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Novel analytical methods to interpret large sequencing data from small sample sizes

机译:新颖的分析方法可从小样本中解释大测序数据

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摘要

BackgroundTargeted therapies have greatly improved cancer patient prognosis. For instance, chronic myeloid leukemia is now well treated with imatinib, a tyrosine kinase inhibitor. Around 80% of the patients reach complete remission. However, despite its great efficiency, some patients are resistant to the drug. This heterogeneity in the response might be associated with pharmacokinetic parameters, varying between individuals because of genetic variants. To assess this issue, next-generation sequencing of large panels of genes can be performed from patient samples. However, the common problem in pharmacogenetic studies is the availability of samples, often limited. In the end, large sequencing data are obtained from small sample sizes; therefore, classical statistical analyses cannot be applied to identify interesting targets. To overcome this concern, here, we described original and underused statistical methods to analyze large sequencing data from a restricted number of samples.
机译:背景技术靶向治疗已大大改善了癌症患者的预后。例如,现在用酪氨酸激酶抑制剂伊马替尼可以很好地治疗慢性粒细胞白血病。大约80%的患者可以完全缓解。然而,尽管其效率很高,但是一些患者仍对该药有抵抗力。反应中的这种异质性可能与药代动力学参数有关,由于遗传变异,个体之间会有所不同。为了评估此问题,可以从患者样品中进行大基因组的下一代测序。但是,药物遗传学研究中的常见问题是样品的可用性,通常是有限的。最后,从小样本量获得大量测序数据。因此,经典的统计分析无法应用于识别有趣的目标。为了克服这种担忧,在这里,我们描述了原始的和未充分利用的统计方法,用于分析来自数量有限的样本的大量测序数据。

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