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Evaluation of the Performance of Smoothing Functions in Generalized Additive Models for Spatial Variation in Disease

机译:疾病空间变异的广义可加模型中平滑函数性能的评估

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摘要

Generalized additive models (GAMs) with bivariate smoothing functions have been applied to estimate spatial variation in risk for many types of cancers. Only a handful of studies have evaluated the performance of smoothing functions applied in GAMs with regard to different geographical areas of elevated risk and different risk levels. This study evaluates the ability of different smoothing functions to detect overall spatial variation of risk and elevated risk in diverse geographical areas at various risk levels using a simulation study. We created five scenarios with different true risk area shapes (circle, triangle, linear) in a square study region. We applied four different smoothing functions in the GAMs, including two types of thin plate regression splines (TPRS) and two versions of locally weighted scatterplot smoothing (loess). We tested the null hypothesis of constant risk and detected areas of elevated risk using analysis of deviance with permutation methods and assessed the performance of the smoothing methods based on the spatial detection rate, sensitivity, accuracy, precision, power, and false-positive rate. The results showed that all methods had a higher sensitivity and a consistently moderate-to-high accuracy rate when the true disease risk was higher. The models generally performed better in detecting elevated risk areas than detecting overall spatial variation. One of the loess methods had the highest precision in detecting overall spatial variation across scenarios and outperformed the other methods in detecting a linear elevated risk area. The TPRS methods outperformed loess in detecting elevated risk in two circular areas.
机译:具有双变量平滑功能的广义加性模型(GAM)已用于估计多种类型癌症的风险空间变异。仅有少数研究评估了GAM中平滑功能对不同地区的高风险和不同风险水平的性能。这项研究使用模拟研究评估了不同平滑函数在各种风险水平下检测不同地理区域中风险的整体空间变化和风险升高的能力。我们在方形研究区域中创建了五个具有不同真实风险区域形状(圆形,三角形,线性)的方案。我们在GAM中应用了四种不同的平滑函数,包括两种类型的薄板回归样条(TPRS)和两种版本的局部加权散点图平滑(黄土)。我们使用排列方法的偏差分析测试了恒定风险的零假设和检测到的高风险区域,并根据空间检测率,敏感性,准确性,精确度,功效和假阳性率评估了平滑方法的性能。结果表明,当真正的疾病风险更高时,所有方法均具有较高的灵敏度和一致的中到高精度率。与检测总体空间变化相比,该模型通常在检测高风险区域方面表现更好。黄土方法中的一种在检测跨场景的总体空间变化方面具有最高的精度,在检测线性高风险区域方面优于其他方法。 TPRS方法在检测两个圆形区域中升高的风险方面胜过黄土。

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