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Research of novel biosignal modalities with application to remote patient monitoring is a subject of state-of-the-art developments. This study is focused on sonified ECG modality, which can be transmitted as an acoustic wave and received by GSM (Global System for Mobile Communications) microphones. Thus, the wireless connection between the patient module and the cloud server can be provided over an audio channel, such as a standard telephone call or audio message. Patients, especially the elderly or visually impaired, can benefit from ECG sonification because the wireless interface is readily available, facilitating the communication and transmission of secure ECG data from the patient monitoring device to the remote server. The aim of this study is to develop an AI-driven algorithm for 12-lead ECG sonification to support diagnostic reliability in the signal processing chain of the audio ECG stream. Our methods present the design of two algorithms: (1) a transformer (ECG-to-Audio) based on the frequency modulation (FM) of eight independent ECG leads in the very low frequency band (300-2700 Hz); and (2) a transformer (Audio-to-ECG) based on a four-layer 1D convolutional neural network (CNN) to decode the audio ECG stream (10 s @ 11 kHz) to the original eight-lead ECG (10 s @ 250 Hz). The CNN model is trained in unsupervised regression mode, searching for the minimum error between the transformed and original ECG signals. The results are reported using the PTB-XL 12-lead ECG database (21,837 recordings), split 50:50 for training and test. The quality of FM-modulated ECG audio is monitored by short-time Fourier transform, and examples are illustrated in this paper and supplementary audio files. The errors of the reconstructed ECG are estimated by a popular ECG diagnostic toolbox. They are substantially low in all ECG leads: amplitude error (quartile range RMSE = 3-7 μV, PRD = 2-5.2%), QRS detector (Se, PPV > 99.7%), P-QRS-T fiducial points' time deviation (<2 ms). Low errors generalized across diverse patients and arrhythmias are a testament to the efficacy of the developments. They support 12-lead ECG sonification as a wireless interface to provide reliable data for diagnostic measurements by automated tools or medical experts.
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http://dx.doi.org/10.3390/s24061883 | DOI Listing |
Heart
September 2025
Kingston University, London, UK.
Importance/background: The 12-lead ECG is recommended in clinical guidelines for prehospital assessment of patients with suspected acute coronary syndrome (ACS) presenting to Emergency Medical Services (EMS).
Objectives: To determine prehospital ECG (PHECG) utilisation since UK national rollout of primary percutaneous coronary intervention, and whether this is associated with clinical outcomes in patients with ACS.
Design: Population-based, linked cohort study using Myocardial Ischaemia National Audit Project data from 1 January 2010 to 31 December 2017, related to patients with ACS conveyed by the EMS to hospital in England and Wales.
Background: During left bundle branch area pacing (LBBAP), several markers of electrical synchrony, (V6 R-wave peak time (RWPT), aVL-RWPT, and the V6-V1 interpeak interval), are commonly used to assess left bundle branch (LBB) capture. Nevertheless, the relationship between these electrocardiographic (ECG) measurements and mechanical synchrony remains poorly understood.
Objective: We aimed to analyze the association between electrical parameters from the paced QRS complex and mechanical performance assessed through 2D strain and myocardial work (MW) indices, following LBBAP implantation.
J Am Soc Echocardiogr
September 2025
Department of Cardiology and Vascular Medicine, Universitas Indonesia, Indonesia. Electronic address:
Nearly 30% of patients with cardiac resynchronization therapy (CRT) are non- responders. Speckle tracking echocardiography (STE) parameters are able to evaluate electromechanical dyssynchrony that could improve outcomes. We aim to examine the association between various STE parameters with CRT response and clinical outcomes in heart failure patients.
View Article and Find Full Text PDFProg Cardiovasc Dis
September 2025
Department of Cardiology, University of Texas Health Science Center, San Antonio, TX, USA.
Background: Cardiopulmonary resuscitation (CPR) is a vital intervention for managing cardiac arrest; however, enhancing survival rates remains a significant challenge. Recent advancements highlight the importance of integrating artificial intelligence (AI) to overcome existing limitations in prediction, intervention, and post-resuscitation care.
Methods: A thorough review of contemporary literature regarding AI applications in CPR was undertaken, explicitly examining its role in the early prediction of cardiac arrest, optimization of CPR quality, and enhancement of post-arrest outcomes.
Ultrason Sonochem
September 2025
School of Pharmacy, Zunyi Medical University, Zunyi 563000, Guizhou, China; Guizhou Key Laboratory of Modern Traditional Chinese Medicine Creation, Zunyi 563000, Guizhou, China. Electronic address:
This study aimed to develop an efficient green ultrasound-assisted extraction (UAE) method for naringin (Nar) from Exocarpium Citri Grandis (ECG) using a glycerol-based ternary natural deep eutectic solvent (NADES) and explore its biofunctional relevance. After screening and single-factor optimization, the optimal NADES was identified as glycerol:malic acid:propanedioic acid (1:1:2 M ratio, 30 % water content). Extraction conditions (liquid-solid ratio, temperature, time) were optimized via response surface methodology (RSM) and an artificial neural network-genetic algorithm (ANN-GA), with ANN-GA demonstrating superior predictive capability.
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