Sequence-to-expression approach to identify etiological non-coding DNA variations in P53 and cMYC-driven diseases.

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Katherine Kin, Shounak Bhogale, Lisha Zhu, Derrick Thomas, Jessica Bertol, W Jim Zheng, Saurabh Sinha, Walid D Fakhouri
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Abstract

Disease risk prediction based on genomic sequence and transcriptional profile can improve disease screening and prevention. Despite identifying many disease-associated DNA variants, distinguishing deleterious non-coding DNA variations remains poor for most common diseases. In this study, we designed in vitro experiments to uncover the significance of occupancy and competitive binding between P53 and cMYC on common target genes. Analyzing publicly available ChIP-seq data for P53 and cMYC in embryonic stem cells showed that ~344-366 regions are co-occupied, and on average, two cis-overlapping motifs (CisOMs) per region were identified, suggesting that co-occupancy is evolutionarily conserved. Using U2OS and Raji cells untreated and treated with doxorubicin to increase P53 protein level while potentially reducing cMYC level, ChIP-seq analysis illustrated that around 16 to 922 genomic regions were co-occupied by P53 and cMYC, and substitutions of cMYC signals by P53 were detected post doxorubicin treatment. Around 187 expressed genes near co-occupied regions were altered at mRNA level according to RNA-seq data analysis. We utilized a computational motif-matching approach to illustrate that changes in predicted P53 binding affinity in CisOMs of co-occupied elements significantly correlate with alterations in reporter gene expression. We performed a similar analysis using SNPs mapped in CisOMs for P53 and cMYC from ChIP-seq data, and expression of target genes from GTEx portal. We found significant correlation between change in cMYC-motif binding affinity in CisOMs and altered expression. Our study brings us closer to developing a generally applicable approach to filter etiological non-coding variations associated with common diseases.

从序列到表达的方法识别 P53 和 cMYC 驱动型疾病中的病因非编码 DNA 变异。
基于基因组序列和转录特征的疾病风险预测可以改善疾病筛查和预防。尽管发现了许多与疾病相关的DNA变异,但对于大多数常见疾病来说,区分有害的非编码DNA变异的能力仍然很差。在本研究中,我们设计了体外实验来揭示 P53 和 cMYC 在共同靶基因上的占位和竞争性结合的意义。分析胚胎干细胞中P53和cMYC的公开ChIP-seq数据显示,约344-366个区域被共同占据,平均每个区域发现两个顺式重叠基序(CisOMs),表明共同占据在进化上是保守的。利用未经处理的 U2OS 和 Raji 细胞以及用多柔比星处理以提高 P53 蛋白水平同时可能降低 cMYC 水平的细胞,ChIP-seq 分析表明,约有 16 至 922 个基因组区域被 P53 和 cMYC 共同占据,并在多柔比星处理后检测到 P53 对 cMYC 信号的取代。根据 RNA-seq 数据分析,共占区域附近约有 187 个表达基因在 mRNA 水平上发生了改变。我们利用计算图案匹配方法说明,共占位元素的 CisOMs 中预测的 P53 结合亲和力的变化与报告基因表达的改变显著相关。我们使用 ChIP-seq 数据中 P53 和 cMYC 的 CisOMs 中映射的 SNPs 以及 GTEx 门户网站中靶基因的表达进行了类似的分析。我们发现,CisOMs中cMYC-motif结合亲和力的变化与表达的改变之间存在明显的相关性。我们的研究使我们更接近于开发一种普遍适用的方法来筛选与常见疾病相关的病因非编码变异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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