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A Structural Equation Modeling Approach of the Toll-Like Receptor Signaling Pathway in Chronic Lymphocytic Leukemia

机译:慢性淋巴细胞白血病类似收费受体信号通路的结构方程建模方法

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Gene pathway identification is an open and active research area that has attracted the interest not only of biomedical scientists but also of a large number of researchers from disciplines related to knowledge discovery from biological data. In this paper, we used Structural Equation Modeling (SEM) in order to statistically investigate the Toll-Like Receptor (TLR) signaling pathway in Chronic Lymphocytic Leukemia (CLL). Specifically, we used Path Analysis, a special case of SEM which is a statistical technique for testing and confirming causal relations based on data and qualitative assumptions. The dataset consists of Real Time PCR data for 84 genes relevant to the TLR signaling pathway, that were obtained from 192 patients with CLL that have been classified based on the mutational status of their clonotypic antigen receptors as mutated CLL (M-CLL) or unmutated CLL (U-CLL). The causal effects among genes were estimated through regression weights. In each case, the initially assumed model was based on the KEGG pathway database which provides reference pathways. The initial models were tested with respect to the M-CLL and U-CLL datasets. Modifications were made according to the statistical results (statistically significant regression weights, modification indices), concluding to models with good fit. Models were consistent to the reference pathway mostly for M-CLL and much less for U-CLL. These results go along with the well-described differences in immune signaling between the two subgroups, and may indicate that signaling in U-CLL is more impaired and/or modulated by complex regulatory networks that remain to be elucidated.
机译:基因途径鉴定是一个开放而活跃的研究领域,不仅引起了生物医学科学家的兴趣,而且也吸引了与生物数据知识发现相关学科的众多研究人员的兴趣。在本文中,我们使用结构方程模型(SEM)来统计研究慢性淋巴细胞白血病(CLL)中的Toll样受体(TLR)信号通路。具体来说,我们使用路径分析,这是SEM的特例,它是一种统计技术,用于基于数据和定性假设来检验和确认因果关系。该数据集由与TLR信号通路相关的84个基因的实时PCR数据组成,这些数据是从192名CLL患者中获得的,这些患者已根据其克隆型抗原受体的突变状态分为突变CLL(M-CLL)或未突变CLL(U-CLL)。基因之间的因果关系通过回归权重进行估算。在每种情况下,最初假定的模型都是基于提供参考途径的KEGG途径数据库。相对于M-CLL和U-CLL数据集测试了初始模型。根据统计结果(具有统计显着性的回归权重,修正指数)进行了修改,从而得出了具有良好拟合度的模型。模型与M-CLL的参考途径一致,而U-CLL的模型则少得多。这些结果与两个亚组之间在免疫信号传导方面的众所周知的差异相吻合,并可能表明U-CLL中的信号传导受到更复杂的调节网络的损害和/或调节,这些机制尚待阐明。

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