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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II:圆锥抽样

Sequential Sampling for Estimation and Classification of the Incidence of Hop Powdery Mildew II: Cone 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):1013-1020. doi: 10.1094/PDIS-91-8-1013.

Abstract

Sequential sampling models for estimation and classification of the incidence of powdery mildew (caused by Podosphaera macularis) on hop (Humulus lupulus) cones were developed using parameter estimates of the binary power law derived from the analysis of 221 transect data sets (model construction data set) collected from 41 hop yards sampled in Oregon and Washington from 2000 to 2005. Stop lines, models that determine when sufficient information has been collected to estimate mean disease incidence and stop sampling, for sequential estimation were validated by bootstrap simulation using a subset of 21 model construction data sets and simulated sampling of an additional 13 model construction data sets. Achieved coefficient of variation (C) approached the prespecified C as the estimated disease incidence, , increased, although achieving a C of 0.1 was not possible for data sets in which < 0.03 with the number of sampling units evaluated in this study. The 95% confidence interval of the median difference between of each yard (achieved by sequential sampling) and the true p of the original data set included 0 for all 21 data sets evaluated at levels of C of 0.1 and 0.2. For sequential classification, operating characteristic (OC) and average sample number (ASN) curves of the sequential sampling plans obtained by bootstrap analysis and simulated sampling were similar to the OC and ASN values determined by Monte Carlo simulation. Correct decisions of whether disease incidence was above or below prespecified thresholds (p) were made for 84.6 or 100% of the data sets during simulated sampling when stop lines were determined assuming a binomial or beta-binomial distribution of disease incidence, respectively. However, the higher proportion of correct decisions obtained by assuming a beta-binomial distribution of disease incidence required, on average, sampling 3.9 more plants per sampling round to classify disease incidence compared with the binomial distribution. Use of these sequential sampling plans may aid growers in deciding the order in which to harvest hop yards to minimize the risk of a condition called "cone early maturity" caused by late-season infection of cones by P. macularis. Also, sequential sampling could aid in research efforts, such as efficacy trials, where many hop cones are assessed to determine disease incidence.

摘要

利用从2000年至2005年在俄勒冈州和华盛顿州采样的41个啤酒花种植场收集的221个样带数据集(模型构建数据集)分析得出的二元幂律参数估计值,开发了用于估计和分类啤酒花(Humulus lupulus)球果上白粉病(由黄斑单囊壳菌Podosphaera macularis引起)发病率的序贯抽样模型。通过使用21个模型构建数据集的子集进行自助模拟以及对另外13个模型构建数据集进行模拟抽样,对用于序贯估计的停止线(即确定何时已收集到足够信息以估计平均病害发病率并停止抽样的模型)进行了验证。随着估计的病害发病率增加,实现的变异系数(C)接近预先指定的C,尽管对于本研究中评估的采样单元数量下发病率小于0.03的数据集,不可能实现C为0.1。在C为0.1和0.2的水平下评估的所有21个数据集,每个种植场(通过序贯抽样实现)的发病率中位数与原始数据集的真实p值之间的95%置信区间都包含0。对于序贯分类,通过自助分析和模拟抽样获得的序贯抽样计划的操作特征(OC)曲线和平均样本数(ASN)曲线与通过蒙特卡罗模拟确定的OC和ASN值相似。当分别假设病害发病率呈二项分布或贝塔 - 二项分布来确定停止线时,在模拟抽样期间,对于84.6%或100%的数据集,正确判断了病害发病率是高于还是低于预先指定的阈值(p)。然而,与二项分布相比,假设病害发病率呈贝塔 - 二项分布获得的正确判断比例更高,但平均每个抽样轮次需要多抽样3.9株植物来分类病害发病率。使用这些序贯抽样计划可能有助于种植者决定收获啤酒花种植场的顺序,以尽量减少由黄斑单囊壳菌在生长季后期感染球果导致的“球果早熟成熟”情况的风险。此外,序贯抽样有助于研究工作,如药效试验,在这些试验中需要评估许多啤酒花球果以确定病害发病率。

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