Center for Vector Biology, Rutgers University, New Brunswick, NJ 08901, USA; Department of Microbiology and Immunology, Center for Infectious Diseases, Stony Brook University, Stony Brook, NY 11794, USA.
Center for Vector Biology, Rutgers University, New Brunswick, NJ 08901, USA; Monmouth County Mosquito Control Division, Tick-borne Disease Program, Tinton Falls, NJ 07724, USA.
Ticks Tick Borne Dis. 2023 Mar;14(2):102126. doi: 10.1016/j.ttbdis.2023.102126. Epub 2023 Jan 19.
The Asian longhorned tick (Haemaphysalis longicornis) is a vector of multiple arboviral and bacterial pathogens in its native East Asia and expanded distribution in Australasia. This species has both bisexual and parthenogenetic populations that can reach high population densities under favorable conditions. Established populations of parthenogenetic H. longicornis were detected in the eastern United States in 2017 and the possible range of this species at the continental level (North America) based on climatic conditions has been modeled. However, little is known about factors influencing the distribution of H. longicornis at geographic scales relevant to local surveillance and control. To examine the importance of local physiogeographic conditions such as geology, soil characteristics, and land cover on the distribution of H. longicornis we employed ecological niche modeling using three machine learning algorithms - Maxent, Random Forest (RF), and Generalized Boosting Method (GBM) to estimate probability of finding H. longicornis in a particular location in New Jersey (USA), based on environmental predictors. The presence of H. longicornis in New Jersey was positively associated with Piedmont physiogeographic province and two soil types - Alfisols and Inceptisols. Soil hydraulic conductivity was the most important predictor explaining H. longicornis habitat suitability, with more permeable sandy soils with higher hydraulic conductivity being less suitable than clay or loam soils. The models were projected over the state of New Jersey creating a probabilistic map of H. longicornis habitat suitability at a high spatial resolution of 90×90 meters. The model's sensitivity was 87% for locations sampled in 2017-2019 adding to the growing evidence of the importance of soil characteristics to the survival of ticks. For the 2020-2022 dataset the model fit was 57%, suggestive of spillover to less optimal habitats or, alternatively, heterogeneity in soil characteristics at the edges of broad physiographic zones. Further modeling should incorporate abundance and life-stage information as well as detailed characterization of the soil at collection sites. Once critical parameters that drive the survival and abundance of H. longicornis are identified they can be used to guide surveillance and control strategies for this invasive species.
亚洲长角血蜱(Haemaphysalis longicornis)是其原生东亚和扩大分布的澳大拉西亚多种虫媒病毒和细菌病原体的媒介。该物种既有两性种群,也有单性生殖种群,在有利条件下可达到较高的种群密度。2017 年在美国东部发现了单性生殖的亚洲长角血蜱的定殖种群,并且根据气候条件,该物种在大陆层面(北美)的可能分布范围已经建模。然而,对于影响亚洲长角血蜱在与当地监测和控制相关的地理尺度上分布的因素知之甚少。为了研究地质、土壤特征和土地覆盖等局部自然地理条件对亚洲长角血蜱分布的重要性,我们使用了三种机器学习算法——最大熵法(Maxent)、随机森林(RF)和广义加性模型(GBM)来进行生态位建模,以根据环境预测因子估计在新泽西州(美国)特定地点发现亚洲长角血蜱的概率。新泽西州亚洲长角血蜱的存在与皮埃蒙特自然地理区和两种土壤类型——淋溶土和始成土呈正相关。土壤水力传导率是解释亚洲长角血蜱栖息地适宜性的最重要预测因子,具有更高水力传导率的更透水的沙质土壤比粘性土壤或壤土更不适宜。这些模型被投影到新泽西州,创建了一个高空间分辨率为 90×90 米的亚洲长角血蜱栖息地适宜性概率图。该模型对 2017 年至 2019 年采样地点的敏感性为 87%,这增加了土壤特征对蜱类生存重要性的证据。对于 2020 年至 2022 年的数据集,模型拟合度为 57%,这表明有溢出到不太理想的栖息地的情况,或者在广泛的自然地理区域边缘土壤特征存在异质性。进一步的建模应该纳入丰度和生命阶段信息,以及在采集点对土壤进行详细描述。一旦确定了驱动亚洲长角血蜱生存和丰度的关键参数,就可以将其用于指导对这种入侵物种的监测和控制策略。