Title of article :
Comparing of Cox model and parametric models in analysis of effective factors on event time of neuropathy in patients with type 2 diabetes
Author/Authors :
Kargarian‑Marvasti, Sadegh Department of Epidemiology - Faculty of Health - Iran University of Medical Sciences , Rimaz, Shahnaz Department of Epidemiology - Faculty of Health - Iran University of Medical Sciences , Abolghasemi, Jamileh Department of Biostatistics - Faculty of Health - Iran University of Medical Sciences , Heydari, Iraj Department of Endocrinology - School of Medicine - Iran University of Medical Sciences, Tehran
Abstract :
Background: Cox proportional hazard model is the most common method for analyzing the effects of several variables on
survival time. However, under certain circumstances, parametric models give more precise estimates to analyze survival data
than Cox. The purpose of this study was to investigate the comparative performance of Cox and parametric models in a survival
analysis of factors affecting the event time of neuropathy in patients with type 2 diabetes. Materials and Methods: This study
included 371 patients with type 2 diabetes without neuropathy who were registered at Fereydunshahr diabetes clinic. Subjects
were followed up for the development of neuropathy between 2006 to March 2016. To investigate the factors influencing the event
time of neuropathy, significant variables in univariate model (P < 0.20) were entered into the multivariate Cox and parametric
models (P < 0.05). In addition, Akaike information criterion (AIC) and area under ROC curves were used to evaluate the relative
goodness of fitted model and the efficiency of each procedure, respectively. Statistical computing was performed using R software
version 3.2.3 (UNIX platforms, Windows and MacOS). Results: Using Kaplan–Meier, survival time of neuropathy was computed
76.6 ± 5 months after initial diagnosis of diabetes. After multivariate analysis of Cox and parametric models, ethnicity, high‑density
lipoprotein and family history of diabetes were identified as predictors of event time of neuropathy (P < 0.05). Conclusion:
According to AIC, “log‑normal” model with the lowest Akaike’s was the best‑fitted model among Cox and parametric models.
According to the results of comparison of survival receiver operating characteristics curves, log‑normal model was considered
as the most efficient and fitted model.
Keywords :
Cox proportional hazards model , diabetes , Kaplan–Meier , neuropathy , parametric models
Journal title :
Astroparticle Physics