Avoiding Pitfalls in the Statistical Analysis of Heterogeneous Tumors.

David E Axelrod, Naomi Miller, Judith-Anne W Chapman
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引用次数: 13

Abstract

Information about tumors is usually obtained from a single assessment of a tumor sample, performed at some point in the course of the development and progression of the tumor, with patient characteristics being surrogates for natural history context. Differences between cells within individual tumors (intratumor heterogeneity) and between tumors of different patients (intertumor heterogeneity) may mean that a small sample is not representative of the tumor as a whole, particularly for solid tumors which are the focus of this paper. This issue is of increasing importance as high-throughput technologies generate large multi-feature data sets in the areas of genomics, proteomics, and image analysis. Three potential pitfalls in statistical analysis are discussed (sampling, cut-points, and validation) and suggestions are made about how to avoid these pitfalls.

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异质性肿瘤统计分析避免陷阱。
关于肿瘤的信息通常是从肿瘤样本的单一评估中获得的,这种评估是在肿瘤发生和进展过程中的某个时刻进行的,患者特征是自然历史背景的替代品。单个肿瘤内细胞之间的差异(肿瘤内异质性)和不同患者肿瘤之间的差异(肿瘤间异质性)可能意味着小样本不能代表整个肿瘤,特别是本文重点研究的实体肿瘤。随着高通量技术在基因组学、蛋白质组学和图像分析领域产生大量多特征数据集,这个问题变得越来越重要。讨论了统计分析中的三个潜在陷阱(抽样、切点和验证),并就如何避免这些陷阱提出了建议。
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