Promislow Daniel E L
Department of Genetics, University of Georgia, Athens, GA 30602-7223, USA.
Proc Biol Sci. 2004 Jun 22;271(1545):1225-34. doi: 10.1098/rspb.2004.2732.
The number of interactions, or connectivity, among proteins in the yeast protein interaction network follows a power law. I compare patterns of connectivity for subsets of yeast proteins associated with senescence and with five other traits. I find that proteins associated with ageing have significantly higher connectivity than expected by chance, a pattern not seen for most other datasets. The pattern holds even when controlling for other factors also associated with connectivity, such as localization of protein expression within the cell. I suggest that these observations are consistent with the antagonistic pleiotropy theory for the evolution of senescence. In further support of this argument, I find that a protein's connectivity is positively correlated with the number of traits it influences or its degree of pleiotropy, and further show that the average degree of pleiotropy is greatest for proteins associated with senescence. I explain these results with a simple mathematical model combining assumptions of the antagonistic pleiotropy theory for the evolution of senescence with data on network topology. These findings integrate molecular and evolutionary models of senescence, and should aid in the search for new ageing genes.
酵母蛋白质相互作用网络中蛋白质之间的相互作用数量,即连接性,遵循幂律。我比较了与衰老以及其他五个性状相关的酵母蛋白质亚组的连接模式。我发现,与衰老相关的蛋白质具有显著高于随机预期的连接性,大多数其他数据集未出现这种模式。即使在控制了其他也与连接性相关的因素(如蛋白质在细胞内的表达定位)时,该模式依然成立。我认为这些观察结果与衰老进化的拮抗多效性理论相一致。为进一步支持这一论点,我发现蛋白质的连接性与其影响的性状数量或其多效性程度呈正相关,并且进一步表明,与衰老相关的蛋白质的平均多效性程度最大。我用一个简单的数学模型解释了这些结果,该模型将衰老进化的拮抗多效性理论假设与网络拓扑数据相结合。这些发现整合了衰老的分子和进化模型,应有助于寻找新的衰老基因。