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基因表达变异预测淋巴结阴性乳腺癌的10年生存率。

Gene expression variation to predict 10-year survival in lymph-node-negative breast cancer.

作者信息

Karlsson Elin, Delle Ulla, Danielsson Anna, Olsson Björn, Abel Frida, Karlsson Per, Helou Khalil

机构信息

Department of Oncology, Institute of Clinical Sciences, Blå stråket 2, University of Gothenburg, SE-413 45, Göteborg, Sweden.

出版信息

BMC Cancer. 2008 Sep 8;8:254. doi: 10.1186/1471-2407-8-254.

Abstract

BACKGROUND

It is of great significance to find better markers to correctly distinguish between high-risk and low-risk breast cancer patients since the majority of breast cancer cases are at present being overtreated.

METHODS

46 tumours from node-negative breast cancer patients were studied with gene expression microarrays. A t-test was carried out in order to find a set of genes where the expression might predict clinical outcome. Two classifiers were used for evaluation of the gene lists, a correlation-based classifier and a Voting Features Interval (VFI) classifier. We then evaluated the predictive accuracy of this expression signature on tumour sets from two similar studies on lymph-node negative patients. They had both developed gene expression signatures superior to current methods in classifying node-negative breast tumours. These two signatures were also tested on our material.

RESULTS

A list of 51 genes whose expression profiles could predict clinical outcome with high accuracy in our material (96% or 89% accuracy in cross-validation, depending on type of classifier) was developed. When tested on two independent data sets, the expression signature based on the 51 identified genes had good predictive qualities in one of the data sets (74% accuracy), whereas their predictive value on the other data set were poor, presumably due to the fact that only 23 of the 51 genes were found in that material. We also found that previously developed expression signatures could predict clinical outcome well to moderately well in our material (72% and 61%, respectively).

CONCLUSION

The list of 51 genes derived in this study might have potential for clinical utility as a prognostic gene set, and may include candidate genes of potential relevance for clinical outcome in breast cancer. According to the predictions by this expression signature, 30 of the 46 patients may have benefited from different adjuvant treatment than they received.

摘要

背景

鉴于目前大多数乳腺癌病例存在过度治疗的情况,寻找更好的标志物以正确区分高危和低危乳腺癌患者具有重要意义。

方法

对46例淋巴结阴性乳腺癌患者的肿瘤进行基因表达微阵列研究。进行t检验以找到一组其表达可能预测临床结果的基因。使用两种分类器对基因列表进行评估,一种是基于相关性的分类器,另一种是投票特征区间(VFI)分类器。然后,我们在两项关于淋巴结阴性患者的类似研究的肿瘤集上评估了这种表达特征的预测准确性。这两项研究都开发了在分类淋巴结阴性乳腺肿瘤方面优于现有方法的基因表达特征。这两种特征也在我们的材料上进行了测试。

结果

制定了一份包含51个基因的列表,其表达谱在我们的材料中能够高精度地预测临床结果(交叉验证中的准确率为96%或89%,具体取决于分类器类型)。在两个独立数据集上进行测试时,基于这51个已鉴定基因的表达特征在其中一个数据集中具有良好的预测质量(准确率为74%),而在另一个数据集上其预测价值较差,可能是因为在该材料中仅发现了51个基因中的23个。我们还发现,先前开发的表达特征在我们的材料中对临床结果的预测效果为良好到中等(分别为72%和61%)。

结论

本研究中得出的51个基因列表可能具有作为预后基因集的临床应用潜力,并且可能包括与乳腺癌临床结果潜在相关的候选基因。根据这种表达特征的预测,46例患者中有30例可能从与他们所接受的不同辅助治疗中获益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9b77/2559847/df5273bfb068/1471-2407-8-254-1.jpg

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