Sumit Sharma1 and Srinivasa Rao Kundeti1
1Philips Healthcare, Bangalore, India
We present a Deep Convolutional neural network (D-CNN)
model for brain landmark detection, an important step in planning MRI scans for
two anatomies - Corpus callosum and Cerebellum on 3D T1w images. Unlike traditional
approaches like segmentation followed by image processing to identify the brain
landmark points (AL-Net), we use a D-CNN to directly predict the landmarks. For all the landmarks, we demonstrate
that D-CNN can achieve landmark detection with Average Root mean square error(RMSE)
<= 6mm (N=100) for all landmarks and is comparable or better than
AL-NET (RMSE <=8mm). Results
indicate excellent feasibility of the method for clinical usage.