Breast-tissue microarrays facilitate the survey of very large numbers of tumours but their scoring by pathologists is time consuming, typically highly quantised and not without error. Automated segmentation of cells and intra-cellular compartments in such data can be problematic for reasons that include cell overlapping, complex tissue structure, debris, and variable appearance. This paper proposes a computationally efficient approach that approximates the density of colour and local invariant features by clusters in the feature space, and characterises each spot by a frequency histogram of nearest cluster centres. Spots are classified into four main types based on their histograms. This approach does not rely on accurate segmentation of in...
Breast cancer is one of the main causes of cancer death worldwide. The diagnosis of biopsy tissue wi...
Multiplexed and spatially resolved single-cell analyses that intend to study tissue heterogeneity an...
Algorithmic segmentation of histologically relevant regions of tissues in digitized histopathologica...
Breast-tissue microarrays facilitate the survey of very large numbers of tumours but their scoring b...
Breast tissue microarrays facilitate the survey of very large numbers of tumours but their scoring b...
Tissue microarrays (TMAs) facilitate the survey of very large numbers of tumours. However, the manua...
Abstract Background Tissue MicroArray technology aims to perform immunohistochemical staining on hun...
Breast cancer is a major public health issue that may be remedied with early identification and effi...
Automated tissue image analysis aims to develop algorithms for a variety of histological application...
Heterogeneous regions present in tissue with respect to cancer cells are of various types. This stud...
Abstract Background Tumor classification is inexact and largely dependent on the qualitative patholo...
Motivation: The most reliable way in the current practice of medicine to diagnose cancer is the path...
With the evolution of modern digital pathology, examining cancer cell tissues has paved the way to q...
In this paper we present a novel image analysis methodology for au-tomatically distinguishing low an...
AbstractIn the late 19th century, the advent of malignant tissues in the human cells has come into l...
Breast cancer is one of the main causes of cancer death worldwide. The diagnosis of biopsy tissue wi...
Multiplexed and spatially resolved single-cell analyses that intend to study tissue heterogeneity an...
Algorithmic segmentation of histologically relevant regions of tissues in digitized histopathologica...
Breast-tissue microarrays facilitate the survey of very large numbers of tumours but their scoring b...
Breast tissue microarrays facilitate the survey of very large numbers of tumours but their scoring b...
Tissue microarrays (TMAs) facilitate the survey of very large numbers of tumours. However, the manua...
Abstract Background Tissue MicroArray technology aims to perform immunohistochemical staining on hun...
Breast cancer is a major public health issue that may be remedied with early identification and effi...
Automated tissue image analysis aims to develop algorithms for a variety of histological application...
Heterogeneous regions present in tissue with respect to cancer cells are of various types. This stud...
Abstract Background Tumor classification is inexact and largely dependent on the qualitative patholo...
Motivation: The most reliable way in the current practice of medicine to diagnose cancer is the path...
With the evolution of modern digital pathology, examining cancer cell tissues has paved the way to q...
In this paper we present a novel image analysis methodology for au-tomatically distinguishing low an...
AbstractIn the late 19th century, the advent of malignant tissues in the human cells has come into l...
Breast cancer is one of the main causes of cancer death worldwide. The diagnosis of biopsy tissue wi...
Multiplexed and spatially resolved single-cell analyses that intend to study tissue heterogeneity an...
Algorithmic segmentation of histologically relevant regions of tissues in digitized histopathologica...