Pilot Study on Verifying the Monotonic Relationship between Error and Uncertainty in Deformable Registration for Neurosurgery

08/21/2019
by   Jie Luo, et al.
0

In image-guided neurosurgery, deformable registration currently is not a clinical routine. Although using it in practice is a goal for image-guided therapy, this goal is hampered because surgeons are wary of the less predictable deformable registration error. In the preoperative- to-intraoperative registration, when surgeons notice a misaligned image pattern, they want to know whether it is a registration error or an actual deformation caused by tumor resection or retraction. Here, surgeons need a spatial distribution of error to help them make a better-informed decision, i.e., ignore locations with high error. However, such an error estimate is difficult to acquire. Alternatively, probabilistic image registration (PIR) methods give measures of registration uncertainty, which is a potential surrogate for assessing the quality of registration results. It is intuitive and believed by a lot of people that high uncertainty indicates a large error. Yet to the best of our knowledge, no such conclusion has been reported in the PIR literature. In this study, we look at one PIR method and give preliminary results showing that point-wise registration error and uncertainty are monotonically correlated.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/28/2021

Deformable Registration of Brain MR Images via a Hybrid Loss

We learn a deformable registration model for T1-weighted MR images by co...
research
03/10/2022

LiftReg: Limited Angle 2D/3D Deformable Registration

We propose LiftReg, a 2D/3D deformable registration approach. LiftReg is...
research
03/14/2018

On the Ambiguity of Registration Uncertainty

Estimating the uncertainty in image registration is an area of current r...
research
04/02/2021

Uncertainty-Aware Annotation Protocol to Evaluate Deformable Registration Algorithms

Landmark correspondences are a widely used type of gold standard in imag...
research
10/31/2021

IGCN: Image-to-graph Convolutional Network for 2D/3D Deformable Registration

Organ shape reconstruction based on a single-projection image during tre...
research
10/20/2021

Closed-loop Feedback Registration for Consecutive Images of Moving Flexible Targets

Advancement of imaging techniques enables consecutive image sequences to...
research
05/30/2014

DEM Registration and Error Analysis using ASCII values

Digital Elevation Model (DEM), while providing a bare earth look, is hea...

Please sign up or login with your details

Forgot password? Click here to reset