Torres-Signes A, Dip J A
Department of Statistics and O. R. Faculty of Sciences AMZET. University of Málaga Spain.
Department of Economy and Finance. Faculty of Economic Sciences Kumbykuaa Observatory. National University of Misiones Argentina.
Acta Trop. 2021 Mar;215:105788. doi: 10.1016/j.actatropica.2020.105788. Epub 2020 Dec 15.
Dengue fever has become one of the most outstanding infectious diseases in the world. Besides, the incidence and prevalence of dengue are increasing in the endemic areas of the tropical and subtropical regions. Space and time disease mapping models are common instruments to explain the patterns of disease counts, where hierarchical Bayesian models constitute a suitable framework for their formulation. These random events reflect interactions between nearby geographic locations, as well as correlations between close temporary instants. Functional data analysis techniques can better describe the evolution of disease mapping. In this paper, the risk of dengue in Mexico, Central and South America is studied from a Functional approach through a Bayesian estimation model focused on Hilbert-valued autoregressive processes combined with the Kalman filtering algorithm. Thus, the temporal functional evolution of spatial geographic patterns of incidence risk in disease mapping during 1998-2018 is approximated. Applying this methodology, the excess of smoothing that occurs with traditional models is avoided and the heterogeneity is conserved across the years. It improves the number of false positives created by noise and the number of false negatives as well. The results obtained with the application of this model are compared with those of previous models, corroborating the preceding statements and obtaining better results in the relative risk estimates, providing greater robustness and stability of disease risk estimates.
登革热已成为世界上最突出的传染病之一。此外,在热带和亚热带地区的流行区,登革热的发病率和患病率正在上升。时空疾病映射模型是解释疾病计数模式的常用工具,其中分层贝叶斯模型为其构建提供了合适的框架。这些随机事件反映了附近地理位置之间的相互作用,以及相近时间点之间的相关性。功能数据分析技术可以更好地描述疾病映射的演变。本文从功能角度,通过一个基于希尔伯特值自回归过程并结合卡尔曼滤波算法的贝叶斯估计模型,研究了墨西哥、中美洲和南美洲的登革热风险。因此,近似得出了1998 - 2018年疾病映射中发病风险空间地理模式的时间功能演变。应用该方法,避免了传统模型出现的过度平滑问题,并且多年间的异质性得以保留。它减少了由噪声产生的假阳性数量,也减少了假阴性数量。将该模型应用所得结果与先前模型的结果进行比较,证实了上述观点,并在相对风险估计中取得了更好的结果,为疾病风险估计提供了更高的稳健性和稳定性。