Automatic kidney segmentation using 2.5D ResUNet and 2.5D DenseUNet for malignant potential analysis in complex renal cyst based on CT images

被引:0
作者
Parin Kittipongdaja
Thitirat Siriborvornratanakul
机构
[1] National Institute of Development Administration,Graduate School of Applied Statistics
来源
EURASIP Journal on Image and Video Processing | / 2022卷
关键词
Kidney segmentation; Computed tomography; Deep learning; 2.5D convolution; ResUNet; DenseUNet;
D O I
暂无
中图分类号
学科分类号
摘要
Bosniak renal cyst classification has been widely used in determining the complexity of a renal cyst. However, it turns out that about half of patients undergoing surgery for Bosniak category III, take surgical risks that reward them with no clinical benefit at all. This is because their pathological results reveal that the cysts are actually benign not malignant. This problem inspires us to use recently popular deep learning techniques and study alternative analytics methods for precise binary classification (benign or malignant tumor) on Computerized Tomography (CT) images. To achieve our goal, two consecutive steps are required–segmenting kidney organs or lesions from CT images then classifying the segmented kidneys. In this paper, we propose a study of kidney segmentation using 2.5D ResUNet and 2.5D DenseUNet for efficiently extracting intra-slice and inter-slice features. Our models are trained and validated on the public data set from Kidney Tumor Segmentation (KiTS19) challenge in two different training environments. As a result, all experimental models achieve high mean kidney Dice scores of at least 95% on the KiTS19 validation set consisting of 60 patients. Apart from the KiTS19 data set, we also conduct separate experiments on abdomen CT images of four Thai patients. Based on the four Thai patients, our experimental models show a drop in performance, where the best mean kidney Dice score is 87.60%.
引用
收藏
相关论文
共 89 条
[1]  
Schoots IG(2017)Bosniak classification for complex renal cysts reevaluated: a systematic review J. Urol. 80 1030-1039
[2]  
Zaccai K(2019)Imaging diagnosis and management of cystic renal masses: introduction of an update proposal Bosniak classification version 2019 J. Korean Soc. Radiol. 42 60-88
[3]  
Hunink MG(2017)A survey on deep learning in medical image analysis Med. Image Anal. 45 1550-1561
[4]  
Verhagen PCMS(2020)3D deep learning on medical images: a review Sensors 12 292-300
[5]  
Nah YK(2018)Deep feature classification of angiomyolipoma without visible fat and renal cell carcinoma in abdominal contrast-enhanced CT images with texture image patches and hand-crafted feature concatenation Med. Phys. 33 69-74
[6]  
Heo SH(2019)A deep learning-based radiomics model for differentiating benign and malignant renal tumors Transl. Oncol. 35 213-225
[7]  
Shin SS(2018)A survey of kidney segmentation techniques in CT images Curr. Med. Imaging 11 125-753
[8]  
Jeong YY(2016)First trial and evaluation of anatomical structure segmentations in 3D CT images based only on deep learning Med. Imaging Inf. Sci. 15 749-5554
[9]  
Litjens G(2017)Automatic segmentation of kidneys using deep learning for total kidney volume quantification in autosomal dominant polycystic kidney disease Sci. Rep. 47 5543-51
[10]  
Kooi T(2018)Deep learning renal segmentation for fully automated radiation dose estimation in unsealed source therapy Front. Oncol. 16 41-1451