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一种深度神经网络学习算法在急诊科心电图解读方面优于传统算法。

A deep neural network learning algorithm outperforms a conventional algorithm for emergency department electrocardiogram interpretation.

作者信息

Smith Stephen W, Walsh Brooks, Grauer Ken, Wang Kyuhyun, Rapin Jeremy, Li Jia, Fennell William, Taboulet Pierre

机构信息

Department of Emergency Medicine, Hennepin County Medical Center, Minneapolis, MN, USA; University of Minnesota, Department of Emergency Medicine, USA.

Bridgeport Hospital, Bridgeport, CT, USA.

出版信息

J Electrocardiol. 2019 Jan-Feb;52:88-95. doi: 10.1016/j.jelectrocard.2018.11.013. Epub 2018 Nov 16.

DOI:10.1016/j.jelectrocard.2018.11.013
PMID:30476648
Abstract

BACKGROUND

Cardiologs® has developed the first electrocardiogram (ECG) algorithm that uses a deep neural network (DNN) for full 12‑lead ECG analysis, including rhythm, QRS and ST-T-U waves. We compared the accuracy of the first version of Cardiologs® DNN algorithm to the Mortara/Veritas® conventional algorithm in emergency department (ED) ECGs.

METHODS

Individual ECG diagnoses were prospectively mapped to one of 16 pre-specified groups of ECG diagnoses, which were further classified as "major" ECG abnormality or not. Automated interpretations were compared to blinded experts'. The primary outcome was the performance of the algorithms in finding at least one "major" abnormality. The secondary outcome was the proportion of all ECGs for which all groups were identified, with no false negative or false positive groups ("accurate ECG interpretation"). Additionally, we measured sensitivity and positive predictive value (PPV) for any abnormal group.

RESULTS

Cardiologs® vs. Veritas® accuracy for finding a major abnormality was 92.2% vs. 87.2% (p < 0.0001), with comparable sensitivity (88.7% vs. 92.0%, p = 0.086), improved specificity (94.0% vs. 84.7%, p < 0.0001) and improved positive predictive value (PPV 88.2% vs. 75.4%, p < 0.0001). Cardiologs® had accurate ECG interpretation for 72.0% (95% CI: 69.6-74.2) of ECGs vs. 59.8% (57.3-62.3) for Veritas® (P < 0.0001). Sensitivity for any abnormal group for Cardiologs® and Veritas®, respectively, was 69.6% (95CI 66.7-72.3) vs. 68.3% (95CI 65.3-71.1) (NS). Positive Predictive Value was 74.0% (71.1-76.7) for Cardiologs® vs. 56.5% (53.7-59.3) for Veritas® (P < 0.0001).

CONCLUSION

Cardiologs' DNN was more accurate and specific in identifying ECGs with at least one major abnormal group. It had a significantly higher rate of accurate ECG interpretation, with similar sensitivity and higher PPV.

摘要

背景

Cardiologs®开发了首款使用深度神经网络(DNN)进行全12导联心电图分析的算法,包括心律、QRS波群以及ST-T-U波。我们将Cardiologs® DNN算法第一版的准确性与急诊科(ED)心电图中Mortara/Veritas®传统算法的准确性进行了比较。

方法

将个体心电图诊断前瞻性地映射到16个预先指定的心电图诊断组中的一组,这些组进一步分为是否存在“主要”心电图异常。将自动解读结果与不知情的专家解读结果进行比较。主要结局是算法在发现至少一项“主要”异常方面的表现。次要结局是所有组均被识别且无假阴性或假阳性组的心电图所占比例(“准确的心电图解读”)。此外,我们测量了任何异常组的敏感性和阳性预测值(PPV)。

结果

Cardiologs®与Veritas®发现主要异常的准确率分别为92.2%和87.2%(p<0.0001),敏感性相当(88.7%对92.0%,p=0.086),特异性提高(94.0%对84.7%,p<0.0001),阳性预测值提高(PPV 88.2%对75.4%,p<0.0001)。Cardiologs®对7 SO%(95%CI:69.6 - 74.2)的心电图有准确的解读,而Veritas®为59.8%(57.3 - 62.3)(P<0.0001)。Cardiologs®和Veritas®对任何异常组的敏感性分别为69.6%(95CI 66.7 - 72.3)和68.3%(95CI 65.3 - 71.1)(无显著差异)。Cardiologs®的阳性预测值为74.0%(71.1 - 76.7),而Veritas®为56.5%(53.7 - 59.3)(P<0.0001)。

结论

Cardiologs的DNN在识别至少有一个主要异常组的心电图方面更准确、更具特异性。其准确的心电图解读率显著更高,敏感性相似且PPV更高。

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