Deep Metric Learning-based Image Retrieval System for Chest Radiograph and its Clinical Applications in COVID-19 (2012.03663v1)
Abstract: In recent years, deep learning-based image analysis methods have been widely applied in computer-aided detection, diagnosis and prognosis, and has shown its value during the public health crisis of the novel coronavirus disease 2019 (COVID-19) pandemic. Chest radiograph (CXR) has been playing a crucial role in COVID-19 patient triaging, diagnosing and monitoring, particularly in the United States. Considering the mixed and unspecific signals in CXR, an image retrieval model of CXR that provides both similar images and associated clinical information can be more clinically meaningful than a direct image diagnostic model. In this work we develop a novel CXR image retrieval model based on deep metric learning. Unlike traditional diagnostic models which aims at learning the direct mapping from images to labels, the proposed model aims at learning the optimized embedding space of images, where images with the same labels and similar contents are pulled together. It utilizes multi-similarity loss with hard-mining sampling strategy and attention mechanism to learn the optimized embedding space, and provides similar images to the query image. The model is trained and validated on an international multi-site COVID-19 dataset collected from 3 different sources. Experimental results of COVID-19 image retrieval and diagnosis tasks show that the proposed model can serve as a robust solution for CXR analysis and patient management for COVID-19. The model is also tested on its transferability on a different clinical decision support task, where the pre-trained model is applied to extract image features from a new dataset without any further training. These results demonstrate our deep metric learning based image retrieval model is highly efficient in the CXR retrieval, diagnosis and prognosis, and thus has great clinical value for the treatment and management of COVID-19 patients.
- Aoxiao Zhong (16 papers)
- Xiang Li (1003 papers)
- Dufan Wu (27 papers)
- Hui Ren (37 papers)
- Kyungsang Kim (22 papers)
- Younggon Kim (2 papers)
- Varun Buch (7 papers)
- Nir Neumark (2 papers)
- Bernardo Bizzo (3 papers)
- Won Young Tak (3 papers)
- Soo Young Park (4 papers)
- Yu Rim Lee (3 papers)
- Min Kyu Kang (2 papers)
- Jung Gil Park (2 papers)
- Byung Seok Kim (2 papers)
- Woo Jin Chung (2 papers)
- Ning Guo (44 papers)
- Ittai Dayan (4 papers)
- Mannudeep K. Kalra (25 papers)
- Quanzheng Li (122 papers)