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临床定义的乳腺癌亚组的分子分型

Molecular subtyping for clinically defined breast cancer subgroups.

作者信息

Zhao Xi, Rødland Einar Andreas, Tibshirani Robert, Plevritis Sylvia

出版信息

Breast Cancer Res. 2015 Feb 26;17(1):29. doi: 10.1186/s13058-015-0520-4.

Abstract

INTRODUCTION

Breast cancer is commonly classified into intrinsic molecular subtypes. Standard gene centering is routinely done prior to molecular subtyping, but it can produce inaccurate classifications when the distribution of clinicopathological characteristics in the study cohort differs from that of the training cohort used to derive the classifier.

METHODS

We propose a subgroup-specific gene-centering method to perform molecular subtyping on a study cohort that has a skewed distribution of clinicopathological characteristics relative to the training cohort. On such a study cohort, we center each gene on a specified percentile, where the percentile is determined from a subgroup of the training cohort with clinicopathological characteristics similar to the study cohort. We demonstrate our method using the PAM50 classifier and its associated University of North Carolina (UNC) training cohort. We considered study cohorts with skewed clinicopathological characteristics, including subgroups composed of a single prototypic subtype of the UNC-PAM50 training cohort (n = 139), an external estrogen receptor (ER)-positive cohort (n = 48) and an external triple-negative cohort (n = 77).

RESULTS

Subgroup-specific gene centering improved prediction performance with the accuracies between 77% and 100%, compared to accuracies between 17% and 33% from standard gene centering, when applied to the prototypic tumor subsets of the PAM50 training cohort. It reduced classification error rates on the ER-positive (11% versus 28%; P = 0.0389), the ER-negative (5% versus 41%; P < 0.0001) and the triple-negative (11% versus 56%; P = 0.1336) subgroups of the PAM50 training cohort. In addition, it produced higher accuracy for subtyping study cohorts composed of varying proportions of ER-positive versus ER-negative cases. Finally, it increased the percentage of assigned luminal subtypes on the external ER-positive cohort and basal-like subtype on the external triple-negative cohort.

CONCLUSIONS

Gene centering is often necessary to accurately apply a molecular subtype classifier. Compared with standard gene centering, our proposed subgroup-specific gene centering produced more accurate molecular subtype assignments in a study cohort with skewed clinicopathological characteristics relative to the training cohort.

摘要

引言

乳腺癌通常分为内在分子亚型。在进行分子亚型分类之前,常规会进行标准基因中心化处理,但当研究队列中临床病理特征的分布与用于推导分类器的训练队列不同时,这种方法可能会产生不准确的分类。

方法

我们提出了一种亚组特异性基因中心化方法,用于对临床病理特征分布相对于训练队列存在偏态的研究队列进行分子亚型分类。在这样的研究队列中,我们将每个基因以特定百分位数为中心进行中心化处理,该百分位数是根据训练队列中临床病理特征与研究队列相似的一个亚组来确定的。我们使用PAM50分类器及其相关的北卡罗来纳大学(UNC)训练队列来展示我们的方法。我们考虑了临床病理特征存在偏态的研究队列,包括由UNC-PAM50训练队列的单一原型亚型组成的亚组(n = 139)、一个外部雌激素受体(ER)阳性队列(n = 48)和一个外部三阴性队列(n = 77)。

结果

当应用于PAM50训练队列的原型肿瘤亚组时,亚组特异性基因中心化提高了预测性能,准确率在77%至100%之间,而标准基因中心化的准确率在17%至33%之间。它降低了PAM50训练队列的ER阳性亚组(11%对28%;P = 0.0389)、ER阴性亚组(5%对41%;P < 0.0001)和三阴性亚组(11%对56%;P = 0.1336)的分类错误率。此外,对于由不同比例的ER阳性与ER阴性病例组成的研究队列进行亚型分类时,它产生了更高的准确率。最后,它提高了外部ER阳性队列中指定的管腔亚型百分比以及外部三阴性队列中基底样亚型的百分比。

结论

基因中心化对于准确应用分子亚型分类器通常是必要的。与标准基因中心化相比,我们提出的亚组特异性基因中心化在临床病理特征分布相对于训练队列存在偏态的研究队列中产生了更准确的分子亚型分类。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b103/4365540/b893474c963a/13058_2015_520_Fig1_HTML.jpg

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