Beyond glyco-proteomics-Understanding the role of genetics in cancer biomarkers.

2区 医学 Q1 Medicine
Andrew DelaCourt, Anand Mehta
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引用次数: 0

Abstract

The development of robust cancer biomarkers is the most effective way to improve overall survival, as early detection and treatment leads to significantly better clinical outcomes. Many of the cancer biomarkers that have been identified and are clinically utilized are glycoproteins, oftentimes a specific glycoform. Aberrant glycosylation is a common theme in cancer, with dysregulated glycosylation driving tumor initiation and metastasis, and abnormal glycosylation can be detection both on the tissue surface and in serum. However, most cancer types are heterogeneous in regard to tumor genomics, and this heterogeneity extends to cancer glycomics. This limits the sensitivity of standalone glycan-based biomarkers, which has slowed their implementation clinically. However, if targeted biomarker development can take into account genomic tumor information, the development of complementary biomarkers that target unique cancer subgroups can be accomplished. This idea suggests the need for algorithm-based cancer biomarkers, which can utilize multiple biomarkers along with relevant demographic information. This concept has already been established in the detection of hepatocellular carcinoma with the GALAD score, and an algorithm-based approach would likely be effective in improving biomarker sensitivity for additional cancer types. In order to increase cancer diagnostic biomarker sensitivity, there must be more targeted biomarker development that considers tumor genomic, proteomic, metabolomic, and clinical data while identifying tumor biomarkers.

超越糖蛋白组学——了解基因在癌症生物标志物中的作用。
开发强大的癌症生物标志物是提高总体生存率的最有效方法,因为早期发现和治疗可以显著改善临床结果。许多癌症生物标志物已经确定并在临床上使用的是糖蛋白,通常是一种特定的糖型。异常糖基化是癌症的共同主题,糖基化失调驱动肿瘤的发生和转移,异常糖基化可以在组织表面和血清中检测到。然而,大多数癌症类型在肿瘤基因组学方面是异质的,这种异质性延伸到癌症糖组学。这限制了独立的基于聚糖的生物标志物的敏感性,从而减缓了它们在临床上的应用。然而,如果靶向生物标志物的开发可以考虑基因组肿瘤信息,则可以完成针对独特癌症亚群的互补生物标志物的开发。这一想法表明需要基于算法的癌症生物标志物,它可以利用多种生物标志物以及相关的人口统计信息。这一概念已经在用GALAD评分检测肝细胞癌中建立起来,基于算法的方法可能有效地提高其他癌症类型的生物标志物敏感性。为了提高癌症诊断生物标志物的敏感性,在识别肿瘤生物标志物时必须考虑肿瘤基因组学、蛋白质组学、代谢组学和临床数据,更有针对性地开发生物标志物。
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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来源期刊
Advances in Cancer Research
Advances in Cancer Research 医学-肿瘤学
CiteScore
10.00
自引率
0.00%
发文量
52
期刊介绍: Advances in Cancer Research (ACR) has covered a remarkable period of discovery that encompasses the beginning of the revolution in biology. Advances in Cancer Research (ACR) has covered a remarkable period of discovery that encompasses the beginning of the revolution in biology. The first ACR volume came out in the year that Watson and Crick reported on the central dogma of biology, the DNA double helix. In the first 100 volumes are found many contributions by some of those who helped shape the revolution and who made many of the remarkable discoveries in cancer research that have developed from it.
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