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首页> 外文期刊>Weed Science >In-Field and Soil-Related Factors that Affect the Presence and Prediction of Glyphosate-Resistant Horseweed (Conyza canadensis) Populations Collected from Indiana Soybean Fields
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In-Field and Soil-Related Factors that Affect the Presence and Prediction of Glyphosate-Resistant Horseweed (Conyza canadensis) Populations Collected from Indiana Soybean Fields

机译:影响印第安纳州大豆田收集的草甘膦抗性杂草(Conyza canadensis)种群的存在和预测的田间和土壤相关因素

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摘要

Glyphosate-resistant (GR) crops have been rapidly adopted in the United States and the evolution of GR weeds throughout the world has also been on the rise. With experience, weed scientists and crop advisers develop “intuition” on the basis of field history and current in-field conditions for predicting whether escaped weed biotypes may be herbicide resistant. However, there are no previous reports on the association of in-field crop management factors with the prediction of herbicide resistance. By using in-field survey data, we tested the accuracy of predicting glyphosate resistance in late-season horseweed escapes. We hypothesized that glyphosate resistance in late-season horseweed populations found in soybean fields could be predicted using in-field knowledge of crop residues and the appearance and distribution of weeds in the field. Field survey data were collected to determine the distribution and frequency of GR horseweed populations in Indiana soybean fields during September and October of 2003, 2004, and 2005. After the in-field survey, soil properties for sampled field locations were also collected from the U.S. Department of Agriculture Natural Resources Conservation Service Web Soil Survey. GR horseweed predictions used in-field presence of crop residues and the appearance, abundance, and distribution of weeds in the field. The significance of independent data factors were determined by chi-square statistics. The interactions and relative significance of multiple factors were modeled using classification and regression tree analysis. Our results indicated that the most important factor for predicting GR populations was the identification of an altered plant phenotype after injury from POST glyphosate. This was followed by crop rotation, field distribution, and the presence of other escaped weed species in the field in a model with a classification rate of 0.68.
机译:抗草甘膦(GR)作物已在美国迅速被采用,并且全世界的GR杂草的进化也在增加。有了经验,杂草科学家和农作物顾问会根据田间历史和当前田间条件来发展“直觉”,以预测逃生的杂草生物型是否对除草剂具有抗性。但是,以前没有关于田间作物管理因素与除草剂抗性预测相关性的报道。通过使用现场调查数据,我们测试了预测季末海草逃逸中草甘膦抗性的准确性。我们假设可以使用田间作物残渣的现场知识以及田间杂草的出现和分布来预测大豆田中发现的晚季马草种群中的草甘膦抗性。收集现场调查数据以确定2003年9月和10月,2004年和2005年印第安纳州大豆田GR杂草种群的分布和频率。在进行田间调查后,还从美国采集了采样田地的土壤特性农业部自然资源保护服务网土壤调查。 GR马草的预测使用了田间作物残渣的存在以及田间杂草的外观,丰度和分布。独立数据因子的重要性通过卡方统计确定。使用分类和回归树分析对多个因素的相互作用和相对显着性进行建模。我们的结果表明,预测GR种群的最重要因素是对草甘膦POST损伤后植物表型改变的鉴定。其次是农作物轮作,田间分布以及田间存在其他逃生杂草物种(分类率为0.68)。

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