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A random sampling approach for robust estimation of tissue-to-plasma ratio from extremely sparse data

机译:一种从极稀疏数据中可靠估计组织与血浆比率的随机采样方法

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摘要

This study was performed to develop a new nonparametric approach for the estimation of robust tissue-to-plasma ratio from extremely sparsely sampled paired data (ie, one sample each from plasma and tissue per subject). Tissue-to-plasma ratio was estimated from paired/unpaired experimental data using independent time points approach, area under the curve (AUC) values calculated with the naive data averaging approach, and AUC values calculated using sampling based approaches (eg, the pseudoprofile-based bootstrap [PpbB] approach and the random sampling approach [our proposed approach]). The random sampling approach involves the use of a 2-phase algorithm. The convergence of the sampling/resampling approaches was investigated, as well as the robustness of the estimates produced by different approaches. To evaluate the latter, new data sets were generated by introducing outlier(s) into the real data set. One to 2 concentration values were inflated by 10% to 40% from their original values to produce the outliers. Tissue-to-plasma ratios computed using the independent time points approach varied between 0 and 50 across time points. The ratio obtained from AUC values acquired using the naive data averaging approach was not associated with any measure of uncertainty or variability. Calculating the ratio without regard to pairing yielded poorer estimates. The random sampling and pseudoprofile-based bootstrap approaches yielded tissue-to-plasma ratios with uncertainty and variability. However, the random sampling approach, because of the 2-phase nature of its algorithm, yielded more robust estimates and required fewer replications. Therefore, a 2-phase random sampling approach is proposed for the robust estimation of tissue-to-plasma ratio from extremely sparsely sampled data.
机译:进行这项研究是为了开发一种新的非参数方法,用于从极为稀疏的配对数据(即每个受试者的血浆和组织各取一个样品)来估计鲁棒的组织与血浆的比率。使用独立的时间点方法,成对/未成对的实验数据,通过朴素的数据平均方法计算得出的曲线下面积(AUC)值以及使用基于采样的方法计算得出的AUC值(例如,引导程序[PpbB]方法和随机抽样方法[我们建议的方法])。随机采样方法涉及使用2相算法。研究了采样/重采样方法的收敛性,以及不同方法产生的估计值的稳健性。为了评估后者,通过将异常值引入真实数据集来生成新的数据集。将一到两个浓度值从其原始值增加10%到40%,以产生离群值。使用独立时间点方法计算的组织与血浆的比率在各个时间点之间介于0和50之间。使用朴素的数据平均方法从AUC值获得的比率与不确定性或可变性的任何度量均无关。计算比率而不考虑配对会产生较差的估计。随机采样和基于伪轮廓的自举方法产生具有不确定性和可变性的组织与血浆比率。但是,由于随机采样方法的算法具有两阶段性,因此产生了更可靠的估计,并且所需的重复次数更少。因此,提出了一种两阶段随机采样方法,用于从极其稀疏的采样数据中可靠地估计组织与血浆的比率。

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