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典型文献
Use of 3D-printed animal models as a standard method to test avian behavioral responses toward nest intruders in the studies of avian brood parasitism
文献摘要:
Living and/or non-living animal models are often used as stimuli to observe the behavioral responses of the target animals.In the past,parasites,predators,and harmless controls have been used to test host anti-parasitism de-fense behavior,and their taxidermy specimens have been widely used as a set of standard methods for the study of avian brood parasitism.In recent years,with the rapid development of 3D-printing technology,3D-printed bird models are expected to be applied as a standard method in the study of avian brood parasitism.To evaluate the use of 3D-printed models,this study tests the reaction of Oriental Reed Warbler(Acrocephalus orientalis)towards predators,parasites,or controls,and compares the reaction among different nest intruders and between taxidermy specimens and 3D-printed animal models.It was found that the Oriental Reed Warbler responded most aggres-sively to the parasite,followed by predator,and finally the control;the results were consistent between the re-action to taxidermy specimens and 3D-printed animal models,indicating that 3D-printed models could serve as a substitute for taxidermy specimens.We propose a series of advantages of using 3D-printed models and suggest them to be a standard method for widespread use in future studies of avian brood parasitism.
文献关键词:
作者姓名:
Xiangyang Chen;Yan Cai;Jiaojiao Wang;Canchao Yang
作者机构:
Ministry of Education Key Laboratory for Ecology of Tropical Islands,College of Life Sciences,Hainan Normal University,Haikou,571158,China
引用格式:
[1]Xiangyang Chen;Yan Cai;Jiaojiao Wang;Canchao Yang-.Use of 3D-printed animal models as a standard method to test avian behavioral responses toward nest intruders in the studies of avian brood parasitism)[J].鸟类学研究(英文版),2022(04):487-490
A类:
intruders,taxidermy,Warbler,Acrocephalus,aggres
B类:
Use,printed,models,standard,avian,behavioral,responses,nest,studies,brood,parasitism,Living,living,often,used,stimuli,observe,target,animals,In,past,parasites,predators,harmless,controls,have,been,host,anti,fense,their,specimens,widely,set,methods,study,recent,years,rapid,development,printing,technology,bird,expected,applied,To,evaluate,this,tests,reaction,Oriental,Reed,orientalis,towards,compares,among,different,between,It,was,found,that,responded,most,sively,followed,by,finally,results,were,consistent,indicating,could,substitute,We,propose,series,advantages,using,suggest,them,widespread,future
AB值:
0.396106
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