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ECG Database for Evaluating the Efficiency of Recognizing Dangerous Arrhythmias

机译:ECG数据库,用于评估识别危险心律失常的效率

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One of the difficult tasks of practical medicine is to identify rhythm disturbances in the work of the cardiovascular system in patients under supervision. Early detection of a dangerous violation could save the patient’s life due to the use of resuscitation measures, primarily such as defibrillation. The article is devoted to a review of the developed database of short ECG fragments for evaluating the operation of algorithms for recognizing dangerous rhythm disturbances. The database consists of six classes of arrhythmias (90 ECG fragments of each class), representing varying degrees of danger to life. Each ECG fragment in the database is represented by the following four data files. This is a 2-second ECG signal, as well as three types of signal power spectral density: a full spectrum and two smoothed spectra (15 and 10 signs, respectively). There are also illustrations of different classes from this database. A detailed description of the base and primary sources of ECG records is presented. The developed database is used in works to classify various arrhythmias by spectral description by ECG fragments using the weighted k nearest neighbors (kNN) method, the nearest convex hull method (LP-NCH), linear discriminant analysis (LDA), support vector machine (SVM), and neural network methods.
机译:实际医学的困难任务之一是识别监督患者心血管系统工作中的节奏紊乱。由于使用复苏措施,早期检测危险违规行为可以挽救患者的生命,主要是如除颤。本文致力于审查短ECG片段的发达数据库,用于评估识别危险节律紊乱的算法的运作。该数据库由六种心律失常(每个类的90个ECG碎片)组成,代表生命的不同程度。数据库中的每个ECG片段由以下四个数据文件表示。这是2秒的ECG信号,以及三种类型的信号功率谱密度:全频谱和两个平滑光谱(分别为15和10个标志)。此数据库还有不同类的插图。提出了对基础和主源的ECG记录的详细描述。开发的数据库用于通过使用加权K最近邻居(KNN)方法,最接近的凸壳方法(LP-NCH),线性判别分析(LDA),支持向量机( SVM)和神经网络方法。

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