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How Machine Learning Methods Helped Find Putative Rye Wax Genes Among GBS Data

机译:机器学习方法如何帮助在GBS数据中找到推定的Rye蜡基因

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摘要

The standard approach to genetic mapping was supplemented by machine learning (ML) to establish the location of the rye gene associated with epicuticular wax formation (glaucous phenotype). Over 180 plants of the biparental F2 population were genotyped with the DArTseq (sequencing-based diversity array technology). A maximum likelihood (MLH) algorithm (JoinMap 5.0) and three ML algorithms: logistic regression (LR), random forest and extreme gradient boosted trees (XGBoost), were used to select markers closely linked to the gene encoding wax layer. The allele conditioning the nonglaucous appearance of plants, derived from the cultivar Karlikovaja Zelenostebelnaja, was mapped at the chromosome 2R, which is the first report on this localization. The DNA sequence of DArT-Silico 3585843, closely linked to wax segregation detected by using ML methods, was indicated as one of the candidates controlling the studied trait. The putative gene encodes the ABCG11 transporter.
机译:遗传映射的标准方法由机器学习(ML)补充,以建立与弹性蜡形成相关的黑麦基因的位置(无光表型)。在Dartseq(基于排序的多样性阵列技术)的基因分型超过180株植物。最大可能性(MLH)算法(JOINMAP 5.0)和三毫升算法:Logistic回归(LR),随机森林和极端梯度提升树(XGBoost),用于选择与编码蜡层的基因密切相关的标记。等位基因调节植物的Nonglaucous外观来自品种Karlikovaja Zelenostebelnaja,在2R染色体上映射,这是该本地化的第一个报告。用ML方法检测到与蜡偏析接近地连接的Dart-Silico 3585843的DNA序列,作为控制所研究的特征的候选者之一。推定基因编码ABCG11转运蛋白。

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