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Surveying alignment-free features for Ortholog detection in related yeast proteomes by using supervised big data classifiers

机译:使用有监督的大数据分类器对相关酵母蛋白质组中直向同源物检测的无比对功能进行调查

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摘要

BackgroundThe development of new ortholog detection algorithms and the improvement of existing ones are of major importance in functional genomics. We have previously introduced a successful supervised pairwise ortholog classification approach implemented in a big data platform that considered several pairwise protein features and the low ortholog pair ratios found between two annotated proteomes (Galpert, D et al., BioMed Research International, 2015). The supervised models were built and tested using a Saccharomycete yeast benchmark dataset proposed by Salichos and Rokas (2011). Despite several pairwise protein features being combined in a supervised big data approach; they all, to some extent were alignment-based features and the proposed algorithms were evaluated on a unique test set. Here, we aim to evaluate the impact of alignment-free features on the performance of supervised models implemented in the Spark big data platform for pairwise ortholog detection in several related yeast proteomes.
机译:背景技术在功能基因组学中,新的直系同源物检测算法的开发和对现有算法的改进至关重要。我们之前已经介绍了一种成功的有监督的成对直向同源物分类方法,该方法在大数据平台上实施,该方法考虑了两个成对蛋白质特征以及两个带注释的蛋白质组之间发现的低直向同源物对比率(Galpert,D et al。,BioMed Research International,2015)。使用Salichos和Rokas(2011)提出的酵母菌基准数据集构建和测试监督模型。尽管在有监督的大数据方法中结合了几个成对的蛋白质特征;所有这些都在某种程度上是基于对齐的功能,并且所提出的算法在唯一的测试集上进行了评估。在这里,我们旨在评估无对齐功能对在Spark大数据平台中实现的监督模型的性能的影响,该模型用于在多个相关酵母蛋白质组中进行成对直系同源物检测。

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