基于深度学习筛查心电图明显正常患者的严重冠状动脉狭窄。

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS BMC Medical Informatics and Decision Making Pub Date : 2024-11-22 DOI:10.1186/s12911-024-02764-0
Zhengkai Xue, Shijia Geng, Shaohua Guo, Guanyu Mu, Bo Yu, Peng Wang, Sutao Hu, Deyun Zhang, Weilun Xu, Yanhong Liu, Lei Yang, Huayue Tao, Shenda Hong, Kangyin Chen
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引用次数: 0

摘要

背景:严重冠状动脉狭窄患者的心电图(ECG)可能明显正常,因此在常规筛查或体检中很难发现不良健康状况。因此,这些患者可能会错过最佳治疗时机:我们的目标是建立一个有效的模型,以区分心电图明显正常患者中的重度冠状动脉狭窄和无或轻度冠状动脉狭窄。研究共选取了 392 名患者,其中包括 138 名重度狭窄患者。深度学习(DL)模型从头开始训练,并通过迁移学习使用预先训练好的参数。根据单独的心电图数据以及结合年龄、性别、高血压、糖尿病、血脂异常和吸烟状况等临床信息对这些模型进行了评估:我们发现,仅使用心电图数据从零开始训练的 DL 模型的特异性达到了 74.6%,但灵敏度较低(54.5%),与使用临床数据的逻辑回归效果相当。将临床信息添加到从零开始训练的心电图 DL 模型中提高了灵敏度(90.9%),但降低了特异性(42.3%)。将临床信息与心电图转移学习模型相结合的效果最好,接收器工作特征曲线下面积(AUC)为0.847,灵敏度为84.8%,特异度为70.4%:研究结果表明,DL 模型能有效识别心电图明显正常患者的严重冠状动脉狭窄,并验证了利用现有心电图模型的有效方法。通过采用迁移学习技术,我们可以提取 "深度特征",以相对较低的计算成本概括心电图的固有信息。
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Screening for severe coronary stenosis in patients with apparently normal electrocardiograms based on deep learning.

Background: Patients with severe coronary arterystenosis may present with apparently normal electrocardiograms (ECGs), making it difficult to detect adverse health conditions during routine screenings or physical examinations. Consequently, these patients might miss the optimal window for treatment.

Methods: We aimed to develop an effective model to distinguish severe coronary stenosis from no or mild coronary stenosis in patients with apparently normal ECGs. A total of 392 patients, including 138 with severe stenosis, were selected for the study. Deep learning (DL) models were trained from scratch and using pre-trained parameters via transfer learning. These models were evaluated based on ECG data alone and in combination with clinical information, including age, sex, hypertension, diabetes, dyslipidemia and smoking status.

Results: We found that DL models trained from scratch using ECG data alone achieved a specificity of 74.6% but exhibited low sensitivity (54.5%), comparable to the performance of logistic regression using clinical data. Adding clinical information to the ECG DL model trained from scratch improved sensitivity (90.9%) but reduced specificity (42.3%). The best performance was achieved by combining clinical information with the ECG transfer learning model, resulting in an area under the receiver operating characteristic curve (AUC) of 0.847, with 84.8% sensitivity and 70.4% specificity.

Conclusions: The findings demonstrate the effectiveness of DL models in identifying severe coronary stenosis in patients with apparently normal ECGs and validate an efficient approach utilizing existing ECG models. By employing transfer learning techniques, we can extract "deep features" that summarize the inherent information of ECGs with relatively low computational expense.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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