Background: Recent advancements in machine learning (ML) bring great possibilities for the development of tools to assist with diagnostic tasks within histopathology. However, these approaches typically require a large amount of ground truth training data in the form of image annotations made by human experts. As such annotation work is a very time-consuming task, there is a great need for tools that can assist in this process, saving time while not sacrificing annotation quality. Methods: In an iterative design process, we developed TissueWand – an interactive tool designed for efficient annotation of gigapixel-sized histopathological images, not being constrained to a predefined annotation task. Results: Several findings regarding appropr...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
In digital pathology, deep learning has been shown to have a wide range of applications, from cancer...
Background: Recent advancements in machine learning (ML) bring great possibilities for the developme...
Image-based biomarker discovery typically requires accurate segmentation of histologic structures (e...
Abstract Image‐based biomarker discovery typically requires accurate segmentation of histologic stru...
Early diagnosis and targeted therapies are priorities in the treatment of cancer. Advancements such ...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
ABSTRACT A growing demand for accurate cancer screening, diagnosis, and treatment is the result of ...
Annotating a dataset for training a Supervised Machine Learning algorithm is time and annotator’s at...
Purpose: Validation of artificial intelligence (AI) algorithms in digital pathology with a reference...
Whole-slide histology images contain information that is valuable for clinical and basic science inv...
Ever since the advent of Alexnet in the ImageNet challenge in 2012, the medical image analysis commu...
From the simple measurement of tissue attributes in pathology workflow to designing an explainable d...
The development of increasingly sophisticated methods to acquire high-resolution images has led to t...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
In digital pathology, deep learning has been shown to have a wide range of applications, from cancer...
Background: Recent advancements in machine learning (ML) bring great possibilities for the developme...
Image-based biomarker discovery typically requires accurate segmentation of histologic structures (e...
Abstract Image‐based biomarker discovery typically requires accurate segmentation of histologic stru...
Early diagnosis and targeted therapies are priorities in the treatment of cancer. Advancements such ...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
ABSTRACT A growing demand for accurate cancer screening, diagnosis, and treatment is the result of ...
Annotating a dataset for training a Supervised Machine Learning algorithm is time and annotator’s at...
Purpose: Validation of artificial intelligence (AI) algorithms in digital pathology with a reference...
Whole-slide histology images contain information that is valuable for clinical and basic science inv...
Ever since the advent of Alexnet in the ImageNet challenge in 2012, the medical image analysis commu...
From the simple measurement of tissue attributes in pathology workflow to designing an explainable d...
The development of increasingly sophisticated methods to acquire high-resolution images has led to t...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
Neural networks promise to bring robust, quantitative analysis to medical fields. However, their ado...
In digital pathology, deep learning has been shown to have a wide range of applications, from cancer...