Published July 26, 2019 | Version v4
Dataset Open

Long QT syndrome ECG analysis

  • 1. The Chinese University of Hong Kong
  • 2. Newcastle University
  • 3. Queen Mary University of London
  • 4. University of Calgary

Description

Automated analysis of ECGs obtained from patients with long QT syndrome (generated from arrhythmia study, Faculty of Medicine, The Chinese University of Hong Kong Project)

 

Disclaimer: These datasets were generated during the course of academic research conducted at the Faculty of Medicine, The Chinese University of Hong Kong, which received ethics approval by The Joint Chinese University of Hong Kong – New Territories East Cluster Clinical Research Ethics Committee of the Hospital Authority. They have been anonymised and are deposited for further advancement of medical research in full compliance with University Regulations and Policy on Dataset Deposit and Sharing. For additional information: https://libguides.lib.cuhk.edu.hk/RDM/dataset_deposit

 

Access is permitted for research purposes only.


The use of these datasets should provide acknowledgements of such efforts by citing this DOI.

Notes

Disclaimer: These datasets were generated during the course of academic research conducted at the Faculty of Medicine, The Chinese University of Hong Kong, which received ethics approval by The Joint Chinese University of Hong Kong – New Territories East Cluster Clinical Research Ethics Committee of the Hospital Authority. They have been anonymised and are deposited for further advancement of medical research in full compliance with University Regulations and Policy on Dataset Deposit and Sharing. For additional information: https://libguides.lib.cuhk.edu.hk/RDM/dataset_deposit Access is permitted for research purposes only. The use of these datasets should provide acknowledgements of such efforts by citing this DOI.

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