Identification of nuclear components in the histology landscape is an important step towards developing computational pathology tools for the profiling of tumor micro-environment. Most existing methods for the identification of such components are limited in scope due to heterogeneous nature of the nuclei. Graph-based methods offer a natural way to formulate the nucleus classification problem to incorporate both appearance and geometric locations of the nuclei. The main challenge is to define models that can handle such an unstructured domain. Current approaches focus on learning better features and then employ well-known classifiers for identifying distinct nuclear phenotypes. In contrast, we propose a message passing network that is a ful...
Abstract: The cell graph data extracted from histological images for predicting microstatellite stat...
Tumors contain a high degree of cellular heterogeneity. Various type of cells infiltrate the organs ...
In histopathological image analysis, cell nucleus segmentation plays an important role in the clinic...
<p>Given the strong association between aberrant nuclear morphology and tumor progression, changes i...
The detection of nuclei and cells in histology images is of great value in both clinical practice an...
Nuclei identification is a fundamental task in many areas of biomedical image analysis related to co...
The detection of nuclei and cells in histology images is of great value in both clinical practice an...
Whole-slide image analysis is a long-lasting and laborious process. There are many ways of automatic...
Abstract Nuclei segmentation and classification for Haematoxylin & Eosin stained histology images is...
Nuclear architecture or the spatial arrangement of individual cancer nuclei on histopathology images...
Nuclear segmentation and classification within Haematoxylin & Eosin stained histology images is a fu...
The demanding step in the development of ancillary systems for the diagnosis of cancer and other dis...
In traditional cancer diagnosis, (histo)pathological images of biopsy samples are visually analysed ...
In systems-based approaches for studying processes such as cancer and development, identifying and c...
In systems-based approaches for studying processes such as cancer and development, identifying and c...
Abstract: The cell graph data extracted from histological images for predicting microstatellite stat...
Tumors contain a high degree of cellular heterogeneity. Various type of cells infiltrate the organs ...
In histopathological image analysis, cell nucleus segmentation plays an important role in the clinic...
<p>Given the strong association between aberrant nuclear morphology and tumor progression, changes i...
The detection of nuclei and cells in histology images is of great value in both clinical practice an...
Nuclei identification is a fundamental task in many areas of biomedical image analysis related to co...
The detection of nuclei and cells in histology images is of great value in both clinical practice an...
Whole-slide image analysis is a long-lasting and laborious process. There are many ways of automatic...
Abstract Nuclei segmentation and classification for Haematoxylin & Eosin stained histology images is...
Nuclear architecture or the spatial arrangement of individual cancer nuclei on histopathology images...
Nuclear segmentation and classification within Haematoxylin & Eosin stained histology images is a fu...
The demanding step in the development of ancillary systems for the diagnosis of cancer and other dis...
In traditional cancer diagnosis, (histo)pathological images of biopsy samples are visually analysed ...
In systems-based approaches for studying processes such as cancer and development, identifying and c...
In systems-based approaches for studying processes such as cancer and development, identifying and c...
Abstract: The cell graph data extracted from histological images for predicting microstatellite stat...
Tumors contain a high degree of cellular heterogeneity. Various type of cells infiltrate the organs ...
In histopathological image analysis, cell nucleus segmentation plays an important role in the clinic...