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Improving Tumor Identification by Using Tumor Markers Classification Strategy

机译:使用肿瘤标志物分类策略改善肿瘤鉴定

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Tumor markers are substances, usually proteins that can be found in the blood, urine, stool, tumor tissue and more recently DNA changes, which are produced by the body in response to cancer growth. Thus far, more than 20 different tumor markers have been identified where some of them are specific for a particular type of cancer, while others are associated with several cancer types. The problem of tumor profiling has been extensively studied by the bioinformatics community. Although tumor classification has improved nowadays, there has been no general approach for identifying new cancer classes or for assigning tumors to known classes. In this paper we describe a novel strategy for tumor classification by using Growing Hierarchical Self-Organizing map (GHSOM) since it is able to weigh the contribution of each marker according to its relatedness with other tumor markers as well as handles highly skewed tumor marker expressions well. In the end, experiments are conducted to further demonstrate the feasibility and efficiency of tumor classification approach which provide valuable contribution in the field of oncology and cancer diseases and will be as a guide for the identification of these diseases.
机译:肿瘤标志物是物质,通常可以在血液,尿液,粪便,肿瘤组织和最近的DNA变化中发现的蛋白质,其由身体响应癌症生长而产生。到目前为止,已经鉴定出超过20种不同的肿瘤标志物,其中一些是特定类型的癌症的特异性,而其他肿瘤有关的几种癌症类型。生物信息学区群落广泛研究了肿瘤分析的问题。虽然肿瘤分类现在已经改进,但没有一般方法鉴定新的癌症课程或将肿瘤分配到已知课程。在本文中,我们通过使用生长分层自组织地图(GHSOM)描述了一种新的肿瘤分类策略,因为它能够根据其与其他肿瘤标志物的相关性来称量每个标记的贡献,以及处理高度偏斜的肿瘤标志物表达好。最后,进行了实验,进一步证明了肿瘤分类方法的可行性和效率,这为肿瘤学和癌症疾病领域提供了有价值的贡献,并作为鉴定这些疾病的指南。

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