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Identify Huntington’s disease associated genes based on restricted Boltzmann machine with RNA-seq data

机译:根据受限的Boltzmann机和RNA-seq数据鉴定亨廷顿舞蹈病相关基因

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Background Predicting disease-associated genes is helpful for understanding the molecular mechanisms during the disease progression. Since the pathological mechanisms of neurodegenerative diseases are very complex, traditional statistic-based methods are not suitable for identifying key genes related to the disease development. Recent studies have shown that the computational models with deep structure can learn automatically the features of biological data, which is useful for exploring the characteristics of gene expression during the disease progression. Results In this paper, we propose a deep learning approach based on the restricted Boltzmann machine to analyze the RNA-seq data of Huntington’s disease, namely stacked restricted Boltzmann machine (SRBM). According to the SRBM, we also design a novel framework to screen the key genes during the Huntington’s disease development. In this work, we assume that the effects of regulatory factors can be captured by the hierarchical structure and narrow hidden layers of the SRBM. First, we select disease-associated factors with different time period datasets according to the differentially activated neurons in hidden layers. Then, we select disease-associated genes according to the changes of the gene energy in SRBM at different time periods. Conclusions The experimental results demonstrate that SRBM can detect the important information for differential analysis of time series gene expression datasets. The identification accuracy of the disease-associated genes is improved to some extent using the novel framework. Moreover, the prediction precision of disease-associated genes for top ranking genes using SRBM is effectively improved compared with that of the state of the art methods.
机译:背景技术预测疾病相关基因有助于理解疾病进展过程中的分子机制。由于神经退行性疾病的病理机制非常复杂,因此传统的基于统计的方法不适用于识别与疾病发展相关的关键基因。最近的研究表明,具有深层结构的计算模型可以自动学习生物学数据的特征,这对于探索疾病进展过程中基因表达的特征非常有用。结果在本文中,我们提出了一种基于受限玻尔兹曼机的深度学习方法来分析亨廷顿氏病的RNA-seq数据,即堆叠受限玻尔兹曼机(SRBM)。据SRBM称,我们还设计了一个新颖的框架来筛查亨廷顿氏病发展过程中的关键基因。在这项工作中,我们假设可以通过SRBM的层次结构和狭窄的隐藏层来捕获调节因素的影响。首先,我们根据隐藏层中差异激活的神经元选择具有不同时间段数据集的疾病相关因素。然后,根据不同时期SRBM基因能量的变化,选择与疾病相关的基因。结论实验结果表明,SRBM可以检测到重要信息,用于时间序列基因表达数据集的差异分析。使用该新型框架,与疾病相关的基因的鉴定准确性得到了一定程度的提高。此外,与现有技术方法相比,有效提高了使用SRBM的疾病相关基因对排名最高的基因的预测精度。

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