Title
A nonlinear dynamic approach reveals a long-term stroke effect on cerebral blood flow regulation at multiple time scales.
Abstract
Cerebral autoregulation (CA) is an important vascular control mechanism responsible for relatively stable cerebral blood flow despite changes of systemic blood pressure (BP). Impaired CA may leave brain tissue unprotected against potentially harmful effects of BP fluctuations. It is generally accepted that CA is less effective or even inactive at frequencies. >similar to 0.1 Hz. Without any physiological foundation, this concept is based on studies that quantified the coupling between BP and cerebral blood flow velocity (BFV) using transfer function analysis. This traditional analysis assumes stationary oscillations with constant amplitude and period, and may be unreliable or even invalid for analysis of nonstationary BP and BFV signals. In this study we propose a novel computational tool for CA assessment that is based on nonlinear dynamic theory without the assumption of stationary signals. Using this method, we studied BP and BFV recordings collected from 39 patients with chronic ischemic infarctions and 40 age-matched non-stroke subjects during baseline resting conditions. The active CA function in non-stroke subjects was associated with an advanced phase in BFV oscillations compared to BP oscillations at frequencies from similar to 0.02 to 0.38 Hz. The phase shift was reduced in stroke patients even at >=6 months after stroke, and the reduction was consistent at all tested frequencies and in both stroke and non-stroke hemispheres. These results provide strong evidence that CA may be active in a much wider frequency region than previously believed and that the altered multiscale CA in different vascular territories following stroke may have important clinical implications for post-stroke recovery. Moreover, the stroke effects on multiscale cerebral blood flow regulation could not be detected by transfer function analysis, suggesting that nonlinear approaches without the assumption of stationarity are more sensitive for the assessment of the coupling of nonstationary physiological signals.
Year
DOI
Venue
2012
10.1371/journal.pcbi.1002601
PLOS COMPUTATIONAL BIOLOGY
DocType
Volume
Issue
Journal
8
7
ISSN
Citations 
PageRank 
1553-734X
1
0.40
References 
Authors
1
5
Name
Order
Citations
PageRank
Kun Hu162.55
Men-Tzung Lo28313.65
Chung-Kang Peng3295.02
Yanhui Liu461.18
Vera Novak510.40