| Literature DB >> 26257141 |
Petter Dyverfeldt1,2, Malenka Bissell3, Alex J Barker4, Ann F Bolger5,6,7, Carl-Johan Carlhäll8,9,10, Tino Ebbers11,12, Christopher J Francios13, Alex Frydrychowicz14, Julia Geiger15, Daniel Giese16, Michael D Hope17, Philip J Kilner18, Sebastian Kozerke19, Saul Myerson20, Stefan Neubauer21, Oliver Wieben22,23, Michael Markl24,25.
Abstract
Pulsatile blood flow through the cavities of the heart and great vessels is time-varying and multidirectional. Access to all regions, phases and directions of cardiovascular flows has formerly been limited. Four-dimensional (4D) flow cardiovascular magnetic resonance (CMR) has enabled more comprehensive access to such flows, with typical spatial resolution of 1.5×1.5×1.5 - 3×3×3 mm(3), typical temporal resolution of 30-40 ms, and acquisition times in the order of 5 to 25 min. This consensus paper is the work of physicists, physicians and biomedical engineers, active in the development and implementation of 4D Flow CMR, who have repeatedly met to share experience and ideas. The paper aims to assist understanding of acquisition and analysis methods, and their potential clinical applications with a focus on the heart and greater vessels. We describe that 4D Flow CMR can be clinically advantageous because placement of a single acquisition volume is straightforward and enables flow through any plane across it to be calculated retrospectively and with good accuracy. We also specify research and development goals that have yet to be satisfactorily achieved. Derived flow parameters, generally needing further development or validation for clinical use, include measurements of wall shear stress, pressure difference, turbulent kinetic energy, and intracardiac flow components. The dependence of measurement accuracy on acquisition parameters is considered, as are the uses of different visualization strategies for appropriate representation of time-varying multidirectional flow fields. Finally, we offer suggestions for more consistent, user-friendly implementation of 4D Flow CMR acquisition and data handling with a view to multicenter studies and more widespread adoption of the approach in routine clinical investigations.Entities:
Mesh:
Year: 2015 PMID: 26257141 PMCID: PMC4530492 DOI: 10.1186/s12968-015-0174-5
Source DB: PubMed Journal: J Cardiovasc Magn Reson ISSN: 1097-6647 Impact factor: 5.364
Recommended 4D Flow CMR analysis for different clinical indications - all aspects below can be derived from a single acquisition. For a comprehensive overview of 4D Flow CMR quantification and visualization methodology including additional references please see recently published review articles [113–118]
| Clinical indication | Quantification | Visualizationa |
|---|---|---|
| Heart valve disease (stenosis, regurgitation) | Flow volume | • Identification of regurgitant and stenotic jets using streamlines and pathlines |
| • Regurgitant flow volumes & fraction | • Peak velocity location by systolic streamlines or maximum intensity projections of speed images | |
| Peak velocity | • Outflow patterns using streamlines | |
| • Estimated pressure gradients with modified Bernoulli equation | • Time course of flow curve | |
| Shunts and collateral vessels (Ventricular-septal defect, atrial-septal defect, fistulae) | Flow volume | • Identification of shunt flow and flow directionality using pathlines |
| • Shunt flow volume | ||
| • Qp/Qs | ||
| Complex congenital heart disease (e.g. single ventricle physiology, Fontan circulation, Fallot’s tetralogy), | Flow volume | • Flow directionality using pathlines |
| • Regurgitant flow volumes & fraction | • Shunt flow using pathlines | |
| • Flow distribution (e.g. left vs right pulmonary artery, relative SVC/IVC flow) | • Flow connectivity and distribution using pathlines | |
| • Collateral flow volume | ||
| Peak velocity | ||
| Aortic disease (aneurysm, coarctation, dissection) | Flow volume | • Peak velocity location by systolic streamlines or maximum intensity projections of speed images |
| • Regurgitant flow volumes & fraction | • Identification of flow in false lumen and potential entry/exit sites | |
| • Relative flows in true & false lumen | • Identification of highly disrupted flow patterns (likely to reduce forward flow) in tortuous aortic conditions | |
| Peak velocity |
aThe amount of supporting literature is smaller for visualization compared to quantification
Fig. 1Recommended workflow for clinical application of 4D Flow CMR with the main components of 1) patient preparation, 2) data acquisition in the magnet, 3) data reconstruction, 4) pre-processing of the reconstructed data, and 5) data analysis
