Characterizing artifacts in RR stress test time series

 

Authors
Wong de Balzar, Sara
Format
Article
Status
publishedVersion
Description

Electrocardiographic stress test records have a lot of artifacts. In this paper we explore a simple method to characterize the amount of artifacts present in unprocessed RR stress test time series. Four time series classes were defined: Very good lead, Good lead, Low quality lead and Useless lead. 65 ECG, 8 lead, records of stress test series were analyzed. Firstly, RR-time series were annotated by two experts. The automatic methodology is based on dividing the RR-time series in non-overlapping windows. Each window is marked as noisy whenever it exceeds an established standard deviation threshold (SDT). Series are classified according to the percentage of windows that exceeds a given value, based upon the first manual annotation. Different SDT were explored. Results show that SDT close to 20% (as a percentage of the mean) provides the best results. The coincidence between annotators classification is 70.77% whereas, the coincidence between the second annotator and the automatic method providing the best matches is larger than 63%. Leads classified as Very good leads and Good leads could be combined to improve automatic heartbeat labeling.
https://www.semanticscholar.org/paper/Characterizing-artifacts-in-RR-stress-test-time-Astudillo-Salinas-Palacio-Baus/1c0d8c0786aa225a18061fdabd2510c51b51882b

Publication Year
2016
Language
eng
Topic
ARTIFACTS
TEST TIME
RR STRESS
Repository
Repositorio SENESCYT
Get full text
http://repositorio.educacionsuperior.gob.ec/handle/28000/4172
Rights
openAccess
License
closedAccess