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SVM Based Lung Cancer Prediction Using microRNA Expression Profiling from NGS Data

机译:使用NGS数据的microRNA表达谱分析基于SVM的肺癌预测

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microRNAs are single stranded non coding RNA sequences of 18 - 24 nucleotide length. They play an important role in post transcriptional regulation of gene expression. Last decade witnessed identification of hundreds of human microRNAs from genomic data. Experimental as well as computational identification of microRNA binding sites in messenger RNAs are also in progress. Evidences of microRNAs acting as promoter /suppressor of several diseases including cancer are being unveiled. The advancement of Next Generation Sequencing technologies with dramatic reduction in cost, opened endless applications and rapid advances in many fields related to biological science. microRNA expression profiling is a measure of relative abundance of microRNA sequences to the total number of sequences in a sample. Many experiments conducted in this kind of measure proved differential expression of microRNAs in diseased states. This paper discusses an algorithm for microRNA expression profiling, its normalization, and a Support Vector based machine learning approach to develop a Cancer Prediction System. The developed system classify samples with 97.6 % accuracy.
机译:microRNA是18-24个核苷酸长度的单链非编码RNA序列。它们在基因表达的转录后调控中起重要作用。过去十年见证了从基因组数据中鉴定出数百种人类microRNA。信使RNA中microRNA结合位点的实验和计算鉴定也正在进行中。 microRNA充当包括癌症在内的几种疾病的启动子/抑制子的证据正在被揭示。下一代测序技术的发展,大大降低了成本,开辟了无尽的应用领域,并在与生物科学有关的许多领域迅速发展。 microRNA表达谱分析是microRNA序列相对于样品中序列总数的相对丰度的一种度量。用这种方法进行的许多实验证明了微小RNA在患病状态的差异表达。本文讨论了一种用于microRNA表达谱分析的算法,其规范化以及基于支持向量的机器学习方法,以开发癌症预测系统。所开发的系统以97.6%的准确性对样品进行分类。

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