Nelson Scot C, Corcoja Iulian, Pethybridge Sarah J
First author: College of Tropical Agriculture and Human Resources, Department of Tropical Plant and Soil Sciences, University of Hawaii at Manoa, Honolulu, HI 96822; second author: AQUASoft Inc., Bucharest, Romania; third author: Cornell University, School of Integrative Plant Science, Section of Plant Pathology & Plant-Microbe Biology, Cornell University, Geneva, NY 14456.
Phytopathology. 2017 Dec;107(12):1556-1566. doi: 10.1094/PHYTO-07-17-0223-R. Epub 2017 Oct 26.
Spatial analysis of epiphytotics is essential to develop and test hypotheses about pathogen ecology, disease dynamics, and to optimize plant disease management strategies. Data collection for spatial analysis requires substantial investment in time to depict patterns in various frames and hierarchies. We developed a new approach for spatial analysis of pixelated data in digital imagery and incorporated the method in a stand-alone desktop application called Cluster. The user isolates target entities (clusters) by designating up to 24 pixel colors as nontargets and moves a threshold slider to visualize the targets. The app calculates the percent area occupied by targeted pixels, identifies the centroids of targeted clusters, and computes the relative compass angle of orientation for each cluster. Users can deselect anomalous clusters manually and/or automatically by specifying a size threshold value to exclude smaller targets from the analysis. Up to 1,000 stochastic simulations randomly place the centroids of each cluster in ranked order of size (largest to smallest) within each matrix while preserving their calculated angles of orientation for the long axes. A two-tailed probability t test compares the mean inter-cluster distances for the observed versus the values derived from randomly simulated maps. This is the basis for statistical testing of the null hypothesis that the clusters are randomly distributed within the frame of interest. These frames can assume any shape, from natural (e.g., leaf) to arbitrary (e.g., a rectangular or polygonal field). Cluster summarizes normalized attributes of clusters, including pixel number, axis length, axis width, compass orientation, and the length/width ratio, available to the user as a downloadable spreadsheet. Each simulated map may be saved as an image and inspected. Provided examples demonstrate the utility of Cluster to analyze patterns at various spatial scales in plant pathology and ecology and highlight the limitations, trade-offs, and considerations for the sensitivities of variables and the biological interpretations of results. The Cluster app is available as a free download for Apple computers at iTunes, with a link to a user guide website.
植物流行病的空间分析对于形成和检验关于病原体生态学、疾病动态的假设以及优化植物病害管理策略至关重要。用于空间分析的数据收集需要投入大量时间来描绘不同框架和层次结构中的模式。我们开发了一种用于数字图像中像素化数据空间分析的新方法,并将该方法整合到一个名为Cluster的独立桌面应用程序中。用户通过将多达24种像素颜色指定为非目标来分离目标实体(集群),并移动阈值滑块以可视化目标。该应用程序计算目标像素所占的面积百分比,识别目标集群的质心,并计算每个集群的相对罗盘方向角。用户可以通过指定大小阈值手动和/或自动取消选择异常集群,以将较小的目标排除在分析之外。多达1000次随机模拟会将每个集群的质心按大小顺序(从大到小)随机放置在每个矩阵内,同时保留其计算出的长轴方向角。双尾概率t检验比较观察到的集群间平均距离与从随机模拟地图得出的值。这是对零假设(即集群在感兴趣的框架内随机分布)进行统计检验的基础。这些框架可以是任何形状,从自然形状(如叶子)到任意形状(如矩形或多边形田地)。Cluster总结了集群的归一化属性,包括像素数量、轴长、轴宽、罗盘方向以及长宽比,用户可以将其作为可下载的电子表格获取。每个模拟地图都可以保存为图像并进行检查。提供的示例展示了Cluster在分析植物病理学和生态学中各种空间尺度模式方面的实用性,并突出了变量敏感性、结果生物学解释的局限性、权衡和注意事项。Cluster应用程序可在iTunes上免费下载用于苹果电脑,同时提供用户指南网站的链接。