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人工智能增强的心电图分析用于识别糖尿病患者的心脏自主神经病变

Artificial intelligence-enhanced electrocardiogram analysis for identifying cardiac autonomic neuropathy in patients with diabetes.

作者信息

Irlik Krzysztof, Aldosari Hanadi, Hendel Mirela, Kwiendacz Hanna, Piaśnik Julia, Kulpa Justyna, Ignacy Paweł, Boczek Sylwia, Herba Mikołaj, Kegler Kamil, Coenen Frans, Gumprecht Janusz, Zheng Yalin, Lip Gregory Y H, Alam Uazman, Nabrdalik Katarzyna

机构信息

Liverpool Centre for Cardiovascular Science at University of Liverpool, Liverpool John Moores University and Liverpool Heart and Chest Hospital, Liverpool, UK.

Student's Scientific Association at the Department of Internal Medicine, Diabetology and Nephrology, Faculty of Medical Sciences in Zabrze, Medical University of Silesia, Katowice, Poland.

出版信息

Diabetes Obes Metab. 2024 Jul;26(7):2624-2633. doi: 10.1111/dom.15578. Epub 2024 Apr 11.

Abstract

AIM

To develop and employ machine learning (ML) algorithms to analyse electrocardiograms (ECGs) for the diagnosis of cardiac autonomic neuropathy (CAN).

MATERIALS AND METHODS

We used motif and discord extraction techniques, alongside long short-term memory networks, to analyse 12-lead, 10-s ECG tracings to detect CAN in patients with diabetes. The performance of these methods with the support vector machine classification model was evaluated using 10-fold cross validation with the following metrics: accuracy, precision, recall, F1 score, and area under the receiver-operating characteristic curve (AUC).

RESULTS

Among 205 patients (mean age 54 ± 17 years, 54% female), 100 were diagnosed with CAN, including 38 with definite or severe CAN (dsCAN) and 62 with early CAN (eCAN). The best model performance for dsCAN classification was achieved using both motifs and discords, with an accuracy of 0.92, an F1 score of 0.92, a recall at 0.94, a precision of 0.91, and an excellent AUC of 0.93 (95% confidence interval [CI] 0.91-0.94). For the detection of any stage of CAN, the approach combining motifs and discords yielded the best results, with an accuracy of 0.65, F1 score of 0.68, a recall of 0.75, a precision of 0.68, and an AUC of 0.68 (95% CI 0.54-0.81).

CONCLUSION

Our study highlights the potential of using ML techniques, particularly motifs and discords, to effectively detect dsCAN in patients with diabetes. This approach could be applied in large-scale screening of CAN, particularly to identify definite/severe CAN where cardiovascular risk factor modification may be initiated.

摘要

目的

开发并应用机器学习(ML)算法分析心电图(ECG)以诊断心脏自主神经病变(CAN)。

材料与方法

我们使用基序和不一致性提取技术以及长短期记忆网络,对12导联、10秒的心电图描记进行分析,以检测糖尿病患者的CAN。使用支持向量机分类模型,通过10折交叉验证,采用以下指标评估这些方法的性能:准确率、精确率、召回率、F1分数以及受试者操作特征曲线下面积(AUC)。

结果

在205例患者(平均年龄54±17岁,54%为女性)中,100例被诊断为CAN,其中38例为明确或重度CAN(dsCAN),62例为早期CAN(eCAN)。使用基序和不一致性对dsCAN进行分类时,模型表现最佳,准确率为0.92,F1分数为0.92,召回率为0.94,精确率为0.91,AUC出色,为0.93(95%置信区间[CI]0.91 - 0.94)。对于检测CAN的任何阶段,结合基序和不一致性的方法产生了最佳结果,准确率为0.65,F1分数为0.68,召回率为0.75,精确率为0.68,AUC为0.68(95%CI 0.54 - 0.81)。

结论

我们的研究突出了使用ML技术,特别是基序和不一致性,来有效检测糖尿病患者dsCAN的潜力。这种方法可应用于CAN的大规模筛查,特别是用于识别可能启动心血管危险因素修正的明确/重度CAN。

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