Deep Learning for identifying radiogenomic associations in breast cancer
Abstract
Purpose: 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.
Authors
Zhu Z; Albadawy E; Saha A; Zhang J; Harowicz MR; Mazurowski MA