Simmetrical Compression Distance for Arrhythmia Discrimination in Cloud-Based Big Data Services

 

Authors
Rojo ?lvarez, Jos? Luis
Format
Article
Status
publishedVersion
Description

The current development of cloud computing is completely changing the paradigm of data knowledge extraction in huge databases. An example of this technology in the cardiac arrhythmia field is the SCOOP platform, a national-level scientific cloud-based big data service for implantable cardioverter defibrillators. In this scenario, we here propose a new methodology for automatic classification of intracardiac electrograms (EGMs) in a cloud computing system, designed for minimal signal preprocessing. A new compression-based similarity measure (CSM) is created for low computational burden, so-called weighted fast compression distance, which provides better performance when compared with other CSMs in the literature. Using simple machine learning techniques, a set of 6848 EGMs extracted from SCOOP platform were classified into seven cardiac arrhythmia classes and one noise class, reaching near to 90% accuracy when previous patient arrhythmia information was available and 63% otherwise, hence overcoming in all cases the classification provided by the majority class. Results show that this methodology can be used as a high-quality service of cloud computing, providing support to physicians for improving the knowledge on patient diagnosis.
http://ieeexplore.ieee.org/document/7066939/

Publication Year
2015
Language
eng
Topic
DICTIONARIES
INFORMATICS
DATABASE
BIOMEDICAL
MEASUREMENT
Repository
Repositorio SENESCYT
Get full text
http://repositorio.educacionsuperior.gob.ec/handle/28000/2786
Rights
openAccess
License
closedAccess