A machine-learning approach to map landscape connectivity in Aedes aegypti with genetic and environmental data

被引:29
|
作者
Pless, Evlyn [1 ,2 ]
Saarman, Norah P. [1 ,3 ]
Powell, Jeffrey R. [1 ]
Caccone, Adalgisa [1 ]
Amatulli, Giuseppe [4 ,5 ]
机构
[1] Yale Univ, Dept Ecol & Evolutionary Biol, New Haven, CT 06511 USA
[2] Anthropol Univ Calif, Dept Anthropol, Davis, CA 95616 USA
[3] Utah State Univ, Dept Biol, Logan, UT 84321 USA
[4] Yale Univ, Sch Environm, New Haven, CT 06511 USA
[5] Yale Univ, Ctr Res Comp, New Haven, CT 06511 USA
关键词
landscape genetics; random forest; vector control; invasive species; gene flow; RANDOM FORESTS; FLOW; DISPERSAL; SOFTWARE; GENOTYPE; MOSQUITO; PROGRAMS; PLANT;
D O I
10.1073/pnas.2003201118
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Mapping landscape connectivity is important for controlling invasive species and disease vectors. Current landscape genetics methods are often constrained by the subjectivity of creating resistance surfaces and the difficulty of working with interacting and correlated environmental variables. To overcome these constraints, we combine the advantages of a machine-learning framework and an iterative optimization process to develop a method for integrating genetic and environmental (e.g., climate, land cover, human infrastructure) data. We validate and demonstrate this method for the Aedes aegypti mosquito, an invasive species and the primary vector of dengue, yellow fever, chikungunya, and Zika. We test two contrasting metrics to approximate genetic distance and find Cavalli-Sforza-Edwards distance (CSE) performs better than linearized F-ST. The correlation (R) between the model's predicted genetic distance and actual distance is 0.83. We produce a map of genetic connectivity for Ae. aegypti's range in North America and discuss which environmental and anthropogenic variables are most important for predicting gene flow, especially in the context of vector control.
引用
收藏
页数:8
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