| Literature DB >> 26416312 |
Desmond Dillon-Murphy1, Alia Noorani1, David Nordsletten1, C Alberto Figueroa2,3.
Abstract
Aortic dissection is a disease whereby an injury in the wall of the aorta leads to the creation of a true lumen and a false lumen separated by an intimal flap which may contain multiple communicating tears between the lumina. It has a high associated morbidity and mortality, but at present, the timing of surgical intervention for stable type B dissections remains an area of debate. Detailed knowledge of haemodynamics may yield greater insight into the long-term outcomes for dissection patients by providing a greater understanding of pressures, wall shear stress and velocities in and around the dissection. In this paper, we aim to gather further insight into the complex haemodynamics in aortic dissection using medical imaging and computational fluid dynamics modelling. Towards this end, several computer models of the aorta of a patient presenting with an acute Stanford type B dissection were created whereby morphometric parameters related to the dissection septum were altered, such as removal of the septum, and the variation of the number of connecting tears between the lumina. Patient-specific flow data acquired using 2D PC-MRI in the ascending aorta were used to set the inflow boundary condition. Coupled zero-dimensional (Windkessel) models representing the distal vasculature were used to define the outlet boundary conditions and tuned to match 2D PC-MRI flow data acquired in the descending aorta. Haemodynamics in the dissected aorta were compared to those in an equivalent 'healthy aorta', created by virtually removing the intimal flap (septum). Local regions of increased velocity, pressure, wall shear stress and alterations in flow distribution were noted, particularly in the narrow true lumen and around the primary entry tear. The computed flow patterns compared favourably with those obtained using 4D PC-MRI. A lumped-parameter heart model was subsequently used to show that in this case there was an estimated 14 % increase in left ventricular stroke work with the onset of dissection. Finally, the effect of secondary connecting tears (i.e. those excluding the primary entry and exit tears) was also studied, revealing significant haemodynamic changes when no secondary tears are included in the model, particularly in the true lumen where increases in flow over [Formula: see text] and drops in peak pressure of 18 % were observed.Entities:
Keywords: Aortic dissection; CFD; Cardiac work load; Intimal tears; Multi-scale modelling
Mesh:
Year: 2015 PMID: 26416312 PMCID: PMC4945697 DOI: 10.1007/s10237-015-0729-2
Source DB: PubMed Journal: Biomech Model Mechanobiol ISSN: 1617-7940
Fig. 1Left CT volume render of the thoracic aorta illustrating the dissection septum. Centre the 2D PC-MRI data at aortic inflow and several locations down the aorta. Right full aorta 4D PC-MRI data
Fig. 2Left CTA showing the anatomy of the dissection in the abdominal aorta. The small size and motion of the septum make it difficult to clearly delineate the true and false lumen. Right 3D solid model creation process using a 2D segmentation approach. In step 1, contours of the lumina are created. These contours are then lofted together (step 2) to create a non-uniform rational B-spline (NURBS) analytical representation of each vessel. Finally, (step 3) the lofted surfaces are joined and blending operations using fixed radius fillets are employed to remove sharp edges between branching vessels. The false lumen and vessels perfused from the false lumen are coloured in purple, while all other vessels are coloured in red
Scan settings for both thoracic and abdominal CT scans of an aortic dissection subject
| Property | Thoracic | Abdominal |
|---|---|---|
| FOV | 376 mm | 280 mm |
| In plane resolution |
|
|
| Slice thickness | 2 mm | 0.9 mm |
| Tilt |
|
|
| Tube voltage (KPV) | 120 kV | 120 kV |
| Tube current | 412 mA | 221 mA |
| Acquisition | Cephalocaudal | Cephalocaudal |
2D PC-MRI scan properties
| Property | Value |
|---|---|
| Field of View (FOV) |
|
| Voxel size |
|
| Slice thickness | 10 mm |
| Velocity encoding | 150 cm/s |
| TR/TE | 5.0/3.0 ms |
| Temporal resolution | 52 ms |
| Number of signal averages | 2 |
4D PC-MRI scan properties
| Property | Value |
|---|---|
| Field of view (FOV) |
|
| Voxel size |
|
| Flip angle |
|
| Velocity encoding | 150 cm/s |
| TR/TE | 3.0/2.0 ms |
| Temporal resolution | 52 ms |
Fig. 3Undissected and dissected models. Highlighted are the entry tear, exit tear and 15 secondary tears
