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Computational Approaches for Identifying Cancer miRNA Expressions

机译:识别癌症miRNA表达的计算方法

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摘要

MicroRNAs (miRNAs) play a major role in cancer development and also act as a key factor in many other diseases. In this investigation, we propose three methods for handling miRNA expressions. The first two methods determine whether a miRNA is indicating normal or cancer condition, and the third one determines how many miRNAs are supporting the cancer sample/patient. While Method 1 acts as a two-class classifier and is based on normalized average expression value, Method 2 also does the same and is based on the normalized average intraclass distance. Method 3 checks whether a miRNA belongs to the cancer class or not, provides the percentage of supporting miRNAs for a cancer patient, and is based on weighted normalized average intraclass distance. The values of the weights are determined using exhaustive search by maximizing the accuracy in training samples. The proposed methods are tested on the differentially regulated miRNAs in three types of cancers (breast, colon, and melanoma cancer). The performances of Method 1 and Method 2 are evaluated by F score, Matthews Correlation Coefficient (MCC), and plotting “1 − specificity versus sensitivity” in Receiver Operating Characteristic (ROC) space and are found to be superior to the kNN and SVM classifiers for breast, colon, and melanoma cancer data sets. It is also observed that both the sensitivity and the specificity of Method 1 and Method 2 are higher than 0.5. For the same data sets, Method 3 achieved an average accuracy of more than 98% in detecting the miRNAs, supporting the cancer condition.
机译:微小RNA(miRNA)在癌症发展中起着重要作用,并且也是许多其他疾病的关键因素。在这项调查中,我们提出了三种处理miRNA表达的方法。前两种方法确定miRNA是指示正常还是癌症,而第三种方法确定有多少miRNA支持癌症样本/患者。方法1充当两类分类器,并且基于归一化的平均表达式值,而方法2也是基于分类器的归一化平均类内距离。方法3检查miRNA是否属于癌症类别,为癌症患者提供支持miRNA的百分比,并基于加权归一化平均类内距离。通过使训练样本的准确性最大化来使用穷举搜索来确定权重的值。在三种类型的癌症(乳腺癌,结肠癌和黑色素瘤癌症)中,对差异调控的miRNA进行了测试,验证了所提出的方法。方法1和方法2的性能通过F得分,马修斯相关系数(MCC)以及在接收器工作特征(ROC)空间中绘制“ 1-特异性与灵敏度”进行评估,并且发现其优于kNN和SVM分类器乳腺癌,结肠癌和黑色素瘤的数据集。还观察到方法1和方法2的灵敏度和特异性均高于0.5。对于相同的数据集,方法3在检测支持癌症状况的miRNA时达到了98%以上的平均准确度。

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