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Detecting somatic mutations in genomic sequences by means of Kolmogorov–Arnold analysis

机译:通过Kolmogorov-Arnold分析检测基因组序列中的体细胞突变

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The Kolmogorov–Arnold stochasticity parameter technique is applied for the first time to the study of cancer genome sequencing, to reveal mutations. Using data generated by next-generation sequencing technologies, we have analysed the exome sequences of brain tumour patients with matched tumour and normal blood. We show that mutations contained in sequencing data can be revealed using this technique, thus providing a new methodology for determining subsequences of given length containing mutations, i.e. its value differs from those of subsequences without mutations. A potential application for this technique involves simplifying the procedure of finding segments with mutations, speeding up genomic research and accelerating its implementation in clinical diagnostics. Moreover, the prediction of a mutation associated with a family of frequent mutations in numerous types of cancers based purely on the value of the Kolmogorov function indicates that this applied marker may recognize genomic sequences that are in extremely low abundance and can be used in revealing new types of mutations.
机译:Kolmogorov-Arnold随机参数技术首次用于癌症基因组测序的研究,以揭示突变。使用下一代测序技术生成的数据,我们分析了具有匹配的肿瘤和正常血液的脑肿瘤患者的外显子组序列。我们证明了使用该技术可以揭示测序数据中包含的突变,从而为确定包含突变的给定长度的子序列提供了一种新的方法,即其值不同于没有突变的子序列。该技术的潜在应用包括简化寻找具有突变的片段的过程,加快基因组研究并加速其在临床诊断中的实施。此外,仅基于Kolmogorov功能的值来预测与多种癌症中的频繁突变家族相关的突变,表明该应用的标记可能识别出极低丰度的基因组序列,可用于揭示新的突变类型。

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