首页> 外文会议>Proceedings of the Eighth ACM SIGKDD international conference on knowledge discovery and data mining(KDD-2000) >Mining heterogeneous gene expression data with time lagged recurrent neural networks
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Mining heterogeneous gene expression data with time lagged recurrent neural networks

机译:利用时滞递归神经网络挖掘异构基因表达数据

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Heterogeneous types of gene expressions may provide a better insight into the biological role of gene interaction with the environment, disease development and drug effect at the molecular level. In this paper for both exploring and prediction purposes a Time Lagged Recurrent Neural Network with trajectory learning is proposed for identifying and classifying the gene functional patterns from the heterogeneous nonlinear time series microarray experiments. The proposed procedures identify gene functional patterns from the dynamics of a state-trajectory learned in the heterogeneous time series and the gradient information over time. Also, the trajectory learning with Back-propagation through time algorithm can recognize gene expression patterns vary over time. This may reveal much more information about the regulatory network underlying gene expressions. The analyzed data were extracted from spotted DNA microarrays in the budding yeast expression measurements, produced by Eisen et al. The gene matrixcontained 79 experiments over a variety of heterogeneous experiment conditions. The number of recognized gene patterns in our study ranged from two to ten and were divided into three cases. Optimal network architectures with different memory structures were selected based on Akaike and Bayesian information statistical criteria using two-way factorial design. The optimal model performance was compared to other popular gene classification algorithms such as Nearest Neighbor, Support Vector Machine, and Self-Organized Map. The reliability of the performance was verified with multiple iterated runs.
机译:基因表达的异质类型可以更好地洞察基因与环境相互作用的生物学作用,疾病发展以及在分子水平上的药物作用。在本文中,出于探索和预测目的,提出了一种具有轨迹学习的时滞递归神经网络,用于从异构非线性时间序列微阵列实验中识别和分类基因功能模式。所提出的程序从异质时间序列中学习到的状态轨迹的动力学以及随时间变化的梯度信息中识别基因功能模式。此外,通过时间反向传播算法进行轨迹学习可以识别基因表达模式随时间变化的情况。这可能会揭示有关基因表达基础调控网络的更多信息。分析数据是从Eisen等人在发芽酵母表达测量中从斑点DNA微阵列中提取的。基因基质包含在各种异质实验条件下的79个实验。在我们的研究中,公认的基因模式数量从2到10不等,分为3种情况。使用双向因子设计,根据Akaike和贝叶斯信息统计标准选择具有不同内存结构的最佳网络体系结构。将最佳模型性能与其他流行的基因分类算法(例如,最近邻居,支持向量机和自组织图)进行了比较。通过多次重复运行验证了性能的可靠性。

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