首页> 外文期刊>Journal of Chemometrics >PLS-ROG: Partial least squares with rank order of groups
【24h】

PLS-ROG: Partial least squares with rank order of groups

机译:PLS-ROG:具有组秩顺序的偏最小二乘法

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Partial least squares (PLS) have been used widely in metabolomics. Partial least squares can distinguish between groups but do not always reflect rank order of groups (eg, severity of diseases). We extended PLS by adding a differential penalty between mean of groups in PLS subspace. We named this method partial least squares with rank order of groups (PLS-ROG). The PLS-ROG can distinguish between groups and also can reflect rank order of groups. The selection of metabolites associated with a biological phenotype is highly important in metabolomics. The PLS-ROG scores are represented as linear combinations of weight and the level of each metabolite. The weight is proportional to the correlation coefficient between the score of the response variable and the metabolite level when each metabolite level is scaled to unit variance. Using this feature, we selected significantly correlated metabolites based on the scores by applying statistical hypothesis testing of factor loading in PLS-ROG. To demonstrate the practical application of PLS-ROG for metabolomic data analysis, we applied PLS-ROG 2 case studies. The PLS-ROG scores tended to be associated with the biological phenotype that we focused attention on. Metabolites correlated with PLS-ROG scores were selected, and some of these metabolites were consistent with the metabolites reported in the previously published studies from which we sourced the metabolome data. The results suggest that PLS-ROG and its statistical hypothesis testing of factor loading can be useful to interpret metabolome data with rank order of groups.
机译:偏最小二乘法(PLS)已广泛用于代谢组学。偏最小二乘法可以区分各组,但并不总是反映组的等级顺序(例如,疾病的严重程度)。我们通过在 PLS 子空间中添加组均值之间的差分惩罚来扩展 PLS。我们将此方法命名为具有组秩顺序的偏最小二乘法 (PLS-ROG)。PLS-ROG可以区分组,也可以反映组的排名顺序。与生物表型相关的代谢物的选择在代谢组学中非常重要。PLS-ROG 分数表示为重量和每种代谢物水平的线性组合。当每个代谢物水平缩放为单位方差时,权重与响应变量分数与代谢物水平之间的相关系数成正比。使用此功能,我们通过应用PLS-ROG中因子负荷的统计假设检验,根据分数选择显着相关的代谢物。为了证明PLS-ROG在代谢组学数据分析中的实际应用,我们应用了PLS-ROG 2案例研究。PLS-ROG评分往往与我们关注的生物表型相关。选择了与PLS-ROG评分相关的代谢物,其中一些代谢物与先前发表的研究中报告的代谢物一致,我们从中获取代谢组数据。结果表明,PLS-ROG及其因子载量的统计假设检验有助于解释具有组级顺序的代谢组数据。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号