生物
先天免疫系统
进化生物学
系统发育学
谱系(遗传)
模式识别受体
转录组
系统发育树
脊椎动物
免疫系统
剧目
基因
生态学
遗传学
基因表达
物理
声学
作者
Amaro Saco,Beatriz Novoa,Samuele Greco,Marco Gerdol,António Figueras
标识
DOI:10.1093/molbev/msad133
摘要
Toll-like receptors (TLRs) are the most widespread class of membrane-bound innate immune receptors, responsible of specific pathogen recognition and production of immune effectors through the activation of intracellular signaling cascades. The repertoire of TLRs was analyzed in 85 metazoans, enriched on molluscan species, an underrepresented phylum in previous studies. Following an ancient evolutionary origin, suggested by the presence of TLR genes in Anthozoa (Cnidaria), these receptors underwent multiple independent gene family expansions, the most significant of which occurred in bivalve molluscs. Marine mussels (Mytilus spp.) had the largest TLR repertoire in the animal kingdom, with evidence of several lineage-specific expanded TLR subfamilies with different degrees of orthology conservation within bivalves. Phylogenetic analyses revealed that bivalve TLR repertoires were more diversified than their counterparts in deuterostomes or ecdysozoans. The complex evolutionary history of TLRs, characterized by lineage-specific expansions and losses, along with episodic positive selection acting on the extracellular recognition domains, suggests that functional diversification might be a leading evolutionary force. We analyzed a comprehensive transcriptomic data set from Mytilus galloprovincialis and built transcriptomic correlation clusters with the TLRs expressed in gills and in hemocytes. The implication of specific TLRs in different immune pathways was evidenced, as well as their specific modulation in response to different biotic and abiotic stimuli. We propose that, in a similar fashion to the remarkable functional specialization of vertebrate TLRs, the expansion of the TLR gene family in bivalves attends to a functional specification motivated by the biological particularities of these organisms and their living environment.
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