Modeling the Climate-Driven Spread of Pine Wilt Disease for Forest Pest Risk Assessment and Management Using MaxEnt
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초록

Pine wilt disease (PWD), caused by the invasive nematode Bursaphelenchus xylophilus, poses a growing threat to East Asian coniferous forests, which is further exacerbated by climate change. While studies have successfully applied Maximum Entropy (MaxEnt) models to map the potential spread of PWD, they have primarily focused on broad spatial scales and climatic factors. This highlights the need for fine-scale, integrative modeling approaches that also account for environmental and anthropogenic factors. Therefore, we applied the MaxEnt model combined with change vector analysis to evaluate the spatial risk and potential future spread of PWD in Andong-si, Republic of Korea, under the SSP1-2.6 climate scenario. We integrated forest structure, soil conditions, topography, climate variables, and anthropogenic factors to generate high-resolution risk maps and identify the most influential environmental drivers. Notably, we demonstrated that historical infection proximity and isothermality strongly influence habitat suitability. We also, for the first time, projected an eastward shift of high-risk areas in Andong-si under future climate conditions. These findings provide timely insights for designing proactive surveillance networks, implementing risk-based monitoring, and developing climate-resilient management strategies. Our integrative modeling framework offers decision-support tools that can enhance early detection and targeted interventions against invasive forest pests under environmental change.

키워드

change vector analysisclimate changeforest pest managementMaxEntpine wilt diseaseBURSAPHELENCHUS-XYLOPHILUSMONOCHAMUS-ALTERNATUSNEMATODE
제목
Modeling the Climate-Driven Spread of Pine Wilt Disease for Forest Pest Risk Assessment and Management Using MaxEnt
저자
Ha, ManleungLee, ChongkyuKim, Hyun
DOI
10.3390/f16111677
발행일
2025-11
유형
Article
저널명
Forests
16
11