Department of Endocrinology, The Third People's Hospital of Hefei, Hefei 230022, China.
Nursing Department, The Third People's Hospital of Hefei, Hefei 230022, China.
Comput Math Methods Med. 2022 Jul 29;2022:3882425. doi: 10.1155/2022/3882425. eCollection 2022.
Long-term hyperglycemia in young and middle-aged diabetic patients can be complicated with diabetic ketoacidosis, stroke, myocardial infarction, infection, and other complications. The objective was to explore the application value of machine learning in predicting the recurrence risk of young and middle-aged diabetes patients with team-based nursing intervention.
Clinical data of 80 patients with diabetes treated in the Department of Endocrinology from 2019 to 2020 were retrospectively collected. The data set was divided into 70% training set ( =56) and 30% test set ( =24). All the selected research cases were intervened by the team-based management mode involving family and clinical doctors and nurses. The degree of diabetes knowledge learning, the level of blood glucose changes, and the psychological state of the patients were evaluated. The random forest (RF) algorithm and logistic regression prediction model were constructed to predict the risk factors of diabetes recurrence.
There was no significant difference in the degree of diabetes knowledge learning, the level of blood glucose changes, and the psychological state between the training set and the test set ( > 0.05). The FPG, HbA1c, and 2hPG of recurrence group patients were significantly higher than those of nonrecurrence group patients, and the difference was statistically significant ( < 0.05). In descending order of importance based on the RF algorithm prediction model were glucose, BMI, age, insulin, pedigree function, skin thickness, and blood diastolic pressure. The accuracy of RF and logistic regression prediction models is 81.46% and 80.21%, respectively.
The team-based nursing model has a good effect on the blood glucose control level of middle-aged and young diabetic patients. Age, BMI, and glucose values are risk factors for diabetes. The SF algorithm has a good effect on predicting the risk of diabetes, which is worthy of further clinical application.
中青年糖尿病患者长期高血糖可并发糖尿病酮症酸中毒、脑卒中、心肌梗死、感染等并发症。本研究旨在探讨基于团队的护理干预对中青年糖尿病患者复发风险的预测价值。
回顾性收集 2019 年至 2020 年内分泌科收治的 80 例糖尿病患者的临床资料,数据集分为 70%的训练集( =56)和 30%的测试集( =24)。所有入选研究病例均采用家庭和临床医生护士共同参与的团队管理模式进行干预,评估患者糖尿病知识学习程度、血糖变化水平及心理状态。构建随机森林(RF)算法和逻辑回归预测模型,预测糖尿病复发的危险因素。
训练集和测试集患者的糖尿病知识学习程度、血糖变化水平和心理状态差异无统计学意义( > 0.05)。复发组患者的 FPG、HbA1c 和 2hPG 明显高于未复发组,差异有统计学意义( < 0.05)。基于 RF 算法预测模型,重要性依次为血糖、BMI、年龄、胰岛素、家族史功能、皮肤厚度和舒张压。RF 和逻辑回归预测模型的准确率分别为 81.46%和 80.21%。
基于团队的护理模式对中青年糖尿病患者的血糖控制水平有较好的效果。年龄、BMI 和血糖值是糖尿病的危险因素。SF 算法对预测糖尿病风险有较好的效果,值得进一步临床应用。