Suppr超能文献

套索法——一种用于非线性混合效应模型中预测协变量模型构建的新方法。

The lasso--a novel method for predictive covariate model building in nonlinear mixed effects models.

作者信息

Ribbing Jakob, Nyberg Joakim, Caster Ola, Jonsson E Niclas

机构信息

Department of Pharmaceutical Biosciences, Division of Pharmacokinetics and Drug Therapy, Uppsala University, Box 591, 75124 Uppsala, Sweden.

出版信息

J Pharmacokinet Pharmacodyn. 2007 Aug;34(4):485-517. doi: 10.1007/s10928-007-9057-1. Epub 2007 May 22.

Abstract

Covariate models for population pharmacokinetics and pharmacodynamics are often built with a stepwise covariate modelling procedure (SCM). When analysing a small dataset this method may produce a covariate model that suffers from selection bias and poor predictive performance. The lasso is a method suggested to remedy these problems. It may also be faster than SCM and provide a validation of the covariate model. The aim of this study was to implement the lasso for covariate selection within NONMEM and to compare this method to SCM. In the lasso all covariates must be standardised to have zero mean and standard deviation one. Subsequently, the model containing all potential covariate-parameter relations is fitted with a restriction: the sum of the absolute covariate coefficients must be smaller than a value, t. The restriction will force some coefficients towards zero while the others are estimated with shrinkage. This means in practice that when fitting the model the covariate relations are tested for inclusion at the same time as the included relations are estimated. For a given SCM analysis, the model size depends on the P-value required for selection. In the lasso the model size instead depends on the value of t which can be estimated using cross-validation. The lasso was implemented as an automated tool using PsN. The method was compared to SCM in 16 scenarios with different dataset sizes, number of investigated covariates and starting models for the covariate analysis. Hundred replicate datasets were created by resampling from a PK-dataset consisting of 721 stroke patients. The two methods were compared primarily on the ability to predict external data, estimate their own predictive performance (external validation), and on the computer run-time. In all 16 scenarios the lasso predicted external data better than SCM with any of the studied P-values (5%, 1% and 0.1%), but the benefit was negligible for large datasets. The lasso cross-validation provided a precise and nearly unbiased estimate of the actual prediction error. On a single processor, the lasso was faster than SCM. Further, the lasso could run completely in parallel whereas SCM must run in steps. In conclusion, the lasso is superior to SCM in obtaining a predictive covariate model on a small dataset or on small subgroups (e.g. rare genotype). Run in parallel the lasso could be much faster than SCM. Using cross-validation, the lasso provides a validation of the covariate model and does not require the user to specify a P-value for selection.

摘要

群体药代动力学和药效学的协变量模型通常采用逐步协变量建模程序(SCM)构建。在分析小数据集时,该方法可能会产生存在选择偏倚且预测性能较差的协变量模型。套索法是一种被建议用于解决这些问题的方法。它可能也比SCM更快,并能对协变量模型进行验证。本研究的目的是在NONMEM中实现套索法进行协变量选择,并将该方法与SCM进行比较。在套索法中,所有协变量必须进行标准化处理,使其均值为零且标准差为1。随后,对包含所有潜在协变量 - 参数关系的模型进行拟合,并施加一个限制条件:绝对协变量系数的总和必须小于一个值t。该限制条件会迫使一些系数趋近于零,而其他系数则进行收缩估计。这实际上意味着在拟合模型时,协变量关系在被估计的同时也在接受是否纳入的检验。对于给定的SCM分析,模型大小取决于选择所需的P值。而在套索法中,模型大小则取决于t的值,t值可通过交叉验证来估计。套索法通过PsN实现为一个自动化工具。在16种不同数据集大小、所研究协变量数量以及协变量分析起始模型的场景下,将该方法与SCM进行了比较。通过从一个由721名中风患者组成的PK数据集中进行重采样,创建了100个重复数据集。主要从预测外部数据的能力、估计自身预测性能(外部验证)以及计算机运行时间这几个方面对这两种方法进行了比较。在所有16种场景中,对于任何研究的P值(5%、1%和0.1%),套索法预测外部数据的能力都优于SCM,但对于大数据集而言,这种优势微不足道。套索法交叉验证能够对实际预测误差提供精确且几乎无偏的估计。在单个处理器上,套索法比SCM更快。此外,套索法可以完全并行运行,而SCM必须分步运行。总之,在小数据集或小子组(如罕见基因型)上获得预测性协变量模型时,套索法优于SCM。并行运行时,套索法可能比SCM快得多。通过交叉验证,套索法能对协变量模型进行验证,且无需用户指定选择的P值。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验