Affiliation:
1. The First Affiliated Hospital of Zhengzhou University Zhengzhou China
2. Community Health Service Center of Zhengzhou City Zhengzhou China
3. School of Nursing and Health Zhengzhou University Zhengzhou China
4. Hami Vocational and Technical College Hami China
Abstract
AbstractMethodsThe study employed a retrospective survey of 458 older individuals with T2D residing in a Chinese community, conducted between June 2020 and May 2021, to develop a predictive model for frailty. Among the participants, 83 individuals (18.1%) were diagnosed with frailty using modified frailty phenotypic criteria. The predictors of frailty in this community‐dwelling older population with T2D were determined using least absolute shrinkage and selection operator (LASSO) regression and multivariable logistic regression. These predictors were utilized to construct a nomogram. The discrimination, calibration, and medical usefulness of the prediction model were assessed through the C‐index, calibration plot, and decision curve analysis (DCA), respectively. Additionally, internal validation of the prediction model was conducted using bootstrapping validation.ResultsThe developed nomogram for frailty prediction predominantly incorporated age, smoking status, regular exercise, depression, albumin (ALB) levels, sleep condition, HbA1c, and polypharmacy as significant predictors. Our prediction model demonstrated excellent discrimination and calibration, as evidenced by a C‐index of 0.768 (95% CI, 0.714–0.822) and strong calibration. Internal validation yielded a C‐index of 0.732, further confirming the reliability of the model. DCA indicated the utility of the nomogram in identifying frailty among the studied population.ConclusionThe development of a predictive model enables a valuable estimation of frailty among community‐dwelling older individuals with type 2 diabetes. This evidence‐based tool provides crucial guidance to community healthcare professionals in implementing timely preventive measures to mitigate the occurrence of frailty in high‐risk patients. By identifying established predictors of frailty, interventions and resources can be appropriately targeted, promoting better overall health outcomes and improved quality of life in this vulnerable population.
Funder
National Natural Science Foundation of China