Studying the effect of Mouse models for Gene Expression using Coregionalization Models in Gaussian process

Sura Z. Al-Rashid
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引用次数: 1

Abstract

Gene expression of time series analysis uses and supports in many biological studies. The difference in transcriptional regulation between two strains of mice. the phenotype of the two mutant strains differ, where one of the strains succumbs to ALS far quicker than the other. The aim of the work determines a candidate list of genes or pathway that would give insight into the mechanism behind this difference of phenotype. Gaussian processes are efficient and usability for the analysis these series, Gaussian process (GP) regression with Coregionalization model have built to determine a candidate list of genes or pathway that would give insight into the mechanism behind this difference of phenotype. A model has built on these series to account for more structure within the time series; these Data have a correlated output for mouse model for ALS disease. The results of this model are well done to detect gene expression differences associated with the difference in the phenotype for four cases the genes alter its behavior and the new information that discovery genes have same behavior in both two mutations and two strains.
利用高斯过程共区域化模型研究小鼠模型对基因表达的影响
基因表达时间序列分析在许多生物学研究中得到应用和支持。两种小鼠的转录调节差异。两种突变菌株的表型不同,其中一种菌株比另一种更快地屈服于ALS。这项工作的目的是确定一个候选基因或途径列表,以深入了解这种表型差异背后的机制。高斯过程对这些序列的分析是有效和可用的,高斯过程(GP)回归与共区域化模型已经建立,以确定候选基因或途径列表,将深入了解这种表型差异背后的机制。在这些序列上建立了一个模型来解释时间序列中的更多结构;这些数据对ALS疾病的小鼠模型有相关的输出。该模型的结果很好地检测了基因改变其行为的四种情况下与表型差异相关的基因表达差异,并发现了基因在两个突变和两个菌株中具有相同行为的新信息。
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