Risk Prediction for Early Chronic Kidney Disease: Results from an Adult Health Examination Program of 19,270 Individuals.
Chin-Chuan ShihChi-Jie LuGin-Den ChenChi-Chang ChangPublished in: International journal of environmental research and public health (2020)
Developing effective risk prediction models is a cost-effective approach to predicting complications of chronic kidney disease (CKD) and mortality rates; however, there is inadequate evidence to support screening for CKD. In this study, four data mining algorithms, including a classification and regression tree, a C4.5 decision tree, a linear discriminant analysis, and an extreme learning machine, are used to predict early CKD. The study includes datasets from 19,270 patients, provided by an adult health examination program from 32 chain clinics and three special physical examination centers, between 2015 and 2019. There were 11 independent variables, and the glomerular filtration rate (GFR) was used as the predictive variable. The C4.5 decision tree algorithm outperformed the three comparison models for predicting early CKD based on accuracy, sensitivity, specificity, and area under the curve metrics. It is, therefore, a promising method for early CKD prediction. The experimental results showed that Urine protein and creatinine ratio (UPCR), Proteinuria (PRO), Red blood cells (RBC), Glucose Fasting (GLU), Triglycerides (TG), Total Cholesterol (T-CHO), age, and gender are important risk factors. CKD care is closely related to primary care level and is recognized as a healthcare priority in national strategy. The proposed risk prediction models can support the important influence of personality and health examination representations in predicting early CKD.
Keyphrases
- chronic kidney disease
- end stage renal disease
- healthcare
- primary care
- risk factors
- mental health
- public health
- machine learning
- quality improvement
- deep learning
- health information
- working memory
- blood glucose
- peritoneal dialysis
- cardiovascular disease
- type diabetes
- palliative care
- physical activity
- electronic health record
- climate change
- risk assessment
- social media
- pain management
- skeletal muscle
- low density lipoprotein
- single cell
- neural network
- clinical evaluation