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Analyzing Rhabdomyosarcoma using the Multimodal Clustering Approach (DReiM)

机译:使用多峰聚类分析法(DReiM)分析横纹肌肉瘤

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Rhabdomyosarcoma is a type of cancer that is connected to soft tissue, connective tissue, or bone. Every year 350 children are diagnosed with Rhabdomyosarcoma. Majority of the kids diagnosed with this disease are under ten years of age. Though the intensive conventional approach to treatment exists, patients are still at high risks to this aggressive disease. The need to gain understanding and insight into this disease can help the design of therapeutic agents. We utilized a multimodal network approach to gain an understanding of this mechanism. Protein phosphorylation has been mostly studied as a post-translational modification in eukaryotes. They play a significant role in various cellular processes. The mechanism of its oncogenes is not well known with various levels of signaling protein dysregulation. In the Phosphosite database, some proteins phosphorylate to cause Rhabdomyosarcoma. Our method utilizes a co-clustering approach using multimodal networks to analyze the rhabdomyosarcoma network. Rhabdomyosarcoma network in general consists of several heterogeneous networks that include gene-pathway, pathway-drug, and gene-drug. We reconstruct the phosphorylation network for Rhabdomyosarcoma, by creating a network that consists of different types of nodes. The goal is to implement this clustering approach to identify a potential candidate for Rhabdomyosarcoma. We applied network centrality measures to find the most influential nodes first and foremost and then used the clustering approach stated above towards drug repositioning.
机译:横纹肌肉瘤是一种与软组织,结缔组织或骨骼相关的癌症。每年有350名儿童被诊断出横纹肌肉瘤。大多数被诊断患有这种疾病的孩子都在十岁以下。尽管存在密集的常规治疗方法,但患者仍很容易患上这种侵袭性疾病。对这种疾病的了解和了解的需求可以帮助设计治疗剂。我们利用多模式网络方法来了解这种机制。蛋白质磷酸化已被作为真核生物中的翻译后修饰进行了研究。它们在各种细胞过程中起着重要作用。其致癌基因的机制在各种水平的信号蛋白失调中尚不为人所知。在亚磷酸酯数据库中,一些蛋白质磷酸化导致横纹肌肉瘤。我们的方法利用多模态网络的共聚方法来分析横纹肌肉瘤网络。横纹肌肉瘤网络通常由几种异质网络组成,包括基因途径,途径药物和基因药物。通过创建由不同类型节点组成的网络,我们重建了横纹肌肉瘤的磷酸化网络。目标是实施这种聚类方法,以识别横纹肌肉瘤的潜在候选者。我们应用网络集中度度量来首先找到最有影响力的节点,然后将上述聚类方法用于药物重新定位。

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