Deep neural networks are nowadays state-of-the-art method- ologies for general-purpose image classification. As a consequence, such approaches are also employed in the context of histopathology biopsy im- age classification. This specific task is usually performed by separating the image into patches, giving them as input to the Deep Model and eval- uating the single sub-part outputs. This approach has the main drawback of not considering the global structure of the input image and can lead to avoiding the discovery of relevant patterns among non-overlapping patches. Differently from this commonly adopted assumption, in this paper, we propose to face the problem by representing the input into a proper embedding resulting from a graph representation built from the tissue regions of the image. This graph representation is capable of maintaining the image structure and considering the relations among its relevant parts. The effectiveness of this representation is shown in the case of automatic tumor grading identification of breast cancer, using public available datasets.

Breast Cancer Histologic Grade Identification by Graph Neural Network Embeddings

Riccardo Rizzo;Filippo Vella
2023

Abstract

Deep neural networks are nowadays state-of-the-art method- ologies for general-purpose image classification. As a consequence, such approaches are also employed in the context of histopathology biopsy im- age classification. This specific task is usually performed by separating the image into patches, giving them as input to the Deep Model and eval- uating the single sub-part outputs. This approach has the main drawback of not considering the global structure of the input image and can lead to avoiding the discovery of relevant patterns among non-overlapping patches. Differently from this commonly adopted assumption, in this paper, we propose to face the problem by representing the input into a proper embedding resulting from a graph representation built from the tissue regions of the image. This graph representation is capable of maintaining the image structure and considering the relations among its relevant parts. The effectiveness of this representation is shown in the case of automatic tumor grading identification of breast cancer, using public available datasets.
2023
Istituto di Calcolo e Reti ad Alte Prestazioni - ICAR - Sede Secondaria Palermo
Histology images
Graph Neural Networks
Breast Cancer
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/434744
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