Machine learning and wearable devices for Phonocardiogram-based diagnosis
Abdelmageed, Shaima; Elmusrati, Mohammed (2019)
Abdelmageed, Shaima
Elmusrati, Mohammed
Editori(t)
Meghanathan, Natarajan
Nagamalai, Dhinaharan
AIRCC
2019
Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi-fe202102225649
https://urn.fi/URN:NBN:fi-fe202102225649
Kuvaus
vertaisarvioitu
© CS & IT-CSCP 2019
© CS & IT-CSCP 2019
Tiivistelmä
The heart sound signal, Phonocardiogram (PCG) is difficult to interpret even for experienced cardiologists. Interpretation are very subjective depending on the hearing ability of the physician. mHealth has been the adopted approach towards simplifying that and getting quick diagnosis using mobil devices. However, it has been challenging due to the required high quality of data, high computation load, and high-power consumption. The aim of this paper is to diagnose the heart condition based on Phonocardiogram analysis using Machine Learning techniques assuming limited processing power to be encapsulated later in a wearable device. The cardiovascular system is modelled in a transfer function to provide PCG signal recording as it would be recorded at the wrist. The signal is, then, decomposed using filter bank and the analysed using discriminant function. The results showed that PCG with a 19 dB Signal-to-Noise-Ratio can lead to 97.33% successful diagnosis. The same decomposed signal is then analysed using pattern recognition neural network, and the classification was 100% successful with 83.3% trust level.
Kokoelmat
- Artikkelit [3024]