In conclusion, our study demonstrated that RF, SGB, NB and XGBoost are more accurate than MLR for predicting CFA score, and identify education level, age, frailty score, fasting plasma glucose, body fat and body mass index as important risk factors in an older Chinese T2D cohort.
Keyphrases
- body mass index
- type diabetes
- machine learning
- community dwelling
- risk factors
- end stage renal disease
- physical activity
- ejection fraction
- newly diagnosed
- blood glucose
- chronic kidney disease
- middle aged
- healthcare
- insulin resistance
- prognostic factors
- peritoneal dialysis
- cardiovascular disease
- big data
- patient reported outcomes
- quality improvement
- weight gain
- glycemic control
- blood pressure