Moos Philip J, Raetz Elizabeth A, Carlson Marlee A, Szabo Aniko, Smith Fiona E, Willman Cheryl, Wei Qi, Hunger Stephen P, Carroll William L
Center for Children at the Huntsman Cancer Institute and Oncological Sciences, University of Utah School of Medicine, Salt Lake City, Utah 84112, USA.
Clin Cancer Res. 2002 Oct;8(10):3118-30.
To identify genes whose expression correlated with biological features of childhood leukemia, we prospectively analyzed the expression profiles of 4608 genes using cDNA microarrays in 51 freshly processed bone marrow samples from children with acute leukemia, over a 24-month period, at a single institution. Two supervised methods of analysis were used to identify the 20 best discriminating genes between the following cohorts: acute myelogenous leukemia (AML) versus acute lymphoblastic leukemia (ALL); B-lineage versus T-lineage ALL; newly diagnosed B-lineage standard-risk versus high-risk ALL; and B-lineage leukemia harboring the TEL-AML 1 fusion versus patients without a molecularly characterized translocation. These methods identified overlapping sets of genes that segregated patients within described subgroups. Cross-validation demonstrated that the majority of patients could be correctly classified based on these genes alone, and hierarchical clustering grouped patients with similar clinical and biological disease features. The potential for select genes to discriminate patients was validated using real-time PCR in samples that were analyzed by microarray profiling and in other uniformly processed leukemic marrow samples. As expected, microarray technology can successfully segregate patients defined by traditional measures such as immunophenotype and cytogenetic alterations. However, among specific subgroups, this preliminary analysis also suggests that microarrays can identify unanticipated similarities and diversity in individual patients and thus may be useful in augmenting risk-group stratification in the future.
为了识别那些表达与儿童白血病生物学特征相关的基因,我们在24个月的时间里,于一家机构对51例来自急性白血病患儿的新鲜骨髓样本,使用cDNA微阵列前瞻性地分析了4608个基因的表达谱。采用两种监督分析方法来识别在以下队列之间最具区分能力的20个基因:急性髓性白血病(AML)与急性淋巴细胞白血病(ALL);B系与T系ALL;新诊断的B系标准风险与高风险ALL;以及携带TEL-AML 1融合基因的B系白血病与无分子特征性易位的患者。这些方法识别出了能在所述亚组内区分患者的重叠基因集。交叉验证表明,仅基于这些基因就能正确分类大多数患者,并且层次聚类将具有相似临床和生物学疾病特征的患者归为一组。利用实时PCR在通过微阵列分析的样本以及其他统一处理的白血病骨髓样本中验证了所选基因区分患者的潜力。正如预期的那样,微阵列技术能够成功区分由免疫表型和细胞遗传学改变等传统指标定义的患者。然而,在特定亚组中,这项初步分析还表明,微阵列可以识别个体患者中意想不到的相似性和多样性,因此可能在未来增强风险组分层方面有用。