| Literature DB >> 31525543 |
Chenglong Wang1, Holger R Roth2, Takayuki Kitasaka3, Masahiro Oda2, Yuichiro Hayashi2, Yasushi Yoshino4, Tokunori Yamamoto4, Naoto Sassa4, Momokazu Goto4, Kensaku Mori5.
Abstract
This paper presents a new approach for precisely estimating the renal vascular dominant region using a Voronoi diagram. To provide computer-assisted diagnostics for the pre-surgical simulation of partial nephrectomy surgery, we must obtain information on the renal arteries and the renal vascular dominant regions. We propose a fully automatic segmentation method that combines a neural network and tensor-based graph-cut methods to precisely extract the kidney and renal arteries. First, we use a convolutional neural network to localize the kidney regions and extract tiny renal arteries with a tensor-based graph-cut method. Then we generate a Voronoi diagram to estimate the renal vascular dominant regions based on the segmented kidney and renal arteries. The accuracy of kidney segmentation in 27 cases with 8-fold cross validation reached a Dice score of 95%. The accuracy of renal artery segmentation in 8 cases obtained a centerline overlap ratio of 80%. Each partition region corresponds to a renal vascular dominant region. The final dominant-region estimation accuracy achieved a Dice coefficient of 80%. A clinical application showed the potential of our proposed estimation approach in a real clinical surgical environment. Further validation using large-scale database is our future work.Entities:
Keywords: Blood vessel segmentation; Fully convolutional networks; Kidney segmentation; Voronoi diagram
Year: 2019 PMID: 31525543 DOI: 10.1016/j.compmedimag.2019.101642
Source DB: PubMed Journal: Comput Med Imaging Graph ISSN: 0895-6111 Impact factor: 4.790