Abstract

Leveraging easily accessible data from hospitals to identify high-risk mortality rates for clinical diabetes care adjustment is a convenient method for the future of precision healthcare. We aimed to develop risk prediction models for all-cause mortality based on 7-year and 10-year follow-ups for type 2 diabetes. A total of Taiwanese subjects aged ≥18 with outpatient data were ascertained during 2007–2013 and followed up to the end of 2016 using a hospital-based prospective cohort. Both traditional model selection with stepwise approach and LASSO method were conducted for parsimonious models’ selection and comparison. Multivariable Cox regression was performed for selected variables, and a time-dependent ROC curve with an integrated AUC and cumulative mortality by risk score levels was employed to evaluate the time-related predictive performance. The prediction model, which was composed of eight influential variables (age, sex, history of cancers, history of hypertension, antihyperlipidemic drug use, HbA1c level, creatinine level, and the LDL /HDL ratio), was the same for the 7-year and 10-year models. Harrell’s C-statistic was 0.7955 and 0.7775, and the integrated AUCs were 0.8136 and 0.8045 for the 7-year and 10-year models, respectively. The predictive performance of the AUCs was consistent with time. Our study developed and validated all-cause mortality prediction models with 7-year and 10-year follow-ups that were composed of the same contributing factors, though the model with 10-year follow-up had slightly greater risk coefficients. Both prediction models were consistent with time.

Highlights

  • Type 2 diabetes mellitus (T2DM) is a common chronic disease that imposes a significant financial burden on the health system

  • This study showed that the all-cause mortality risk in persons with T2DM was significantly higher by 1.89-fold than that in nondiabetic individuals; the risk varied by country and region and might well be influenced by socioeconomic status, health system, culture, etc

  • The cohort study used for the prediction model, the Translating Research Into Action for Diabetes (TRIAD) study, started collecting data in 2000 and reported follow-up data at 4 years and 8 years: the significant factors for predicting all-cause mortality among T2DM patients were similar but with different coefficients [4,5]

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Summary

Introduction

Type 2 diabetes mellitus (T2DM) is a common chronic disease that imposes a significant financial burden on the health system. Yang et al organized a collaborative effort involving 22 prospective cohort studies in Asian countries with more than 1 million individuals to evaluate the risk of all-cause mortality in persons with T2DM. This study showed that the all-cause mortality risk in persons with T2DM was significantly higher by 1.89-fold than that in nondiabetic individuals; the risk varied by country and region and might well be influenced by socioeconomic status, health system, culture, etc. The cohort study used for the prediction model, the Translating Research Into Action for Diabetes (TRIAD) study, started collecting data in 2000 and reported follow-up data at 4 years and 8 years: the significant factors for predicting all-cause mortality among T2DM patients were similar but with different coefficients [4,5]. One would conjecture that causes of death for persons with T2DM are multifaceted and that an all-cause mortality risk prediction model for persons with T2DM is crucial in assessing the economic impact of DM

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