Joshi R R
Department of Mathematics, Indian Institute of Technology, Powai, Bombay, India.
J Comput Biol. 1996 Winter;3(4):529-45. doi: 10.1089/cmb.1996.3.529.
A self-organizing cognitive network is mapped here onto the Id network model. The weight-vectors in this network represent some important topographical and biophysical parameters in the antibody-antigen affinity landscape. The Kohonen layers in the network correspond to affinity clones and the involved algorithm simulates the operations of clonal selection, hypermutation, differentiation, diversity, and affinity maturation. Two significant features of this model are: (i) a computationally feasible and biophysically informative representation of the para/epitopes, and (ii) the ability to perform simultaneous (parallel) and associative computations in a multidimensional shape-space. Computational experiments with real data have shown cognitive properties of this network. The results also indicate scope in quantitative characterization of the metadynamics of the above operations/weights in the adaptive development of the antibody repertoire.
一个自组织认知网络在此被映射到艾达网络模型上。该网络中的权重向量代表了抗体 - 抗原亲和力格局中的一些重要拓扑和生物物理参数。网络中的科霍宁层对应于亲和力克隆,所涉及的算法模拟了克隆选择、超突变、分化、多样性和亲和力成熟的操作。该模型的两个显著特征是:(i)对位/表位进行计算上可行且具有生物物理信息的表示,以及(ii)在多维形状空间中执行同步(并行)和关联计算的能力。使用真实数据进行的计算实验已表明该网络的认知特性。结果还表明在抗体库适应性发育中上述操作/权重的元动力学定量表征方面存在空间。