[HTML][HTML] Applying recurrent neural networks for anomaly detection in electrocardiogram sensor data
Monitoring heart electrical activity is an effective way of detecting existing and developing
conditions. This is usually performed as a non-invasive test using a network of up to 12 …
conditions. This is usually performed as a non-invasive test using a network of up to 12 …
[HTML][HTML] Unraveling Arrhythmias with Graph-Based Analysis: A Survey of the MIT-BIH Database
S Alinsaif - Computation, 2024 - mdpi.com
Cardiac arrhythmias, characterized by deviations from the normal rhythmic contractions of
the heart, pose a formidable diagnostic challenge. Early and accurate detection remains an …
the heart, pose a formidable diagnostic challenge. Early and accurate detection remains an …
ECG heartbeats classification with dilated convolutional autoencoder
Electrocardiography is essential for the early diagnosis and treatment of heart diseases, as
undiagnosed heart diseases can lead to unfortunate outcomes such as patient loss …
undiagnosed heart diseases can lead to unfortunate outcomes such as patient loss …
Cross-database and cross-channel electrocardiogram arrhythmia heartbeat classification based on unsupervised domain adaptation
The classification of electrocardiogram (ECG) plays a crucial role in the development of an
automatic cardiovascular diagnostic system. However, the considerable variances in ECG …
automatic cardiovascular diagnostic system. However, the considerable variances in ECG …
[HTML][HTML] Artificial intelligence for personalized genetics and new drug development: benefits and cautions
C Gallo - Bioengineering, 2023 - mdpi.com
As the global health care system grapples with steadily rising costs, increasing numbers of
admissions, and the chronic defection of doctors and nurses from the profession …
admissions, and the chronic defection of doctors and nurses from the profession …
[HTML][HTML] Predicting blood–brain barrier permeability of molecules with a large language model and machine learning
ETC Huang, JS Yang, KYK Liao, WCW Tseng… - Scientific Reports, 2024 - nature.com
Predicting the blood–brain barrier (BBB) permeability of small-molecule compounds using a
novel artificial intelligence platform is necessary for drug discovery. Machine learning and a …
novel artificial intelligence platform is necessary for drug discovery. Machine learning and a …
CardiacNet: A Neural Networks Based Heartbeat Classifications using ECG Signals
R Vavekanand, K Sam, S Kumar… - Studies in Medical and …, 2024 - sabapub.com
Obtaining information about the electrical activity of the heart in the form of
electrocardiograms (ECG) has become a standard way of monitoring patients' heart rhythm …
electrocardiograms (ECG) has become a standard way of monitoring patients' heart rhythm …
[HTML][HTML] Application of spatial uncertainty predictor in CNN-BiLSTM model using coronary artery disease ECG signals
This study aims to address the need for reliable diagnosis of coronary artery disease (CAD)
using artificial intelligence (AI) models. Despite the progress made in mitigating opacity with …
using artificial intelligence (AI) models. Despite the progress made in mitigating opacity with …
DIFDD: Deep intelligence framework for disease detection using patients electrocardiogram signals and X-ray images
Heart disease has been the leading cause of mortality worldwide in the recent decade.
Since 2019, new lung-related infections have increased heart attack mortality. To minimize …
Since 2019, new lung-related infections have increased heart attack mortality. To minimize …
Exploring Cardiac Rhythms and Improving ECG Beat Classification through Latent Spaces
A Vadillo-Valderrama, J Chaquet-Ulldemolins… - IEEE …, 2024 - ieeexplore.ieee.org
In recent years, a wide variety of Machine Learning (ML) algorithms, including Deep
Learning (DL) methods, have been proposed for electrocardiogram (ECG) beat …
Learning (DL) methods, have been proposed for electrocardiogram (ECG) beat …