Zhimin Ding , Chengmeng Zhang , Cong Xia , Qi Yao , Yi Wei , Xia Zhang , Nannan Zhao , Xiaoming Wang , Suhua Shi
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引用次数: 0
Abstract
Objective
To evaluate whether deep learning (DL) analysis of intratumor subregion based on dynamic contrast-enhanced MRI (DCE-MRI) can help predict Ki-67 expression level in breast cancer.
Materials and methods
A total of 290 breast cancer patients from two hospitals were retrospectively collected. A k-means clustering algorithm confirmed subregions of tumor. DL features of whole tumor and subregions were extracted from DCE-MRI images based on 3D ResNet18 pre-trained model. The logistic regression model was constructed after dimension reduction. Model performance was assessed using the area under the curve (AUC), and clinical value was demonstrated through decision curve analysis (DCA).
Results
The k-means clustering method clustered the tumor into two subregions (habitat 1 and habitat 2) based on voxel values. Both the habitat 1 model (validation set: AUC = 0.771, 95 %CI: 0.642–0.900 and external test set: AUC = 0.794, 95 %CI: 0.696–0.891) and the habitat 2 model (AUC = 0.734, 95 %CI: 0.605–0.862 and AUC = 0.756, 95 %CI: 0.646–0.866) showed better predictive capabilities for Ki-67 expression level than the whole tumor model (AUC = 0.686, 95 %CI: 0.550–0.823 and AUC = 0.680, 95 %CI: 0.555–0.804). The combined model based on the two subregions further enhanced the predictive capability (AUC = 0.808, 95 %CI: 0.696–0.921 and AUC = 0.842, 95 %CI: 0.758–0.926), and it demonstrated higher clinical value than other models in DCA.
Conclusions
The deep learning model derived from subregion of tumor showed better performance for predicting Ki-67 expression level in breast cancer patients. Additionally, the model that integrated two subregions further enhanced the predictive performance.
期刊介绍:
Magnetic Resonance Imaging (MRI) is the first international multidisciplinary journal encompassing physical, life, and clinical science investigations as they relate to the development and use of magnetic resonance imaging. MRI is dedicated to both basic research, technological innovation and applications, providing a single forum for communication among radiologists, physicists, chemists, biochemists, biologists, engineers, internists, pathologists, physiologists, computer scientists, and mathematicians.