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Statistical methods of translating microarray data into clinically relevant diagnostic information in colorectal cancer

机译:将微阵列数据转化为大肠癌临床相关诊断信息的统计方法

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MOTIVATION: It is a common practice in cancer microarray experiments that a normal tissue is collected from the same individual from whom the tumor tissue was taken. The indirect design is usually adopted for the experiment that uses a common reference RNA hybridized both to normal and tumor tissues. However, it is often the case that the test material is not large enough for the experimenter to extract enough RNA to conduct the microarray experiment. Hence, collecting ncases does not necessarily end up with a matched pair sample of size n. Instead we usually have a matched pair sample of size n (1), and two independent samples of sizes n (2) and n (3), respectively, for 'reference versus normal tissue only' and 'reference versus tumor tissue only' hybridizations (n = n (1) + n (2) + n (3)). Standard statistical methods need to be modified and new statistical procedures are developed for analyzing this mixed dataset. RESULTS: We propose a new test statistic, t (3), as a means of combining all the information in the mixed dataset for detecting differentially expressed (DE) genes between normal and tumor tissues. We employed the extended receiver operating characteristic approach to the mixed dataset. We devised a measure of disagreement between a RT-PCR experiment and a microarray experiment. Hotelling's T (2) statistic is employed to detect a set of DE genes and its prediction rate is compared with the prediction rate of a univariate procedure. We observe that Hotelling's T (2) statistic detects DE genes more efficiently than a univariate procedure and that further research is warranted on the formal test procedure using Hotelling's T (2) statistic. CONTACT: bskim@yonsei.ac.kr.
机译:动机:在癌症微阵列实验中,通常的做法是从采集肿瘤组织的同一个人中收集正常组织。实验通常采用间接设计,该实验使用与正常组织和肿瘤组织都杂交的普通参考RNA。但是,通常情况下,测试材料的大小不足以使实验人员提取足够的RNA来进行微阵列实验。因此,收集ncase并不一定以大小为n的匹配对样本结束。取而代之的是,我们通常有一对大小为n(1)的配对样本,以及两个大小分别为n(2)和n(3)的独立样本,用于“仅参考与正常组织”和“仅参考与肿瘤组织”杂交(n = n(1)+ n(2)+ n(3))。需要修改标准的统计方法,并开发新的统计程序来分析此混合数据集。结果:我们提出了一个新的测试统计量t(3),作为一种组合混合数据集中所有信息以检测正常和肿瘤组织之间差异表达(DE)基因的方法。我们对混合数据集采用了扩展的接收机工作特性方法。我们设计了一种在RT-PCR实验和微阵列实验之间存在分歧的措施。使用Hotelling的T(2)统计量来检测一组DE基因,并将其预测率与单变量过程的预测率进行比较。我们观察到,Hotelling的T(2)统计数据比单变量过程更有效地检测DE基因,并且需要对正式的测试过程中使用Hotelling的T(2)统计数据进行进一步的研究。联系人:bskim@yonsei.ac.kr。

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