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Using satellite derived land cover information for a multi-temporal study of self-reported recall of proximity to farmland

机译:使用卫星得出的土地覆盖信息进行多时间研究以自我报告对邻近农田的回忆

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摘要

Exposure misclassification is a major concern in epidemiologic studies. The potential for misclassification becomes even more problematic when participants are asked to recall historical information. Yet, historical information is important in cancer studies, where latency is long and causative exposures may have occurred years or even decades prior to diagnosis. Even though self-reported proximity to farmland is a commonly used exposure measure, the accuracy of recall is seldom, if ever validated. Geographic Information Systems (GISs) and land cover information derived from satellite imagery can allow researchers to assess the accuracy of this exposure measure, and to quantify the extent and importance of exposure misclassification. As part of a bladder cancer case–control study in Michigan, participants were asked whether they lived on a farm, or within a distance of 1/4, 1/4–1, 1–5, or >5 miles from farmland for each residence over their lifespan. Responses from 531 participants over two time periods — 1978 and 2001 — were investigated. Self reported proximity to farmland was compared to a “gold standard” derived from Michigan land cover files for the same time periods. Logistic regression and other statistical measures including sensitivity, specificity, and percentage matching were evaluated. In comparing self-reported and land cover-derived proximity to farmland, cases exhibited better agreement than controls in 2001 (adjusted OR = 1.74; 95% CI = 1.01, 2.99) and worse agreement in 1978, although not significantly (adjusted OR = 0.74; 95% CI = 0.47, 1.16). When comparing 2001 with 1978, both cases and controls showed better agreement in 2001, but only cases showed a significant difference (adjusted OR=2.36; 95% CI = 1.33, 4.18). These differences in agreement may be influenced by differences in educational attainment between cases and controls, although adjustment for education did not diminish the association. Gender, age, number of years at residence, and geocoding accuracy did not influence agreement between the proximity approaches. This study suggests that proximity measures taken from satellite-derived land cover imagery may be useful for assessing proximity to farmland, and it raises some concerns about the use of self-reported proximity to farmland in exposure assessments.
机译:暴露分类错误是流行病学研究中的主要问题。当要求参与者回忆历史信息时,分类错误的可能性变得更大。但是,历史信息在癌症研究中很重要,因为癌症研究的潜伏期很长,并且在诊断之前可能已经发生了数十年甚至数十年的病因暴露。尽管自我报告的接近农田是一种常用的接触措施,但召回的准确性很少,如果经过验证的话。地理信息系统(GISs)和从卫星图像获得的土地覆盖信息可以使研究人员评估这种暴露测量的准确性,并量化暴露错误分类的程度和重要性。作为密歇根州膀胱癌病例对照研究的一部分,参与者被询问是否居住在农场上,或者每个农场都在距农田1 / 4、1 / 4-1、1-5或> 5英里的范围内在他们的一生中居住。调查了两个时期(1978年和2001年)中531名参与者的回答。自我报告的接近农田的情况与同一时期从密歇根州土地覆盖档案中得出的“黄金标准”进行了比较。评估了逻辑回归和其他统计指标,包括敏感性,特异性和百分比匹配。在比较自我报告的和土地覆盖来源的与农田之间的距离时,病例显示出比对照组更好的一致性(调整后的OR = 1.74; 95%CI = 1.01、2.99),而1978年的一致性较差,尽管差异不显着(调整后的OR = 0.74 ; 95%CI = 0.47,1.16)。当将2001年与1978年进行比较时,2001年的病例和对照都显示出更好的一致性,但只有病例显示出显着性差异(校正OR = 2.36; 95%CI = 1.33,4.18)。案例和对照之间的受教育程度差异可能会影响协议的这些差异,尽管对教育的调整并不会减少这种关联。性别,年龄,居住年限和地理编码准确性不会影响邻近方法之间的一致性。这项研究表明,从卫星得出的土地覆盖图像中采取的邻近度测量方法可能有助于评估与农田的邻近度,这引起了人们对在暴露评估中使用自我报告的邻近度的担忧。

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