CardioLearn: A Cloud Deep Learning Service for Cardiac Disease Detection
from Electrocardiogram
- URL: http://arxiv.org/abs/2007.02165v1
- Date: Sat, 4 Jul 2020 18:48:24 GMT
- Title: CardioLearn: A Cloud Deep Learning Service for Cardiac Disease Detection
from Electrocardiogram
- Authors: Shenda Hong, Zhaoji Fu, Rongbo Zhou, Jie Yu, Yongkui Li, Kai Wang,
Guanlin Cheng
- Abstract summary: We demonstrate our work on building, training, and serving such out-of-the-box cloud deep learning service for cardiac disease detection from ECG named CardioLearn.
As a practical example, we also design a portable smart hardware device along with an interactive mobile program, which can collect ECG and detect potential cardiac diseases anytime and anywhere.
- Score: 5.697086783381729
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Electrocardiogram (ECG) is one of the most convenient and non-invasive tools
for monitoring peoples' heart condition, which can use for diagnosing a wide
range of heart diseases, including Cardiac Arrhythmia, Acute Coronary Syndrome,
et al. However, traditional ECG disease detection models show substantial rates
of misdiagnosis due to the limitations of the abilities of extracted features.
Recent deep learning methods have shown significant advantages, but they do not
provide publicly available services for those who have no training data or
computational resources.
In this paper, we demonstrate our work on building, training, and serving
such out-of-the-box cloud deep learning service for cardiac disease detection
from ECG named CardioLearn. The analytic ability of any other ECG recording
devices can be enhanced by connecting to the Internet and invoke our open API.
As a practical example, we also design a portable smart hardware device along
with an interactive mobile program, which can collect ECG and detect potential
cardiac diseases anytime and anywhere.
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