TY - JOUR
T1 - Spatiotemporal filtering modeling of hand, foot, and mouth disease
T2 - A case study from East China, 2009-2015
AU - Chen, Xi
AU - Ba, Jianbo
AU - Liu, Yuanhua
AU - Huang, Jiaqi
AU - Li, Ke
AU - Yin, Yun
AU - Shi, Jin
AU - Xu, Jiayao
AU - Yuan, Rui
AU - Ward, Michael P.
AU - Tu, Wei
AU - Yu, Lili
AU - Wang, Quanyi
AU - Wang, Xiaoli
AU - Chang, Zhaorui
AU - Zhang, Zhijie
N1 - Publisher Copyright:
© The Author(s), 2025.
PY - 2025/4/16
Y1 - 2025/4/16
N2 - Hand, foot, and mouth disease (HFMD) shows spatiotemporal heterogeneity in China. A spatiotemporal filtering model was constructed and applied to HFMD data to explore the underlying spatiotemporal structure of the disease and determine the impact of different spatiotemporal weight matrices on the results. HFMD cases and covariate data in East China were collected between 2009 and 2015. The different spatiotemporal weight matrices formed by Rook, K-nearest neighbour (KNN; K = 1), distance, and second-order spatial weight matrices (SO-SWM) with first-order temporal weight matrices in contemporaneous and lagged forms were decomposed, and spatiotemporal filtering model was constructed by selecting eigenvectors according to MC and the AIC. We used MI, standard deviation of the regression coefficients, and five indices (AIC, BIC, DIC, R 2, and MSE) to compare the spatiotemporal filtering model with a Bayesian spatiotemporal model. The eigenvectors effectively removed spatial correlation in the model residuals (Moran's I < 0.2, p > 0.05). The Bayesian spatiotemporal model's Rook weight matrix outperformed others. The spatiotemporal filtering model with SO-SWM was superior, as shown by lower AIC (92,029.60), BIC (92,681.20), and MSE (418,022.7) values, and higher R 2 (0.56) value. All spatiotemporal contemporaneous structures outperformed the lagged structures. Additionally, eigenvector maps from the Rook and SO-SWM closely resembled incidence patterns of HFMD.
AB - Hand, foot, and mouth disease (HFMD) shows spatiotemporal heterogeneity in China. A spatiotemporal filtering model was constructed and applied to HFMD data to explore the underlying spatiotemporal structure of the disease and determine the impact of different spatiotemporal weight matrices on the results. HFMD cases and covariate data in East China were collected between 2009 and 2015. The different spatiotemporal weight matrices formed by Rook, K-nearest neighbour (KNN; K = 1), distance, and second-order spatial weight matrices (SO-SWM) with first-order temporal weight matrices in contemporaneous and lagged forms were decomposed, and spatiotemporal filtering model was constructed by selecting eigenvectors according to MC and the AIC. We used MI, standard deviation of the regression coefficients, and five indices (AIC, BIC, DIC, R 2, and MSE) to compare the spatiotemporal filtering model with a Bayesian spatiotemporal model. The eigenvectors effectively removed spatial correlation in the model residuals (Moran's I < 0.2, p > 0.05). The Bayesian spatiotemporal model's Rook weight matrix outperformed others. The spatiotemporal filtering model with SO-SWM was superior, as shown by lower AIC (92,029.60), BIC (92,681.20), and MSE (418,022.7) values, and higher R 2 (0.56) value. All spatiotemporal contemporaneous structures outperformed the lagged structures. Additionally, eigenvector maps from the Rook and SO-SWM closely resembled incidence patterns of HFMD.
KW - Bayes Theorem
KW - Child, Preschool
KW - China/epidemiology
KW - Female
KW - Hand, Foot and Mouth Disease/epidemiology
KW - Humans
KW - Infant
KW - Male
KW - Spatio-Temporal Analysis
UR - http://www.scopus.com/inward/record.url?scp=105003618263&partnerID=8YFLogxK
U2 - 10.1017/s0950268824001080
DO - 10.1017/s0950268824001080
M3 - Article
C2 - 40237119
AN - SCOPUS:105003618263
SN - 0950-2688
VL - 153
JO - Epidemiology and Infection
JF - Epidemiology and Infection
M1 - e61
ER -