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首页> 外文期刊>PLoS Computational Biology >Dynamical and Structural Analysis of a T Cell Survival Network Identifies Novel Candidate Therapeutic Targets for Large Granular Lymphocyte Leukemia
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Dynamical and Structural Analysis of a T Cell Survival Network Identifies Novel Candidate Therapeutic Targets for Large Granular Lymphocyte Leukemia

机译:T细胞生存网络的动力学和结构分析确定了大颗粒淋巴细胞白血病的新型候选治疗靶标。

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The blood cancer T cell large granular lymphocyte (T-LGL) leukemia is a chronic disease characterized by a clonal proliferation of cytotoxic T cells. As no curative therapy is yet known for this disease, identification of potential therapeutic targets is of immense importance. In this paper, we perform a comprehensive dynamical and structural analysis of a network model of this disease. By employing a network reduction technique, we identify the stationary states (fixed points) of the system, representing normal and diseased (T-LGL) behavior, and analyze their precursor states (basins of attraction) using an asynchronous Boolean dynamic framework. This analysis identifies the T-LGL states of 54 components of the network, out of which 36 (67%) are corroborated by previous experimental evidence and the rest are novel predictions. We further test and validate one of these newly identified states experimentally. Specifically, we verify the prediction that the node SMAD is over-active in leukemic T-LGL by demonstrating the predominant phosphorylation of the SMAD family members Smad2 and Smad3. Our systematic perturbation analysis using dynamical and structural methods leads to the identification of 19 potential therapeutic targets, 68% of which are corroborated by experimental evidence. The novel therapeutic targets provide valuable guidance for wet-bench experiments. In addition, we successfully identify two new candidates for engineering long-lived T cells necessary for the delivery of virus and cancer vaccines. Overall, this study provides a bird's-eye-view of the avenues available for identification of therapeutic targets for similar diseases through perturbation of the underlying signal transduction network.
机译:血液癌T细胞大颗粒淋巴细胞(T-LGL)白血病是一种慢性疾病,其特征在于细胞毒性T细胞的克隆增殖。由于尚无针对该疾病的治疗方法,因此潜在治疗靶标的识别非常重要。在本文中,我们对该疾病的网络模型进行了全面的动力学和结构分析。通过使用网络归约技术,我们可以识别代表正常和患病(T-LGL)行为的系统固定状态(不动点),并使用异步布尔动态框架分析其先驱状态(吸引域)。该分析确定了网络中54个组件的T-LGL状态,其中36个(67%)被先前的实验证据所证实,其余都是新颖的预测。我们将通过实验进一步测试和验证这些新发现的状态之一。具体来说,我们通过证明SMAD家族成员Smad2和Smad3的主要磷酸化,验证了在白血病T-LGL中SMAD节点过度活跃的预测。我们使用动力学和结构方法进行的系统性扰动分析可确定19个潜在的治疗靶标,其中68%的实验证据证实了这一点。新型治疗靶为湿床实验提供了有价值的指导。此外,我们成功地确定了两个新的候选药物,用于工程化运送病毒和癌症疫苗所需的长寿命T细胞。总体而言,这项研究提供了通过干扰潜在的信号转导网络来确定相似疾病的治疗靶点的途径的鸟瞰图。

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