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Title: | TOWARDS AUTOMATED AND ANNOTATION-EFFICIENT MEDICAL IMAGE ANALYSIS | Authors: | ZHU LEI | ORCID iD: | orcid.org/0000-0002-9193-8234 | Keywords: | Medical Image Analysis, Artificial Intelligence, Machine Learning, Multi-Modal Learning, Transfer Learning, Semi-Supervised Learning | Issue Date: | 17-Jan-2022 | Citation: | ZHU LEI (2022-01-17). TOWARDS AUTOMATED AND ANNOTATION-EFFICIENT MEDICAL IMAGE ANALYSIS. ScholarBank@NUS Repository. | Abstract: | With the global expansion of medical imaging, the volume of acquired medical image data is increasing at a pace much faster than what human experts can interpret. This thesis is devoted to developing automated and annotation-efficient medical image analysis algorithms to tackle above real-world problem. The thesis consists of two parts, in the first part, I worked with a research team from National University Hospital to develop a deep learning system for stenosis diagnosis at lumbar spine MRI. In the second part, I conduct research on annotation-efficient learning algorithms. I investigate on the potentials of auxiliary labeled, noisy labeled, partially labeled, and unlabeled datasets for annotation-efficient learning. All the proposed algorithms and new learning paradigms help alleviate the annotation burden significantly and facilitate wider adoption of learning solutions in healthcare. Finally, I integrate all the proposed algorithms into GEMINI platform for domain experts to use them at ease. | URI: | https://scholarbank.nus.edu.sg/handle/10635/227567 |
Appears in Collections: | Ph.D Theses (Open) |
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