Understanding the Mechanisms of Deep Transfer Learning for Medical Images

Hariharan Ravishankar(GE Global Research (United States)), Prasad Sudhakar(GE Global Research (United States)), Rahul Venkataramani(GE Global Research (United States)), Sheshadri Thiruvenkadam(GE Global Research (United States)), Pavan Annangi(GE Global Research (United States)), Narayanan Babu(GE Global Research (United States)), Vivek Vaidya(GE Global Research (United States))
arXiv (Cornell University)
April 20, 2017
Cited by 10Open Access
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Abstract

The ability to automatically learn task specific feature representations has led to a huge success of deep learning methods. When large training data is scarce, such as in medical imaging problems, transfer learning has been very effective. In this paper, we systematically investigate the process of transferring a Convolutional Neural Network, trained on ImageNet images to perform image classification, to kidney detection problem in ultrasound images. We study how the detection performance depends on the extent of transfer. We show that a transferred and tuned CNN can outperform a state-of-the-art feature engineered pipeline and a hybridization of these two techniques achieves 20\% higher performance. We also investigate how the evolution of intermediate response images from our network. Finally, we compare these responses to state-of-the-art image processing filters in order to gain greater insight into how transfer learning is able to effectively manage widely varying imaging regimes.


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