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시간 의존적 Cox 회귀×클러스터링된 생존 데이터에 대한 공유 취약성 모형×
분야생존분석생존분석
계열Survival analysisSurvival analysis
기원 연도19721979
창시자Cox, D. R. (extended formulation by Therneau & Grambsch)Vaupel, J.W., Manton, K.G. & Stallard, E.
유형Semi-parametric hazard regression modelRandom effects survival model
원전Therneau, T. M. & Grambsch, P. M. (2000). Modeling Survival Data: Extending the Cox Model. Springer. DOI ↗Vaupel, J.W., Manton, K.G. & Stallard, E. (1979). The Impact of Heterogeneity in Individual Frailty on the Dynamics of Mortality. Demography, 16(3), 439–454. DOI ↗
별칭time-varying covariate Cox model, extended Cox model, Zamana Bağlı Kovaryatlı Cox Regresyonushared frailty model, random effects survival model, Frailty Modeli (Paylaşılan Kırılganlık)
관련43
요약Time-dependent Cox regression is an extension of the standard Cox proportional hazards model, introduced through the counting-process formulation developed by Therneau and Grambsch (2000), that allows one or more predictor variables to take different values at different points in a subject's follow-up period. It is the method of choice whenever a covariate — such as a laboratory measurement, a medication dose, or a disease severity score — changes over time rather than remaining fixed from study entry.The shared frailty model, introduced by Vaupel, Manton, and Stallard in 1979, extends standard survival regression by incorporating a random effect — the 'frailty' — that captures unobserved heterogeneity among subjects or clusters. When survival outcomes are measured on individuals who share a common environment (patients in the same hospital, members of the same family, animals in the same litter), a frailty term accounts for the within-cluster dependence that ordinary Cox regression ignores.
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ScholarGate방법 비교: Time-Dependent Cox Regression · Frailty Model. 2026-06-17에 다음에서 검색함: https://scholargate.app/ko/compare