4D Flow CMR scan parameters
| Ideally | Reason | Limiting factor | Consensus value | |
|---|---|---|---|---|
| Acquisition Parameters | ||||
| Field of view | Max | SNR, coverage | Scan time, system imperfections | Cover region of interest |
| Spatial resolutiona | Maximum, at least 5–6 voxels across vessel diameter of interestb, isotropic resolution. | Accuracy | Scan time, SNR | <2.5×2.5×2.5 mm3 for aorta or pulmonary artery |
| <3.0×3.0×3.0 mm3 for whole heart and greater vessels | ||||
| Velocity encoding timing (beat- vs. TR-interleaved) | TR-interleaved | Avoid inter-cycle variability | Temporal resolution | TR-interleaved |
| k-space segmentation factor | 1 | Accuracy (temporal resolution) | Scan time | 2 |
| Temporal resolutionc | Max | Accuracy | Scan time | <40 ms |
| ECG synchronizationd | Retrospective | Cover entire ECG cycle, avoid sequence interruption | Reconstruction complexity | If available: retrospective |
| Else: Prospectivee | ||||
| Respiratory motion compensationf | 100 % acceptance, motion correction | Scan time, reduction of breathing artifacts | Reconstruction complexity, robustness, breathing artefacts (ghosting and blurring) | If available: Leading or trailing MR navigator on liver/diaphragm interface, 6 mm window size, typically resulting in 50 % acceptance rate. |
| Otherwise: Bellows with 50 % acceptance rate. | ||||
| Partial k-space coverage in phase- and slice-encoding directions | Full k-space coverage | SNR, resolution | Scan time | If available: Elliptical k-space |
| Otherwise: Half scan 75 % × 75 % (y × z) | ||||
| Flip Angleg | Ernst angle: α = acos(e-TR/T1) | SNR | Contrast vs. SNR | Ernst angle |
| Parallel Imaging | No parallel imaging | SNR | Scan time | R = 2-3 (depends on #channels in coil array) |
|
| No | SNR | Scan time | If available: R = 4-5 |
| Venc | Maximum expected velocity, multiple vencs | VNR, avoid aliasing | Scan time | Single venc, 10 % higher than maximum expected velocity |
| Postprocessing Parameters | ||||
| Maxwell correction | Yes | Accuracy | Yes | |
| Eddy current correction | Yes | Accuracy | Different methods and their validity and robustness | Yes |
| Phase unwrapping | Yes | Accuracy | Different methods and their validity and robustness | Yes |
| Gradient non-linearity correction | Yes | Accuracy | Availability | If available |
aAlways indicate the effectively acquired resolution in combination with the interpolated resolution
bStudies have demonstrated that 5–6 voxels across the vessel diameter is sufficient for flow volume quantification [165]
cAlways indicate the effectively acquired resolution. If a temporal interpolation is performed, also indicate the interpolated temporal resolution along with the interpolation method used
dSo called self-gating techniques have been evaluated and may become an alternative to the ECG [32]
eFor prospective gating, analyses that involve integration over the whole cardiac cycle needs to be accompanied with a description of how the incomplete temporal coverage was handled
fDifferent types of respiratory navigators exist; variants include approaches that allow less motion in the central parts of k-space. Always describe the method that has been used and indicate the mean navigator efficiency in percent as well as the navigator acceptance window in mm. For fix window sizes and no k-space reordering, 6 mm navigator window is recommended, and this typically results in 50 % navigator efficiency
gThe SNR is strongly dependent on the in-flow effect, therefore the flip angle can be and is often chosen higher than the Ernst angle. When using contrast agents, the Ernst angle further increases (due to lower T1)
h k-t undersampling factor 4–5 in combination with conventional parallel imaging factor 2–3 is not recommended
Fig. 2Examples of 4D Flow CMR visualization techniques. All examples are based on data acquired in the aorta of a healthy volunteer. In these examples, flow visualization is overlaid onto a segmentation of the aorta. a An oblique slice that transects the aorta has been color-coded by flow speed and combined with a graph of velocity vectors which here displays the speed and direction of blood velocity in black arrows at a coarser grid than the acquired voxels. This type of visualization provides a quick overview of velocity fields. b A maximum intensity projection (MIP) image of flow speed permits identification of areas of elevated velocity and the point of peak velocity while displaying