表达训练的机器学习算法。但是,由替代剪接产生的同工型可以为表型预测提供一组新颖且互补的转录本。与基因表达相反,由于许多替代的剪接模式,同工型的数量显着增加,从而导致许多机器学习算法的优先级问题。本研究使用表型预测准确性作为度量标准,确定了转录本定量,特征工程和过滤步骤的经验最优方法。同时,分析了基因和同工型数据的互补性,并检验了鉴定同工型为生物标志物候选物的可行性。

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