CALVIN: A Rule Based Expert System for Improving Arrhymia Detector Performance During Noisy ECGS
Author(s)
Muldrow, Warren K.
DownloadMIT-LCS-TR-406.pdf (2.555Mb)
Metadata
Show full item recordAbstract
Human experts far outperform automated arrhythmia detectors in analyzing ECG data corrupted by noise and artifact. Humans make use of considerable a priori knowledge about cardiac electrophysiology and knowledge acquired from the specific ECG under analysis. R-R interval, coupling intervals of ectopic beats, and commonly occurring beat patterns observed during noise-free ECG segments form a knowledge base which is used in accurately detecting and classifying true QRS complexes in the presence of severe noise.
Date issued
1987-09Series/Report no.
MIT-LCS-TR-406