Room: Karl Dean Ballroom C
Purpose: To develop an online efficient automatic BrainMets segmentation tool for facilitating contouring stereotactic radiosurgery (SRS) treatment planning and treatment follow up.
Methods: An online automatic brain metastasis (BrainMets) delineation client/server platform was designed in this work, and developed based on Django web framework. The whole platform includes two mainly components: 1) a client side JavaScript 3D medical image viewer supporting DICOM and NIFIT formats; 2) a back-end server side including image preprocessing, BrainMets segmentation, false positive contour identification and removal and communication to the client. The graph user interface (GUI) provides two ways to import images: from local folder or DICOM database. The MRI images are imported through web browser and viewed in axial, sagittal and coronal orientations. The auto-segmentation workflow is divided into six steps: 1) when the format of imported images is DICOM, it will be converted to NIFIT format; 2) Remove skull through a robust learning-based MRI brain extraction system (ROBEX); 3) Delineate brainmets using EnDeepMedic-based segmentation; 4) Remove false positives via the spherical geometry characteristics of brain metastases; 5) Send segmentation results back to web client. If the segmentation result is not promising, the post-processing can be optionally performed based on some metrics. 6) Output the segmented structure into a DICOMRT format file.
Results: It took about 4 or 5 minutes to finish the entire automatic segmentation workflow, even for 50+ BrainMets, while manually contoured processing may take hours. Our tool also allow physician overview the specified contoured tumors for comparison and follow up study.
Conclusion: The developed web platform enables online automatic BrainMets segmentation. It is a convenient tool with significant work flow improvement for BrainMets treatment planning and treatment follow up.
Not Applicable / None Entered.
Not Applicable / None Entered.