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通过使用多个独立实验室确定的多种肿瘤生长测量方法,改进了在患者来源的异种移植模型中对候选抗癌药物的药物筛选测试。

Improved drug-screening tests of candidate anti-cancer drugs in patient-derived xenografts through use of numerous measures of tumor growth determined in multiple independent laboratories.

作者信息

Rosenzweig Elizabeth, Axelrod David E, Gordon Derek

机构信息

Department of Genetics and Institute of Quantitative Biomedicine, Rutgers-The State University of New Jersey, Piscataway, New Jersey, United States of America.

Department of Genetics, Human Genetics Institute, and Cancer Institute of New Jersey, Rutgers-The State University of New Jersey, Piscataway, New Jersey, United States of America.

出版信息

PLoS One. 2025 Jun 18;20(6):e0324141. doi: 10.1371/journal.pone.0324141. eCollection 2025.

Abstract

BACKGROUND

Researchers screen candidate anti-cancer drugs for their ability to inhibit tumor growth in patient-derived xenografts (PDXs). Typically, a single laboratory will use a single measure of tumor growth.

PURPOSE

An effective drug-screening test as one that correctly identifies whether a drug treatment inhibits or does not inhibit tumor growth. We document improvements in the experimental design and statistical analysis of drug-screening tests based on the criteria of sensitivity and specificity.

METHODS

We analyzed two published datasets. The response of each PDX model was known in advance. This information provided for statistical ground-truth classification. One dataset analyzed growth inhibition in the presence of one specific drug treatment for two PDX tumor models for numerous labs. A second dataset reported tumor growth of many PDX models in the presence of many drugs. A PDX model for which the treatment showed no tumor growth inhibition is referred to as Progressive Disease (PD). A PDX model for which the treatment showed complete tumor growth inhibition is referred to as Completely Responsive (CR). We created and analyzed four drug-screening tests, based on p-values for either a single-measure and single-lab, or p-values from meta-analysis and multiple-test correction. The outcome of each screening test was that either the drug treatment was effective or it was not. For both datasets, we computed median sensitivities and specificities by applying bootstrap resampling, and specification of a significance level.

RESULTS

Our results showed that drug screening tests utilizing p-values from meta-analysis of numerous labs, or multiple test correction, produced median sensitivities and specificities that were always at least as high as those for the Single-Measure, Single-Lab test. This result was true for all significance levels. The 95% confidence intervals were usually greater in length for the Single-Measure, Single-Lab screening test.

摘要

背景

研究人员筛选候选抗癌药物,以评估其抑制患者来源异种移植瘤(PDX)生长的能力。通常,单个实验室会采用单一的肿瘤生长测量方法。

目的

有效的药物筛选测试应能正确识别药物治疗是否抑制肿瘤生长。我们依据敏感性和特异性标准,记录了药物筛选测试在实验设计和统计分析方面的改进。

方法

我们分析了两个已发表的数据集。每个PDX模型的反应预先已知。此信息用于统计真实分类。一个数据集分析了众多实验室针对两种PDX肿瘤模型在一种特定药物治疗下的生长抑制情况。另一个数据集报告了多种药物存在时许多PDX模型的肿瘤生长情况。治疗后未显示肿瘤生长抑制的PDX模型称为疾病进展(PD)。治疗后显示完全肿瘤生长抑制的PDX模型称为完全缓解(CR)。我们基于单测量和单实验室的p值,或荟萃分析和多重检验校正的p值,创建并分析了四种药物筛选测试。每个筛选测试的结果是药物治疗是否有效。对于这两个数据集,我们通过应用自助重采样和显著性水平的设定来计算中位数敏感性和特异性。

结果

我们的结果表明,利用众多实验室荟萃分析的p值或多重检验校正的药物筛选测试产生的中位数敏感性和特异性始终至少与单测量、单实验室测试的一样高。在所有显著性水平下都是如此。单测量、单实验室筛选测试的95%置信区间通常长度更大。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7534/12176186/43db87ab6492/pone.0324141.g001.jpg

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