Kidney Age Index (KAI)
Autor: | Sunil B. Nagaraj, Michelle J Pena, Lyanne M. Kieneker |
---|---|
Jazyk: | angličtina |
Rok vydání: | 2021 |
Předmět: |
Renal function
Health Informatics Disease Machine learning computer.software_genre Kidney symbols.namesake Diabetes mellitus Chronic kidney disease Medicine Humans In patient Diabetic Nephropathies Diabetic kidney business.industry Diabetes medicine.disease Pearson product-moment correlation coefficient Computer Science Applications medicine.anatomical_structure Healthy aging Diabetes Mellitus Type 2 Medical informatics symbols Biomarker (medicine) Artificial intelligence Neural Networks Computer business computer Software Biomarkers |
Zdroj: | Computer Methods and Programs in Biomedicine, 211:106434. ELSEVIER IRELAND LTD |
ISSN: | 0169-2607 |
Popis: | BACKGROUND AND OBJECTIVE: With aging, patients with diabetic kidney disease (DKD) show progressive decrease in kidney function. We investigated whether the deviation of biological age (BA) from the chronological age (CA) due to DKD can be used (denoted as Kidney Age Index; KAI) to quantify kidney function using machine learning algorithms.METHODS: Three large datasets were used in this study to develop KAI. The machine learning algorithms were trained on PREVEND dataset with healthy subjects (N = 7963) using 13 clinical markers to predict the CA. The trained model was then used to predict the BA of patients with DKD using RENAAL (N = 1451) and IDNT (N = 1706). The performance of four traditional machine learning algorithms were evaluated and the KAI = BA-CA was estimated for each patient.RESULTS: The neural network model achieved the best performance and predicted the CA of healthy subjects in PREVEND dataset with a mean absolute deviation (MAD) = 6.5 ± 3.5 years and pearson correlation = 0.62. Patients with DKD showed a significant higher KAI of 15.4 ± 11.8 years and 13.6 ± 12.3 years in RENAAL and IDNT datasets, respectively.CONCLUSIONS: Our findings suggest that for a given CA, patients with DKD shows excess BA when compared to their healthy counterparts due to disease severity. With further improvement, the proposed KAI can be used as a complementary easy-to-interpret tool to give a more inclusive idea into disease state. |
Databáze: | OpenAIRE |
Externí odkaz: |