OBJECTIVE. This study evaluated the utility of a deep learning method for determining whether a small (≤ 4 cm) solid renal mass was benign or malignant on multiphase contrast-enhanced CT. MATERIALS AND METHODS. This retrospective study included 1807 image sets from 168 pathologically diagnosed small (≤ 4 cm) solid renal masses with four CT phases (unenhanced, corticomedullary, nephrogenic, and excretory) in 159 patients between 2012 and 2016. Masses were classified as malignant (n = 136) or benign (n = 32). The dataset was randomly divided into five subsets: four were used for augmentation and supervised training (48,832 images), and one was used for testing (281 images). The Inception-v3 architecture convolutional neural network (CNN) ...
Kidney tumor is among the leading causes of tumors and deaths worldwide. In all kidney tumor cases, ...
PURPOSE: To develop an automatic deep feature classification (DFC) method for distinguishing benig...
To segment the kidney and its large tumors, we combine a deep neural network and thresholding techni...
OBJECTIVE. This study evaluated the utility of a deep learning method for determining whether a sma...
OBJECTIVE. This study evaluated the utility of a deep learning method for determining whether a sma...
OBJECTIVES: To investigate the effect of transfer learning on computed tomography (CT) images for th...
Kidney cancers account for an estimated 140,000 global deaths annually. According to the Canadian Ca...
Abstract In 2020, it is estimated that 73,750 kidney cancer cases were diagnosed, and 14,830 people ...
Tumor grading is an important prognostic parameter for renal cell carcinoma (RCC). However, current ...
Tumor grading is an important prognostic parameter for renal cell carcinoma (RCC). However, current ...
The variety of treatment options for clinically localized renal masses is diverse. Medical imaging d...
The variety of treatment options for clinically localized renal masses is diverse. Medical imaging d...
Background: With the advances in the diagnostic parameters, CT with the use of various software allo...
Background: Renal cell carcinoma is the most common type of malignant kidney tumor and is responsibl...
The sixth most common malignant disease is renal cell carcinoma (RCC), which accounts for almost 90%...
Kidney tumor is among the leading causes of tumors and deaths worldwide. In all kidney tumor cases, ...
PURPOSE: To develop an automatic deep feature classification (DFC) method for distinguishing benig...
To segment the kidney and its large tumors, we combine a deep neural network and thresholding techni...
OBJECTIVE. This study evaluated the utility of a deep learning method for determining whether a sma...
OBJECTIVE. This study evaluated the utility of a deep learning method for determining whether a sma...
OBJECTIVES: To investigate the effect of transfer learning on computed tomography (CT) images for th...
Kidney cancers account for an estimated 140,000 global deaths annually. According to the Canadian Ca...
Abstract In 2020, it is estimated that 73,750 kidney cancer cases were diagnosed, and 14,830 people ...
Tumor grading is an important prognostic parameter for renal cell carcinoma (RCC). However, current ...
Tumor grading is an important prognostic parameter for renal cell carcinoma (RCC). However, current ...
The variety of treatment options for clinically localized renal masses is diverse. Medical imaging d...
The variety of treatment options for clinically localized renal masses is diverse. Medical imaging d...
Background: With the advances in the diagnostic parameters, CT with the use of various software allo...
Background: Renal cell carcinoma is the most common type of malignant kidney tumor and is responsibl...
The sixth most common malignant disease is renal cell carcinoma (RCC), which accounts for almost 90%...
Kidney tumor is among the leading causes of tumors and deaths worldwide. In all kidney tumor cases, ...
PURPOSE: To develop an automatic deep feature classification (DFC) method for distinguishing benig...
To segment the kidney and its large tumors, we combine a deep neural network and thresholding techni...