A multimodal deep learning tool for detection of junctional ectopic tachycardia in children with congenital heart disease

IF 2.5 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS
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Abstract

Background

Junctional ectopic tachycardia (JET) is a prevalent life-threatening arrhythmia in children with congenital heart disease. It has a marked resemblance to normal sinus rhythm, often leading to delay in diagnosis and management.

Objective

The study sought to develop a novel multimodal automated arrhythmia detection tool that outperforms existing JET detection tools.

Methods

This is a cohort study performed on 40 patients with congenital heart disease at Texas Children’s Hospital. Electrocardiogram and central venous pressure waveform data produced by bedside monitors are captured by the Sickbay platform. Convolutional neural networks (CNNs) were trained to classify each heartbeat as either normal sinus rhythm or JET based only on raw electrocardiogram signals.

Results

Our best model improved the area under the curve from 0.948 to 0.952 and the true positive rate at 5% false positive rate from 71.8% to 80.6%. Using a 3-model ensemble further improved the area under the curve to 0.953 and the true positive rate at 5% false positive rate to 85.2%. Results on a subset of data show that adding central venous pressure can significantly improve area under the receiver-operating characteristic curve from 0.646 to 0.825.

Conclusion

This study validates the efficacy of deep neural networks to notably improve JET detection accuracy. We have built a performant and reliable model that can be used to create a bedside alarm that diagnoses JET, allowing for precise diagnosis of this life-threatening postoperative arrhythmia and prompt intervention. Future validation of the model in a larger cohort is needed.

用于检测先天性心脏病儿童交界性异位心动过速的多模态深度学习工具
背景功能性异位心动过速(JET)是先天性心脏病患儿中普遍存在的一种危及生命的心律失常。该研究旨在开发一种新型多模态自动心律失常检测工具,该工具的性能优于现有的 JET 检测工具。Sickbay 平台采集了床旁监护仪产生的心电图和中心静脉压波形数据。结果我们的最佳模型将曲线下面积从 0.948 提高到了 0.952,在 5% 假阳性率下的真阳性率从 71.8% 提高到了 80.6%。使用 3 个模型集合后,曲线下面积进一步提高到 0.953,5% 误报率下的真阳性率提高到 85.2%。对一个数据子集的研究结果表明,增加中心静脉压可以显著提高接收器工作特征曲线下面积,从 0.646 提高到 0.825。我们建立了一个性能良好且可靠的模型,可用于创建诊断 JET 的床旁警报,从而对这种危及生命的术后心律失常进行精确诊断和及时干预。未来需要在更大的群体中对该模型进行验证。
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来源期刊
Heart Rhythm O2
Heart Rhythm O2 Cardiology and Cardiovascular Medicine
CiteScore
3.30
自引率
0.00%
发文量
0
审稿时长
52 days
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