In digital pathology, cell-level tissue analyses are widely used to better understand tissue composition and structure. Publicly available datasets and models for cell detection and classification in colorectal cancer exist but lack the differentiation of normal and malignant epithelial cells that are important to perform prior to any downstream cell-based analysis. This classification task is particularly difficult due to the high intra-class variability of neoplastic cells. To tackle this, we present here a new method that uses graph-based node classification to take advantage of both local cell features and global tissue architecture to perform accurate epithelial cell classification. The proposed method demonstrated excellent performanc...
Digitization of histology images and the advent of new computational methods, like deep learning, ha...
This paper reports a new structural method to mathematically represent and quantify a tissue for the...
Different types of feature representation have been investigated to represent the histopathological ...
Classification of various types of tissue in cancer histology images based on the cellular compositi...
Automated segmentation and quantification of cellular and subcellular components in multiplexed imag...
This paper reports a new structural approach for automated classification of histopathological tissu...
Pathologists study tissue morphology in order to correctly diagnose diseases such as colorectal canc...
Motivation: The most reliable way in the current practice of medicine to diagnose cancer is the path...
We present a multi-scale graphical network that can capture the relevant representations of individu...
We propose to classify intestinal glands as normal or dysplastic using cell-graphs and graph-based d...
In human body, the cells are arranged in a particular pattern. Neoplastic diseases such as cancer ma...
Local spatial arrangement of nuclei in histopathology images of different cancer subtypes has been s...
Cancer diagnosis, prognosis, and therapy response predictions from tissue specimens highly depend on...
Cancer causes deviations in the distribution of cells, leading to changes in biological structures t...
This paper reports a new structural method to mathematically represent and quantify a tissue for the...
Digitization of histology images and the advent of new computational methods, like deep learning, ha...
This paper reports a new structural method to mathematically represent and quantify a tissue for the...
Different types of feature representation have been investigated to represent the histopathological ...
Classification of various types of tissue in cancer histology images based on the cellular compositi...
Automated segmentation and quantification of cellular and subcellular components in multiplexed imag...
This paper reports a new structural approach for automated classification of histopathological tissu...
Pathologists study tissue morphology in order to correctly diagnose diseases such as colorectal canc...
Motivation: The most reliable way in the current practice of medicine to diagnose cancer is the path...
We present a multi-scale graphical network that can capture the relevant representations of individu...
We propose to classify intestinal glands as normal or dysplastic using cell-graphs and graph-based d...
In human body, the cells are arranged in a particular pattern. Neoplastic diseases such as cancer ma...
Local spatial arrangement of nuclei in histopathology images of different cancer subtypes has been s...
Cancer diagnosis, prognosis, and therapy response predictions from tissue specimens highly depend on...
Cancer causes deviations in the distribution of cells, leading to changes in biological structures t...
This paper reports a new structural method to mathematically represent and quantify a tissue for the...
Digitization of histology images and the advent of new computational methods, like deep learning, ha...
This paper reports a new structural method to mathematically represent and quantify a tissue for the...
Different types of feature representation have been investigated to represent the histopathological ...