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Real-Time CNN Based ST Depression Episode Detection Using Single-Lead ECG

机译:基于CNN的基于CNN的ST凹陷剧集检测使用单引线ECG

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A method for real monitoring of the heart for ST-depression episodes is described here. We have developed a convolutional neural network (CNN) based machine learning algorithm for classifying ECG signals into normal or ST-depression episodes of the heart with an accuracy over 92%. Our algorithm is capable of detecting ST-depression episodes of varying duration. The algorithm is evaluated using European ST-T Database. The best results obtained here are 0.95%, 0.98%, and 0.91% respectively for accuracy, sensitivity, and specificity.
机译:这里描述了一种用于真实监测心脏的心脏的方法。 我们已经开发了一种基于卷积神经网络(CNN)的机器学习算法,用于将ECG信号分类为心脏的正常或ST-凹陷剧集,精度超过92%。 我们的算法能够检测不同持续时间的ST-抑制剧集。 使用欧洲ST-T数据库进行评估该算法。 这里获得的最佳结果分别为0.95%,0.98%和0.91%,以精确,灵敏度和特异性。

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