Fig. 4Schematic showing inlet and outlet boundary conditions used in this paper. A three-element Windkessel lumped-parameter model was specified on each outlet face of the arterial model. Inflow conditions were prescribed from either 2D PC-MRI data or via a lumped-parameter heart model. Tuning the elastance function the heart model allows for a close match with the measured 2D PC-MRI flow data
RCR parameters tuned to produce physiologic flow and pressure waveforms for the undissected aortic model
|
|
|
| |
|---|---|---|---|
| RCCA | 0.80 | 6.10 | 4.53 |
| RSCA | 0.13 | 7.64 | 1.89 |
| LCCA | 0.78 | 6.14 | 4.40 |
| LSCA | 0.12 | 7.87 | 1.72 |
| Hepatic | 0.24 | 1.15 | 4.06 |
| Splenic | 0.14 | 2.04 | 2.30 |
| M Coeliac | 0.23 | 1.18 | 3.95 |
| SMA | 0.13 | 3.87 | 1.15 |
| R Renal 1 | 0.48 | 2.37 | 1.94 |
| R Renal 2 | 1.11 | 1.19 | 4.45 |
| L Renal | 0.32 | 3.34 | 1.30 |
| IMA | 0.68 | 0.73 | 6.13 |
| M Sacral 1 | 0.54 | 0.52 | 9.04 |
| M Sacral 2 | 0.78 | 0.36 | 13.12 |
| L Int Iliac | 0.10 | 0.15 | 3.87 |
| R Int Iliac | 0.13 | 0.15 | 5.15 |
| L Ext Iliac | 0.06 | 0.49 | 2.49 |
| R Ext Iliac | 0.06 | 0.55 | 2.18 |
Fig. 5Visualisations of pressure, wall shear stress and velocity at peak systole for the baseline undissected model. Shown also are pressure and flow waveform plots at the inlet, left common carotid, left renal, superior mesenteric artery and right external iliac
Fig. 6Visualisations of pressure, wall shear stress and velocity at peak systole for the baseline dissected model at peak systole. Shown also are comparative pressure and flow waveform plots at the inlet, left common carotid, left renal, superior mesenteric artery and right external iliac for both the undissected and dissected models
Fig. 7Localised regions of haemodynamic change in the presence of dissection comparing pressure and wall shear stress at peak systole between the dissected and undissected models
Fig. 8Comparison between 2D PC-MRI and CFD simulation data for the true lumen, false lumen and total flow. True lumen is shown in red, false lumen in purple and the total flow in black. CFD data are shown by the solid lines, while 2D PC-MRI data are presented in the dashed lines
Tuned parameters of the heart model for the dissected and undissected models
| Dissected model | Undissected model | |
|---|---|---|
| Period (s) | 1.3 | 1.3 |
| End diastolic volume | 130,000 | 130,000 |
| Unstressed volume | 0.0 | 0.0 |
| Preload (g/ | 533.320 | 533.320 |
| Time to maximum elastance (s) | 0.410 | 0.420 |
| Time to relaxation (s) | 0.205 | 0.210 |
| Maximum elastance (g/( | 0.460 | 0.400 |
| Minimum elastance (g/( |
|
|
| Aortic valve resistance [g/( |
|
|
| Aortic valve inductance [g/ |
|
|
| Ventricular resistance (s/ |
|
|
| Mitral valve Resistance [g/( |
|
|
| Mitral valve Inductance (g/ |
|
|
Fig. 9Left inflow waveforms obtained with PC-MRI and heart model. Right pressure–volume (PV) loops generated via using the heart model for both the undissected and dissected simulations. The PV loops illustrate the mitral valve opening (A), the diastolic ventricular filling (A–B), mitral valve closing (B), isovolumetric contraction (B–C), aortic valve opening (C), ejection (C–D), aortic valve closing (D), followed by isovolumetric relaxation (D–A). The area enclosed by the PV loop represents the left ventricular stroke work. There is an increase in the stroke work of 13.7 % in the presence of dissection
Fig. 10Comparison of CFD data and acquired 4D PC-MRI flow data at peak systole and mid-diastole. Also shown are the CT image data at two locations showing suspected secondary tears which were not apparent on the 4D PC-MRI data
Fig. 11Left baseline dissected model featuring a total of 17 tears. Centre “maximal tears” model with two additional tears in the descending aorta evident in the CT data but not in 4D PC-MRI. Right “minimal tears” model where all but the primary entry and exit tears were removed
Final mesh sizes for each dissected model
| Model | Mesh size( |
|---|---|
| Baseline dissected | 1.8 nodes/11.8 elements |
| Maximal tears | 2.4 nodes/13.2 elements |
| Minimal tears | 1.8 nodes/11.5 elements |
Fig. 12Top comparison of computed mean flows and 2D PC-MRI data for the proximal, medial locations of the descending thoracic aorta. The table gives average values of error over the three locations. Bottom computed pressure and flow waveforms for each of the three dissection models at a location just proximal to the coeliac trunk
Fig. 13Direct 3D segmentation (left) illustrating typical “bleeds” between the true and false lumina through the relatively thin and poorly defined septum. For comparison, a typical 2D segmentation in the same plane is shown (right) where contours may be automatically created and corrected manually if necessary
Fig. 142D MRI showing distention of the dissection flap between peek systole (A) and mid-diastole (B)