Department of Medical Informatics, Medical School of Nantong University, Nantong, 226001, Jiangsu, China.
College of Medical Informatics, Chongqing Medical University, Chongqing, 400016, China.
Sci Rep. 2023 Mar 28;13(1):5034. doi: 10.1038/s41598-023-31463-5.
To establish a risk prediction model and make individualized assessment for the susceptible diabetic retinopathy (DR) population in type 2 diabetic mellitus (T2DM) patients. According to the retrieval strategy, inclusion and exclusion criteria, the relevant meta-analyses on DR risk factors were searched and evaluated. The pooled odds ratio (OR) or relative risk (RR) of each risk factor was obtained and calculated for β coefficients using logistic regression (LR) model. Besides, an electronic patient-reported outcome questionnaire was developed and 60 cases of DR and non-DR T2DM patients were investigated to validate the developed model. Receiver operating characteristic curve (ROC) was drawn to verify the prediction accuracy of the model. After retrieving, eight meta-analyses with a total of 15,654 cases and 12 risk factors associated with the onset of DR in T2DM, including weight loss surgery, myopia, lipid-lowing drugs, intensive glucose control, course of T2DM, glycated hemoglobin (HbA1c), fasting plasma glucose, hypertension, gender, insulin treatment, residence, and smoking were included for LR modeling. These factors, followed by the respective β coefficient was bariatric surgery (- 0.942), myopia (- 0.357), lipid-lowering drug follow-up < 3y (- 0.994), lipid-lowering drug follow-up > 3y (- 0.223), course of T2DM (0.174), HbA1c (0.372), fasting plasma glucose (0.223), insulin therapy (0.688), rural residence (0.199), smoking (- 0.083), hypertension (0.405), male (0.548), intensive glycemic control (- 0.400) with constant term α (- 0.949) in the constructed model. The area under receiver operating characteristic curve (AUC) of the model in the external validation was 0.912. An application was presented as an example of use. In conclusion, the risk prediction model of DR is developed, which makes individualized assessment for the susceptible DR population feasible and needs to be further verified with large sample size application.
建立 2 型糖尿病患者易患糖尿病视网膜病变(DR)人群的风险预测模型并进行个体化评估。根据检索策略、纳入和排除标准,对 DR 危险因素的相关荟萃分析进行检索和评价。采用 logistic 回归(LR)模型获取并计算各危险因素的合并优势比(OR)或相对危险度(RR),β系数。另外,开发了电子患者报告结局问卷,并对 60 例 DR 和非 DR 的 2 型糖尿病患者进行了调查,以验证所开发的模型。绘制受试者工作特征曲线(ROC)验证模型的预测准确性。检索后,纳入了 8 项荟萃分析,共纳入了 15654 例病例和 12 个与 2 型糖尿病 DR 发病相关的危险因素,包括减重手术、近视、降脂药物、强化血糖控制、2 型糖尿病病程、糖化血红蛋白(HbA1c)、空腹血糖、高血压、性别、胰岛素治疗、居住地和吸烟,进行 LR 建模。这些因素,以及各自的β系数分别为减重手术(-0.942)、近视(-0.357)、降脂药物随访<3y(-0.994)、降脂药物随访>3y(-0.223)、2 型糖尿病病程(0.174)、HbA1c(0.372)、空腹血糖(0.223)、胰岛素治疗(0.688)、农村居住(0.199)、吸烟(-0.083)、高血压(0.405)、男性(0.548)、强化血糖控制(-0.400)和常数项α(-0.949)构建模型。外部验证模型的 ROC 曲线下面积(AUC)为 0.912。并呈现了一个应用实例。结论:建立了 DR 风险预测模型,实现了对易患 DR 人群的个体化评估,需要进一步通过大样本量的应用进行验证。