Analysis of clinical predictors of kidney diseases in type 2 diabetes patients based on machine learning.
dc.contributor.author | Hui, Dongna | |
dc.contributor.author | Sun, Yiyang | |
dc.contributor.author | Xu, Shixin | |
dc.contributor.author | Liu, Junjie | |
dc.contributor.author | He, Ping | |
dc.contributor.author | Deng, Yuhui | |
dc.contributor.author | Huang, Huaxiong | |
dc.contributor.author | Zhou, Xiaoshuang | |
dc.contributor.author | Li, Rongshan | |
dc.date.accessioned | 2023-01-06T19:57:07Z | |
dc.date.available | 2023-01-06T19:57:07Z | |
dc.date.issued | 2022-09 | |
dc.date.updated | 2023-01-06T19:57:07Z | |
dc.description.abstract | BackgroundThe heterogeneity of Type 2 Diabetes Mellitus (T2DM) complicated with renal diseases has not been fully understood in clinical practice. The purpose of the study was to propose potential predictive factors to identify diabetic kidney disease (DKD), nondiabetic kidney disease (NDKD), and DKD superimposed on NDKD (DKD + NDKD) in T2DM patients noninvasively and accurately.MethodsTwo hundred forty-one eligible patients confirmed by renal biopsy were enrolled in this retrospective, analytical study. The features composed of clinical and biochemical data prior to renal biopsy were extracted from patients' electronic medical records. Machine learning algorithms were used to distinguish among different kidney diseases pairwise. Feature variables selected in the developed model were evaluated.ResultsLogistic regression model achieved an accuracy of 0.8306 ± 0.0057 for DKD and NDKD classification. Hematocrit, diabetic retinopathy (DR), hematuria, platelet distribution width and history of hypertension were identified as important risk factors. Then SVM model allowed us to differentiate NDKD from DKD + NDKD with accuracy 0.8686 ± 0.052 where hematuria, diabetes duration, international normalized ratio (INR), D-Dimer, high-density lipoprotein cholesterol were the top risk factors. Finally, the logistic regression model indicated that DD-dimer, hematuria, INR, systolic pressure, DR were likely to be predictive factors to identify DKD with DKD + NDKD.ConclusionPredictive factors were successfully identified among different renal diseases in type 2 diabetes patients via machine learning methods. More attention should be paid on the coagulation factors in the DKD + NDKD patients, which might indicate a hypercoagulable state and an increased risk of thrombosis. | |
dc.identifier | 10.1007/s11255-022-03322-1 | |
dc.identifier.issn | 0301-1623 | |
dc.identifier.issn | 1573-2584 | |
dc.identifier.uri | ||
dc.language | eng | |
dc.publisher | Springer Science and Business Media LLC | |
dc.relation.ispartof | International urology and nephrology | |
dc.relation.isversionof | 10.1007/s11255-022-03322-1 | |
dc.subject | Kidney diseases diagnosis | |
dc.subject | Machine learning | |
dc.subject | Noninvasive | |
dc.subject | Type 2 diabetes mellitus | |
dc.title | Analysis of clinical predictors of kidney diseases in type 2 diabetes patients based on machine learning. | |
dc.type | Journal article | |
duke.contributor.orcid | Xu, Shixin|0000-0002-8207-7313 | |
pubs.organisational-group | Duke | |
pubs.organisational-group | Duke Kunshan University | |
pubs.organisational-group | DKU Faculty | |
pubs.publication-status | Published |
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