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Evaluation of threshold selection methods for adaptive kernel density estimation in disease mapping

机译:疾病作图中自适应核密度估计的阈值选择方法评估

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摘要

BackgroundMaps of disease rates produced without careful consideration of the underlying population distribution may be unreliable due to the well-known small numbers problem. Smoothing methods such as Kernel Density Estimation (KDE) are employed to control the population basis of spatial support used to calculate each disease rate. The degree of smoothing is controlled by a user-defined parameter (bandwidth or threshold) which influences the resolution of the disease map and the reliability of the computed rates. Methods for automatically selecting a smoothing parameter such as normal scale, plug-in, and smoothed cross validation bandwidth selectors have been proposed for use with non-spatial data, but their relative utilities remain unknown. This study assesses the relative performance of these methods in terms of resolution and reliability for disease mapping.
机译:由于众所周知的少数群体问题,在没有仔细考虑潜在人群分布的情况下产生的疾病率背景图可能不可靠。采用诸如内核密度估计(KDE)之类的平滑方法来控制用于计算每种疾病发生率的空间支持的总体基础。平滑程度由用户定义的参数(带宽或阈值)控制,该参数会影响疾病图的分辨率和所计算速率的可靠性。已经提出用于非空间数据的自动选择平滑参数(例如正常比例,插件和平滑的交叉验证带宽选择器)的方法,但是它们的相对效用仍然未知。这项研究根据疾病图谱的分辨率和可靠性评估了这些方法的相对性能。

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