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Ki Moo Lim

Showing results (1-10 of 84) with videos related to

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Biomedical Engineering Online|June 9, 2019
Prediction of the mechanical response of cardiac alternans by using an electromechanical model of human ventricular myocytesJun Ik Park, Ki Moo Lim
Biomedical Engineering Online|June 17, 2018
The effect of myocardial action potential duration on cardiac pumping efficacy: a computational studyDa Un Jeong, Ki Moo Lim
Frontiers in Physiology|August 16, 2018
Influence of the KCNQ1 S140G Mutation on Human Ventricular Arrhythmogenesis and Pumping Performance: Simulation StudyDa Un Jeong, Ki Moo Lim
Frontiers in Physiology|April 9, 2020
Relationship Between Electrical Instability and Pumping Performance During Ventricular Tachyarrhythmia: Computational StudyDa Un Jeong, Ki Moo Lim
Biomedical Engineering Online|June 24, 2010
Computational assessment of the effects of a pulsatile pump on toxin removal in blood purificationKi Moo Lim, Eun Bo Shim
Frontiers in Physiology|December 17, 2020
Prediction of Cardiac Mechanical Performance From Electrical Features During Ventricular Tachyarrhythmia Simulation Using Machine Learning AlgorithmsDa Un Jeong, Ki Moo Lim
Scientific Reports|April 10, 2021
Artificial neural network model for predicting changes in ion channel conductance based on cardiac action potential shapes generated via simulationDa Un Jeong, Ki Moo Lim
Biomedical Engineering Letters|July 8, 2025
Advances in cardiovascular signal analysis with future directions: a review of machine learning and deep learning models for cardiovascular disease classification based on ECG, PCG, and PPG signalsYunendah Nur Fuadah, Ki Moo Lim
Frontiers in Physiology|February 21, 2022
Optimal Classification of Atrial Fibrillation and Congestive Heart Failure Using Machine LearningYunendah Nur Fuadah, Ki Moo Lim
Diagnostics (Basel, Switzerland)|November 26, 2022
Classification of Blood Pressure Levels Based on Photoplethysmogram and Electrocardiogram Signals with a Concatenated Convolutional Neural NetworkYunendah Nur Fuadah, Ki Moo Lim
Pageof 9

Showing results (1-10 of 84) with videos related to

Sort By:
Pageof 9
Biomedical Engineering Online|June 9, 2019
Prediction of the mechanical response of cardiac alternans by using an electromechanical model of human ventricular myocytesJun Ik Park, Ki Moo Lim
Biomedical Engineering Online|June 17, 2018
The effect of myocardial action potential duration on cardiac pumping efficacy: a computational studyDa Un Jeong, Ki Moo Lim
Frontiers in Physiology|August 16, 2018
Influence of the KCNQ1 S140G Mutation on Human Ventricular Arrhythmogenesis and Pumping Performance: Simulation StudyDa Un Jeong, Ki Moo Lim
Frontiers in Physiology|April 9, 2020
Relationship Between Electrical Instability and Pumping Performance During Ventricular Tachyarrhythmia: Computational StudyDa Un Jeong, Ki Moo Lim
Biomedical Engineering Online|June 24, 2010
Computational assessment of the effects of a pulsatile pump on toxin removal in blood purificationKi Moo Lim, Eun Bo Shim
Frontiers in Physiology|December 17, 2020
Prediction of Cardiac Mechanical Performance From Electrical Features During Ventricular Tachyarrhythmia Simulation Using Machine Learning AlgorithmsDa Un Jeong, Ki Moo Lim
Scientific Reports|April 10, 2021
Artificial neural network model for predicting changes in ion channel conductance based on cardiac action potential shapes generated via simulationDa Un Jeong, Ki Moo Lim
Biomedical Engineering Letters|July 8, 2025
Advances in cardiovascular signal analysis with future directions: a review of machine learning and deep learning models for cardiovascular disease classification based on ECG, PCG, and PPG signalsYunendah Nur Fuadah, Ki Moo Lim
Frontiers in Physiology|February 21, 2022
Optimal Classification of Atrial Fibrillation and Congestive Heart Failure Using Machine LearningYunendah Nur Fuadah, Ki Moo Lim
Diagnostics (Basel, Switzerland)|November 26, 2022
Classification of Blood Pressure Levels Based on Photoplethysmogram and Electrocardiogram Signals with a Concatenated Convolutional Neural NetworkYunendah Nur Fuadah, Ki Moo Lim
Pageof 9