Geographically Weighted Cause-Specific Hazard Model with Application to Prostate Cancer
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초록

In public health research, survival data denoting different causes of death are often collected across geographical regions. The data may cause invalid inference, however, if employed in a general competing risk model, which assumes constant relationships between risk factors and competing risks across regions. In addition, some applications might require spatially varying cause-specific hazard ratios. To address these limitations, this study proposes a geographically weighted cause-specific hazard regression (GWCHR) model to estimate spatially varying coefficients with a common spatial scale across multiple covariates. In identifying spatial variations of coefficients, we assign distance-based weights for each location in likelihood construction. We choose the bandwidth in the weighting function according to suitable selection criteria. We analyze the asymptotic properties of the proposed GWCHR model in detail. Our simulation studies compare the finite sample performance of the proposed model with general competing risk models. We apply the proposed method to prostate cancer data from Korea’s National Health Information Service database to examine the spatially varying effects of environmental and social factors on second primary cancers for prostate cancer patients.

키워드

cause-specific hazard modelcompeting riskgeographically weighted regressionspatial heterogeneityspatially varying coefficientsREGRESSION
제목
Geographically Weighted Cause-Specific Hazard Model with Application to Prostate Cancer
저자
Kim, MinaKim, Yeong-HwaWang, MolinChoi, Se YoungLee, Jooyoung
DOI
10.1080/24694452.2025.2551037
발행일
2025-08
유형
Article; Early Access
저널명
Annals of the American Association of Geographers