Zeidan Bashar A, Townsend Paul A
Breast Cancer Res. 2008;10(3):107. doi: 10.1186/bcr2107.
Expression profiling and biomarker(s) discovery aim to provide means for tumour diagnosis, classification, therapy response and prognosis. The identification of novel markers could potentially lead to the building of robust early detection strategies and personalized, effective breast cancer therapies that would improve patient outcome. Recent evidence supports the hypothesis that genomic expression profiling using microarray analysis is a reliable method for breast cancer classification and prognostication. However, genes clearly do not act by themselves, or indeed they do not have catalytic or signalling capabilities. Hence, genetic biomarker information alone cannot perfectly predict cancer and its response to treatment. Genes clearly exert their effect after transcription through translation into active proteins. Consequently, postgenomic projects correlating protein expression profiles with tumour classification have led to some established biomarkers. In this regard, these biomarkers associate with disease prediction and can be associated with treatment response. Recently, Brozokova and colleagues demonstrated that surface-enhanced laser desorption ionization time of flight mass spectrometry (SELDI-TOF MS) profiling of breast cancer tissue proteomes can potentially expand the biomarker repertoire and our knowledge of breast cancer behaviour.
表达谱分析和生物标志物发现旨在为肿瘤诊断、分类、治疗反应和预后提供方法。新型标志物的鉴定可能会促成强大的早期检测策略以及个性化、有效的乳腺癌治疗方法的建立,从而改善患者预后。最近的证据支持这样一种假说,即使用微阵列分析进行基因组表达谱分析是乳腺癌分类和预后评估的可靠方法。然而,基因显然不会单独起作用,实际上它们也没有催化或信号传导能力。因此,仅靠遗传生物标志物信息无法完美预测癌症及其对治疗的反应。基因显然在转录后通过翻译成活性蛋白发挥作用。因此,将蛋白质表达谱与肿瘤分类相关联的后基因组计划已产生了一些已确立的生物标志物。在这方面,这些生物标志物与疾病预测相关,并且可能与治疗反应相关。最近,布罗佐科娃及其同事证明,乳腺癌组织蛋白质组的表面增强激光解吸电离飞行时间质谱(SELDI-TOF MS)分析有可能扩大生物标志物库,并增进我们对乳腺癌行为的了解。