卵巢癌化疗敏感性的表观遗传影响途径和网络分析

N. Banerjee, A. Janevski, S. Kamalakaran, V. Varadan, R. Lucito, N. Dimitrova
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引用次数: 0

摘要

卵巢癌是导致妇科癌症死亡的主要原因。以卡铂为基础的治疗是卵巢癌的标准治疗选择。然而,大多数患者对碳铂的耐药性相当快,因此临床需要对碳铂耐药性的早期预测。虽然有一些指示性基因标记,但它们在准确预测反应方面的敏感性和特异性较差。重要的是,多种高通量分子分析模式的整合和研究,以提供正在进行的过程的全貌。在这里,我们提出了一种方法,利用数据驱动的方法从分层基因列表中确定铂耐药性的核心参与者。我们利用DNA甲基化与基因表达数据的相关性,并应用基于网络的特征来识别DNA甲基化对基因表达的影响。这提供了解释性分析,并补充了生物途径富集方法。我们建议我们的方法基于网络结构特性,为多模态证据集成增加一个有用的层,以关注阻力机制中的关键过程和相互作用。
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Pathway and network analysis probing epigenetic influences on chemosensitivity in ovarian cancer
Ovarian cancer is the leading cause of death in gynecological cancers. Carboplatinum-based therapy is the standard treatment choice for ovarian cancer. However, a majority of the patients develop resistance to carboplatinum fairly rapidly hence there is a clinical need for early predictors of carboplatinum resistance. While there are a few indicative gene markers, they have poor sensitivity and specificity in predicting response accurately. It is essential that multiple high throughput molecular profiling modalities are integrated and investigated to provide a full picture of the ongoing processes. Here, we propose a methodology to identify central players in platinum resistance from a list of stratifying genes using a data-driven approach. We have used correlation of DNA methylation and gene expression data and applied network based features to identify the influence of DNA methylation on gene expression. This provides interpretive analysis and is complementary to the biological pathway-enrichment approaches. We suggest that our method, based on network structure properties, adds a useful layer to multi-modal evidence integration to focus on the key processes and interactions in resistance mechanisms.
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