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Compression of Multilead Electrocardiogram Using Principal Component Analysis and Machine Learning Approach

机译:使用主成分分析和机器学习方法压缩多宽度心电图

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In this work, a multi-lead Electrocardiogram (ECG) data compression using principal component analysis (PCA) combined with a machine learning technique is proposed to achieve a high compression ratio (CR) with low reconstruction error (within 2% percentage root mean squared difference, or, PRD). The beat detection procedure was inspired by the Pan-Tompkins algorithm with some necessary modifications. A lead-wise PCA decomposition was performed for dimensionality reduction with a single beat from each lead at a time using a fixed energy reconstruction criteria. The optimal quantization levels of the principal components were allocated using multi-layer perceptron neural network (MLP-NN) using lead clinical features as the input. This MLP-NN was tuned offline by a particle swarm optimization (PSO) generated data for quantization level of coefficients of PC as the reference. The proposed technique was evaluated using 8 types of cardiac abnormalities record from multi-lead ECG data from the PTB Diagnostic ECG database, with an average CR, PRD and PRDN of 16.2, 1.47% and 1.84% respectively. The reconstructed records were clinically acceptable. The proposed technique provides superior performance than few recent published works on multilead ECG compression.
机译:在这项工作中,提出了一种使用主成分分析(PCA)与机器学习技术的多引导心电图(ECG)数据压缩,以实现具有低重建误差的高压缩比(CR)(在2%百分比的均方根内差异,或,prd)。 BET检测程序是由PAN-TOMPKINS算法的启发,具有一些必要的修改。使用固定的能量重建标准,在每个引线中从每个引线的单次节拍进行铅明显的PCA分解。使用多层的Perceptron神经网络(MLP-NN)使用铅临床特征作为输入来分配主成分的最佳量化水平。通过粒子群优化(PSO)产生的PC的量化水平作为参考,该MLP-NN通过粒子群优化(PSO)产生的数据进行了调整。使用来自PTB诊断心电图数据库的多引导ECG数据的8种类型的心脏异常记录评估所提出的技术,平均CR,PRD和PRDN分别为16.2,1.47%和1.84%。重建的记录是临床上可接受的。所提出的技术提供优于少数最近发表的若干已发布的多态ECG压缩的性能。

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