基于体表电位映射数据的机器学习诊断心血管疾病

D. Wójcik, T. Rymarczyk, M. Oleszek, Lukasz Maciura, P. Bednarczuk
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引用次数: 2

摘要

本研究旨在开发一种高精度的机器学习算法,该算法可以从配备102个纺织电极的多个体表电位测绘设备的数据流中诊断心血管疾病。该算法基于一维卷积神经网络,并根据连接到基于电阻的人体幻影的FLUKE ECG模拟器收集的可比现实数据进行训练。所开发的神经网络在测试数据上的准确率达到99.91%。此外,还开发了一种额外的算法,可以使用神经网络分析来自医疗设备的数据流,并通知医务人员系统检测到的危险心律。
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Diagnosing Cardiovascular Diseases with Machine Learning on Body Surface Potential Mapping Data
This research aimed to develop a high accuracy machine learning algorithm that can diagnose cardiovascular diseases from the stream of data from multiple body surface potential mapping devices equipped with 102 textile electrodes. The algorithm is based on the 1D convolutional neural network, trained on the comparable real-life data gathered from the FLUKE ECG simulator connected to the resistance-based human phantom. The developed neural network achieved an accuracy of 99.91% on the test data. Additionally, an additional algorithm was developed that can use the neural network to analyse the data streamed from the medical device and notice the medical staff about dangerous heart rhythms detected by the system.
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