the peak velocities of the whole volume projected onto this single slice image. c Streamlines are instantaneously tangent to the velocity vector field and are useful to visualize 3D velocity fields at discrete time points. Here, the peak systolic velocity field is shown. d Pathlines are the trajectories that massless fluid particles would follow through the dynamic velocity field. Pathlines are suitable for studies of the path of pulsatile blood flow over time. This example shows pathlines emitted from a plane in the ascending aorta at the onset of systole and traced to early systole (left), peak systole (middle) and late systole (right). All figures have been color-coded based on flow speed using the same color-window settings according to the scale shown in (b) and (d). In a, c and d, the visualizations have been combined with a PC-MRA isosurface which has been derived from the 4D Flow CMR data
Fig. 3Examples of 4D Flow CMR visualization techniques, demonstrated on intracardiac flow data acquired in a healthy volunteer. In these examples, flow visualization is overlaid onto a 2D bSSFP acquisition in a three-chamber view. a Pathlines are the trajectories that massless fluid particles would follow through the dynamic velocity field and are suitable for studies of the path of pulsatile blood flow over time. Here, the transit of blood through the left ventricle (LV) is shown by pathlines emitted from the mitral valve at the time point of peak A-wave and traced to the time point of early systole systole. The timing of the ECG (TECG) is included for reference. b-d Streamlines are instantaneously tangent to the velocity vector field and are useful to visualize 3D velocity fields at discrete time points. Here, streamlines generated in a long-axis plane show parts of the intracardiac velocity field at the time points of b peak early filling (E-wave), c peak late filling (A-wave), and d peak systole
Fig. 4Illustration of retrospective flow quantification. For retrospective quantification of flow parameters based on 2D analysis, planes can be positioned at any anatomic location. In this example, an isosurface of 3D PC-MRA data derived from the 4D Flow CMR data (gray shaded) has been used to guide positioning analysis planes throughout the thoracic aorta. For each analysis plane, the vessel contours are segmented for all cardiac time frames to calculate flow volume, peak velocity and retrograde fraction
Commonly used advanced analysis parameters
| Target parameter | Description | Potential applications | Requirements and uncertainties |
|---|---|---|---|
| Wall Shear Stress (WSS) [ | Viscous shear forces of flowing blood acting tangentially to the vessel wall | Indicator for impact of flow alterations on endothelial cell and extracellular matrix function and risk for vessel wall remodelling | Dependent on spatial resolution. Relationship to actual WSS values are unclear [ |
| Pulse Wave Velocity (PWV) [ | Propagation speed of systolic pressure pulse in the arterial system | Marker of arterial stiffness and predictive of cardiovascular disease. | Requires high temporal resolution. Sensitive to artifacts. |
| Turbulent Kinetic Energy (TKE) [ | Energy content of turbulent flow and direction-independent measure of intensity of turbulent velocity fluctuations | Estimate of turbulence-related loss of energy or pressure. Indicator of impact of turbulent flow on blood constituents or vessel wall. | The effect of intravoxel mean velocity variations affects the estimation of low TKE values. Is based on information from signal magnitude data from each individual flow-encoding segment, which are usually not obtained in standard reconstructions. |
| Relative Pressure Fields [ | Relative blood pressure field | Noninvasive estimation of pressure differences | Pressure field calculations based on MR velocity data do not take turbulence effects into account and do therefore not reflect turbulence-related pressure losses that occur in stenotic flows. Computation of pressure fields is associated with several pitfalls and a best strategy has not been established. |
| Volume and Kinetic Energy of Ventricular Flow Components or Compartments [ | Separation of blood that transits heart chambers according to compartmental origin and fate | Indicator of ventricular dysfunction. Risk stratification and optimization and individualization of treatment heart failure | Pathlines used to map the transit of blood through the chambers accumulate errors that are inversely related to the quality of velocity data. Mixing effects are unknown. |