Lin Yu-Hsin, Friederichs Jan, Black Michael A, Mages Jörg, Rosenberg Robert, Guilford Parry J, Phillips Vicky, Thompson-Fawcett Mark, Kasabov Nikola, Toro Tumi, Merrie Arend E, van Rij Andre, Yoon Han-Seung, McCall John L, Siewert Jörg Rüdiger, Holzmann Bernhard, Reeve Anthony E
Authors' Affiliations: Cancer Genetics Laboratory and Departments of Biochemistry, Medical and Surgical Sciences, and Pathology, University of Otago.
Clin Cancer Res. 2007 Jan 15;13(2 Pt 1):498-507. doi: 10.1158/1078-0432.CCR-05-2734.
This study aimed to develop gene classifiers to predict colorectal cancer recurrence. We investigated whether gene classifiers derived from two tumor series using different array platforms could be independently validated by application to the alternate series of patients.
Colorectal tumors from New Zealand (n = 149) and Germany (n = 55) patients had a minimum follow-up of 5 years. RNA was profiled using oligonucleotide printed microarrays (New Zealand samples) and Affymetrix arrays (German samples). Classifiers based on clinical data, gene expression data, and a combination of the two were produced and used to predict recurrence. The use of gene expression information was found to improve the predictive ability in both data sets. The New Zealand and German gene classifiers were cross-validated on the German and New Zealand data sets, respectively, to validate their predictive power. Survival analyses were done to evaluate the ability of the classifiers to predict patient survival.
The prediction rates for the New Zealand and German gene-based classifiers were 77% and 84%, respectively. Despite significant differences in study design and technologies used, both classifiers retained prognostic power when applied to the alternate series of patients. Survival analyses showed that both classifiers gave a better stratification of patients than the traditional clinical staging. One classifier contained genes associated with cancer progression, whereas the other had a large immune response gene cluster concordant with the role of a host immune response in modulating colorectal cancer outcome.
The successful reciprocal validation of gene-based classifiers on different patient cohorts and technology platforms supports the power of microarray technology for individualized outcome prediction of colorectal cancer patients. Furthermore, many of the genes identified have known biological functions congruent with the predicted outcomes.
本研究旨在开发基因分类器以预测结直肠癌复发。我们调查了源自使用不同阵列平台的两个肿瘤系列的基因分类器应用于另一组患者时是否能得到独立验证。
来自新西兰(n = 149)和德国(n = 55)患者的结直肠肿瘤的最短随访时间为5年。使用寡核苷酸打印微阵列(新西兰样本)和Affymetrix阵列(德国样本)对RNA进行分析。基于临床数据、基因表达数据以及两者组合生成分类器,并用于预测复发。发现在两个数据集中使用基因表达信息均可提高预测能力。分别在德国和新西兰数据集中对新西兰和德国基因分类器进行交叉验证,以验证其预测能力。进行生存分析以评估分类器预测患者生存的能力。
新西兰和德国基于基因的分类器的预测率分别为77%和84%。尽管在研究设计和所使用的技术方面存在显著差异,但当应用于另一组患者时,两个分类器均保留了预后能力。生存分析表明,与传统临床分期相比,两个分类器对患者的分层效果更好。一个分类器包含与癌症进展相关的基因,而另一个具有与宿主免疫反应在调节结直肠癌结局中的作用一致的大型免疫反应基因簇。
基于基因的分类器在不同患者队列和技术平台上的成功相互验证支持了微阵列技术在结直肠癌患者个体化结局预测方面的能力。此外,许多鉴定出的基因具有与预测结果相符的已知生物学功能。