WE-CARE: An Intelligent Mobile Telecardiology System to Enable mHealth Applications

@article{Huang2014WECAREAI,
  title={WE-CARE: An Intelligent Mobile Telecardiology System to Enable mHealth Applications},
  author={Anpeng Huang and C. Chen and Kaigui Bian and Xiaohui Duan and Min Chen and Hongqiao Gao and Chao Meng and Qian Zheng and Yingrui Zhang and Bingli Jiao and Linzhen Xie},
  journal={IEEE Journal of Biomedical and Health Informatics},
  year={2014},
  volume={18},
  pages={693-702}
}
  • A. Huang, C. Chen, +8 authors Linzhen Xie
  • Published 2014
  • Medicine, Computer Science
  • IEEE Journal of Biomedical and Health Informatics
Recently, cardiovascular disease (CVD) has become one of the leading death causes worldwide, and it contributes to 41% of all deaths each year in China. This disease incurs a cost of more than 400 billion US dollars in China on the healthcare expenditures and lost productivity during the past ten years. It has been shown that the CVD can be effectively prevented by an interdisciplinary approach that leverages the technology development in both IT and electrocardiogram (ECG) fields. In this… Expand
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