Jorgen K Kanters
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Explore the profile of Jorgen K Kanters including associated specialties, affiliations and a list of published articles.
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141
Citations
1862
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Recent Articles
1.
Isaksen J, Graff C, Kanters J
J Electrocardiol
. 2025 Feb;
90:153897.
PMID: 39970702
No abstract available.
2.
Isaksen J, Arildsen B, Lind C, Norregaard M, Vernooy K, Schotten U, et al.
Comput Methods Programs Biomed
. 2024 Dec;
260:108537.
PMID: 39644781
Background: Machine learning-based analysis can accurately detect atrial fibrillation (AF) from photoplethysmograms (PPGs), however the computational requirements for analyzing raw PPG waveforms can be significant. The analysis of PPG-derived peak-to-peak...
3.
Storas A, Maeland S, Isaksen J, Hicks S, Thambawita V, Graff C, et al.
J Am Med Inform Assoc
. 2024 Nov;
32(1):79-88.
PMID: 39504476
Objective: Evaluate popular explanation methods using heatmap visualizations to explain the predictions of deep neural networks for electrocardiogram (ECG) analysis and provide recommendations for selection of explanations methods. Materials And...
4.
Young W, van der Most P, Bartz T, Bos M, Biino G, Duong T, et al.
J Am Heart Assoc
. 2024 Aug;
13(17):e034760.
PMID: 39206732
Background: Ventricular repolarization time (ECG QT and JT intervals) is associated with malignant arrhythmia. Genome-wide association studies have identified 230 independent loci for QT and JT; however, 50% of their...
5.
Isaksen J, Sivertsen C, Jensen C, Graff C, Linz D, Ellervik C, et al.
J Electrocardiol
. 2024 Apr;
84:129-136.
PMID: 38663227
Background: The association between type 2 diabetes and electrocardiographic (ECG) markers are incompletely explored and the dependence on diabetes duration is largely unknown. We aimed to investigate the electrocardiographic (ECG)...
6.
Sterenborg R, Steinbrenner I, Li Y, Bujnis M, Naito T, Marouli E, et al.
Nat Commun
. 2024 Jan;
15(1):888.
PMID: 38291025
To date only a fraction of the genetic footprint of thyroid function has been clarified. We report a genome-wide association study meta-analysis of thyroid function in up to 271,040 individuals...
7.
Kanters J, Nielsen M
JACC Clin Electrophysiol
. 2023 Dec;
9(12):2475-2476.
PMID: 38151299
No abstract available.
8.
Prasad P, Isaksen J, Abe-Jones Y, Zegre-Hemsey J, Sommargren C, Al-Zaiti S, et al.
Heart Rhythm O2
. 2023 Nov;
4(11):715-722.
PMID: 38034889
Background: Continuous electrocardiographic (ECG) monitoring is used to identify ventricular tachycardia (VT), but false alarms occur frequently. Objective: The purpose of this study was to assess the rate of 30-day...
9.
Storas A, Andersen O, Lockhart S, Thielemann R, Gnesin F, Thambawita V, et al.
Diagnostics (Basel)
. 2023 Jul;
13(14).
PMID: 37510089
Deep neural networks are complex machine learning models that have shown promising results in analyzing high-dimensional data such as those collected from medical examinations. Such models have the potential to...
10.
Strodthoff N, Mehari T, Nagel C, Aston P, Sundar A, Graff C, et al.
Sci Data
. 2023 May;
10(1):279.
PMID: 37179420
Machine learning (ML) methods for the analysis of electrocardiography (ECG) data are gaining importance, substantially supported by the release of large public datasets. However, these current datasets miss important derived...