1,365 research outputs found
Transfer learning in ECG classification from human to horse using a novel parallel neural network architecture
Automatic or semi-automatic analysis of the equine electrocardiogram (eECG) is currently not possible because human or small animal ECG analysis software is unreliable due to a different ECG morphology in horses resulting from a different cardiac innervation. Both filtering, beat detection to classification for eECGs are currently poorly or not described in the literature. There are also no public databases available for eECGs as is the case for human ECGs. In this paper we propose the use of wavelet transforms for both filtering and QRS detection in eECGs. In addition, we propose a novel robust deep neural network using a parallel convolutional neural network architecture for ECG beat classification. The network was trained and tested using both the MIT-BIH arrhythmia and an own made eECG dataset with 26.440 beats on 4 classes: normal, premature ventricular contraction, premature atrial contraction and noise. The network was optimized using a genetic algorithm and an accuracy of 97.7% and 92.6% was achieved for the MIT-BIH and eECG database respectively. Afterwards, transfer learning from the MIT-BIH dataset to the eECG database was applied after which the average accuracy, recall, positive predictive value and F1 score of the network increased with an accuracy of 97.1%
Self-adjustable domain adaptation in personalized ECG monitoring integrated with IR-UWB radar
To enhance electrocardiogram (ECG) monitoring systems in personalized detections, deep neural networks (DNNs) are applied to overcome individual differences by periodical retraining. As introduced previously [4], DNNs relieve individual differences by fusing ECG with impulse radio ultra-wide band (IR-UWB) radar. However, such DNN-based ECG monitoring system tends to overfit into personal small datasets and is difficult to generalize to newly collected unlabeled data. This paper proposes a self-adjustable domain adaptation (SADA) strategy to prevent from overfitting and exploit unlabeled data. Firstly, this paper enlarges the database of ECG and radar data with actual records acquired from 28 testers and expanded by the data augmentation. Secondly, to utilize unlabeled data, SADA combines self organizing maps with the transfer learning in predicting labels. Thirdly, SADA integrates the one-class classification with domain adaptation algorithms to reduce overfitting. Based on our enlarged database and standard databases, a large dataset of 73200 records and a small one of 1849 records are built up to verify our proposal. Results show SADA\u27s effectiveness in predicting labels and increments in the sensitivity of DNNs by 14.4% compared with existing domain adaptation algorithms
Electrocardiogram Recognization Based on Variational AutoEncoder
Subtle distortions on electrocardiogram (ECG) can help doctors to diagnose some serious larvaceous heart sickness on their patients. However, it is difficult to find them manually because of disturbing factors such as baseline wander and high-frequency noise. In this chapter, we propose a method based on variational autoencoder to distinguish these distortions automatically and efficiently. We test our method on three ECG datasets from Physionet by adding some tiny artificial distortions. Comparing with other approaches adopting autoencoders [e.g., contractive autoencoder, denoising autoencoder (DAE)], the results of our experiment show that our method improves the performance of publically available on ECG analysis on the distortions
HKF: Hierarchical Kalman Filtering with Online Learned Evolution Priors for Adaptive ECG Denoising
Electrocardiography (ECG) signals play a pivotal role in many healthcare
applications, especially in at-home monitoring of vital signs. Wearable
technologies, which these applications often depend upon, frequently produce
low-quality ECG signals. While several methods exist for ECG denoising to
enhance signal quality and aid clinical interpretation, they often underperform
with ECG data from wearable technology due to limited noise tolerance or
inadequate flexibility in capturing ECG dynamics. This paper introduces HKF, a
hierarchical and adaptive Kalman filter, which uses a proprietary state space
model to effectively capture both intra- and inter-heartbeat dynamics for ECG
signal denoising. HKF learns a patient-specific structured prior for the ECG
signal's intra-heartbeat dynamics in an online manner, resulting in a filter
that adapts to the specific ECG signal characteristics of each patient. In an
empirical study, HKF demonstrated superior denoising performance (reduced
mean-squared error) while preserving the unique properties of the waveform. In
a comparative analysis, HKF outperformed previously proposed methods for ECG
denoising, such as the model-based Kalman filter and data-driven autoencoders.
This makes it a suitable candidate for applications in extramural healthcare
settings.Comment: Submitted to Transactions on Signal Processin
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