Welsh John B, Sapinoso Lisa M, Kern Suzanne G, Brown David A, Liu Tao, Bauskin Asne R, Ward Robyn L, Hawkins Nicholas J, Quinn David I, Russell Pamela J, Sutherland Robert L, Breit Samuel N, Moskaluk Christopher A, Frierson Henry F, Hampton Garret M
Genomics Institute of the Novartis Research Foundation, 10675 John Jay Hopkins Drive, San Diego, CA 92121, USA.
Proc Natl Acad Sci U S A. 2003 Mar 18;100(6):3410-5. doi: 10.1073/pnas.0530278100. Epub 2003 Mar 6.
Genetic alterations in tumor cells often lead to the emergence of growth-stimulatory autocrine and paracrine signals, involving overexpression of secreted peptide growth factors, cytokines, and hormones. Increased levels of these soluble proteins may be exploited for cancer diagnosis and management or as points of therapeutic intervention. Here, we combined the use of controlled vocabulary terms and sequence-based algorithms to predict genes encoding secreted proteins from among approximately 12,500 sequences represented on oligonucleotide microarrays. Expression of these genes was queried in 150 carcinomas from 10 anatomic sites of origin and compared with 46 normal tissues derived from the corresponding sites of tumor origin and other body tissues and organs. Of 74 different genes identified as overexpressed in cancer tissues, several encode proteins with demonstrated clinical diagnostic application, such as alpha-fetoprotein in liver carcinoma, and kallikreins 6 and 10 in ovarian cancer, or therapeutic utility, such as gastrin-releasing peptide/bombesin in lung carcinomas. We show that several of the other candidate genes encode proteins with high levels of tumor-associated expression by immunohistochemistry on tissue microarrays and further demonstrate significantly elevated levels of another novel candidate protein, macrophage inhibitory cytokine 1, a distant member of the transforming growth factor-beta superfamily, in the serum of patients with metastatic prostate, breast, and colorectal carcinomas. Our results suggest that the combination of annotation/protein sequence analysis, transcript profiling, immunohistochemistry, and immunoassay is a powerful approach for delineating candidate biomarkers with potential clinical significance and may be broadly applicable to other human diseases.
肿瘤细胞中的基因改变通常会导致生长刺激自分泌和旁分泌信号的出现,这涉及分泌型肽生长因子、细胞因子和激素的过表达。这些可溶性蛋白水平的升高可用于癌症的诊断和治疗管理,或作为治疗干预的靶点。在这里,我们结合使用控制词汇术语和基于序列的算法,从寡核苷酸微阵列上所代表的约12500个序列中预测编码分泌蛋白的基因。在来自10个解剖学起源部位的150例癌组织中查询这些基因的表达,并与来自肿瘤起源相应部位以及其他身体组织和器官的46例正常组织进行比较。在被鉴定为在癌组织中过表达的74个不同基因中,有几个编码的蛋白质已证明具有临床诊断应用价值,如肝癌中的甲胎蛋白,卵巢癌中的激肽释放酶6和10;或具有治疗效用,如肺癌中的胃泌素释放肽/蛙皮素。我们通过组织微阵列上的免疫组织化学显示,其他几个候选基因编码的蛋白质具有高水平的肿瘤相关表达,并进一步证明,在转移性前列腺癌、乳腺癌和结直肠癌患者的血清中,另一种新型候选蛋白巨噬细胞抑制细胞因子1(转化生长因子-β超家族的远亲成员)的水平显著升高。我们的结果表明,注释/蛋白质序列分析、转录谱分析、免疫组织化学和免疫测定相结合是一种强大的方法,可用于描绘具有潜在临床意义的候选生物标志物,并且可能广泛适用于其他人类疾病。