TY - JOUR T1 - Automatic Segmentation of Renal Parenchyma using Shape and Intensity Information based on Multi-atlas in Abdominal CT Images AU - Kim, Hyeonjin AU - Hong, Helen AU - Chang, Kidon AU - Rha, Koon Ho JO - Journal of KIISE, JOK PY - 2018 DA - 2018/1/14 DO - 10.5626/JOK.2018.45.9.937 KW - computed tomography (CT) KW - renal parenchyma KW - multi-atlas segmentation KW - locally weighted voting KW - shape-prediction map AB - Renal parenchyma segmentation is necessary to predict contralateral hypertrophy after renal partial nephrectomy. In this paper, we propose an automatic segmentation method of renal parenchyma using shape and intensity information based on the multi-atlas in abdominal CT images. First, similar atlases are selected using volume-based similarity registration and intensity-similarity measure. Second, renal parenchyma is segmented using two-stage registration and constrained intensity-based locally-weighted voting. Finally, renal parenchyma is refined using a Gaussian mixture model-based multi-thresholds and shape-prediction map in under- and over-segmented data. The average dice similarity coefficient of renal parenchyma was 91.34%, which was 18.19%, 1.35% higher than the segmentation method using majority voting and locally-weighted voting in dice similarity coefficient, respectively.