Increasing Power by Sharing Information from Genetic Background and Treatment in Clustering of Gene Expression Time Series

S. Z. Alrashid, Muhammad Arifur Rahman, Nabeel H. Al-Aaraji, Neil D. Lawrence, P. Heath
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引用次数: 4

Abstract

Clustering of gene expression time series gives insight into which genes may be co-regulated, allowing us to discern the activity of pathways in a given microarray experiment. Of particular interest is how a given group of genes varies with different conditions or genetic background. This paper develops a new clustering method that allows each cluster to be parameterised according to whether the behaviour of the genes across conditions is correlated or anti-correlated. By specifying correlation between such genes,more information is gain within the cluster about how the genes interrelate. Amyotrophic lateral sclerosis (ALS) is an irreversible neurodegenerative disorder that kills the motor neurons and results in death within 2 to 3 years from the symptom onset. Speed of progression for different patients are heterogeneous with significant variability. The SOD1 G93A transgenic mice from different backgrounds (129Sv and C57) showed consistent phenotypic differences for disease progression. A hierarchy of Gaussian isused processes to model condition-specific and gene-specific temporal co-variances. This study demonstrated about finding some significant gene expression profiles and clusters of associated or co-regulated gene expressions together from four groups of data (SOD1G93A and Ntg from 129Sv and C57 backgrounds). Our study shows the effectiveness of sharing information between replicates and different model conditions when modelling gene expression time series. Further gene enrichment score analysis and ontology pathway analysis of some specified clusters for a particular group may lead toward identifying features underlying the differential speed of disease progression.
遗传背景信息共享和基因表达时间序列聚类处理提高聚类能力
基因表达时间序列的聚类可以深入了解哪些基因可能被共同调节,使我们能够在给定的微阵列实验中辨别途径的活性。特别有趣的是,给定的一组基因是如何随着不同的条件或遗传背景而变化的。本文开发了一种新的聚类方法,该方法允许每个聚类根据基因在不同条件下的行为是相关的还是反相关的来参数化。通过指定这些基因之间的相关性,可以在集群中获得更多关于基因如何相互关联的信息。肌萎缩性侧索硬化症(ALS)是一种不可逆的神经退行性疾病,可杀死运动神经元,并在症状出现后2至3年内导致死亡。不同患者的进展速度具有异质性和显著的可变性。来自不同背景(129Sv和C57)的SOD1 G93A转基因小鼠在疾病进展方面表现出一致的表型差异。高斯问题的层次结构使用过程来模拟条件特异性和基因特异性的时间共方差。本研究从四组数据(来自129Sv和C57背景的SOD1G93A和Ntg)中发现了一些显著的基因表达谱和相关或共调控的基因表达簇。我们的研究表明,在模拟基因表达时间序列时,在重复和不同模型条件之间共享信息是有效的。进一步的基因富集评分分析和对特定群体的某些特定集群的本体论途径分析可能有助于识别疾病进展速度差异的特征。
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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