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Addressing Variations and Uncertainties in Medical Image Data for Deep Learning
PhD Thesis Proposal Defence Title: "Addressing Variations and Uncertainties in Medical Image Data for Deep Learning" by Mr. Zengqiang YAN Abstract: One reason for the success of deep learning in natural image data is the availability of large-scale labeled data. However, labeled medical image data often is limited, as annotating medical image data requires extensive human efforts and expertise. Consequently, the capacity of deep learning usually cannot be fully explored. In this thesis, we propose to improve deep learning performance through addressing variations and uncertainties in medical image data. First, we study the inter-observer problem in retinal vessel segmentation, where human observers can generate different pixel-wise annotations given the same medical image. To address the problem, we design a new evaluation metric and construct a new loss function based on the metric. Then, we integrate the loss function with a new deep learning framework for accurate retinal vessel segmentation. Comprehensive experiments on publicly available datasets demonstrate the effectiveness of our approach. Second, we investigate the boundary uncertainty problem in gland instance segmentation. Due to limited image resolution, annotated boundaries usually are not absolutely correct, which makes it challenging to preserve shape information in gland instance segmentation. To address the problem, we propose a new shape-preserving loss function, together with pseudo domain adaptation, to enable one single deep learning model for accurate gland instance segmentation. Our evaluations confirm that our method can obtain better performance compared with other state-of-the-art methods. Lastly, we discuss the cross-client variation problem, where image data from different sources can vary significantly. It will be the bottleneck when applying federated learning to train deep learning models from multi-source decentralized medical image data. We, for the first time, propose a variation-aware federated learning framework to address the problem. Experimental results on classification of clinically significant prostate cancer from multi-source decentralized ADC image data show that our framework outperforms other deep learning frameworks, especially in dealing with small datasets. Date: Tuesday, 30 June 2020 Time: 3:30pm - 5:30pm Zoom Meeting: https://hkust.zoom.com.cn/j/93504719794 Committee Members: Prof. Tim Cheng (Supervisor) Prof. Albert Chung (Chairperson) Prof. Pedro Sander Prof. Weichuan Yu (ECE) **** ALL are Welcome ****