Literature DB >> 29376104

Pairwise domain adaptation module for CNN-based 2-D/3-D registration.

Jiannan Zheng1,2, Shun Miao1, Z Jane Wang2, Rui Liao1.   

Abstract

Accurate two-dimensional to three-dimensional (2-D/3-D) registration of preoperative 3-D data and intraoperative 2-D x-ray images is a key enabler for image-guided therapy. Recent advances in 2-D/3-D registration formulate the problem as a learning-based approach and exploit the modeling power of convolutional neural networks (CNN) to significantly improve the accuracy and efficiency of 2-D/3-D registration. However, for surgery-related applications, collecting a large clinical dataset with accurate annotations for training can be very challenging or impractical. Therefore, deep learning-based 2-D/3-D registration methods are often trained with synthetically generated data, and a performance gap is often observed when testing the trained model on clinical data. We propose a pairwise domain adaptation (PDA) module to adapt the model trained on source domain (i.e., synthetic data) to target domain (i.e., clinical data) by learning domain invariant features with only a few paired real and synthetic data. The PDA module is designed to be flexible for different deep learning-based 2-D/3-D registration frameworks, and it can be plugged into any pretrained CNN model such as a simple Batch-Norm layer. The proposed PDA module has been quantitatively evaluated on two clinical applications using different frameworks of deep networks, demonstrating its significant advantages of generalizability and flexibility for 2-D/3-D medical image registration when a small number of paired real-synthetic data can be obtained.

Keywords:  2-D/3-D registration; convolutional neural networks; image-guided procedures; pairwise domain adaptation module

Year:  2018        PMID: 29376104      PMCID: PMC5767648          DOI: 10.1117/1.JMI.5.2.021204

Source DB:  PubMed          Journal:  J Med Imaging (Bellingham)        ISSN: 2329-4302


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