Chapter title |
Identification of an Intracranial Pressure (ICP) Response Function from Continuously Acquired Electroencephalographic and ICP Signals in Burst-Suppressed Patients.
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Chapter number | 45 |
Book title |
Intracranial Pressure and Brain Monitoring XV
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Published in |
Acta neurochirurgica Supplement, January 2016
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DOI | 10.1007/978-3-319-22533-3_45 |
Pubmed ID | |
Book ISBNs |
978-3-31-922532-6, 978-3-31-922533-3
|
Authors |
Mark Connolly, Raymond Liou, Paul Vespa, Xiao Hu PhD, Xiao Hu |
Editors |
Beng-Ti Ang |
Abstract |
Continuous intracranial pressure (ICP) and electroencephalographic (EEG) monitoring are used in the management of patients with brain injury. It is possible that these two signals could be related through neurovascular coupling. To explore this mechanism, we modeled the ICP response to brain activity by treating spontaneous burst activity in burst-suppressed patients as an impulse, and identified the ICP response function (ICPRF) as the subsequent change in ICP.Segments of ICP were filtered, classified as elevating or stable, and suitable ICPRFs were identified. After calibration, each ICPRF was convolved with the EEG to produce the estimated ICP. The mean error (ME) versus distance from the selected ICPRF was calculated and the elevating and stable ICP segments compared.Eighty-four ICPRFs were identified from 15 data segments. The ME of the elevating segments increased at an average rate of 57 mmHg/min, whereas the average ME of the stable segments increased at a rate of 0.05 mmHg/min.These findings demonstrate that deriving an ICPRF from a burst-suppressed patient is a suitable approach for stable segments. To completely model the ICP response to EEG activity, a more robust model should be developed. |
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