GenSelfDiff-HIS: Generative Self-Supervision Using Diffusion for Histopathological Image Segmentation
Vishnuvardhan Purma, Suhas Srinath, Seshan Srirangarajan, Aanchal, Kakkar, and Prathosh A.P

TL;DR
This paper introduces GenSelfDiff-HIS, a self-supervised learning approach using generative diffusion models to improve histopathological image segmentation, reducing dependence on large annotated datasets.
Contribution
It proposes a novel SSL method based on diffusion models for histopathological segmentation, addressing the scarcity of annotated data and introducing a multi-loss fine-tuning strategy.
Findings
Effective segmentation on multiple datasets
Outperforms existing SSL methods
Validated on a new head and neck cancer dataset
Abstract
Histopathological image segmentation is a laborious and time-intensive task, often requiring analysis from experienced pathologists for accurate examinations. To reduce this burden, supervised machine-learning approaches have been adopted using large-scale annotated datasets for histopathological image analysis. However, in several scenarios, the availability of large-scale annotated data is a bottleneck while training such models. Self-supervised learning (SSL) is an alternative paradigm that provides some respite by constructing models utilizing only the unannotated data which is often abundant. The basic idea of SSL is to train a network to perform one or many pseudo or pretext tasks on unannotated data and use it subsequently as the basis for a variety of downstream tasks. It is seen that the success of SSL depends critically on the considered pretext task. While there have been…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Cervical Cancer and HPV Research
MethodsDiffusion
