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首页> 外文期刊>BMC Bioinformatics >Computational modeling of the immune response in multiple sclerosis using epimod framework
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Computational modeling of the immune response in multiple sclerosis using epimod framework

机译:使用EPIMOD框架的多发性硬化症免疫应答的计算模拟

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摘要

Multiple Sclerosis (MS) represents nowadays in Europe the leading cause of non-traumatic disabilities in young adults, with more than 700,000 EU cases. Although huge strides have been made over the years, MS etiology remains partially unknown. Furthermore, the presence of various endogenous and exogenous factors can greatly influence the immune response of different individuals, making it difficult to study and understand the disease. This becomes more evident in a personalized-fashion when medical doctors have to choose the best therapy for patient well-being. In this optics, the use of stochastic models, capable of taking into consideration all the fluctuations due to unknown factors and individual variability, is highly advisable. We propose a new model to study the immune response in relapsing remitting MS (RRMS), the most common form of MS that is characterized by alternate episodes of symptom exacerbation (relapses) with periods of disease stability (remission). In this new model, both the peripheral lymph node/blood vessel and the central nervous system are explicitly represented. The model was created and analysed using Epimod, our recently developed general framework for modeling complex biological systems. Then the effectiveness of our model was shown by modeling the complex immunological mechanisms characterizing RRMS during its course and under the DAC administration. Simulation results have proven the ability of the model to reproduce in silico the immune T cell balance characterizing RRMS course and the DAC effects. Furthermore, they confirmed the importance of a timely intervention on the disease course.
机译:多发性硬化症(MS)表示如今在欧洲,年轻成年人的非创伤性疾病的主要原因,超过70万欧盟案件。虽然多年来已经进行了巨大的进步,但MS病因仍然是部分未知的。此外,各种内源性和外源性因素的存在可以极大地影响不同个体的免疫应答,使得难以研究和理解这种疾病。当医生必须为患者福祉选择最佳治疗时,这在个性化时尚变得更加明显。在这种光学中,使用随机模型,能够考虑由于未知因素和个人可变性导致的所有波动,是非常可取的。我们提出了一种新模型来研究重复剩余MS(RRMS)的免疫应答,最常见的MS形式,其特征在于疾病稳定(缓解)的症状加剧(复发)的交替发作。在这种新模型中,明确地表示外周淋巴结/血管和中枢神经系统。我们最近开发了用于建模复杂生物系统的一般框架,使用EPIMOD创建和分析模型。然后通过模拟其在课程中和DAC给药期间表征RRMS的复杂免疫机制来显示模型的有效性。仿真结果证明了模型在硅中繁殖的能力,免疫T细胞平衡表征RRMS过程和DAC效应。此外,他们证实了及时干预疾病课程的重要性。

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