Heart

MLBF-Net: A Multi-Lead-Branch Fusion Network for Multi-Class Arrhythmia Classification Using 12-Lead ECG

Author(s): Jing Zhang, Deng Liang, Aiping Liu, Min Gao, Xiang Chen, Xu Zhang, Xun Chenb
MLBF-Net: A Multi-Lead-Branch Fusion Network for Multi-Class Arrhythmia Classification Using 12-Lead ECG 150 150 IEEE Journal of Translational Engineering in Health and Medicine (JTEHM)

Automatic arrhythmia detection using 12-lead electrocardiogram (ECG) signal plays a critical role in early prevention and diagnosis of cardiovascular diseases. In the previous studies on automatic arrhythmia detection, most methods…

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Reduced Rank Least Squares for Real-Time Short Term Estimation of Mean Arterial Blood Pressure in Septic Patients Receiving Norepinephrine

Reduced Rank Least Squares for Real-Time Short Term Estimation of Mean Arterial Blood Pressure in Septic Patients Receiving Norepinephrine

Author(s): Yi Tang, Samuel Brown, Jeff Sorensen, Joel B. Harley
Reduced Rank Least Squares for Real-Time Short Term Estimation of Mean Arterial Blood Pressure in Septic Patients Receiving Norepinephrine 780 435 IEEE Journal of Translational Engineering in Health and Medicine (JTEHM)

    Abstract Norepinephrine (NE), an endogenous catecholamine, is a mainstay treatment for septic shock, which is a life-threatening manifestation of severe infection. NE counteracts the loss in blood pressure associated…

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An AI-based Heart Failure Treatment Adviser System

An AI-based Heart Failure Treatment Adviser System

Author(s): Zhuo Chen, Elmer Salazar, Kyle Marple, Sandeep R. Das, Alpesh Amin, Daniel Cheeran, Lakshman Tamil, Gopal Gupta
An AI-based Heart Failure Treatment Adviser System 517 81 IEEE Journal of Translational Engineering in Health and Medicine (JTEHM)

        Management of heart failure is a major health care challenge. Healthcare providers are expected to use best practices described in clinical practice guidelines, which typically consist of a long…

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Passive Self Resonant Skin Patch Sensor to Monitor Intraventricular Volu...

Passive Self Resonant Skin Patch Sensor to Monitor Intraventricular Volume using Electromagnetic Properties of Fluid Volume Changes

Author(s): Fayez Alruwaili, Kim Cluff, Jacob Griffith, Hussam Farhoud
Passive Self Resonant Skin Patch Sensor to Monitor Intraventricular Volume using Electromagnetic Properties of Fluid Volume Changes 780 307 IEEE Journal of Translational Engineering in Health and Medicine (JTEHM)

This paper focuses on the development of a passive, lightweight skin patch sensor that can measure fluid volume changes in the heart in a non-invasive, point-of-care setting. The wearable sensor…

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Unobtrusive Detection of Simulated Orthostatic Hypotension and Supine Hy...

Unobtrusive Detection of Simulated Orthostatic Hypotension and Supine Hypertension using Ballistocardiogram and Electrocardiogram of Healthy Adults

Author(s): Isaac S. Chang, Narges Armanfard, Abdul Qadir Javaid, Jennifer Boger, Alex Mihailidis
Unobtrusive Detection of Simulated Orthostatic Hypotension and Supine Hypertension using Ballistocardiogram and Electrocardiogram of Healthy Adults 780 310 IEEE Journal of Translational Engineering in Health and Medicine (JTEHM)

Effective management of neurogenic orthostatic hypotension and supine hypertension (SH-OH) due autonomic failure requires a frequent and timely adjustment of medication throughout the day to maintain the blood pressure (BP)…

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The placement of the FingerTPS™ palm sensor on the manikin’s chest.

Chest Compression Quality in a Newborn Manikin. A Randomized Crossover Trial

Author(s): Anne Lee Solevåg, Po-Yin Cheung, Elliott Li, Sarah Zhenchun Xue, Megan O'Reilly, Bo Fu, Bin Zheng, Georg Schmölzer
Chest Compression Quality in a Newborn Manikin. A Randomized Crossover Trial 322 411 IEEE Journal of Translational Engineering in Health and Medicine (JTEHM)

        Abstract The objective of this study was to examine changes in applied force and rate of chest compression (CC) during 5 min of CC with a target CC rate…

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