The Classification of Renal Cancer in 3-Phase CT Images Using a Deep Learning Method

被引:0
作者
Seokmin Han
Sung Il Hwang
Hak Jong Lee
机构
[1] Korea National University of Transportation,Department of Radiology
[2] Seoul National University Bundang Hospital,Department of Radiology
[3] Seoul National University College of Medicine,Department of Nanoconvergence
[4] Seoul National University Bundang Hospital,undefined
[5] Seoul National University Graduate School of Convergence Science and Technology,undefined
来源
Journal of Digital Imaging | 2019年 / 32卷
关键词
Deep learning; Renal cancer; Subtype classification; Linear combination;
D O I
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中图分类号
学科分类号
摘要
In this research, we exploit an image-based deep learning framework to distinguish three major subtypes of renal cell carcinoma (clear cell, papillary, and chromophobe) using images acquired with computed tomography (CT). A biopsy-proven benchmarking dataset was built from 169 renal cancer cases. In each case, images were acquired at three phases(phase 1, before injection of the contrast agent; phase 2, 1 min after the injection; phase 3, 5 min after the injection). After image acquisition, rectangular ROI (region of interest) in each phase image was marked by radiologists. After cropping the ROIs, a combination weight was multiplied to the three-phase ROI images and the linearly combined images were fed into a deep learning neural network after concatenation. A deep learning neural network was trained to classify the subtypes of renal cell carcinoma, using the drawn ROIs as inputs and the biopsy results as labels. The network showed about 0.85 accuracy, 0.64–0.98 sensitivity, 0.83–0.93 specificity, and 0.9 AUC. The proposed framework which is based on deep learning method and ROIs provided by radiologists showed promising results in renal cell subtype classification. We hope it will help future research on this subject and it can cooperate with radiologists in classifying the subtype of lesion in real clinical situation.
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页码:638 / 643
页数:5
相关论文
共 55 条
[1]  
Sasaguri K(2017)CT and MR imaging for solid renal mass characterization Eur J Radiol 99 40-54
[2]  
Takahashi N(2003)Comparisons of outcome and prognostic features among histologic subtypes of renal cell carcinoma Am J Surg Pathol 27 612-624
[3]  
Cheville JC(2017)Advanced renal cell carcinoma: Role of the radiologist in the era of precision medicine Radiology 284 333-351
[4]  
Shinagare AB(2010)Computer-aided US diagnosis of breast lesions by using cell-based contour grouping Radiology 255 746-754
[5]  
Krajewski KM(2013)Breast image analysis for risk assessment, detection, diagnosis, and treatment of cancer Annu Rev Biomed Eng 15 327-357
[6]  
Braschi-Amirfarzan M(2013)Computer-aided diagnosis for early-stage lung cancer based on longitudinal and balanced data PLoS One 8 e63559-7728
[7]  
Ramaiya NH(2017)A deep learning framework for supporting the classification of breast lesions in ultrasound images Phys Med Biol 62 7714-1633
[8]  
Cheng JZ(2018)Machine learning-based quantitative texture analysis of CT images of small renal masses: Differentiation of angiomyolipoma without visible fat from renal cell carcinoma Eur Radiol 28 1625-2478
[9]  
Chou YH(2017)Texture analysis as a radiomic marker for differentiating renal tumors Abdom Radiol (NY) 42 2470-237
[10]  
Huang CS(2017)Collage CNN for renal cell carcinoma detection from CT Lect Notes Comput Sci 10541 229-157