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Mutational Forks: Inferring Deregulated Flow of Signal Transduction Based on Patient-Specific Mutations

机译:突变叉:基于患者特定突变推断信号传导的失调流

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The precise mechanism behind treatment resistance in cancer is still not fully understood. Despite advances in precision oncology, there is a lack of tools that help to understand a mechanistic picture of treatment resistance in cancer patients. Existing enrichment methods heavily rely on quantitative data and limited to analysis of differentially expressed genes, ignoring crucial players that might be involved in this process. In order to tackle treatment resistance, the precise identification of deregulated flow of signal transduction is critical. Here, we introduce a bioinformatics framework that is capable of inferring deregulated flow of signal transduction given evidence-based knowledge about pathway topology and patient-specific mutations. While testing the proposed pipeline on a case study, our algorithm was able to confirm findings from biological experiment, where KRAS mutant cells developed treatment resistance to MEK inhibitor. Our model provides a framework for mechanistic understanding of acquired treatment resistance, thus, equipped clinicians with tool for searching more accurate diagnostic clues in patients with non-trivial disease representations.
机译:癌症抗药性的确切机制仍未完全了解。尽管精确肿瘤学方面取得了进步,但仍然缺乏有助于了解癌症患者治疗耐药性机制的工具。现有的富集方法在很大程度上依赖于定量数据,并且仅限于差异表达基因的分析,而忽略了可能参与此过程的关键因素。为了解决治疗阻力,精确识别信号传导失调的流量至关重要。在这里,我们介绍了一种生物信息学框架,该框架能够根据有关路径拓扑和患者特定突变的循证知识,推断信号传导的失调流。在案例研究中对拟议中的管道进行测试时,我们的算法能够证实生物学实验的发现,其中KRAS突变细胞对MEK抑制剂产生了治疗抗性。我们的模型提供了一个机制,以机械方式了解获得性治疗的抵抗力,因此,为临床医生提供了工具,可在具有非琐碎疾病表现的患者中寻找更准确的诊断线索。

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