Institute of Mathematical Modeling for Biological Systems, Heinrich-Heine-University Dusseldorf, Dusseldorf, Germany.
Institute of Population Genetics, Heinrich-Heine-University Dusseldorf, Dusseldorf, Germany.
PLoS One. 2020 Sep 23;15(9):e0239417. doi: 10.1371/journal.pone.0239417. eCollection 2020.
In order to successfully reproduce, plants must sense changes in their environment and flower at the correct time. Many plants utilize day length and vernalization, a mechanism for verifying that winter has occurred, to determine when to flower. Our study used available temperature and day length data from different climates to provide a general understanding how this information processing of environmental signals could have evolved in plants. For climates where temperature fluctuation correlations decayed exponentially, a simple stochastic model characterizing vernalization was able to reconstruct the switch-like behavior of the core flowering regulatory genes. For these and other climates, artificial neural networks were used to predict flowering gene expression patterns. For temperate plants, long-term cold temperature and short-term day length measurements were sufficient to produce robust flowering time decisions from the neural networks. Additionally, evolutionary simulations on neural networks confirmed that the combined signal of temperature and day length achieved the highest fitness relative to neural networks with access to only one of those inputs. We suggest that winter temperature memory is a well-adapted strategy for plants' detection of seasonal changes, and absolute day length is useful for the subsequent triggering of flowering.
为了成功繁殖,植物必须感知环境的变化,并在正确的时间开花。许多植物利用日照长度和春化作用(一种验证冬季已经发生的机制)来确定何时开花。我们的研究利用来自不同气候的可用温度和日照长度数据,提供了对植物如何进化这种环境信号信息处理的一般理解。对于温度波动相关性呈指数衰减的气候,一个简单的随机模型可以很好地描述春化作用,从而重建核心开花调节基因的开关行为。对于这些气候和其他气候,我们使用人工神经网络来预测开花基因表达模式。对于温带植物,神经网络足以根据长期低温和短期日照长度测量值做出稳健的开花时间决策。此外,对神经网络的进化模拟证实,相对于仅能使用其中一个输入的神经网络,温度和日照长度的组合信号具有更高的适应性。我们认为,冬季温度记忆是植物检测季节性变化的一种适应性策略,而绝对日照长度对于随后的开花触发很有用。