对紫外线和电离辐射的转录响应:一种基于图曲率的方法。

Yongxin Chen, Jung Hun Oh, Romeil Sandhu, Sangkyu Lee, Joseph O Deasy, Allen Tannenbaum
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引用次数: 0

摘要

超过一半的癌症患者在治疗过程中接受放疗。然而,我们对辐射异常转录反应的理解仍然很差。在这项研究中,我们采用基于LI-Wasserstein距离的奥利维耶-里奇曲率的扩展定义,使用微阵列数据集研究与电离辐射(IR)和紫外线辐射(UV)暴露相关的基因和生物过程。基因表达水平是根据从人类蛋白质参考数据库(HPRD)下载的基因相互作用拓扑结构建模的。这是分别对IR、UV和模拟数据集执行的。每个基因的红外图和模拟图(紫外图和模拟图)之间的曲率差值被用作估计基因对辐射反应程度的度量。我们发现,在IR图和UV图中鉴定的前200个基因中,约有20~30%的基因重叠。通过基因本体富集分析,我们发现代谢相关的生物过程与IR和UV辐射暴露高度相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Transcriptional Responses to Ultraviolet and Ionizing Radiation: An Approach Based on Graph Curvature.

Transcriptional Responses to Ultraviolet and Ionizing Radiation: An Approach Based on Graph Curvature.

Transcriptional Responses to Ultraviolet and Ionizing Radiation: An Approach Based on Graph Curvature.

Transcriptional Responses to Ultraviolet and Ionizing Radiation: An Approach Based on Graph Curvature.

More than half of all cancer patients receive radiotherapy in their treatment process. However, our understanding of abnormal transcriptional responses to radiation remains poor. In this study, we employ an extended definition of Ollivier-Ricci curvature based on LI-Wasserstein distance to investigate genes and biological processes associated with ionizing radiation (IR) and ultraviolet radiation (UV) exposure using a microarray dataset. Gene expression levels were modeled on a gene interaction topology downloaded from the Human Protein Reference Database (HPRD). This was performed for IR, UV, and mock datasets, separately. The difference curvature value between IR and mock graphs (also between UV and mock) for each gene was used as a metric to estimate the extent to which the gene responds to radiation. We found that in comparison of the top 200 genes identified from IR and UV graphs, about 20~30% genes were overlapping. Through gene ontology enrichment analysis, we found that the metabolic-related biological process was highly associated with both IR and UV radiation exposure.

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