Department of Informatics, University of Sussex, Falmer, Brighton, United Kingdom.
PLoS Comput Biol. 2012;8(11):e1002739. doi: 10.1371/journal.pcbi.1002739. Epub 2012 Nov 1.
Organisms that can learn about their environment and modify their behaviour appropriately during their lifetime are more likely to survive and reproduce than organisms that do not. While associative learning - the ability to detect correlated features of the environment - has been studied extensively in nervous systems, where the underlying mechanisms are reasonably well understood, mechanisms within single cells that could allow associative learning have received little attention. Here, using in silico evolution of chemical networks, we show that there exists a diversity of remarkably simple and plausible chemical solutions to the associative learning problem, the simplest of which uses only one core chemical reaction. We then asked to what extent a linear combination of chemical concentrations in the network could approximate the ideal Bayesian posterior of an environment given the stimulus history so far? This Bayesian analysis revealed the 'memory traces' of the chemical network. The implication of this paper is that there is little reason to believe that a lack of suitable phenotypic variation would prevent associative learning from evolving in cell signalling, metabolic, gene regulatory, or a mixture of these networks in cells.
能够在其一生中了解环境并适当修改其行为的生物体比不具备这种能力的生物体更有可能生存和繁殖。虽然在神经系统中已经广泛研究了联想学习(即检测环境相关特征的能力),并且对其潜在机制有了较为充分的了解,但对于能够实现联想学习的单个细胞内的机制却关注甚少。在这里,我们使用化学网络的计算机进化,表明存在着多种多样简单而合理的化学解决方案来解决联想学习问题,其中最简单的方案仅使用一个核心化学反应。然后,我们询问网络中的化学浓度线性组合在多大程度上可以近似给定当前刺激历史的环境的理想贝叶斯后验概率?这种贝叶斯分析揭示了化学网络的“记忆痕迹”。本文的含义是,没有理由认为缺乏合适的表型变化会阻止细胞信号转导、代谢、基因调控或这些网络混合的细胞中的联想学习的进化。