Kim Junmo, Yang Hyun-Lim, Kim Su Hwan, Kim Siun, Lee Jisoo, Ryu Jiwon, Kim Kwangsoo, Kim Zio, Ahn Gun, Kwon Doyun, Yoon Hyung-Jin
Interdisciplinary Program in Bioengineering, Seoul National University, Seoul, Republic of Korea.
Biomedical Research Institute, Seoul National University Hospital, Seoul, Republic of Korea.
EClinicalMedicine. 2024 Feb 1;68:102445. doi: 10.1016/j.eclinm.2024.102445. eCollection 2024 Feb.
Diabetes is a major public health concern. We aimed to evaluate the long-term risk of incident type 2 diabetes in a non-diabetic population using a deep learning model (DLM) detecting prevalent type 2 diabetes using electrocardiogram (ECG).
In this retrospective study, participants who underwent health checkups at two tertiary hospitals in Seoul, South Korea, between Jan 1, 2001 and Dec 31, 2022 were included. Type 2 diabetes was defined as glucose ≥126 mg/dL or glycated haemoglobin (HbA1c) ≥ 6.5%. For survival analysis on incident type 2 diabetes, we introduced an additional variable, diabetic ECG, which is determined by the DLM trained on ECG and corresponding prevalent diabetes. It was assumed that non-diabetic individuals with diabetic ECG had a higher risk of incident type 2 diabetes than those with non-diabetic ECG. The one-dimensional ResNet-based model was adopted for the DLM, and the Guided Grad-CAM was used to localise important regions of ECG. We divided the non-diabetic group into the diabetic ECG group (false positive) and the non-diabetic ECG (true negative) group according to the DLM decision, and performed a Cox proportional hazard model, considering the occurrence of type 2 diabetes more than six months after the visit.
190,581 individuals were included in the study with a median follow-up period of 11.84 years. The areas under the receiver operating characteristic curve for prevalent type 2 diabetes detection were 0.816 (0.807-0.825) and 0.762 (0.754-0.770) for the internal and external validations, respectively. The model primarily focused on the QRS duration and, occasionally, P or T waves. The diabetic ECG group exhibited an increased risk of incident type 2 diabetes compared with the non-diabetic ECG group, with hazard ratios of 2.15 (1.82-2.53) and 1.92 (1.74-2.11) for internal and external validation, respectively.
In the non-diabetic group, those whose ECG was classified as diabetes by the DLM were at a higher risk of incident type 2 diabetes than those whose ECG was not. Additional clinical research on the relationship between the phenotype of ECG and diabetes to support the results and further investigation with tracked data and various ECG recording systems are suggested for future works.
National Research Foundation of Korea.
糖尿病是一个主要的公共卫生问题。我们旨在使用一种深度学习模型(DLM)来评估非糖尿病人群中发生2型糖尿病的长期风险,该模型通过心电图(ECG)检测现患2型糖尿病。
在这项回顾性研究中,纳入了2001年1月1日至2022年12月31日期间在韩国首尔的两家三级医院接受健康检查的参与者。2型糖尿病定义为血糖≥126mg/dL或糖化血红蛋白(HbA1c)≥6.5%。为了对2型糖尿病的发病情况进行生存分析,我们引入了一个额外的变量——糖尿病心电图,它由基于心电图训练的DLM以及相应的现患糖尿病情况来确定。假定有糖尿病心电图的非糖尿病个体发生2型糖尿病的风险高于有非糖尿病心电图的个体。DLM采用基于一维残差网络的模型,并用引导式梯度加权类激活映射(Guided Grad-CAM)来定位心电图的重要区域。根据DLM的判定结果,我们将非糖尿病组分为糖尿病心电图组(假阳性)和非糖尿病心电图组(真阴性),并进行Cox比例风险模型分析,考虑就诊后六个月以上发生2型糖尿病的情况。
190581人纳入研究,中位随访期为11.84年。现患2型糖尿病检测的受试者工作特征曲线下面积,内部验证为0.816(0.807 - 0.825),外部验证为0.762(0.754 - 0.770)。该模型主要关注QRS波时限,偶尔也关注P波或T波。与非糖尿病心电图组相比,糖尿病心电图组发生2型糖尿病的风险增加,内部验证和外部验证的风险比分别为2.15(1.82 - 2.53)和1.92(1.74 - 2.11)。
在非糖尿病组中,心电图被DLM判定为糖尿病的个体发生2型糖尿病的风险高于心电图未被判定为糖尿病的个体。建议未来开展更多关于心电图表型与糖尿病之间关系的临床研究以支持本研究结果,并使用跟踪数据和各种心电图记录系统进行进一步调查。
韩国国家研究基金会。