A Feature-Driven Active Framework for Ultrasound-Based Brain Shift Compensation


Jie Luo, Matthew Toews, Inês Machado, Sarah Frisken, Miaomiao Zhang, Frank Preiswerk, Alireza Sedghi, Hongyi Ding, Steve Pieper, Polina Golland, Alexandra Golby, Masashi Sugiyama, and William III M Wells. 2018. “A Feature-Driven Active Framework for Ultrasound-Based Brain Shift Compensation.” In MICCAI 2018, LNCS 11073: Pp. 30-38. Springer. Copy at http://www.tinyurl.com/y6zwm9s2
Luo MICCAI 2018771 KB


A reliable Ultrasound (US)-to-US registration method to compensate for brain shift would substantially improve Image-Guided Neurological Surgery. Developing such a registration method is very challenging, due to factors such as the tumor resection, the complexity of brain pathology and the demand for fast computation. We propose a novel feature-driven active registration framework. Here, landmarks and their displacement are first estimated from a pair of US images using corresponding local image features. Subsequently, a Gaussian Process (GP) model is used to interpolate a dense deformation field from the sparse landmarks. Kernels of the GP are estimated by using variograms and a discrete grid search method. If necessary, the user can actively add new landmarks based on the image context and visualization of the uncertainty measure provided by the GP to further improve the result. We retrospectively demonstrate our registration framework as a robust and accurate brain shift compensation solution on clinical data.
Last updated on 10/30/2019