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Title: | NOVEL MULTIPLE INSTANCE LEARNING MODELS FOR DIGITAL HISTOPATHOLOGY | Authors: | MUSTAFA UMIT ONER | ORCID iD: | orcid.org/0000-0003-4252-9167 | Keywords: | digital histopathology, genomics, whole-slide-images, multiple instance learning, deep learning, digital pathology | Issue Date: | 30-Jul-2021 | Citation: | MUSTAFA UMIT ONER (2021-07-30). NOVEL MULTIPLE INSTANCE LEARNING MODELS FOR DIGITAL HISTOPATHOLOGY. ScholarBank@NUS Repository. | Abstract: | Histopathology is the gold standard in cancer diagnosis. Slide scanners have transformed histopathology into digital, where glass slides are digitized and stored as whole-slide-images (WSIs). WSIs provide us with precious data that powerful deep learning models can exploit. However, a WSI is a gigapixel image that traditional deep learning models cannot process. Besides, deep learning models require a lot of labeled data. Nevertheless, most WSIs are either unannotated or annotated with some weak labels indicating slide-level properties, like a tumor slide or a normal slide. This thesis develops novel multiple instance learning (MIL) models to tackle huge WSIs and utilize weak labels. We treat a WSI as a bag of small patches from the WSI and use the WSI’s weak label as the bag label. We test our models’ usefulness on real-world tasks at the intersection of digital histopathology and genomics. | URI: | https://scholarbank.nus.edu.sg/handle/10635/212701 |
Appears in Collections: | Ph.D Theses (Open) |
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