학술논문

Automated image registration of cerebral digital subtraction angiography
Document Type
Brief Communication
Source
International Journal of Computer Assisted Radiology and Surgery: A journal for interdisciplinary research, development and applications of image guided diagnosis and therapy. 19(1):147-150
Subject
Digital subtraction angiography
Ischemic stroke
Endovascular thrombectomy
Image registration
Language
English
ISSN
1861-6429
Abstract
Purpose: Our aim is to automatically align digital subtraction angiography (DSA) series, recorded before and after endovascular thrombectomy. Such alignment may enable quantification of procedural success.Methods: Firstly, we examine the inherent limitations for image registration, caused by the projective characteristics of DSA imaging, in a representative set of image pairs from thrombectomy procedures. Secondly, we develop and assess various image registration methods (SIFT, ORB). We assess these methods using manually annotated point correspondences for thrombectomy image pairs.Results: Linear transformations that account for scale differences are effective in aligning DSA sequences. Two anatomical landmarks can be reliably identified for registration using a U-net. Point-based registration using SIFT and ORB proves to be most effective for DSA registration and are applicable to recordings for all patient sub-types. Image-based techniques are less effective and did not refine the results of the best point-based registration method.Conclusion: We developed and assessed an automated image registration approach for cerebral DSA sequences, recorded before and after endovascular thrombectomy. Accurate results were obtained for approximately 85% of our image pairs.