...
首页> 外文期刊>PLoS One >Integrating environmental and neighborhood factors in MaxEnt modeling to predict species distributions: A case study of Aedes albopictus in southeastern Pennsylvania
【24h】

Integrating environmental and neighborhood factors in MaxEnt modeling to predict species distributions: A case study of Aedes albopictus in southeastern Pennsylvania

机译:在最大建模中集成环境和邻域因素以预测物种分布 - 以宾夕法尼亚州东南部的Aedes Albopictus为例

获取原文

摘要

Aedes albopictus is a viable vector for several infectious diseases such as Zika, West Nile, Dengue viruses and others. Originating from Asia, this invasive species is rapidly expanding into North American temperate areas and urbanized places causing major concerns for public health. Previous analyses show that warm temperatures and high humidity during the mosquito season are ideal conditions for A . albopictus development, while its distribution is correlated with population density. To better understand A . albopictus expansion into urban places it is important to consider the role of both environmental and neighborhood factors. The present study aims to assess the relative importance of both environmental variables and neighborhood factors in the prediction of A . albopictus ’ presence in Southeast Pennsylvania using MaxEnt (version 3.4.1) machine-learning algorithm. Three models are developed that include: (1) exclusively environmental variables, (2) exclusively neighborhood factors, and (3) a combination of environmental variables and neighborhood factors. Outcomes from the three models are compared in terms of variable importance, accuracy, and the spatial distribution of predicted A . albopictus’ presence. All three models predicted the presence of A . albopictus in urban centers, however, each to a different spatial extent. The combined model resulted in the highest accuracy (74.7%) compared to the model with only environmental variables (73.5%) and to the model with only neighborhood factors (72.1%) separately. Although the combined model does not essentially increase the accuracy in the prediction, the spatial patterns of mosquito distribution are different when compared to environmental or neighborhood factors alone. Environmental variables help to explain conditions associated with mosquitoes in suburban/rural areas, while neighborhood factors summarize the local conditions that can also impact mosquito habitats in predominantly urban places. Overall, the present study shows that MaxEnt is suitable for integrating neighborhood factors associated with mosquito presence that can complement and improve species distribution modeling.
机译:Aedes Albopictus是一种可行的载体,可用于诸如Zika,West Nile,登革热病毒等Zika,West Nile,登革热病毒等几种传染病。这种入侵物种源自亚洲,这种侵入性物种正在迅速扩展到北美温带地区和城市化的地方,导致公共卫生的主要担忧。以前的分析表明,蚊子季节的温暖温度和高湿度是一个理想的条件。 Albopictus开发,其分布与人口密度相关。更好地理解一个。 Albopictus扩展到城市的地方,重要的是考虑环境和邻里因素的作用。本研究旨在评估环境变量和邻域因素在预测中的相对重要性。 Albopictus使用MaxEnt(3.4.1版)机器学习算法在东南宾夕法尼亚州的存在。开发了三种模型,其中包括:(1)仅限环境变量,(2)仅限邻居因素,(3)环境变量和邻域因素的组合。在可变重要性,准确性和预测A的空间分布方面比较了三种模型的结果。 Albopictus的存在。所有三种模型都预测了存在的存在。然而,Albopictus在城市中心,每个都在不同的空间范围内。与只有环境变量(73.5%)的模型相比,组合模型的最高精度(74.7%)和仅具有邻域因素的模型(72.1%)。尽管组合模型基本上没有提高预测中的准确性,但与单独的环境或邻域因素相比,蚊子分布的空间模式不同。环境变量有助于解释与郊区/农村地区的蚊子相关的条件,而邻里因素总结了当地的条件,这些条件也可以影响蚊虫栖息地在主要的城市地点。总的来说,本研究表明,最大值适用于整合与蚊子存在相关的邻域因素,可以补充和改善物种分布建模。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号