NA-MIC/Projects/Collaboration/MGH RadOnc
Adaptive RT for Head and Neck
This first example shows the kind of anatomic changes that can occur in head and neck cancer. The pre-treatment scan is in green, and the mid-treatment scan is in red. The image on the left is the rigid registration, on the right is deformable registration. The deformable registration is
} Here is another pertinent example for head and neck. In axial view, there appears to be some weight loss. Note the change in positioning of the mandible, and also the twisting of the cervical spine between scans. Also note the strong CT artifacts caused by dental fillings. In both examples, registration of the soft palette is worse using deformable registration than rigid registration, probably due to these artifacts.
(The wiki somehow messed up the mime type for the deformable image, so you need to click to see it)
Adaptive RT for ThoraxThis example shows anatomic change in the thorax. The patient has a collapsed left lower lobe in the pre-treatment scan (top), which has recovered in the mid-treatment scan (bottom). Notice there is some kind of fluid accumulation below the collapsed lung. Here is another example for thorax. The tumor has regressed during treatment.
Thorax is a special case. Patient images are acquired using 4D-CT, and radiation dose can computed for 3D volumes at each breathing phase. The volumes are aligned using deformable registration, and radiation dose is accumulated in a reference phase (e.g. exhale). Ideally this procedure is repeated to perform 4D treatment plan optimization. Deformable registration of 4D-CT phases is considered "easy". The reason for this is:
However, the sliding of the lungs against the chest wall is difficult to model. We sometimes segment the images at the pleural boundary. This allows us to separate the moving set of organs from the non-moving set, which are registered separately. Ideally we would always do this, but segmentation is manual and therefore we usually skip this step. Maybe someone has a better idea? General Discussion of RegistrationDeformable registration is still not as reliable as it should be. Here are some of my complaints:
SegmentationRad Onc departments use interactive segmentation every day for both research and patient care. Prior to treatment planning, the target and critical structures are delineated in CT. The current state of the art is manual segmentation in axial view. A outline tool, used delineate the boundary, is generally prefered over a paintbrush tool that fills pixels. Commercial products generally support some subset of the following tools to assist the operator.
There are many opportunities for using computer vision algorithms to improve interactive segmentation. For example, using prior models of shape and intensity to improve interpolation. In addition, the here are several commercial products for automatic segmentation, each with impressive demos. Personally I have never used any of them, but I hear that segmentation of simple structures are already useful (spinal cord, lens & optic nerve, liver). |