Effectiveness of Principal Component Analysis in Functional Mapping of Gene Expression Profiles

Rajashree Sahoo, R. Pradhan
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Abstract

Microarray experiments are proficient of yielding observations for thousands of genes those are differentially expressed under several conditions. Although it is possible to measure simultaneously the changes in gene expression profiles at whole genomic scale, interpreting individual gene expression profile in terms of its actual biological function or associated biochemical processes remains challenging. Exploratory multivariate statistical techniques such as principal component analysis have been extensively used to reduce the complexity of large size microarray data. Although Saccaromycea Cerevisae is the most widely studied species using microarray techniques, a complete understanding of the efficacy of principal component analysis and data pre-processing is still lacking for clustering and functional mapping of yeast gene expression profiles, reported in various studies. Therefore in this work, we evaluate the impact of data pre-processing and principal component analysis on k-means clustering-based functional mapping of yeast gene expression profiles observed during diauxic-shift. Two time-series gene expression datasets were chosen such as, (1) yeast diauxic-shift data and (2) yeast sporulation data to examine the efficacy of principal component analysis in interpreting gene-based or score-based clusters and their relationship with known pathways. It was shown that unlike conventional pre-processing, principal component analysis provides a powerful tool to capture most of the information using only two component variables for inferring gene expression time-course data. Using yeast genome databases, it was demonstrated that clustering with principal components instead of the original variables does not necessarily improve the cluster quality but helps in identifying the relationships between genes of a cluster and key biological process of diauxic shift. Overall, the present analysis is useful in mining high dimensional microarray data at a reduced computational cost associated with functional enrichment of expression time-series, regardless of species or experimental conditions.
主成分分析在基因表达谱功能定位中的有效性
微阵列实验能够熟练地对数千个在不同条件下差异表达的基因进行观察。虽然可以在全基因组尺度上同时测量基因表达谱的变化,但根据其实际的生物学功能或相关的生化过程来解释个体基因表达谱仍然具有挑战性。探索性多元统计技术,如主成分分析,已广泛用于降低大尺寸微阵列数据的复杂性。尽管酿酒sacaromycea Cerevisae是使用微阵列技术研究最多的物种,但各种研究报道,对于酵母基因表达谱的聚类和功能定位,主成分分析和数据预处理的有效性仍然缺乏完整的了解。因此,在这项工作中,我们评估了数据预处理和主成分分析对基于k均值聚类的酵母基因表达谱功能定位的影响。选择两个时间序列基因表达数据集,如(1)酵母双胞移位数据和(2)酵母产孢数据,以检验主成分分析在解释基于基因或基于分数的聚类及其与已知途径的关系方面的有效性。结果表明,与传统的预处理不同,主成分分析提供了一个强大的工具,可以仅使用两个成分变量来推断基因表达的时间过程数据。利用酵母基因组数据库,证明了主成分聚类而不是原始变量聚类不一定能提高聚类质量,但有助于识别聚类基因与双氧转移关键生物学过程之间的关系。总的来说,无论物种或实验条件如何,当前的分析在挖掘高维微阵列数据时都是有用的,并且与表达时间序列的功能富集相关的计算成本降低了。
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