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A topological approach to delineation and arrhythmic beats detection in unprocessed long-term ECG signals

机译:在未加工的长期ECG信号中描绘和心律失常的拓扑方法的拓扑方法

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Background and objectiveArrhythmias are one of the most common symptoms of cardiac failure. They are usually diagnosed using ECG recordings, particularly long ambulatory recordings (AECG). These recordings are tedious to interpret by humans due to their extent (up to 48?h) and the relative scarcity of arrhythmia events. This makes automated systems for detecting various AECG anomalies indispensable. In this work we present a novel procedure based on topological principles (Morse theory) for detecting arrhythmic beats in AECG. It works in nearly real-time (delayed by a 14?s window), and can be applied to raw (unprocessed) ECG signals. MethodsThe procedure is based on a subject-specific adaptation of the one-dimensional discrete Morse theory (ADMT), which represents the signal as a sequence of its most important extrema. The ADMT algorithm is applied twice; for low-amplitude, high-frequency noise removal, and for detection of the characteristic waves of individual ECG beats. The waves are annotated using the ADMT algorithm and template matching. The annotated beats are then compared to the adjacent beats with two measures of similarity: the distance between two beats, and the difference in shape between them. The two measures of similarity are used as inputs to a decision tree algorithm that classifies the beats as normal or abnormal. The classification performance is evaluated with the leave-one-record-out cross-validation method. ResultsOur approach was tested on the MIT-BIH database, where it exhibited a classification accuracy of 92.73%, a sensitivity of 73.35%, a specificity of 96.70%, a positive predictive value of 88.01%, and a negative predictive value of 95.73%. ConclusionsCompared to related studies, our algorithm requires less preprocessing while retaining the capability to detect and classify beats in almost real-time. The algorithm exhibits a high degree of accuracy in beats detection and classification that are at least comparable to state-of-the-art methods.
机译:背景和眼镜症是心衰竭最常见的症状之一。它们通常使用ECG录音诊断,特别是长矛录音(AECG)。由于其程度(高达48?h)和心律失常事件的相对稀缺,这些录音乏味乏味。这使得自动化系统用于检测各种AECG异常不可或缺的。在这项工作中,我们提出了一种基于拓扑原则(莫尔斯理论)的新方法,用于检测AECG的心律失常。它在几乎实时工作(由14个窗口延迟),并且可以应用于原始(未处理的)的ECG信号。方法是基于一维离散摩尔斯理论(ADMT)的主题特征,它表示作为其最重要的极值的序列的信号。 ADMT算法施用两次;对于低幅度,高频噪声去除,并检测单个ECG节拍的特征波。使用ADMT算法和模板匹配来注释波。然后将带注释的节拍与具有两个相似度的相邻节拍进行比较:两个节拍之间的距离,以及它们之间的形状差异。两个相似度的措施被用作决策树算法的输入,该算法将节拍分类为正常或异常。分类性能是通过休假录制交叉验证方法进行评估的。结果评估方法在MIT-BIH数据库上进行了测试,其中展示了92.73%的分类精度,灵敏度为73.35%,特异性为96.70%,阳性预测值为88.01%,负面预测值为95.73%。结论与相关研究相比,我们的算法需要更少的预处理,同时保留在几乎实时检测和分类节拍的能力。该算法在节拍检测和分类中表现出高精度,其至少可与最先进的方法相当。

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