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Determining Potential Yeast Longevity Genes via PPI Networks and Microarray Data Clustering Analysis

机译:通过PPI网络和微阵列数据聚类分析确定潜在的酵母长寿基因

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Identification of genes involved in lifespan extension is a pre-requisite for studying aging and age-dependent diseases. So far, very few genes have been identified that relate to longevity. The process of analyzing each single gene one at a time can be a very long and expensive process. It is known that approximately 10% of 6000 yeast genes are lifespan related genes, however, less than 100 genes are identified as longevity genes. The interconnection of multiple genes and the time-dependent protein-protein interactions make researchers use systems biology as a first tool to predict genes potentially involved in aging. In this study, we combined analyses of protein-protein interaction data and micro array data to predict longevity genes. A dataset of all 6000 yeast genes was utilized and a protein-protein interaction ratio was used to narrow the dataset. Next, a hierarchical clustering algorithm was created to group the resulting data. From these clusters, conclusion of 6 highly possible longevity genes was drawn based on the amount of longevity genes in each cluster. Based on our latest information, one of our predicted genes is identified as a longevity gene. Wet lab experiments are applied to our predicted genes for supporting the findings.
机译:鉴定涉及寿命延长的基因是研究衰老和年龄依赖性疾病的先决条件。迄今为止,很少发现与寿命有关的基因。一次分析每个单个基因的过程可能是一个非常漫长且昂贵的过程。已知6000个酵母基因中大约有10%是寿命相关基因,但是,只有不到100个基因被鉴定为寿命基因。多个基因的相互联系以及时间相关的蛋白质-蛋白质相互作用使研究人员将系统生物学用作预测潜在与衰老相关的基因的第一个工具。在这项研究中,我们结合了蛋白质-蛋白质相互作用数据和微阵列数据的分析来预测长寿基因。利用所有6000个酵母基因的数据集,并使用蛋白质-蛋白质相互作用比来缩小数据集的范围。接下来,创建了分层聚类算法以对所得数据进行分组。从这些聚类中,根据每个聚类中的长寿基因数量,得出了6个极有可能的长寿基因的结论。根据我们的最新信息,我们预测的基因之一被确定为长寿基因。湿实验室实验被应用于我们的预测基因以支持这一发现。

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