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1型糖尿病患者微血管并发症风险自我识别算法的开发与外部验证

Development and external validation of an algorithm for self-identification of risk for microvascular complications in patients with type 1 diabetes.

作者信息

Liu Wei, Hu Xiaodan, Fang Yayu, Hong Shenda, Zhu Yu, Zhang Mingxia, Gong Siqian, Wang Xiangqing, Lin Chu, Zhang Rui, Yin Sai, Li Juan, Huo Yongran, Cai Xiaoling, Ji Linong

机构信息

Department of Endocrinology and Metabolism, Peking University People's Hospital, Beijing, China.

National Institute of Health Data Science at Peking University, Peking University Health Science Center, Beijing, China.

出版信息

Diabetes Obes Metab. 2025 Feb;27(2):740-749. doi: 10.1111/dom.16068. Epub 2024 Nov 25.

Abstract

AIMS

Microvascular complications, such as diabetic retinopathy (DR), diabetic nephropathy (DN) and diabetic peripheral neuropathy (DPN), are common and serious outcomes of inadequately managed type 1 diabetes (T1D). Timely detection and intervention in these complications are crucial for improving patient outcomes. This study aimed to develop and externally validate machine learning (ML) models for self-identification of microvascular complication risks in T1D population.

MATERIALS AND METHODS

Utilizing data from the Chinese Type 1 Diabetes Comprehensive Care Pathway program, 911 T1D patients and 15 patient self-reported variables were included. Combined with XGBoost algorithm and cross-validation, self-identification models were constructed with 5 variables selected by feature importance ranking. For external validation, an online survey was conducted within a nationwide T1D online community (N = 157). The area under the receiver-operating-characteristic curve (AUROC) was adopted as the main metric to evaluate the model performance. The SHapley Additive exPlanation was utilized for model interpretation.

RESULTS

The prevalence rates of microvascular complications in the development set and external validation set were as follows: DR 7.0% and 12.7% (p = 0.013), DN 5.9% and 3.2% (p = 0.162) and DPN 10.5% and 20.4% (p < 0.001). The models demonstrated the AUROC values of 0.889 for DR, 0.844 for DN and 0.839 for DPN during internal validation. For external validation, the AUROC values achieved 0.762 for DR, 0.718 for DN and 0.721 for DPN.

CONCLUSIONS

ML models, based on self-reported data, have the potential to serve as a self-identification tool, empowering T1D patients to understand their risks outside of hospital settings and encourage early engagement with healthcare services.

摘要

目的

微血管并发症,如糖尿病视网膜病变(DR)、糖尿病肾病(DN)和糖尿病周围神经病变(DPN),是1型糖尿病(T1D)管理不善常见且严重的后果。及时发现并干预这些并发症对于改善患者预后至关重要。本研究旨在开发并外部验证用于T1D人群微血管并发症风险自我识别的机器学习(ML)模型。

材料与方法

利用中国1型糖尿病综合照护路径项目的数据,纳入911例T1D患者及15个患者自我报告变量。结合XGBoost算法和交叉验证,采用特征重要性排序选出的5个变量构建自我识别模型。为进行外部验证,在全国性T1D在线社区开展了一项在线调查(N = 157)。采用受试者操作特征曲线下面积(AUROC)作为评估模型性能的主要指标。利用SHapley加性解释进行模型解读。

结果

开发集和外部验证集中微血管并发症的患病率如下:DR分别为7.0%和12.7%(p = 0.013),DN分别为5.9%和3.2%(p = 0.162),DPN分别为10.5%和20.4%(p < 0.001)。内部验证期间,模型的DR、DN和DPN的AUROC值分别为0.889、0.844和0.839。外部验证时,DR、DN和DPN的AUROC值分别达到0.762、0.718和0.721。

结论

基于自我报告数据的ML模型有潜力作为一种自我识别工具,使T1D患者能够在院外了解自身风险,并鼓励他们尽早寻求医疗服务。

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