Gosoniu L, Vounatsou P, Sogoba N, Smith T
Swiss Tropical Institute, Basel, Switzerland.
Geospat Health. 2006 Nov;1(1):127-39. doi: 10.4081/gh.2006.287.
Bayesian geostatistical models applied to malaria risk data quantify the environment-disease relations, identify significant environmental predictors of malaria transmission and provide model-based predictions of malaria risk together with their precision. These models are often based on the stationarity assumption which implies that spatial correlation is a function of distance between locations and independent of location. We relax this assumption and analyse malaria survey data in Mali using a Bayesian non-stationary model. Model fit and predictions are based on Markov chain Monte Carlo simulation methods. Model validation compares the predictive ability of the non-stationary model with the stationary analogue. Results indicate that the stationarity assumption is important because it influences the significance of environmental factors and the corresponding malaria risk maps.
应用于疟疾风险数据的贝叶斯地理统计模型量化了环境与疾病的关系,确定了疟疾传播的重要环境预测因子,并提供了基于模型的疟疾风险预测及其精度。这些模型通常基于平稳性假设,这意味着空间相关性是位置之间距离的函数,且与位置无关。我们放宽这一假设,使用贝叶斯非平稳模型分析马里的疟疾调查数据。模型拟合和预测基于马尔可夫链蒙特卡罗模拟方法。模型验证将非平稳模型与平稳类似模型的预测能力进行比较。结果表明,平稳性假设很重要,因为它会影响环境因素的显著性以及相应的疟疾风险地图。