Mapping the Risk of Sudden Oak Death in Oregon: Prioritizing Locations for Early Detection and Eradication

被引:0
作者
Vaclavik, Tomas [1 ]
Kanaskie, Alan [2 ]
Goheen, Ellen [3 ]
Ohmann, Janet [4 ]
Hansen, Everett [5 ]
Meentemeyer, Ross [1 ]
机构
[1] Univ N Carolina, Ctr Appl GISci, Dept Geog & Earth Sci, 9201 Univ City Blvd, Charlotte, NC 28223 USA
[2] Oregon Dept Forestry, Salem, OR USA
[3] USDA Forest Serv, J Herbert Stone Nursery, Corvallis, OR 97502 USA
[4] USDA Forest Serv, Pacific6 Northwest Res Stn, Corvallis, OR 97331 USA
[5] Oregon State Univ, Dept Bot & Plant Pathol, Corvallis, OR 97331 USA
来源
PROCEEDINGS OF THE SUDDEN OAK DEATH FOURTH SCIENCE SYMPOSIUM | 2010年 / 229卷
关键词
D O I
暂无
中图分类号
S7 [林业];
学科分类号
0829 ; 0907 ;
摘要
Phytophthora ramorum was first discovered in forests of southwestern Oregon in 2001. Despite intense eradication efforts, disease continues to spread from initially infested sites because of the late discovery of disease outbreaks and incomplete detection. Here we present two GIS predictive models of sudden oak death (SOD) establishment and spread risk that can be used to target monitoring and eradication activities in western Oregon. Model predictions were based on three primary parameters: weather and climate variability, host vegetation susceptibility and distribution, and dispersal (force of infection). First, a heuristic model using multi-criteria evaluation (MCE) method was developed to identify the areas at potential risk. We mapped and ranked host susceptibility using new geospatial vegetation data available from the U.S. Depaihnent of Agriculture, Forest Service (USDA FS)/Oregon State University (OSU) Landscape, Ecology, Modeling, Mapping, and Analysis project (LEMMA). Precipitation and temperature conditions derived from PRISM climate database were parameterized in accordance to their epidemiological importance in the SOD disease system. The final appraisal scores were calculated and summarized to represent a cumulative spread risk index, standardized into five risk categories from very low risk to very high risk. Second, we used the machine-learning method, maximum entropy (MAXENT) to predict the current distribution of SOD infections. Here, probability of infection was calibrated based on the correlation between 500 field observations of disease occurrence and several predictor variables including climate variability, host susceptibility and abundance, topographic variables, and a dispersal constraint. The dispersal constraint estimates the force of infection at all locations and thus predicts the actual or current distribution of the pathogen rather than its potential distribution. Numerous forests across the western region of Oregon appear to be susceptible to SOD. Areas at greatest risk of disease spread are concentrated in the southwest region of Oregon where the highest densities of susceptible host species exist, in particular tanoak (Lithocarpus densiflorus). These models provide a better picture of threatened forest resources across the state and are being actively used to prioritize early detection and eradication efforts.
引用
收藏
页码:126 / +
页数:2
相关论文
共 50 条
  • [41] Myocardial T1 Mapping to Identify Risk of Sudden Death in Heart Failure
    Sakuma, Hajime
    RADIOLOGY, 2023, 307 (03)
  • [42] Can canopy reflectance be used for early detection of soybean sudden death syndrome?
    Raza, Muhhamad Mohsin
    Eggenberger, Sharon
    Nutter, Forrest W., Jr.
    Leandro, Leonor F. S.
    PHYTOPATHOLOGY, 2017, 107 (12) : 175 - 176
  • [43] Why Is There an Increased Risk for Sudden Cardiac Death in Patients With Early Repolarization Syndrome?
    Yakkali, Shreyas
    Selvin, Sneha Teresa
    Thomas, Sonu
    Bikeyeva, Viktoriya
    Abdullah, Ahmed
    Radivojevic, Aleksandra
    Abu Jad, Anas A.
    Ravanavena, Anvesh
    Ravindra, Chetna
    Igweonu-Nwakile, Emmanuelar O.
    Ali, Safina
    Paul, Salomi
    Hamid, Pousette
    CUREUS JOURNAL OF MEDICAL SCIENCE, 2022, 14 (07)
  • [44] Sudden death of father or sibling in early childhood increases risk for psychotic disorder
    Clarke, Mary C.
    Tanskanen, Antti
    Huttunen, Matti O.
    Cannon, Mary
    SCHIZOPHRENIA RESEARCH, 2013, 143 (2-3) : 363 - 366
  • [45] Management of sudden cardiac death risk in the very early postmyocardial infarction period
    Daoud, Emile G.
    Hummel, John D.
    Rhodes, Troy E.
    CURRENT OPINION IN CARDIOLOGY, 2010, 25 (03) : 253 - 261
  • [46] SODplex, a Series of Hierarchical Multiplexed Real-Time PCR Assays for the Detection and Lineage Identification of Phytophthora ramorum, the Causal Agent of Sudden Oak Death and Sudden Larch Death
    Capron, Arnaud
    Herath, Padmini
    Alayon, D. I. Ojeda
    Cervantes, Sandra
    Day, Brittany
    Brar, Avneet
    Bilodeau, Guillaume J.
    Shamoun, Simon F.
    Webber, Joan
    Brasier, Clive
    Feau, Nicolas
    Hamelin, Richard C.
    PHYTOFRONTIERS, 2023, 3 (01): : 173 - 185
  • [47] The Electrocardiographic Early Repolarization Pattern in AthletesNormal Variant or Sudden Death Risk Factor?
    Varsha Keelara Tanguturi
    Peter A. Noseworthy
    Christopher Newton-Cheh
    Aaron L. Baggish
    Sports Medicine, 2012, 42 : 359 - 366
  • [48] Association mapping and genomic prediction for resistance to sudden death syndrome in early maturing soybean germplasm
    Bao, Yong
    Kurle, James E.
    Anderson, Grace
    Young, Nevin D.
    MOLECULAR BREEDING, 2015, 35 (06)
  • [49] Association mapping and genomic prediction for resistance to sudden death syndrome in early maturing soybean germplasm
    Yong Bao
    James E. Kurle
    Grace Anderson
    Nevin D. Young
    Molecular Breeding, 2015, 35
  • [50] POTENTIAL OCCURRENCE RISK PREDICTION OF SUDDEN OAK DEATH UNDER DIFFERENT FUTURE CLIMATE SCENARIOS BASED ON SVM MODEL
    Chen, Wei
    Cao, Chunxiang
    Fang, Zhou
    Jiang, Houzhi
    Fang, Xiaotong
    Bao, Shanning
    Xie, Bo
    IGARSS 2018 - 2018 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, 2018, : 5228 - 5231