Developmental Therapeutics Program, National Cancer Institute, Frederick National Laboratory for Cancer Research (FNLCR), Frederick, MD, USA.
PLoS One. 2012;7(11):e48023. doi: 10.1371/journal.pone.0048023. Epub 2012 Nov 30.
Gene expression data, collected from ASPS tumors of seven different patients and from one immortalized ASPS cell line (ASPS-1), was analyzed jointly with patient ASPL-TFE3 (t(X;17)(p11;q25)) fusion transcript data to identify disease-specific pathways and their component genes. Data analysis of the pooled patient and ASPS-1 gene expression data, using conventional clustering methods, revealed a relatively small set of pathways and genes characterizing the biology of ASPS. These results could be largely recapitulated using only the gene expression data collected from patient tumor samples. The concordance between expression measures derived from ASPS-1 and both pooled and individual patient tumor data provided a rationale for extending the analysis to include patient ASPL-TFE3 fusion transcript data. A novel linear model was exploited to link gene expressions to fusion transcript data and used to identify a small set of ASPS-specific pathways and their gene expression. Cellular pathways that appear aberrantly regulated in response to the t(X;17)(p11;q25) translocation include the cell cycle and cell adhesion. The identification of pathways and gene subsets characteristic of ASPS support current therapeutic strategies that target the FLT1 and MET, while also proposing additional targeting of genes found in pathways involved in the cell cycle (CHK1), cell adhesion (ARHGD1A), cell division (CDC6), control of meiosis (RAD51L3) and mitosis (BIRC5), and chemokine-related protein tyrosine kinase activity (CCL4).
从七个不同患者的 ASPS 肿瘤和一个永生化的 ASPS 细胞系(ASPS-1)中收集的基因表达数据,与患者 ASPL-TFE3(t(X;17)(p11;q25))融合转录本数据一起进行分析,以鉴定疾病特异性途径及其组成基因。使用常规聚类方法对汇集的患者和 ASPS-1 基因表达数据进行数据分析,揭示了一组相对较小的途径和基因,这些途径和基因描述了 ASPS 的生物学特性。仅使用从患者肿瘤样本中收集的基因表达数据就可以在很大程度上重现这些结果。ASPS-1 和汇集以及个体患者肿瘤数据的表达测量之间的一致性为将分析扩展到包括患者 ASPL-TFE3 融合转录本数据提供了依据。利用一种新的线性模型将基因表达与融合转录本数据联系起来,并用于识别一组特定于 ASPS 的途径及其基因表达。在响应 t(X;17)(p11;q25)易位时出现异常调节的细胞途径包括细胞周期和细胞黏附。鉴定出的与 ASPS 特征相关的途径和基因子集支持当前靶向 FLT1 和 MET 的治疗策略,同时还提出了针对细胞周期(CHK1)、细胞黏附(ARHGD1A)、细胞分裂(CDC6)、减数分裂控制(RAD51L3)和有丝分裂(BIRC5)以及趋化因子相关蛋白酪氨酸激酶活性(CCL4)中涉及的途径的基因的额外靶向。