Department of Nursing, Zhongshan Hospital, Fudan University, Shanghai, China.
School of Nursing, Fudan University, Shanghai, China.
Nurs Open. 2024 Oct;11(10):e70055. doi: 10.1002/nop2.70055.
To develop and test different machine learning algorithms for predicting nocturnal hypoglycaemia in patients with type 2 diabetes mellitus.
A retrospective study.
We collected data from dynamic blood glucose monitoring of patients with T2DM admitted to the Department of Endocrinology and Metabolism at a hospital in Shanghai, China, from November 2020 to January 2022. Patients undergone the continuous glucose monitoring (CGM) for ≥ 24 h were included in this study. Logistic regression, random forest and light gradient boosting machine algorithms were employed, and the models were validated and compared using AUC, accuracy, specificity, recall rate, precision, F1 score and the Kolmogorov-Smirnov test.
A total of 4015 continuous glucose-monitoring data points from 440 patients were included, and 28 variables were selected to build the risk prediction model. The 440 patients had an average age of 62.7 years. Approximately 48.2% of the patients were female and 51.8% were male. Nocturnal hypoglycaemia appeared in 573 (14.30%) of 4015 continuous glucose monitoring data. The light gradient boosting machine model demonstrated the highest predictive performances: AUC (0.869), specificity (0.802), accuracy (0.801), precision (0.409), recall rate (0.797), F1 score (0.255) and Kolmogorov (0.603). The selected predictive factors included time below the target glucose range, duration of diabetes, insulin use before bed and dynamic blood glucose monitoring parameters from the previous day.
No Patient or Public Contribution.
开发和测试用于预测 2 型糖尿病患者夜间低血糖的不同机器学习算法。
回顾性研究。
我们收集了 2020 年 11 月至 2022 年 1 月期间在中国上海某医院内分泌与代谢科住院的 2 型糖尿病患者的动态血糖监测数据。纳入本研究的患者均接受了至少 24 小时的连续血糖监测(CGM)。使用逻辑回归、随机森林和轻梯度提升机算法,通过 AUC、准确性、特异性、召回率、精度、F1 评分和柯尔莫哥洛夫-斯米尔诺夫检验对模型进行验证和比较。
共纳入 440 例患者的 4015 个连续血糖监测数据点,共选取 28 个变量构建风险预测模型。440 例患者的平均年龄为 62.7 岁,其中女性占 48.2%,男性占 51.8%。4015 个连续血糖监测数据中共有 573 个(14.30%)出现夜间低血糖。轻梯度提升机模型的预测性能最高:AUC(0.869)、特异性(0.802)、准确性(0.801)、精度(0.409)、召回率(0.797)、F1 评分(0.255)和柯尔莫哥洛夫(0.603)。入选的预测因素包括目标血糖范围内的时间、糖尿病病程、睡前胰岛素使用以及前一天的动态血糖监测参数。
无患者或公众贡献。