多变量泊松 cokriging:健康计数数据的地质统计模型

IF 1.6 3区 医学 Q3 HEALTH CARE SCIENCES & SERVICES Statistical Methods in Medical Research Pub Date : 2024-09-01 Epub Date: 2024-08-14 DOI:10.1177/09622802241268488
David Payares-Garcia, Frank Osei, Jorge Mateu, Alfred Stein
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引用次数: 0

摘要

多变量疾病绘图对公共卫生研究非常重要,因为它能让人们深入了解健康结果的空间模式。广泛用于绘制空间相关健康数据的地质统计方法在处理空间计数数据时遇到了挑战。这些挑战包括异质性、零膨胀分布和不可靠的估计,导致在估计空间依赖性时困难重重,预测效果不佳。人口数量的变化也使得从计数中估计风险变得更加复杂。本研究引入了多变量泊松 cokriging 方法来预测和过滤疾病风险。目标变量与多个辅助变量之间的成对相关性也包括在内。通过模拟实验以及对宾夕法尼亚州人体免疫缺陷病毒发病率和性传播疾病数据的应用,我们展示了准确的疾病风险估计,并捕捉到了细微的变化。我们将这种方法与普通泊松克里金预测法和平滑法进行了比较。模拟研究结果表明,利用辅助相关变量可减少均方预测误差,均方预测误差值最多可减少 50%。在实际数据分析中,这一收益更加明显,相对于泊松克里金法,泊松克里金法产生的均方预测误差下降了 74%,凸显了纳入辅助信息的价值。这项工作的发现强调了泊松克里金法在疾病绘图和监测方面的潜力,它能提供更丰富的风险预测,更好地表示空间相互依存关系,并识别高风险和低风险区域。
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Multivariate Poisson cokriging: A geostatistical model for health count data.

Multivariate disease mapping is important for public health research, as it provides insights into spatial patterns of health outcomes. Geostatistical methods that are widely used for mapping spatially correlated health data encounter challenges when dealing with spatial count data. These include heterogeneity, zero-inflated distributions and unreliable estimation, and lead to difficulties when estimating spatial dependence and poor predictions. Variability in population sizes further complicates risk estimation from the counts. This study introduces multivariate Poisson cokriging for predicting and filtering out disease risk. Pairwise correlations between the target variable and multiple ancillary variables are included. By means of a simulation experiment and an application to human immunodeficiency virus incidence and sexually transmitted diseases data in Pennsylvania, we demonstrate accurate disease risk estimation that captures fine-scale variation. This method is compared with ordinary Poisson kriging in prediction and smoothing. Results of the simulation study show a reduction in the mean square prediction error when utilizing auxiliary correlated variables, with mean square prediction error values decreasing by up to 50%. This gain is further evident in the real data analysis, where Poisson cokriging yields a 74% drop in mean square prediction error relative to Poisson kriging, underscoring the value of incorporating secondary information. The findings of this work stress on the potential of Poisson cokriging in disease mapping and surveillance, offering richer risk predictions, better representation of spatial interdependencies, and identification of high-risk and low-risk areas.

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来源期刊
Statistical Methods in Medical Research
Statistical Methods in Medical Research 医学-数学与计算生物学
CiteScore
4.10
自引率
4.30%
发文量
127
审稿时长
>12 weeks
期刊介绍: Statistical Methods in Medical Research is a peer reviewed scholarly journal and is the leading vehicle for articles in all the main areas of medical statistics and an essential reference for all medical statisticians. This unique journal is devoted solely to statistics and medicine and aims to keep professionals abreast of the many powerful statistical techniques now available to the medical profession. This journal is a member of the Committee on Publication Ethics (COPE)
期刊最新文献
LASSO-type instrumental variable selection methods with an application to Mendelian randomization. Estimating an adjusted risk difference in a cluster randomized trial with individual-level analyses. Testing for a treatment effect in a selected subgroup. Enhancing DHA supplementation adherence: A Bayesian approach with finite mixture models and irregular interim schedules in adaptive trial designs. Analysis of recurrent event data with spatial random effects using a Bayesian approach.
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