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Validation of a Previously Developed Geospatial Model That Predicts the Prevalence of Listeria monocytogenes in New York State Produce Fields

机译:验证以前开发的预测纽约州农产品领域中单核细胞增生李斯特菌流行率的地理空间模型

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Technological advancements, particularly in the field of geographic information systems (GIS), have made it possible to predict the likelihood of foodborne pathogen contamination in produce production environments using geospatial models. Yet, few studies have examined the validity and robustness of such models. This study was performed to test and refine the rules associated with a previously developed geospatial model that predicts the prevalence of Listeria monocytogenes in produce farms in New York State (NYS). Produce fields for each of four enrolled produce farms were categorized into areas of high or low predicted L. monocytogenes prevalence using rules based on a field's available water storage (AWS) and its proximity to water, impervious cover, and pastures. Drag swabs (n = 1,056) were collected from plots assigned to each risk category. Logistic regression, which tested the ability of each rule to accurately predict the prevalence of L. monocytogenes, validated the rules based on water and pasture. Samples collected near water (odds ratio [OR], 3.0) and pasture (OR, 2.9) showed a significantly increased likelihood of L. monocytogenes isolation compared to that for samples collected far from water and pasture. Generalized linear mixed models identified additional land cover factors associated with an increased likelihood of L. monocytogenes isolation, such as proximity to wetlands. These findings validated a subset of previously developed rules that predict L. monocytogenes prevalence in produce production environments. This suggests that GIS and geospatial models can be used to accurately predict L. monocytogenes prevalence on farms and can be used prospectively to minimize the risk of preharvest contamination of produce.
机译:技术的进步,特别是在地理信息系统(GIS)领域中,已经可以使用地理空间模型预测农产品生产环境中食源性病原体污染的可能性。然而,很少有研究检查这种模型的有效性和鲁棒性。进行这项研究是为了测试和完善与先前开发的地理空间模型相关的规则,该模型预测纽约州(NYS)农产品农场中单核细胞增生李斯特菌的流行。使用基于田间的可用储水量(AWS)及其与水的接近程度,不透水的覆盖物和牧场的规则,将四个已注册的农产品农场中的每一个的农产品田地划分为预测的单核细胞增生李斯特菌发生率高或低的区域。从分配给每个风险类别的地块收集药签(n = 1,056)。 Logistic回归测试了每条规则准确预测单核细胞增生李斯特菌患病率的能力,验证了基于水和牧场的规则。与在水和牧场以外采集的样品相比,在水附近(奇数比[OR],3.0)和牧场(OR,2.9)采集的样品显示出单核细胞增生李斯特菌分离的可能性显着增加。广义线性混合模型确定了与单核细胞增生李斯特氏菌分离可能性增加相关的其他土地覆盖因子,例如靠近湿地。这些发现验证了先前开发的预测亚种单核细胞增生李斯特氏菌在生产环境中流行的规则的子集。这表明,GIS和地理空间模型可用于准确预测农场中单核细胞增生李斯特菌的流行,并可前瞻性地使用,以最大程度地减少农产品收获前污染的风险。

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