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Comparison of Cox proportional hazards regression and generalized Cox regression models applied in dementia risk prediction

Jantje Goerdten, Isabelle Carrière, Graciela Muñiz‐Terrera

2020Alzheimer s & Dementia Translational Research & Clinical Interventions29 citationsDOIOpen Access PDF

Abstract

INTRODUCTION: The frequently used Cox regression applies two critical assumptions, which might not hold for all predictors. In this study, the results from a Cox regression model (CM) and a generalized Cox regression model (GCM) are compared. METHODS: Data are from the Survey of Health, Ageing and Retirement in Europe (SHARE), which includes approximately 140,000 individuals aged 50 or older followed over seven waves. CMs and GCMs are used to estimate dementia risk. The results are internally and externally validated. RESULTS: None of the predictors included in the analyses fulfilled the assumptions of Cox regression. Both models predict dementia moderately well (10-year risk: 0.737; 95% confidence interval [CI]: 0.699, 0.773; CM and 0.746; 95% CI: 0.710, 0.785; GCM). DISCUSSION: and the log-likelihood. GCMs enable researcher to test the assumptions used by Cox regression independently and relax these assumptions if necessary.

Topics & Concepts

Proportional hazards modelRegressionRegression analysisConfidence intervalStatisticsDementiaLinear regressionEconometricsRegression dilutionMathematicsMedicineInternal medicinePolynomial regressionDiseaseDementia and Cognitive Impairment ResearchNutritional Studies and DietHealth Systems, Economic Evaluations, Quality of Life
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