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Abstract Background Diabetic kidney disease (DKD) is a serious complication of diabetes mellitus (DM), with patients typically remaining asymptomatic until reaching an advanced stage. We aimed to develop and validate a predictive model for DKD in patients with an initial diagnosis of type 2 diabetes mellitus (T2DM) using real-world data. Methods We retrospectively examined data from 3, 291 patients (1740 men, 1551 women) newly diagnosed with T2DM at Ningbo Municipal Hospital of Traditional Chinese Medicine (2011–2023). The dataset was randomly divided into training and validation cohorts. Forty-six readily available medical characteristics at initial diagnosis of T2DM from the electronic medical record were used to develop prediction models based on linear, non-linear, and SuperLearner approaches. Model performance was evaluated using the area under the curve (AUC). SHapley Additive exPlanation (SHAP) was used to interpret the best-performing models. Results Among 3291 participants, 563 (17. 1%) were diagnosed with DKD during median follow-up of 2. 53 years. The SuperLearner model exhibited the highest AUC (0. 7138, 95% confidence interval: 0. 673, 0. 7546) for the holdout internal validation set in predicting any DKD stage. Top-ranked features were WBCCnt*, NeutCnt, Hct, and Hb. High WBCCnt, low NeutCnt, high Hct, and low Hb levels were associated with an increased risk of DKD. Conclusions We developed and validated a DKD risk prediction model for patients with newly diagnosed T2DM. Using routinely available clinical measurements, the SuperLearner model could predict DKD during hospital visits. Prediction accuracy and SHAP-based model interpretability may help improve early detection, targeted interventions, and prognosis of patients with DM.
Lin et al. (Wed,) studied this question.