| Literature DB >> 30409129 |
Giasemi Koutouzi1, Behrooz Nasihatkton2, Monika Danielak-Nowak3, Henrik Leonhardt3, Mårten Falkenberg3, Fredrik Kahl4,5.
Abstract
BACKGROUND: A crucial step in image fusion for intraoperative guidance during endovascular procedures is the registration of preoperative computed tomography angiography (CTA) with intraoperative Cone Beam CT (CBCT). Automatic tools for image registration facilitate the 3D image guidance workflow. However their performance is not always satisfactory. The aim of this study is to assess the accuracy of a new fully automatic, feature-based algorithm for 3D3D registration of CTA to CBCT.Entities:
Keywords: Aortic aneurysm; Cone-beam CT; Feature-based registration; Image registration; Intensity-based registration
Mesh:
Year: 2018 PMID: 30409129 PMCID: PMC6225564 DOI: 10.1186/s12880-018-0285-1
Source DB: PubMed Journal: BMC Med Imaging ISSN: 1471-2342 Impact factor: 1.930
Characteristics of patients and procedures
| Patient | Age (years) | Gender | BMI (kg/m2) | Aneurysm type | Aneurysm size (mm)1 | Procedure |
|---|---|---|---|---|---|---|
| 1 | 69 | M | 30 | Common iliac artery aneurysm | 40 | Iliac Branched |
| 2 | 82 | F | 34.4 | Juxta-renal | 62 | FEVAR |
| 3 | 81 | M | 23.2 | Thoraco-abdominal | 90 | BEVAR |
| 4 | 71 | M | 23.8 | Juxta-renal | 72 | FEVAR |
| 5 | 72 | M | 27.5 | Juxta-renal | 58 | FEVAR |
| 6 | 75 | M | 23.8 | Juxta-renal | 65 | Chimney EVAR |
| 7 | 76 | M | 24.3 | Juxta-renal | 65 | FEVAR |
| 8 | 67 | M | 24.7 | Juxta-renal | 70 | FEVAR |
| 9 | 67 | M | 25.8 | Supra-renal | 83 | BEVAR |
| 10 | 83 | M | 33.3 | Juxta-renal | 62 | FEVAR |
| 11 | 76 | M | 23.3 | Juxta-renal | 60 | EVAR |
| 12 | 69 | M | 24.5 | Thoraco-abdominal | 90 | BEVAR |
| 13 | 70 | F | 27.3 | Thoraco-abdominal | 100 | BEVAR |
| 14 | 73 | M | 19.6 | Thoraco-abdominal | 62 | BEVAR |
F, female; M, male; FEVAR, fenestrated endovascular aneurysm repair; BEVAR, fenestrated endovascular aneurysm repair
1 Aneurysm size was defined as the maximal aortic diameter perpendicular to the line of flow
Fig. 1a CT-Angiography, b Cone-Beam CT: feature matching with local correspondence search. Features are obtained from the soft tissue area and from bony structures. For the sake of illustration, only 100 (randomly selected) matches are shown. Lateral views of the 3D volumes are shown using max projection
Fig. 2Fused CBCT-CT pair after fully automatic feature-based image registration
Fig. 3Cumulative percentage graph showing the frequency distribution of the accuracy error of each landmark for the feature-based and for the intensity-based algorithm
Fig. 4Diagram showing the average accuracy error of the feature-based algorithm and the intensity-based registration algorithm for each patient