Proteomic prediction of disease outcome in cancer : clinical framework and current status.

R Steinert, P von Hoegen, L M Fels, K Günther, H Lippert, M A Reymond
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引用次数: 7

Abstract

Better than gene sequencing or quantitative amplification, proteomics tools allow the study of tumor phenotype. Indeed, most current prognostic tests in cancer (carcinoembryonary antigen [CEA], prostate-specific antigen [PSA], CA 19-1, CA 125, alpha-fetoprotein [AFP], etc.) are based on the detection and quantification of single proteins in body fluids. However, a common characteristic of these tests is their relatively low predictive value, so that they are usually complemented with other procedures such as biopsy and/or endoscopy. Recently, improved analytical and bioinformatics tools have driven the attention on pattern recognition approaches rather then single-marker tests for prognostic forecasting. It is expected that predicting metastasization on the basis of tumoral protein patterns will soon be a reality. However, currently available technologies either limit the number of proteins that can be analyzed simultaneously or they are expensive, difficult, and time-consuming. Moreover, the tools adapted for expression proteomics might not be the same as those for prognostic studies that require investigation of protein function over time. We believe that clinical proteomics research designed within a precise clinical and pathology framework should be strongly supported, since many prognostic factors are determined not by the tumor itself, but by the patient, the treatment and the environment.

癌症预后的蛋白质组学预测:临床框架和现状。
与基因测序或定量扩增相比,蛋白质组学工具可以更好地研究肿瘤表型。事实上,目前大多数癌症预后检测(癌胚抗原(CEA)、前列腺特异性抗原(PSA)、ca19 -1、ca125、甲胎蛋白(AFP)等)都是基于体液中单一蛋白的检测和定量。然而,这些检查的一个共同特点是它们的预测价值相对较低,因此它们通常与其他程序如活检和/或内窥镜检查相辅相成。最近,改进的分析和生物信息学工具推动了对模式识别方法的关注,而不是用于预后预测的单标记测试。预计基于肿瘤蛋白模式预测转移将很快成为现实。然而,目前可用的技术要么限制了可以同时分析的蛋白质数量,要么价格昂贵、难度大、耗时长。此外,适用于表达蛋白质组学的工具可能与那些需要随时间调查蛋白质功能的预后研究不同。我们认为,应该大力支持在精确的临床和病理框架内设计的临床蛋白质组学研究,因为许多预后因素不是由肿瘤本身决定的,而是由患者、治疗和环境决定的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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