染色体不稳定性与基因表达结合分析结肠癌进展推断。

Claudia Cava, Italo Zoppis, Manuela Gariboldi, Isabella Castiglioni, Giancarlo Mauri, Marco Antoniotti
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引用次数: 18

摘要

背景:拷贝数改变(CNAs)是遗传变异的重要组成部分。这种改变与某些类型的癌症有关,包括胰腺癌、结肠癌和乳腺癌等。在多项研究中,CNAs被用作癌症预后的生物标志物,但很少有研究报道CNAs与疾病进展的关系。此外,大多数研究没有考虑到以下两个重要问题。(1)鉴定基因中负责表达调控的CNAs对于确定导致恶性转化和进展的遗传事件至关重要。(II)大多数真实领域最好用结构化数据来描述,其中多种类型的实例以复杂的方式相互关联。结果:我们的主要兴趣是在考虑(I)带有CNAs的基因的表达水平和(II)由于改变基因的表达水平差异而导致的患者之间的关系(即差异)时,检查结直肠癌(CRC)进展推断是否有益。我们首先评估了一种最先进的推理方法(支持向量机)在仅通过可用属性值集(即基因表达水平)表示受试者时的准确性性能。然后,当明确地利用上述信息时,我们检查推理精度是否提高。我们的研究结果表明,当结合数据(即CNA和表达水平)和考虑的不相似性测量时,CRC进展推断得到改善。结论:通过我们的方法,分类具有直观的吸引力,并且可以方便地在得到的不相似空间中进行分类。使用来自Gene Expression Omnibus (GEO)的不同公共数据集来验证结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combined analysis of chromosomal instabilities and gene expression for colon cancer progression inference.

Background: Copy number alterations (CNAs) represent an important component of genetic variations. Such alterations are related with certain type of cancer including those of the pancreas, colon, and breast, among others. CNAs have been used as biomarkers for cancer prognosis in multiple studies, but few works report on the relation of CNAs with the disease progression. Moreover, most studies do not consider the following two important issues. (I) The identification of CNAs in genes which are responsible for expression regulation is fundamental in order to define genetic events leading to malignant transformation and progression. (II) Most real domains are best described by structured data where instances of multiple types are related to each other in complex ways.

Results: Our main interest is to check whether the colorectal cancer (CRC) progression inference benefits when considering both (I) the expression levels of genes with CNAs, and (II) relationships (i.e. dissimilarities) between patients due to expression level differences of the altered genes. We first evaluate the accuracy performance of a state-of-the-art inference method (support vector machine) when subjects are represented only through sets of available attribute values (i.e. gene expression level). Then we check whether the inference accuracy improves, when explicitly exploiting the information mentioned above. Our results suggest that the CRC progression inference improves when the combined data (i.e. CNA and expression level) and the considered dissimilarity measures are applied.

Conclusions: Through our approach, classification is intuitively appealing and can be conveniently obtained in the resulting dissimilarity spaces. Different public datasets from Gene Expression Omnibus (GEO) were used to validate the results.

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