首页> 外文期刊>The Journal of molecular diagnostics: JMD >Statistical considerations for immunohistochemistry panel development after gene expression profiling of human cancers.
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Statistical considerations for immunohistochemistry panel development after gene expression profiling of human cancers.

机译:人类癌症基因表达谱分析后免疫组化研究小组发展的统计考虑。

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摘要

In recent years there have been a number of microarray expression studies in which different types of tumors were classified by identifying a panel of differentially expressed genes. Immunohistochemistry is a practical and robust method for extending gene expression data to common pathological specimens with the advantage of being applicable to paraffin-embedded tissues. However, the number of assays required for successful immunohistochemical classification remains unclear. We propose a simulation-based method for assessing sample size for an immunohistochemistry investigation after a promising gene expression study of human tumors. The goals of such an immunohistochemistry study would be to develop and validate a marker panel that yields improved prognostic classification of cancer patients. We demonstrate how the preliminary gene expression data, coupled with certain realistic assumptions, can be used to estimate the number of immunohistochemical assays required for development. These assumptions are more tenable than alternative assumptions that would be required for crude analytic sample size calculations and that may yield underpowered and inefficient studies. We applied our methods to the design of an immunohistochemistry study for glioma classification and estimated the number of assays required to ensure satisfactory technical and prognostic validation. Simulation approaches for computing power and sample size that are based on existing gene expression data provide a powerful tool for efficient design of follow-up genomic studies.
机译:近年来,已经进行了许多微阵列表达研究,其中通过鉴定一组差异表达的基因来分类不同类型的肿瘤。免疫组织化学是一种实用且可靠的方法,可以将基因表达数据扩展到常见的病理标本,其优点是适用于石蜡包埋的组织。然而,成功进行免疫组织化学分类所需的测定数量仍然不清楚。我们提出了一种基于模拟的方法,用于评估有希望的人类肿瘤基因表达研究后的免疫组化研究的样本量。此类免疫组织化学研究的目标是开发和验证可改善癌症患者预后分类的标志物组。我们证明了初步的基因表达数据,再加上某些现实的假设,可以用来估计发展所需的免疫组织化学测定的数量。这些假设比粗略分析样本大小计算所需的替代假设更有根据,并且可能产生效率低下且效率低下的研究。我们将我们的方法应用于神经胶质瘤分类的免疫组织化学研究的设计中,并估算了确保令人满意的技术和预后验证所需的分析数量。基于现有基因表达数据的计算能力和样本量的仿真方法为有效设计后续基因组研究提供了强大的工具。

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