Multimodal Pressure-Flow Analysis to Assess Dynamic Cerebral Autoregulation Albert C. Yang, MD, PhD Attending Physician, Department of Psychiatry, Taipei Veterans General Hospital, Taipei, Taiwan Assistant Professor, School of Medicine, National Yang-Ming University, Taipei, Taiwan
Overview What is cerebral autoregulation and how to measure it? Multimodal pressure-flow analysis Empirical Mode Decomposition and Hilbert-Huang Transform Subsequent improvement Demonstration
Restored steady stateBaseline Perturbation Body as Servo-Mechansim Type Machine Importance of corrective mechanisms to keep variables “in bounds.” Healthy systems are self-regulated to reduce variability and maintain physiologic constancy. Underlying notion of “constant,” “steady-state,” conditions. Walter Cannon 1929
Ideal Cerebral Autoregulation Lassen NA. Physiol Rev. 1959;39: Strandgaard S, Paulson OB. Stroke.1984;15:
Static Autoregulation Measurement Tiecks FP et al., Stroke. 1995; 26:
Dynamic Autoregulation Measurement Tiecks FP et al., Stroke. 1995; 26:
Autoregulation Index Tiecks FP et al., Stroke. 1995; 26:
Challenges of Cerebral Autoregulation Assessment Blood pressure and cerebral blood flow velocity are often nonstationary and their interactions are nonlinear. Need a new method that can analyze nonlinear and nonstationary signals. Novak V et al., Biomed Eng Online. 2004;3(1):39
Multimodal Pressure-Flow Analysis
Participants 15 normotensive healthy subjects age 40.2 ± 2.0 years 20 hypertensive subjects age 49.9 ± 2.0 years 15 minor stroke subjects 18.3 ± 4.5 months after acute onset age 53.1 ± 1.6 years Novak V et al., Biomed Eng Online. 2004;3(1):39
Measurements Blood pressure Finger Photoplethysmographic Volume Clamp Method. Blood flow velocities (BFV) from bilateral middle cerebral arteries (MCA) Transcranial Doppler Ultrasound. Novak V et al., Biomed Eng Online. 2004;3(1):39
Valsalva Maneuver I. Expiration - mechanical II. reduced venous return, BP falls III. Inspiration - mechanical IV. increased cardiac output and increased peripheral resistance
Valsalva Maneuver Dynamics Blood Pressure Blood Flow Velocity – Right Middle Cerebral Artery Blood Flow Velocity – Left Middle Cerebral Artery
Empirical Mode Decomposition (EMD) The Empirical Mode Decomposition Method and the Hilbert Spectrum for Non-stationary Time Series Analysis, (1998) Proc. Roy. Soc. London, A454, The motivation of EMD development was to solve the problems of non-linearity and non-stationarity of the data Is an adaptive-based method 黃 鍔 院士 Norden E. Huang Cited 7,722 Times!
Empirical Mode Decomposition Huang et al. Proc Roy Soc Lond A 1998;454:
Empirical Mode Decomposition Huang et al. Proc Roy Soc Lond A 1998;454: Step 1: Find the envelope alone local maximum and minimum
Empirical Mode Decomposition Huang et al. Proc Roy Soc Lond A 1998;454: Step 2: Find the average between envelopes
Empirical Mode Decomposition Huang et al. Proc Roy Soc Lond A 1998;454: Step 3: To determine the fluctuation of original signal around the average of envelopes Intrinsic Mode Function
Empirical Mode Decomposition Huang et al. Proc Roy Soc Lond A 1998;454: Sifting : to get all IMF components
Empirical Mode Decomposition A Simple Example
Empirical Mode Decomposition Original blood pressure waveform Key mode of blood pressure waveform during Valsalva maneuver
Blood Pressure versus Blood Flow Velocity Temporal (time) Relationship Novak V et al., Biomed Eng Online. 2004;3(1):39
Blood Pressure versus Blood Flow Velocity Phase Relationship Control Stroke Novak V et al., Biomed Eng Online. 2004;3(1):39
Between Groups Phase Comparisons *** p < 0.005, ** p < 0.01 Groups BPR Values Comparisons +++ p <0.001
Conventional Autoregulation Indices Novak V et al., Biomed Eng Online. 2004;3(1):39
Summary: Original Version of MMPF Analysis Regulation of BP-BFV dynamics is altered in both hemispheres in hypertension and stroke, rendering BFV dependent on BP. The MMPF method provides high time and frequency resolution. This method may be useful as a measure of cerebral autoregulation for short and nonstationary time series.
Limitations: Original Version of MMPF Analysis Requires visual identification of key mode of physiologic time series Mode mixing with original EMD analysis Valsalva maneuver itself has certain risk
Subsequent Improvements of MMPF Analysis Use Ensemble EMD (EEMD) Analysis Resting-state MMPF Analysis Selection of key mode related to respiration during resting-state condition Comparison of phase shifts in multiple time scales Implementation and automation of the method K. Hu, et al., (2008) Cardiovascular Engineering M-T Lo, k Hu et al., (2008) EURASIP Journal on Advances in Signal Processing Wu, Z., et al. (2007) Proc. Natl. Acad. Sci. USA., 104, Dr. Yanhui Liu. DynaDx Corp. U.S.A. Hu K et al., (2012) PLoS Comput Biol 8(7): e
Resting-State Multimodal Pressure-Flow Analysis K. Hu, et al., Cardiovascular Engineering, 2008.
Respiratory Signals From Blood Pressure Time Series M-T Lo, k Hu et al., EURASIP Journal on Advances in Signal Processing, 2008
Resting-State Multimodal Pressure-Flow Analysis
Cerebral Blood Flow Regulation at Multiple Time Scales Hu K et al., PLoS Comput Biol 2012; 8(7): e
k. Hu, M-T Lo et al., journal of neurotrauma, 2009 Traumatic Brain Injury and Cerebral Autoregulation
k. Hu, M-T Lo et al., journal of neurotrauma, 2009
Midline Shift Correlates to Left- Right Difference in Autoregulation k. Hu, M-T Lo et al., journal of neurotrauma, 2009
Resources Empirical Mode Decomposition (Matlab) DataDemon (Generic Analysis Platform) For 64-bit system, DemonSetupPRO.msi DemonSetupPRO.msi For 32-bit system, DemonSetupPRO.msi DemonSetupPRO.msi
Acknowledgements Vera Novak, MD, PhD Chung-Kang Peng, PhD Albert C. Yang, MD, PhD Ment-Zung Lo, PhD Kun Hu, PhD Yanhui Liu, PhD