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Analysis of Expression Pattern of snoRNAs in Different Cancer Types with Machine Learning Algorithms

机译:机器学习算法分析不同癌症类型中snoRNA的表达模式

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摘要

Small nucleolar RNAs (snoRNAs) are a new type of functional small RNAs involved in the chemical modifications of rRNAs, tRNAs, and small nuclear RNAs. It is reported that they play important roles in tumorigenesis via various regulatory modes. snoRNAs can both participate in the regulation of methylation and pseudouridylation and regulate the expression pattern of their host genes. This research investigated the expression pattern of snoRNAs in eight major cancer types in TCGA via several machine learning algorithms. The expression levels of snoRNAs were first analyzed by a powerful feature selection method, Monte Carlo feature selection (MCFS). A feature list and some informative features were accessed. Then, the incremental feature selection (IFS) was applied to the feature list to extract optimal features/snoRNAs, which can make the support vector machine (SVM) yield best performance. The discriminative snoRNAs included HBII-52-14, HBII-336, SNORD123, HBII-85-29, HBII-420, U3, HBI-43, SNORD116, SNORA73B, SCARNA4, HBII-85-20, etc., on which the SVM can provide a Matthew’s correlation coefficient (MCC) of 0.881 for predicting these eight cancer types. On the other hand, the informative features were fed into the Johnson reducer and repeated incremental pruning to produce error reduction (RIPPER) algorithms to generate classification rules, which can clearly show different snoRNAs expression patterns in different cancer types. The analysis results indicated that extracted discriminative snoRNAs can be important for identifying cancer samples in different types and the expression pattern of snoRNAs in different cancer types can be partly uncovered by quantitative recognition rules.
机译:小核仁RNA(snoRNA)是一种新型的功能性小RNA,涉及rRNA,tRNA和小核RNA的化学修饰。据报道,它们通过各种调节模式在肿瘤发生中起重要作用。 snoRNA既可以参与甲基化和伪尿苷酸的调节,又可以调节其宿主基因的表达模式。这项研究通过几种机器学习算法研究了sgaRNA在TCGA中的八种主要癌症类型中的表达模式。 snoRNA的表达水平首先通过功能强大的特征选择方法蒙特卡洛特征选择(MCFS)分析。访问了功能列表和一些有用的功能。然后,将增量特征选择(IFS)应用于特征列表以提取最佳特征/ snoRNA,这可以使支持向量机(SVM)产生最佳性能。区分性snoRNAs包括HBII-52-14,HBII-336,SNORD123,HBII-85-29,HBII-420,U3,HBI-43,SNORD116,SNORA73B,SCARNA4,HBII-85-20等。 SVM可以提供0.881的马修相关系数(MCC)来预测这八种癌症类型。另一方面,将信息特征输入到Johnson减速器中,并重复进行增量修剪以产生错误减少(RIPPER)算法以生成分类规则,该规则可以清楚地显示不同癌症类型中不同snoRNA的表达模式。分析结果表明,提取出的区别性snoRNA对鉴定不同类型的癌症样品可能很重要,而定量识别规则可能会部分掩盖不同癌症类型中snoRNA的表达模式。

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