Spatiotemporal patterns and clustering of prostate cancer incidence in China: a Bayesian modeling study of cancer registry data
Xu Zhu, Zhan Chen, Meng-Wei Ge, Attiq-Ur Rehman, Hong-Lin Chen, Hua Zhu, Bing Zheng

TL;DR
This study maps prostate cancer incidence patterns in China, revealing clusters and trends to guide targeted public health interventions.
Contribution
The novel use of Bayesian spatiotemporal modeling with cancer registry data reveals localized prostate cancer dynamics in China.
Findings
Prostate cancer incidence is higher in southeast coastal regions and lower in northwest and northern China.
Spatiotemporal interactions significantly influence incidence variation, with localized effects dominating over regional trends.
Bayesian models show unstructured spatial effects drive most of the observed variation in prostate cancer rates.
Abstract
Prostate cancer constitutes a major public health challenge in China; however, its spatiotemporal dynamics remain unclear. Clarifying these patterns is critical for guiding targeted prevention and control efforts to alleviate the disease burden. A descriptive spatiotemporal study was conducted utilizing city-level prostate cancer registry data from 2013 to 2016. The data were retrieved from the Annual Reports on Cancer Registration in China 2016 to 2019 published by the Chinese National Cancer Center. The analytical framework integrated spatial autocorrelation analysis (global and local clustering) and Bayesian spatiotemporal modeling. Disease dynamics were comprehensively assessed using Bayesian spatiotemporal models, which incorporated structured and unstructured spatial effects, temporal trends, and spatiotemporal interactions. Significant spatial clustering and geographic…
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Taxonomy
TopicsSpatial and Panel Data Analysis · Data-Driven Disease Surveillance · Prostate Cancer Diagnosis and Treatment
