Development and validation of a dynamic deep learning algorithm using electrocardiogram to predict dyskalaemias in patients with multiple visits.

IF 3.9 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS European heart journal. Digital health Pub Date : 2023-01-01 DOI:10.1093/ehjdh/ztac072
Yu-Sheng Lou, Chin-Sheng Lin, Wen-Hui Fang, Chia-Cheng Lee, Chih-Hung Wang, Chin Lin
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引用次数: 1

Abstract

Aims: Deep learning models (DLMs) have shown superiority in electrocardiogram (ECG) analysis and have been applied to diagnose dyskalaemias. However, no study has explored the performance of DLM-enabled ECG in continuous follow-up scenarios. Therefore, we proposed a dynamic revision of DLM-enabled ECG to use personal pre-annotated ECGs to enhance the accuracy in patients with multiple visits.

Methods and results: We retrospectively collected 168 450 ECGs with corresponding serum potassium (K+) levels from 103 091 patients as development samples. In the internal/external validation sets, the numbers of ECGs with corresponding K+ were 37 246/47 604 from 13 555/20 058 patients. Our dynamic revision method showed better performance than the traditional direct prediction for diagnosing hypokalaemia [area under the receiver operating characteristic curve (AUC) = 0.730/0.720-0.788/0.778] and hyperkalaemia (AUC = 0.884/0.888-0.915/0.908) in patients with multiple visits.

Conclusion: Our method has shown a distinguishable improvement in DLMs for diagnosing dyskalaemias in patients with multiple visits, and we also proved its application in ejection fraction prediction, which could further improve daily clinical practice.

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一种动态深度学习算法的开发和验证,该算法使用心电图预测多次就诊患者的钾血症异常。
目的:深度学习模型(DLMs)在心电图(ECG)分析中显示出优势,并已被应用于诊断钾化障碍。然而,目前还没有研究探讨在连续随访情况下启用dlm的ECG的性能。因此,我们提出了一种动态修改dlm功能的心电图,使用个人预注释的心电图来提高多次就诊患者的准确性。方法和结果:我们回顾性地收集了103091例患者的168450张心电图,其相应的血清钾(K+)水平作为发展样本。在内外验证集中,13 555/20 058例患者中对应的K+心电图数为37 246/47 604。动态修正方法对多次就诊患者的低钾血症[受试者工作特征曲线下面积(AUC) = 0.730/0.720-0.788/0.778]和高钾血症(AUC = 0.884/0.888-0.915/0.908)的诊断效果优于传统的直接预测。结论:我们的方法对多次就诊的患者诊断钾血症异常的DLMs有明显的改善,并且我们也证明了它在射血分数预测中的应用,可以进一步改善日常临床实践。
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