Tretter F, Gebicke-Haerter P J, Albus M, an der Heiden U, Schwegler H
Department of Addictions, Isar Amper Clinics Munich East, Haar/Munich, Germany.
Pharmacopsychiatry. 2009 May;42 Suppl 1:S11-31. doi: 10.1055/s-0029-1220699. Epub 2009 May 11.
The onset of addiction is marked with drug induced positive experiences that keep being repeated. During that time, adaptation occurs and addiction is stabilized. Interruption of those processes induces polysymptomatic withdrawal syndromes. Abstinence is accompanied by risks of relapse. These features of addiction suggest adaptive brain dynamics with common pathways in complex neuronal networks. Addiction research has used animal models, where some of those phenomena could be reproduced, to find correlates of addictive behavior. The major thrust of those approaches has been on the involvement of genes and proteins. Recently, an enormous amount of data has been obtained by high throughput technologies in these fields. Therefore, (Computational) "Systems Biology" had to be implemented as a new approach in molecular biology and biochemistry. Conceptually, Systems Biology can be understood as a field of theoretical biology that tries to identify patterns in complex data sets and that reconstructs the cell and cellular networks as complex dynamic, self-organizing systems. This approach is embedded in systems science as an interdisciplinary effort to understand complex dynamical systems and belongs to the field of theoretical neuroscience (Computational Neuroscience). Systems biology, in a similar way as computational neuroscience is based on applied mathematics, computer-based computation and experimental simulation. In terms of addiction research, building up "computational molecular systems biology of the (addicted) neuron" could provide a better molecular biological understanding of addiction on the cellular and network level. Some key issues are addressed in this article.
成瘾的发作以药物诱导的反复出现的积极体验为标志。在此期间,会发生适应性变化,成瘾状态得以稳定。这些过程的中断会引发多症状戒断综合征。禁欲伴随着复发的风险。成瘾的这些特征表明,在复杂的神经元网络中,大脑动力学具有共同的适应性通路。成瘾研究使用了动物模型,在这些模型中可以重现其中一些现象,以寻找成瘾行为的相关因素。这些方法的主要重点一直是基因和蛋白质的作用。最近,通过这些领域的高通量技术已经获得了大量数据。因此,(计算)“系统生物学”必须作为分子生物学和生物化学中的一种新方法来实施。从概念上讲,系统生物学可以被理解为理论生物学的一个领域,它试图在复杂的数据集中识别模式,并将细胞和细胞网络重建为复杂的动态、自组织系统。这种方法作为理解复杂动态系统的跨学科努力,被嵌入系统科学之中,属于理论神经科学(计算神经科学)领域。系统生物学与计算神经科学类似,都基于应用数学、基于计算机的计算和实验模拟。就成瘾研究而言,建立“(成瘾)神经元的计算分子系统生物学”可以在细胞和网络层面上更好地从分子生物学角度理解成瘾。本文将探讨一些关键问题。