Automatic selection of landmarks in T1-weighted head MRI with regression forests for image registration initialization

Proc SPIE Int Soc Opt Eng. 2017 Feb 11:10133:101332M. doi: 10.1117/12.2254769. Epub 2017 Feb 24.

Abstract

Medical image registration establishes a correspondence between images of biological structures and it is at the core of many applications. Commonly used deformable image registration methods are dependent on a good preregistration initialization. The initialization can be performed by localizing homologous landmarks and calculating a point-based transformation between the images. The selection of landmarks is however important. In this work, we present a learning-based method to automatically find a set of robust landmarks in 3D MR image volumes of the head to initialize non-rigid transformations. To validate our method, these selected landmarks are localized in unknown image volumes and they are used to compute a smoothing thin-plate splines transformation that registers the atlas to the volumes. The transformed atlas image is then used as the preregistration initialization of an intensity-based non-rigid registration algorithm. We show that the registration accuracy of this algorithm is statistically significantly improved when using the presented registration initialization over a standard intensity-based affine registration.

Keywords: Image preregistration initialization; Landmark selection; RANSAC; Regression forest.