Real-time estimation of cerebrospinal fluid system parameters via oscillating pressure infusion

被引:0
|
作者
Kennet Andersson
Ian R. Manchester
Jan Malm
Anders Eklund
机构
[1] Umeå University,Department of Radiation Sciences
[2] Umeå University Hospital,Department of Biomedical Engineering and Informatics
[3] Massachusetts Institute of Technology,Computer Science and Artificial Intelligence Laboratory
[4] Umeå University,Department of Applied Physics and Electronics
[5] Umeå University,Department of Clinical Neuroscience
[6] Umeå University,Centre of Biomedical Engineering and Physics
来源
Medical & Biological Engineering & Computing | 2010年 / 48卷
关键词
Normal pressure hydrocephalus; System identification; Outflow resistance; Outflow conductance; Intracranial pressure; Infusion test;
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中图分类号
学科分类号
摘要
Hydrocephalus is related to a disturbed cerebrospinal fluid (CSF) system. For diagnosis, lumbar infusion test are performed to estimate outflow conductance, Cout, and pressure volume index, PVI, of the CSF system. Infusion patterns and analysis methods used in current clinical practice are not optimized. Minimizing the investigation time with sufficient accuracy is of major clinical relevance. The aim of this study was to propose and experimentally evaluate a new method, the oscillating pressure infusion (OPI). The non-linear model of the CSF system was transformed into a linear time invariant system. Using an oscillating pressure pattern and linear system identification methods, Cout and PVI with confidence intervals, were estimated in real-time. Forty-two OPI and constant pressure infusion (CPI) investigations were performed on an experimental CSF system, designed with PVI = 25.5 ml and variable Cout. The ARX model robustly estimated Cout (mean Cout,OPI − Cout,CPI = 0.08 μl/(s kPa), n = 42, P = 0.68). The Box–Jenkins model proved most reliable for PVI (23.7 ± 2.0 ml, n = 42). The OPI method, with its oscillating pressure pattern and new parameter estimation methods, efficiently estimated Cout and PVI as well as their confidence intervals in real-time. The results from this experimental study show potential for the OPI method and supports further evaluation in a clinical setting.
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页码:1123 / 1131
页数:8
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