Aims: A methodology for quantitative comparison of histological stains based on their classification and clustering performance, which may facilitate the choice of histological stains for automatic pattern and image analysis. Background: Machine learning and image analysis are becoming increasingly important in pathology applications for automatic analysis of histological tissue samples. Pathologists rely on multiple, contrasting stains to analyze tissue samples, but histological stains are developed for visual analysis and are not always ideal for automatic analysis. Materials and Methods: Thirteen different histological stains were used to stain adjacent prostate tissue sections from radical prostatectomies. We evaluate the stains for bot...
Digital pathology offers the potential for computer-aided diagnosis, significantly reducing the path...
Histological tissue type classification is a profound research topic. However, most of the research ...
In this work, we present a new algorithm and benchmark dataset for stain separation in histology ima...
In diagnostic histopathology, hematoxylin and eosin (H&E) staining is a critical process that highli...
Automated tissue image analysis aims to develop algorithms for a variety of histological application...
This thesis focuses on developing new automatic techniques addressing three typical problems in digi...
Classification of histology sections in large cohorts, in terms of distinct regions of microanatomy ...
HisTOOLogy is an open-source software for the quantification of digital colour images of histologica...
Digital pathology refers to the use of scanning hardware and viewing software to digitize samples of...
Abstract—Radical prostatectomy is performed on approxi-mately 40 % of men with organ-confined prosta...
With new advances in machine learning (ML), digital histology can be made easierand more accuratewhi...
Digitizing pathology is a current trend that makes large amounts of visual data available for automa...
Computational pathology is a domain that aims to develop algorithms to automatically analyze large d...
In this work, we present a new algorithm and benchmark dataset for stain separation in histology ima...
Background: Histological tissue analysis often involves manual cell counting and staining estimation...
Digital pathology offers the potential for computer-aided diagnosis, significantly reducing the path...
Histological tissue type classification is a profound research topic. However, most of the research ...
In this work, we present a new algorithm and benchmark dataset for stain separation in histology ima...
In diagnostic histopathology, hematoxylin and eosin (H&E) staining is a critical process that highli...
Automated tissue image analysis aims to develop algorithms for a variety of histological application...
This thesis focuses on developing new automatic techniques addressing three typical problems in digi...
Classification of histology sections in large cohorts, in terms of distinct regions of microanatomy ...
HisTOOLogy is an open-source software for the quantification of digital colour images of histologica...
Digital pathology refers to the use of scanning hardware and viewing software to digitize samples of...
Abstract—Radical prostatectomy is performed on approxi-mately 40 % of men with organ-confined prosta...
With new advances in machine learning (ML), digital histology can be made easierand more accuratewhi...
Digitizing pathology is a current trend that makes large amounts of visual data available for automa...
Computational pathology is a domain that aims to develop algorithms to automatically analyze large d...
In this work, we present a new algorithm and benchmark dataset for stain separation in histology ima...
Background: Histological tissue analysis often involves manual cell counting and staining estimation...
Digital pathology offers the potential for computer-aided diagnosis, significantly reducing the path...
Histological tissue type classification is a profound research topic. However, most of the research ...
In this work, we present a new algorithm and benchmark dataset for stain separation in histology ima...