DocumentCode :
1075221
Title :
An Enhanced Automatic Algorithm for Estimation of Respiratory Variations in Arterial Pulse Pressure During Regions of Abrupt Hemodynamic Changes
Author :
Aboy, Mateo ; Crespo, Cristina ; Austin, Daniel
Volume :
56
Issue :
10
fYear :
2009
Firstpage :
2537
Lastpage :
2545
Abstract :
We describe an improved automatic algorithm to estimate the pulse-pressure-variation (PPV) index from arterial blood pressure (ABP) signals. This enhanced algorithm enables for PPV estimation during periods of abrupt hemodynamic changes. Numerous studies have shown PPV to be one of most specific and sensitive predictors of fluid responsiveness in mechanically ventilated patients. The algorithm uses a beat detection algorithm to perform beat segmentation, kernel smoothers for envelope detection, and a suboptimal Kalman filter for PPV estimation and artifact removal. In this paper, we provide a detailed description of the algorithm and assess its performance on over 40 h of ABP signals obtained from 18 mechanically ventilated crossbred Yorkshire swine. The subjects underwent grade V liver injury after splenectomy, while receiving mechanical ventilation, and general anesthesia with isoflurane. All subjects in the database underwent a period of abrupt hemodynamic change after an induced grade V liver injury involving severe blood loss resulting in hemorrhagic shock, followed by fluid resuscitation with either 0.9% normal saline or lactated ringers solutions. Trained experts manually calculated PPV at five time instances during the period of abrupt hemodynamic changes. We report validation results comparing the proposed algorithm against a commercial system (pulse contour cardiac output, PICCO) with continuous PPV monitoring capabilities. Both systems were assessed during periods of abrupt hemodynamic changes against the ldquogold-standardrdquo PPV, calculated and manually annotated by experts. Our results indicate that the proposed algorithm performs considerably better than the PICCO system during regions of abrupt hemodynamic changes.
Keywords :
Kalman filters; blood vessels; haemodynamics; medical signal detection; medical signal processing; pneumodynamics; abrupt hemodynamic changes; arterial blood pressure; automatic algorithm; beat detection algorithm; beat segmentation; crossbred Yorkshire swine; envelope detection; fluid responsiveness; fluid resuscitation; grade V liver injury; hemorrhagic shock; kernel smoothers; mechanical ventilation; pulse contour cardiac output; pulse-pressure-variation index; respiratory variations; suboptimal Kalman filter; Arterial blood pressure; Change detection algorithms; Delay; Detection algorithms; Envelope detectors; Hemodynamics; Injuries; Kernel; Liver; Ventilation; Fluid responsiveness; hemodynamic monitoring; pulse contour analysis; pulse contour cardiac output (PICCO); pulse-pressure-variation (PPV) index (PPV); stroke-volume-variation index (SSV); Algorithms; Animals; Blood Pressure; Cardiac Output; Hemodynamics; Liver; Models, Cardiovascular; Monitoring, Physiologic; Reproducibility of Results; Respiratory Rate; Shock, Hemorrhagic; Signal Processing, Computer-Assisted; Swine;
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2009.2024761
Filename :
5075585
Link To Document :
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