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Time Series Modeling for Phenotypic Prediction and Phenotype-Genotype Mapping Using Neural Networks

机译:基于神经网络的表型预测和表型基因型映射的时间序列建模

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Image-based high throughput plant phenotyping refers to the process of computing phenotypes non-destructively by analyzing images of plants captured at regular time intervals. The non-invasive measurements of phenotypes at multiple timestamps during a plant's life cycle provides the motivation to extend the application of time series modeling in the field of phenomic research to (1) predict phenotypes for missing imaging days or for a time in the future based on analyzing past measurements; (2) predict a derived or composite phenotype from its one or more constituents and (3) bridge the phenotype-genotype gap to contribute in the study of improved crop breeding and understanding the genetic regulation of temporal variation of phenotypes. The paper uses long short-term memory, a variant of recurrent neural networks, for phenotype-genotype mapping, while autoregressive neural networks, autoregressive neural network with exogenous input and non-linear input output neural networks are used for phenotypic prediction. The experimental analyses on the benchmark dataset called Phenoseries dataset show the efficacy and future prospects of this foundational study.
机译:基于图像的高通量植物表型是指通过分析定时间隔捕获的植物图像来计算表型的过程。在植物生命周期期间多时的表型的非侵入性测量提供了扩展时间序列建模在现象研究领域的应用,以预测缺失成像天或未来的时间的预测表型分析过去测量; (2)从其一种或多种成分和(3)桥接表型基因型间隙的衍生或复合表型,以有助于改善作物育种和理解表型时间变异的遗传调节。本文采用长期内记忆,复发性神经网络的变体,用于表型 - 基因型映射,而自向性神经网络,具有外源输入和非线性输入输出神经网络的自回归神经网络用于表型预测。代表数据集的实验分析称为食谱数据集显示了该基础研究的疗效和未来前景。

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