Deep learning for identifying radiogenomic associations in breast cancer

被引:105
作者
Zhu, Zhe [1 ]
Albadawy, Ehab [1 ]
Saha, Ashirbani [1 ]
Zhang, Jun [1 ]
Harowicz, Michael R. [1 ]
Mazurowski, Maciej A. [1 ,2 ]
机构
[1] Duke Univ, Dept Radiol, Durham, NC 27706 USA
[2] Duke Univ, Dept Elect & Comp Engn, Durham, NC 27706 USA
关键词
Deep learning; Radiogenomic; Breast cancer subtype; MOLECULAR SUBTYPES; IMAGING FEATURES; MRI; PARAMETERS;
D O I
10.1016/j.compbiomed.2019.04.018
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Rationale and objectives: To determine whether deep learning models can distinguish between breast cancer molecular subtypes based on dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI). Materials and methods: In this institutional review board approved single-center study, we analyzed DCE-MR images of 270 patients at our institution. Lesions of interest were identified by radiologists. The task was to automatically determine whether the tumor is of the Luminal A subtype or of another subtype based on the MR image patches representing the tumor. Three different deep learning approaches were used to classify the tumor according to their molecular subtypes: learning from scratch where only tumor patches were used for training, transfer learning where networks pre-trained on natural images were fine-tuned using tumor patches, and off the -shelf deep features where the features extracted by neural networks trained on natural images were used for classification with a support vector machine. Network architectures utilized in our experiments were GoogleNet, VGG, and CIFAR. We used 10-fold crossvalidation method for validation and area under the receiver operating characteristic (AUC) as the measure of performance. Results: The best AUC performance for distinguishing molecular subtypes was 0.65 (95% CI:[0.57,0.71]) and was achieved by the off-the-shelf deep features approach. The highest AUC performance for training from scratch was 0.58 (95% CI:[0.51,0.64]) and the best AUC performance for transfer learning was 0.60 (95% CI: [0.52,0.65]) respectively. For the off-the-shelf approach, the features extracted from the fully connected layer performed the best. Conclusion: Deep learning may play a role in discovering radiogenomic associations in breast cancer.
引用
收藏
页码:85 / 90
页数:6
相关论文
共 29 条
[1]   Computerized Image Analysis for Identifying Triple-Negative Breast Cancers and Differentiating Them from Other Molecular Subtypes of Breast Cancer on Dynamic Contrast-enhanced MR Images: A Feasibility Study [J].
Agner, Shannon C. ;
Rosen, Mark A. ;
Englander, Sarah ;
Tomaszewski, John E. ;
Feldman, Michael D. ;
Zhang, Paul ;
Mies, Carolyn ;
Schnall, Mitchell D. ;
Madabhushi, Anant .
RADIOLOGY, 2014, 272 (01) :91-99
[2]  
[Anonymous], 2015, ICLR
[3]  
[Anonymous], 2017, ONE MODEL LEARN THEM, DOI DOI 10.1007/S11263-015-0816-Y
[4]   MRI Phenotype of Breast Cancer: Kinetic Assessment for Molecular Subtypes [J].
Blaschke, Eric ;
Abe, Hiroyuki .
JOURNAL OF MAGNETIC RESONANCE IMAGING, 2015, 42 (04) :920-924
[5]   DCAN: Deep Contour-Aware Networks for Accurate Gland Segmentation [J].
Chen, Hao ;
Qi, Xiaojuan ;
Yu, Lequan ;
Heng, Pheng-Ann .
2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2016, :2487-2496
[6]   Magnetic Resonance Imaging Features in Triple-Negative Breast Cancer: Comparison With Luminal and HER2-Overexpressing Tumors [J].
Costantini, Melania ;
Belli, Paolo ;
Distefano, Daniela ;
Bufi, Enida ;
Di Matteo, Marialuisa ;
Rinaldi, Pierluigi ;
Giuliani, Michela ;
Petrone, Gianluigi ;
Magno, Stefano ;
Bonomo, Lorenzo .
CLINICAL BREAST CANCER, 2012, 12 (05) :331-339
[7]   Radiomic analysis reveals DCE-MRI features for prediction of molecular subtypes of breast cancer [J].
Fan, Ming ;
Li, Hui ;
Wang, Shijian ;
Zheng, Bin ;
Zhang, Juan ;
Li, Lihua .
PLOS ONE, 2017, 12 (02)
[8]   Computational Approach to Radiogenomics of Breast Cancer: Luminal A and Luminal B Molecular Subtypes Are Associated With Imaging Features on Routine Breast MRI Extracted Using Computer Vision Algorithms [J].
Grimm, Lars J. ;
Zhang, Jing ;
Mazurowski, Maciej A. .
JOURNAL OF MAGNETIC RESONANCE IMAGING, 2015, 42 (04) :902-907
[9]   Prediction of clinical phenotypes in invasive breast carcinomas from the integration of radiomics and genomics data [J].
Guo, Wentian ;
Li, Hui ;
Zhu, Yitan ;
Lan, Li ;
Yang, Shengjie ;
Drukker, Karen ;
Morris, Elizabeth ;
Burnside, Elizabeth ;
Whitman, Gary ;
Giger, Maryellen L. ;
Ji, Yuan .
JOURNAL OF MEDICAL IMAGING, 2015, 2 (04)
[10]   Caffe: Convolutional Architecture for Fast Feature Embedding [J].
Jia, Yangqing ;
Shelhamer, Evan ;
Donahue, Jeff ;
Karayev, Sergey ;
Long, Jonathan ;
Girshick, Ross ;
Guadarrama, Sergio ;
Darrell, Trevor .
PROCEEDINGS OF THE 2014 ACM CONFERENCE ON MULTIMEDIA (MM'14), 2014, :675-678