Louzoun Yoram
Department of Mathematics, Bar Ilan University, Ramat Gan, Israel.
Immunol Rev. 2007 Apr;216:9-20. doi: 10.1111/j.1600-065X.2006.00495.x.
The types of mathematical models used in immunology and their scope have changed drastically in the past 10 years. Classical models were based on ordinary differential equations (ODEs), difference equations, and cellular automata. These models focused on the 'simple' dynamics obtained between a small number of reagent types (e.g. one type of receptor and one type of antigen or two T-cell populations). With the advent of high-throughput methods, genomic data, and unlimited computing power, immunological modeling shifted toward the informatics side. Many current applications of mathematical models in immunology are now focused around the concepts of high-throughput measurements and system immunology (immunomics), as well as the bioinformatics analysis of molecular immunology. The types of models have shifted from mainly ODEs of simple systems to the extensive use of Monte Carlo simulations. The transition to a more molecular and more computer-based attitude is similar to the one occurring over all the fields of complex systems analysis. An interesting additional aspect in theoretical immunology is the transition from an extreme focus on the adaptive immune system (that was considered more interesting from a theoretical point of view) to a more balanced focus taking into account the innate immune system also. We here review the origin and evolution of mathematical modeling in immunology and the contribution of such models to many important immunological concepts.
在过去10年里,免疫学中使用的数学模型类型及其范围发生了巨大变化。经典模型基于常微分方程(ODEs)、差分方程和细胞自动机。这些模型关注的是少数试剂类型(例如一种受体类型和一种抗原类型或两个T细胞群体)之间获得的“简单”动态。随着高通量方法、基因组数据和无限计算能力的出现,免疫建模转向了信息学领域。数学模型目前在免疫学中的许多应用现在都集中在高通量测量和系统免疫学(免疫组学)的概念,以及分子免疫学的生物信息学分析上。模型类型已从主要是简单系统的常微分方程转变为广泛使用蒙特卡罗模拟。向更具分子性和更基于计算机的态度的转变类似于复杂系统分析所有领域中正在发生的转变。理论免疫学中一个有趣的附加方面是从极度关注适应性免疫系统(从理论角度来看被认为更有趣)转变为也考虑先天免疫系统的更平衡的关注。我们在此回顾免疫学中数学建模的起源和演变,以及此类模型对许多重要免疫学概念的贡献。