Department of Molecular and Cell Biology, University of Connecticut.
Mol Biol Evol. 2013 Nov;30(11):2463-74. doi: 10.1093/molbev/mst145. Epub 2013 Aug 21.
Optimal growth temperature is a complex trait involving many cellular components, and its physiology is not yet fully understood. Evolution of continuous characters, such as optimal growth temperature, is often modeled as a one-dimensional random walk, but such a model may be an oversimplification given the complex processes underlying the evolution of continuous characters. Recent articles have used ancestral sequence reconstruction to infer the optimal growth temperature of ancient organisms from the guanine and cytosine content of the stem regions of ribosomal RNA, allowing inferences about the evolution of optimal growth temperature. Here, we investigate the optimal growth temperature of the bacterial phylum Thermotogae. Ancestral sequence reconstruction using a nonhomogeneous model was used to reconstruct the stem guanine and cytosine content of 16S rRNA sequences. We compare this sequence reconstruction method with other ancestral character reconstruction methods, and show that sequence reconstruction generates smaller confidence intervals and different ancestral values than other reconstruction methods. Unbiased random walk simulation indicates that the lower temperature members of the Thermotogales have been under directional selection; however, when a simulation is performed that takes possible mutations into account, it is the high temperature lineages that are, in fact, under directional selection. We find that the evolution of Thermotogales optimal growth temperatures is best fit by a biased random walk model. These findings suggest that it may be easier to evolve from a high optimal growth temperature to a lower one than vice versa.
最适生长温度是一个涉及许多细胞成分的复杂特征,其生理学尚未完全理解。连续性状的进化,如最适生长温度,通常被建模为一维随机游走,但鉴于连续性状进化背后的复杂过程,这种模型可能过于简单化。最近的一些文章使用祖先序列重建从核糖体 RNA 的茎区的鸟嘌呤和胞嘧啶含量推断古代生物的最适生长温度,从而可以推断最适生长温度的进化。在这里,我们研究了细菌门Thermotogae 的最适生长温度。使用非均匀模型进行祖先序列重建,以重建 16S rRNA 序列的茎区鸟嘌呤和胞嘧啶含量。我们将这种序列重建方法与其他祖先特征重建方法进行了比较,并表明序列重建比其他重建方法产生更小的置信区间和不同的祖先值。无偏随机游走模拟表明,Thermotogales 的低温成员受到定向选择;然而,当考虑可能的突变进行模拟时,实际上是高温谱系受到定向选择。我们发现,偏向随机游走模型最适合 Thermotogales 最适生长温度的进化。这些发现表明,从高最适生长温度进化到低最适生长温度可能比反之更容易。