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A compressed sensing based approach for subtyping of leukemia from gene expression data

机译:基于压缩感测的基因表达数据中白血病亚型分析方法

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With the development of genomic techniques, the demand for new methods that can handle high-throughput genome-wide data effectively is becoming stronger than ever before. Compressed sensing (CS) is an emerging approach in statistics and signal processing. With the CS theory, a signal can be uniquely reconstructed or approximated from its sparse representations, which can therefore better distinguish different types of signals. However, the application of CS approach to genome-wide data analysis has been rarely investigated. We propose a novel CS-based approach for genomic data classification and test its performance in the subtyping of leukemia through gene expression analysis. The detection of subtypes of cancers such as leukemia according to different genetic markups is significant, which holds promise for the individualization of therapies and improvement of treatments. In our work, four statistical features were employed to select significant genes for the classification. With our selected genes out of 7,129 ones, the proposed CS method achieved a classification accuracy of 97.4% when evaluated with the cross validation and 94.3% when evaluated with another independent data set. The robustness of the method to noise was also tested, giving good performance. Therefore, this work demonstrates that the CS method can effectively detect subtypes of leukemia, implying improved accuracy of diagnosis of leukemia.
机译:随着基因组技术的发展,对能够有效处理高通量全基因组数据的新方法的需求比以往任何时候都强。压缩感知(CS)是统计和信号处理中的一种新兴方法。使用CS理论,可以从信号的稀疏表示中唯一地重建或近似一个信号,因此可以更好地区分不同类型的信号。然而,很少研究CS方法在全基因组数据分析中的应用。我们提出了一种基于CS的新型基因组数据分类方法,并通过基因表达分析测试了其在白血病亚型分析中的表现。根据不同的遗传标记来检测诸如白血病之类的癌症亚型具有重要意义,这为治疗的个体化和治疗的改善提供了希望。在我们的工作中,采用了四个统计特征来选择重要的基因进行分类。利用我们从7,129个基因中选择的基因,提出的CS方法通过交叉验证评估时的分类准确度为97.4%,而使用另一个独立数据集进行评估的分类准确度为94.3%。还测试了该方法对噪声的鲁棒性,从而提供了良好的性能。因此,这项工作证明了CS方法可以有效地检测白血病的亚型,这意味着提高了诊断白血病的准确性。

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