A Novel Self-Learning Framework for Bladder Cancer Grading Using
Histopathological Images
- URL: http://arxiv.org/abs/2106.13559v1
- Date: Fri, 25 Jun 2021 11:04:04 GMT
- Title: A Novel Self-Learning Framework for Bladder Cancer Grading Using
Histopathological Images
- Authors: Gabriel Garc\'ia, Anna Esteve, Adri\'an Colomer, David Ramos and
Valery Naranjo
- Abstract summary: We present a self-learning framework to grade bladder cancer from histological images stained viachemical techniques.
We propose a novel Deep Convolutional Embedded Attention Clustering (DCEAC) which allows classifying histological patches into different levels of the disease.
- Score: 1.244681179922733
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recently, bladder cancer has been significantly increased in terms of
incidence and mortality. Currently, two subtypes are known based on tumour
growth: non-muscle invasive (NMIBC) and muscle-invasive bladder cancer (MIBC).
In this work, we focus on the MIBC subtype because it is of the worst prognosis
and can spread to adjacent organs. We present a self-learning framework to
grade bladder cancer from histological images stained via immunohistochemical
techniques. Specifically, we propose a novel Deep Convolutional Embedded
Attention Clustering (DCEAC) which allows classifying histological patches into
different severity levels of the disease, according to the patterns established
in the literature. The proposed DCEAC model follows a two-step fully
unsupervised learning methodology to discern between non-tumour, mild and
infiltrative patterns from high-resolution samples of 512x512 pixels. Our
system outperforms previous clustering-based methods by including a
convolutional attention module, which allows refining the features of the
latent space before the classification stage. The proposed network exceeds
state-of-the-art approaches by 2-3% across different metrics, achieving a final
average accuracy of 0.9034 in a multi-class scenario. Furthermore, the reported
class activation maps evidence that our model is able to learn by itself the
same patterns that clinicians consider relevant, without incurring prior
annotation steps. This fact supposes a breakthrough in muscle-invasive bladder
cancer grading which bridges the gap with respect to train the model on
labelled data.
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