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A Two-Level Computation Model Based on Deep Learning Algorithm for Identification of piRNA and Their Functions via Chou's 5-Steps Rule

机译:基于深度学习算法的两级计算模型通过Chou的5步规则识别PiRNA及其函数的基础计算模型

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Piwi interacting RNA (piRNA) molecules belong to a largest class of small non coding RNA molecules which are originally discovered in animal germline cells and also occur across a variety of human somatic cells. The piRNA molecules play a significant role in many gene functions such as protecting genomic integrity, gene expression regulation and restricting the functions of transposable elements. The identification of piRNA molecules and their function types are significant for cancer cells diagnosis, drug developments and genes stability. A number of traditional machine learning methods have been proposed for identification of piRNAs and their functions. However, these methods are required a considerable amounts of human engineering and expertise to design an accurate identification model. Hence, this paper proposes a two level computational model based on deep neural network (DNN) that automatically extract informative features from RNA sequences using standard learning methods. Moreover, the proposed model employs di-nucleotide auto covariance (DAC) method along with six physiochemical properties to construct a feature vector. The performance of the proposed model has been extensively evaluated through k-fold cross-validation tests. Firstly, the performance of the proposed model is compared with commonly used classifier algorithms using benchmark dataset. Secondly, its performance is compared with the existing state-of- the-art computational models. The experimental results show that the proposed model performed better than the existing predictors with accuracy level 91.81% and 84.52% in the first level and in the second level respectively. The source code along with dataset of the proposed model is freely available at .
机译:PIWI相互作用RNA(PiRNA)分子属于最大类别的小型非编码RNA分子,其最初在动物种细胞中发现,并且在各种人体细胞中也发生。 PiRNA分子在许多基因功能中起重要作用,例如保护基因组完整性,基因表达调控并限制转移元素的功能。对癌细胞诊断,药物发育和基因稳定性的鉴定piRNA分子及其功能类型是显着的。已经提出了许多传统的机器学习方法来识别PIRNA及其功能。然而,这些方法需要大量的人力工程和专业知识来设计准确的识别模型。因此,本文提出了一种基于深神经网络(DNN)的两级计算模型,使用标准学习方法自动提取来自RNA序列的信息特征。此外,所提出的模型采用二核苷酸自动协方差(DAC)方法以及六种生理化学性质来构建特征载体。通过K折叠交叉验证测试广泛地评估所提出的模型的性能。首先,将所提出的模型的性能与常用的分类器算法进行比较,使用基准数据集。其次,将其性能与现有的最先进的计算模型进行比较。实验结果表明,所提出的模型比现有的预测因子更好地表现出在第一级和第二级的精度91.81%和84.52%。源代码以及所提出的模型的数据集可自由获取。

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