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用于估计和分类啤酒花白粉病发病率的序贯抽样I:叶片抽样

Sequential Sampling for Estimation and Classification of the Incidence of Hop Powdery Mildew I: Leaf Sampling.

作者信息

Gent David H, Turechek William W, Mahaffee Walter F

机构信息

United States Department of Agriculture-Agricultural Research Service (USDA-ARS), Forage Seed and Cereal Research Unit, Oregon State University, Department of Botany and Plant Pathology, Corvallis 97331.

USDA-ARS, United States Horticultural Research Laboratory, Fort Pierce, FL 34945-3030.

出版信息

Plant Dis. 2007 Aug;91(8):1002-1012. doi: 10.1094/PDIS-91-8-1002.

Abstract

Hop powdery mildew (caused by Podosphaera macularis) is an important disease of hops (Humulus lupulus) in the Pacific Northwest. Sequential sampling models for estimation and classification of the incidence of powdery mildew on leaves of hop were developed based on the beta-binomial distribution, using parameter estimates of the binary power law determined in previous studies. Stop lines, models that indicate that enough information has been collected to estimate disease incidence and cease sampling, for sequential estimation were validated by bootstrap simulations of a select group of 18 data sets (out of a total of 198 data sets) from the model-construction data, and through simulated sampling of 104 data sets collected independently (i.e., validation data sets). The achieved coefficient of variation (C) approached prespecified C values as the achieved disease incidence ( ) increased. Achieving a C of 0.1 was not possible for data sets in which < 0.10. The 95% confidence interval of the median difference between the true p and included zero for 16 of 18 data sets evaluated at C = 0.2 and all data sets when C = 0.1. For sequential classification, Monte-Carlo simulations were used to determine the probability of classifying mean disease incidence as less than a threshold incidence, p (operating characteristic [OC]), and average sample number (ASN) curves for 16 combinations of candidate stop lines and error levels (α and β). Four pairs of stop lines were selected for further evaluation based on the results of the Monte-Carlo simulations. Bootstrap simulations of the 18 selected data sets indicated that the OC and ASN curves of the sequential sampling plans for each of the four sets of stop lines were similar to OC and ASN values determined by Monte Carlo simulation. Correct classification of disease incidence as being above or below preselected thresholds was 2.0 to 7.7% higher when stop lines were determined by the beta-binomial approximation than when stop lines were calculated using the binomial distribution. Correct decision rates differed depending on the location where sampling was initiated in the hop yard; however, in all instances were greater than 86% when stop lines were determined using the beta-binomial approximation. The sequential sampling plans evaluated in this study should allow for rapid and accurate estimation and classification of the incidence of hop leaves with powdery mildew, and aid in sampling for pest management decision making.

摘要

啤酒花白粉病(由黄斑单囊壳菌引起)是太平洋西北地区啤酒花(蛇麻草)的一种重要病害。基于先前研究中确定的二元幂律的参数估计,利用贝塔二项分布建立了用于估计和分类啤酒花叶片白粉病发病率的序贯抽样模型。通过对模型构建数据中18个数据集(总共198个数据集)的选定组进行自助模拟,并通过对独立收集的104个数据集(即验证数据集)进行模拟抽样,对用于序贯估计的停止线(表明已收集到足够信息以估计疾病发病率并停止抽样的模型)进行了验证。随着实际发病率()的增加,实现的变异系数(C)接近预先指定的C值。对于发病率小于0.10的数据集,不可能实现C为0.1。在C = 0.2时评估的18个数据集中有16个以及在C = 0.1时所有数据集,真实p与之间中位数差异的95%置信区间包含零。对于序贯分类,使用蒙特卡罗模拟来确定将平均疾病发病率分类为小于阈值发病率p(操作特征[OC])的概率,以及16种候选停止线和误差水平(α和β)组合的平均样本数(ASN)曲线。根据蒙特卡罗模拟的结果,选择了四对停止线进行进一步评估。对18个选定数据集的自助模拟表明,四组停止线中每组序贯抽样计划的OC和ASN曲线与蒙特卡罗模拟确定的OC和ASN值相似。当通过贝塔二项近似确定停止线时,疾病发病率正确分类为高于或低于预先选定阈值的比例比使用二项分布计算停止线时高2.0%至7.7%。正确决策率因在啤酒花园中开始抽样的位置而异;然而,在所有情况下,当使用贝塔二项近似确定停止线时,正确决策率均大于86%。本研究中评估的序贯抽样计划应有助于快速准确地估计和分类啤酒花叶片白粉病的发病率,并有助于为害虫管理决策进行抽样。

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