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THE PROGRESS OF PROSTATE CANCER IN PATHWAY LEVEL EXPLORED BY PROTEIN NETWORK WITH GENE EXPRESSION

机译:蛋白质网络与基因表达在前列腺癌研究中的进展

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摘要

Biological pathways are the crucial biological mechanisms in living cells. The huge volume of genomics and proteomics data requires computational methods for predicting or reconstructing pathways. Thus, the application of protein-protein interaction (PPI) or gene expression methods is insufficient to discover meaningful pathways. The integration of PPIs and gene profiles is a better approach to uncover the regulation of pathway and must be utilized well. Previous studies on this topic only focus on the gene level or some limited local groups. This study presents an approach to finding potential fragments of active pathways around known pathways between the various stages of diseases. The proposed method used a maximum score-based function that integrates genomics and proteomics information. This method quantified the strength of gene expression change and the degree of protein-protein interactions to illustrate global status as pathway maps. In this study, we use prostate cancer data as an example to explain which potential fragments of pathway co-constructed a pathway map of prostate cancer at different disease statuses. The resulting map shows a possible correspondence between known pathway and cancer-related genes that are not on the known pathway. Comparing distinct status pathway map reveals a global change of different disease states pathway level. The pathway map of different disease statuses can provide more insight in the progress of cancer.
机译:生物途径是活细胞中至关重要的生物学机制。大量的基因组学和蛋白质组学数据需要用于预测或重构途径的计算方法。因此,蛋白质间相互作用(PPI)或基因表达方法的应用不足以发现有意义的途径。 PPI和基因图谱的整合是揭示途径调控的更好方法,必须很好地利用。以前有关该主题的研究仅关注基因水平或一些有限的本地人群。这项研究提出了一种在疾病各个阶段之间的已知途径周围寻找活性途径潜在片段的方法。所提出的方法使用了基于最大得分的功能,该功能整合了基因组学和蛋白质组学信息。该方法量化了基因表达变化的强度和蛋白质-蛋白质相互作用的程度,以路径图的形式说明了整体状态。在这项研究中,我们以前列腺癌数据为例来说明在不同疾病状态下,哪些潜在的通路片段共同构成了前列腺癌的通路图。所得图谱显示已知途径与不在已知途径上的癌症相关基因之间的可能对应关系。比较不同的状态途径图揭示了不同疾病状态途径水平的整体变化。不同疾病状态的途径图可以提供有关癌症进展的更多见解。

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