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Estimating Medical Indicators for Disease Diagnosis and Tracking with Deep Regression Models
The Hong Kong University of Science and Technology Department of Computer Science and Engineering PhD Thesis Defence Title: "Estimating Medical Indicators for Disease Diagnosis and Tracking with Deep Regression Models" By Mr. Weihang DAI Abstract: Deep regression problems involve estimating continuous, real-number variables from unstructured inputs such as images or videos. These problems are important for medical imaging analysis since disease tracking and diagnosis are often based on medical indicators that take on real-number values. Despite their practical importance, deep regression is not as well explored as classification and segmentation tasks In this thesis, we propose state-of-the-art methods for deep regression in medical imaging analysis by addressing their common characteristics and challenges. Specifically, our methods are based on three general approaches: improving feature representations for deep regression, using unlabeled data through semi-supervision, and using region-of-interest segmentations for additional context. We first propose a novel adaptive contrastive learning framework, AdaCon, for improved feature learning. Existing contrastive learning methods for classification cannot be directly applied to regression as they cannot account for label distance between samples. AdaCon allows features to reflect distance relationships however, which improves downstream regression performance. We then examine semi-supervised methods to address the challenge of limited annotations for medical data. We propose Uncertainty-Consistent Variational Model Ensembling (UCVME), which uses uncertainty estimates for unlabeled data to focus training on high-quality regression pseudo-labels. We also propose Contrastive Learning with Spectral Seriation (CLSS), which extends contrastive learning for regression to a semi-supervised setting. Finally, we explore how region-of-interest segmentations can provide additional context for regression. We propose cyclical self-supervision (CSS), which generates improved left-ventricle segmentation predictions for input into ejection fraction regression models. We also show how segmentation masks can be used to extract radiomic features, which can then be combined with deep features using our radiomics informed deep learning (RIDL) framework. We demonstrate our methods on a variety of medical tasks and outperform existing approaches. Our methods have direct clinical benefits as it allows for more reliable indicators readings to be obtained for improved diagnosis. Date: Thursday, 27 July 2023 Time: 8:45am - 10:45am Venue: Room 3494 lifts 25/26 Chairperson: Prof. Mike SO (ISOM) Committee Members: Prof. Tim CHENG (Supervisor) Prof. Xiaomeng LI (Supervisor) Prof. Hao CHEN Prof. Long QUAN Prof. Yanglong LU (MAE) Prof. Hongsheng LI (CUHK) **** ALL are Welcome ****