%0 Journal Article %T Pulmonary Vascular Tree Segmentation from Contrast-Enhanced CT Images %A M. Helmberger %A M. Urschler %A M. Pienn %A Z. Balint %A A. Olschewski %A H. Bischof %J Physics %D 2013 %I arXiv %X We present a pulmonary vessel segmentation algorithm, which is fast, fully automatic and robust. It uses a coarse segmentation of the airway tree and a left and right lung labeled volume to restrict a vessel enhancement filter, based on an offset medialness function, to the lungs. We show the application of our algorithm on contrast-enhanced CT images, where we derive a clinical parameter to detect pulmonary hypertension (PH) in patients. Results on a dataset of 24 patients show that quantitative indices derived from the segmentation are applicable to distinguish patients with and without PH. Further work-in-progress results are shown on the VESSEL12 challenge dataset, which is composed of non-contrast-enhanced scans, where we range in the midfield of participating contestants. %U http://arxiv.org/abs/1304.7140v1