利用染色质可及性和转录组数据发现癌症治疗靶点。

Andre Neil Forbes, Duo Xu, Sandra Cohen, Priya Pancholi, Ekta Khurana
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引用次数: 0

摘要

大多数癌症类型都缺乏靶向治疗选择,即使有一线靶向治疗药物,耐药性也是一个巨大的挑战。最近的技术进步使我们能以高通量的方式在患者组织上使用转座酶可访问染色质测序(ATAC-seq)和RNA测序(RNA-seq)。在这里,我们提出了一种计算方法,利用这些数据集来识别基于肿瘤谱系的药物靶点。我们利用三维基因组数据训练的机器学习方法,为 22 种癌症类型的 371 名患者构建了基因调控网络,以了解增强子与启动子之间的联系。接下来,我们确定了这些网络中的关键转录因子(TFs),通过直接靶向TFs或与其相互作用的蛋白质,找到治疗漏洞。我们验证了为神经内分泌癌、肝癌和肾癌确定的四种候选药物,目前的治疗方案对这些癌症的预后效果不佳。
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Discovery of therapeutic targets in cancer using chromatin accessibility and transcriptomic data.

Most cancer types lack targeted therapeutic options, and when first-line targeted therapies are available, treatment resistance is a huge challenge. Recent technological advances enable the use of assay for transposase-accessible chromatin with sequencing (ATAC-seq) and RNA sequencing (RNA-seq) on patient tissue in a high-throughput manner. Here, we present a computational approach that leverages these datasets to identify drug targets based on tumor lineage. We constructed gene regulatory networks for 371 patients of 22 cancer types using machine learning approaches trained with three-dimensional genomic data for enhancer-to-promoter contacts. Next, we identified the key transcription factors (TFs) in these networks, which are used to find therapeutic vulnerabilities, by direct targeting of either TFs or the proteins that they interact with. We validated four candidates identified for neuroendocrine, liver, and renal cancers, which have a dismal prognosis with current therapeutic options.

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