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Statistical Methods for Dose-Response Assays.

机译:剂量反应分析的统计方法。

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摘要

Dose-response assays are a common and increasingly high throughput method of assessing the toxicity of potential drug targets on test populations of cells. Such assays typically involve serial dilutions of the compounds in question applied to cell samples to determine the level of cell activity across a broad range of concentrations. Another factor in such experiments may be the change in activity under different enzyme combinations and the use of controls to adjust for interassay variations. Typically, the decreasing number in the population of cells due to increasing concentrations of the drug can be modeled with a logistic curve. Since the appropriate range of concentrations of the drug to test in order to see these reactions cannot be predetermined fully, frequently the data available for a given experimental unit may not be enough to fit such curves on their own successfully. Instead, the assay data as a whole can be successfully analyzed with methods such as constrained fitting and mixed effects models, where each set can borrow strength from each other in order to be fitted while still taking into account individual significances of the specific experiment.;This dissertation illustrates variations of such methods on three major datasets from the Joe Gray lab at Lawrence Berkeley National Laboratory, the Douglas Clark lab at the Department of Chemical Engineering at UC Berkeley, and Bionovo, Inc. of Emeryville, California. The first dataset from breast cancer cell line testing involves the estimation of the National Cancer Institute concentration parameter called GI50, the concentration of the drug at which it inhibits the growth of the population of cells by half. We develop a method utilizing replicate data to estimate this parameter. The second dataset involves the estimation of a more commonly used concentration parameter called the IC50, which doesn't take into account the initial cell population, on special assays that mimic the liver metabolism in the body. The methods involve mixed effects models that incorporate the specific enzyme conditions and types of cells important to the experiment. The third dataset, involving different effects of plant compounds on an osteosarcoma cell line, illustrates the usage of negative and positive controls to appropriately adjust the observations for interassay variation.
机译:剂量反应测定法是一种常见且日益提高的通量方法,用于评估潜在药物靶标对细胞测试群体的毒性。此类测定法通常涉及将所讨论的化合物应用于细胞样品的系列稀释液,以确定在广泛浓度范围内的细胞活性水平。此类实验中的另一个因素可能是在不同酶组合下的活性变化,以及使用对照来调整批间差异。通常,可以用对数曲线来模拟由于药物浓度增加而导致的细胞群数量减少。由于不能完全预先确定要观察这些反应而要测试的药物浓度的适当范围,因此,给定实验单位的可用数据经常不足以成功地自行拟合此类曲线。取而代之的是,可以使用诸如约束拟合和混合效应模型之类的方法成功地分析整个检测数据,其中每组数据可以相互借鉴以进行拟合,同时仍要考虑特定实验的个别重要性。本文从劳伦斯伯克利国家实验室的Joe Gray实验室,加州大学伯克利分校化学工程系的道格拉斯·克拉克实验室以及加利福尼亚州埃默里维尔的Bionovo,Inc.的三个主要数据集中说明了这些方法的变化。乳腺癌细胞系测试的第一个数据集涉及对美国国家癌症研究所浓度参数GI50的估计,GI50是在该浓度下可以将细胞群的生长抑制一半的药物浓度。我们开发了一种利用重复数据估算此参数的方法。第二个数据集涉及在模拟体内肝脏代谢的特殊测定中估算更常用的浓度参数IC50,该参数未考虑初始细胞数量。这些方法涉及混合效应模型,该模型结合了特定的酶条件和对实验重要的细胞类型。第三个数据集涉及植物化合物对骨肉瘤细胞系的不同影响,说明了阴性对照和阳性对照的使用,以适当地调整测定间差异的观察值。

著录项

  • 作者

    Tong, Frances Poyen.;

  • 作者单位

    University of California, Berkeley.;

  • 授予单位 University of California, Berkeley.;
  • 学科 Statistics.;Pharmaceutical sciences.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 157 p.
  • 总页数 157
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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