A machine learning model for optimizing treatment of patients with poorly controlled type 2 diabetes

一种用于优化2型糖尿病控制不佳患者治疗的机器学习模型

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Abstract

BACKGROUND: Cardiorenal-protective sodium-glucose cotransporter-2 inhibitors (SGLT-2i) and glucagon-like peptide-1 receptor agonists (GLP-1RA) lack selection guidance. We aimed to build a SGLT-2i/GLP-1RA Decision Score (TiP DecScore) to tailor selection between them. METHODS: We developed the TiP DecScore in type 2 diabetes (T2D) patients receiving either therapy from the China Metabolic Analytics Project (derivation dataset: n = 24,322; validation dataset: n = 1,459), using gradient boosting decision tree and 15 features. The primary outcomes were glycated haemoglobin (HbA(1c)) control (<7%) and HbA(1c) levels at 6 and 12 months. The model's clinical effectiveness was evaluated by comparing HbA(1c) control between concordant (receiving the predicted optimal therapy) and discordant groups (receiving the predicted non-optimal therapy). RESULTS: Here we show the derivation cohort has mean (SD) age 53.7 (11.5) years, 63.0% males. Model validation shows good predictive performance (the receiver operating characteristic curve 0.71-0.78). GLP-1RA is favored over SGLT-2i (57.6% vs. 24.2% at 6 months; 57.9% vs. 28.6% at 12 months). At 6 months, compared with SGLT-2i, GLP-1RA is prioritized for patients with a shorter diabetes duration and higher fasting C-peptide, alanine aminotransferase, body mass index (BMI), and low-density lipoprotein cholesterol levels. At 12 months, patients with higher baseline HbA(1c) and BMI levels are more likely to be recommended GLP-1RA than SGLT-2i. Higher rates of HbA(1c) control are observed in concordant versus discordant groups, especially in younger patients (<55 years; 64.1% vs. 46.2%, P = 0.001) and males (58.6% vs. 45.6%, P = 0.018) at 12 months. CONCLUSIONS: The TiP DecScore effectively guides personalized selection between SGLT-2i and GLP-1RA therapies for T2D patients.

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