整合抗原识别对疾病流行病学结果影响的计算框架:多尺度方法

S. Mukherjee, N. Chandra
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引用次数: 0

摘要

人类白细胞抗原(HLA)在将外来病原体呈递到我们的免疫系统中起着重要的作用,在那里引起早期的免疫反应。HLA基因是高度多态性的,产生了不同的抗原呈递能力。导致个体对疾病反应差异巨大的一个重要因素是HLA谱的差异。等位基因特异性疾病反应的异质性决定了总体疾病流行病学结果。在这里,我们提出了一个基于agent的计算框架,能够整合等位基因特异性信息,以分析疾病流行病学。该框架采用SIR模型来估计平均疾病传播率和恢复率。利用表位预测工具,对给定的致病基因组进行基于序列的表位检测,并根据表位检测效率推导出等位基因特异性疾病易感性指数。随后,将等位基因特异性疾病传播率输入基于因子的流行病学模型,以分析疾病结果。本文提出的方法在了解疾病如何传播和采取有效措施控制疾病方面具有潜在的用途。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational framework to integrate the effect of antigen recognition on disease epidemiology outcome: Multi-scale approach
Human Leukocyte Antigen (HLA) plays an important role, in presenting foreign pathogens to our immune system, there by eliciting early immune responses. HLA genes are highly polymorphic, giving rise to diverse antigen presentation capability. An important factor contributing to enormous variations in individual responses to diseases is differences in their HLA profiles. The heterogeneity in allele specific disease responses decides the overall disease epidemiological outcome. Here we propose an agent based computational framework, capable of incorporating allele specific information, to analyze disease epidemiology. This framework assumes a SIR model to estimate average disease transmission and recovery rate. Using epitope prediction tool, it performs sequence based epitope detection for a given the pathogenic genome and derives an allele specific disease susceptibility index depending on the epitope detection efficiency. The allele specific disease transmission rate, that follows, is then fed to the agent based epidemiology model, to analyze the disease outcome. The methodology presented here has a potential use in understanding how a disease spreads and effective measures to control the disease.
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