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DeepED: A Deep Learning Framework for Estimating Evolutionary Distances

机译:深化:估算进化距离的深度学习框架

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Evolutionary distances refer to the number of substitutions per site in two aligned nucleotide or amino acid sequences, which reflect divergence time and are much significant for phylogenetic inferences. In the past several decades, lots of molecular evolution models have been proposed for evolutionary distance estimation. Most of these models are designed under more or less assumptions and some assumptions are in good agreement with some real-world data but not all. To relax these assumptions and improve accuracies in evolutionary distance estimation, this paper proposes a framework containing Deep Neural Networks (DNNs), called DeepED (Deep learning method to estimate Evolutionary Distances), to estimate evolutionary distances for aligned DNA sequence pairs. The purposely designed structure in this framework enables it to handle long and variable length sequences as well as to find important segments in a sequence. The models of the network are trained with reliable data from real world which includes highly credible phylogenetic inferences. Experimental results demonstrate that DeepED models achieve a accuracy up to 0.98 (R-Squared), which outperforms traditional methods.
机译:进化距离是指两种对齐的核苷酸或氨基酸序列中每个位点的替代数量,其反映发散时间并对系统发育推断有很大意义。在过去几十年中,已经提出了许多分子演化模型用于进化距离估计。这些模型中的大多数都是在或多或少的假设下设计的,并且一些假设与一些真实世界的数据很好,但并非所有的。为了放松这些假设并提高进化距离估计中的精度,提出了一种包含深神经网络(DNN)的框架,称为深度(深度学习方法以估计进化距离),以估计对准DNA序列对的进化距离。本框架中的故意设计的结构使其能够处理长期和可变的长度序列以及在序列中找到重要的段。网络模型培训,具有来自现实世界的可靠数据,包括高度可信的系统发育推断。实验结果表明,深度模型可实现高达0.98(R角)的精度,这优于传统方法。

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