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Seeded iterative clustering for histology region identification

2022-11-14 14:56:27
Eduard Chelebian, Francesco Ciompi, Carolina Wählby

Abstract

Annotations are necessary to develop computer vision algorithms for histopathology, but dense annotations at a high resolution are often time-consuming to make. Deep learning models for segmentation are a way to alleviate the process, but require large amounts of training data, training times and computing power. To address these issues, we present seeded iterative clustering to produce a coarse segmentation densely and at the whole slide level. The algorithm uses precomputed representations as the clustering space and a limited amount of sparse interactive annotations as seeds to iteratively classify image patches. We obtain a fast and effective way of generating dense annotations for whole slide images and a framework that allows the comparison of neural network latent representations in the context of transfer learning.

Abstract (translated)

URL

https://arxiv.org/abs/2211.07425

PDF

https://arxiv.org/pdf/2211.07425.pdf


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