Abstract Endometrial cancer (EC) is the most common gynecological tumor in developed countries, and preoperative risk stratification is essential for personalized medicine. There have been several radiomics studies for noninvasive risk stratification of EC using MRI. Although tumor segmentation is usually necessary for these studies, manual segmentation is not only labor-intensive but may also be subjective. Therefore, our study aimed to perform the automatic segmentation of EC on MRI with a convolutional neural network. The effect of the input image sequence and batch size on the segmentation performance was also investigated. Of 200 patients with EC, 180 patients were used for training the modified U-net model; 20 patients for testing the...
Objectives: The soaring demand for endometrial cancer screening has exposed a huge shortage of cytop...
Background: Endometrial cancer is the most common gynecological cancer in highdeveloped regions of t...
PurposeTo build a machine learning model to predict histology (type I and type II), stage, and grade...
Preoperative MR imaging in endometrial cancer patients provides valuable information on local tumor ...
Purpose To investigate radiomics and machine learning (ML) as possible tools to enhance MRI-based ri...
Rationale and Objectives: To evaluate an MRI radiomics-powered machine learning (ML) model's perform...
Background Stratifying high-risk histopathologic features in endometrial carcinoma is important for ...
Endometrial cancer is a ubiquitous gynecological disease with increasing global incidence. Therefore...
Endometrial cancer (EC) is intricately linked to obesity and diabetes, which are widespread risk fac...
Objective: To develop and validate magnetic resonance (MR) imaging-based radiomics models for high-r...
Background In endometrial cancer (EC), preoperative pelvic MRI is recommended for local staging, whi...
Abstract This study aimed to develop a versatile automatic segmentation model of bladder cancer (BC)...
The predictive values of region of interest (ROI) target detection algorithm-based radiomics for end...
High- and low-risk endometrial carcinoma (EC) differ in whether or not a lymphadenectomy is performe...
Uterine cervical cancer (CC) is the most common gynecologic malignancy worldwide. Whole-volume radio...
Objectives: The soaring demand for endometrial cancer screening has exposed a huge shortage of cytop...
Background: Endometrial cancer is the most common gynecological cancer in highdeveloped regions of t...
PurposeTo build a machine learning model to predict histology (type I and type II), stage, and grade...
Preoperative MR imaging in endometrial cancer patients provides valuable information on local tumor ...
Purpose To investigate radiomics and machine learning (ML) as possible tools to enhance MRI-based ri...
Rationale and Objectives: To evaluate an MRI radiomics-powered machine learning (ML) model's perform...
Background Stratifying high-risk histopathologic features in endometrial carcinoma is important for ...
Endometrial cancer is a ubiquitous gynecological disease with increasing global incidence. Therefore...
Endometrial cancer (EC) is intricately linked to obesity and diabetes, which are widespread risk fac...
Objective: To develop and validate magnetic resonance (MR) imaging-based radiomics models for high-r...
Background In endometrial cancer (EC), preoperative pelvic MRI is recommended for local staging, whi...
Abstract This study aimed to develop a versatile automatic segmentation model of bladder cancer (BC)...
The predictive values of region of interest (ROI) target detection algorithm-based radiomics for end...
High- and low-risk endometrial carcinoma (EC) differ in whether or not a lymphadenectomy is performe...
Uterine cervical cancer (CC) is the most common gynecologic malignancy worldwide. Whole-volume radio...
Objectives: The soaring demand for endometrial cancer screening has exposed a huge shortage of cytop...
Background: Endometrial cancer is the most common gynecological cancer in highdeveloped regions of t...
PurposeTo build a machine learning model to predict histology (type I and type II), stage, and grade...