Authors
Suliman Yousef Belal, Azzam Fouad George Taktak, Andrew John Nevill, Stephen Andrew Spencer, David Roden, Sharon Bevan
Publication date
2002/2/1
Journal
Artificial intelligence in medicine
Volume
24
Issue
2
Pages
149-165
Publisher
Elsevier
Description
Despite the fact that pulse oximetry has become an essential technology in respiratory monitoring of neonates and paediatric patients, it is still fraught with artefacts causing false alarms resulting from patient or probe movement. As the shape of the plethysmogram has always been considered as a useful visual indicator for determining the reliability of SaO2 numerical readings, automation of this observation might benefit health care providers at the bedside. We observed that the systolic upstroke time (t1), the diastolic time (t2) and heart rate (HR) extracted from the plethysmogram pulse constitute features, which can be used for detecting normal and distorted plethysmogram pulses. We developed a technique for classifying plethysmogram pulses into two categories: valid and artefact via implementations of fuzzy inference systems (FIS), which were tuned using an adaptive-network-based fuzzy inference system …
Total citations
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