Unsupervised Brain Tumor Segmentation with Image-based Prompts
Xinru Zhang, Ni Ou, Chenghao Liu, Zhizheng Zhuo, Yaou Liu, and Chuyang, Ye

TL;DR
This paper introduces an unsupervised deep learning approach for brain tumor segmentation that uses image-based prompts inspired by prompt learning, eliminating the need for annotated training data.
Contribution
It proposes a novel prompt learning framework for unsupervised brain tumor segmentation, including a validation task to prevent overfitting and an extension to utilize unannotated tumor images.
Findings
Achieved significant improvements over existing unsupervised methods.
Demonstrated effectiveness on public and in-house datasets.
Extended approach to other brain lesion segmentation tasks.
Abstract
Automated brain tumor segmentation based on deep learning (DL) has achieved promising performance. However, it generally relies on annotated images for model training, which is not always feasible in clinical settings. Therefore, the development of unsupervised DL-based brain tumor segmentation approaches without expert annotations is desired. Motivated by the success of prompt learning (PL) in natural language processing, we propose an approach to unsupervised brain tumor segmentation by designing image-based prompts that allow indication of brain tumors, and this approach is dubbed as PL-based Brain Tumor Segmentation (PL-BTS). Specifically, instead of directly training a model for brain tumor segmentation with a large amount of annotated data, we seek to train a model that can answer the question: is a voxel in the input image associated with tumor-like hyper-/hypo-intensity? Such a…
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Taxonomy
TopicsBrain Tumor Detection and Classification · Advanced Neural Network Applications · Radiomics and Machine Learning in Medical Imaging
