生物
泛混合症
人口
航程(航空)
进化生物学
群体基因组学
基因组
基因组学
按距离隔离
系统地理学
水螅
生态学
遗传结构
遗传变异
遗传学
系统发育学
蛇床子属
基因
珊瑚
人口学
社会学
材料科学
复合材料
作者
Samuel H. Church,River B. Abedon,Namrata Ahuja,Colin J. Anthony,Dalila Destanović,D. A. Ramirez,Lourdes M. Rojas,Maria E. Albinsson,Itziar Álvarez Trasobares,Reza Bergemann,Ozren Bogdanović,David R. Burdick,Tauana Cunha,Alejandro Damian‐Serrano,Guillermo D’Elía,Kirstin Dion,Thomas K. Doyle,João M. Gonçalves,Álvaro González-Rajal,Steven H. D. Haddock
出处
期刊:Current Biology
[Elsevier BV]
日期:2025-06-19
卷期号:35 (15): 3556-3569.e6
被引量:6
标识
DOI:10.1016/j.cub.2025.05.066
摘要
The open ocean is a vast, highly connected environment, and the organisms found there have been hypothesized to represent massive, well-mixed populations. Of these, the man-o'-war or bluebottle (Physalia) is uniquely suited to long-distance travel, using its gas-filled float and muscular crest to catch the wind and sail the sea surface. We tested the hypothesis of a global, panmictic Physalia population by sequencing whole genomes of 151 samples and found five distinct lineages, with multiple lines of evidence indicating strong reproductive isolation, despite range overlap. We then scored thousands of images of Physalia uploaded to the citizen-science website inaturalist.org and identified four recognizable morphologies, described their geographical distribution, and linked them to four of the lineages that were identified with genomic data. We conclude there are at least four species, three of which correspond to species proposed by scientists in the 18th and 19th centuries, along with one newly named species, Physalia minuta Church and Dunn, sp. nov. Within each species, we observe significant population structure, with evidence of persistent subpopulations at a regional scale. We used ocean circulation modeling to show that these subpopulations align with predominant currents and winds. Our findings indicate that, even in these sailing species, genetic variation is highly partitioned across the open ocean.
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