Histological images present high appearance variability due to inconsistent latent parameters related to the preparation and scanning procedure of histological slides, as well as the inherent biological variability of tissues. Machine-learning models are trained with images from a limited set of domains, and are expected to generalize to images from unseen domains. Methodological design choices have to be made in order to yield domain invariance and proper generalization. In digital pathology, standard approaches focus either on ad-hoc normalization of the latent parameters based on prior knowledge, such as staining normalization, or aim at anticipating new variations of these parameters via data augmentation. Since every histological image...
Automated analysis of histopathology whole-slide images is impeded by the scannerdependent variance ...
The biggest fear when deploying machine learning models to the real world is their ability to handle...
Deep learning based analysis of histopathology images shows promise in advancing the understanding o...
Histological images present high appearance variability due to inconsistent latent parameters relate...
Preparing and scanning histopathology slides consists of several steps, each with a multitude of par...
Computational image analysis is one means for evaluating digitized histopathology specimens that can...
Domain shift is a significant problem in histopathology. There can be large differences in data char...
The high capacity of neural networks allows fitting models to data with high precision, but makes ge...
The application of supervised deep learning methods in digital pathology is limited due to their sen...
The effective localization of mitosis is a critical precursory task for deciding tumor prognosis and...
One of the main obstacles for the implementation of deep convolutional neural networks (DCNNs) in th...
The density of mitotic figures within tumor tissue is known to be highly correlated with tumor proli...
Histopathology relies on the analysis of microscopic tissue images to diagnose disease. A crucial pa...
A partially synthetic histopathology dataset containing image patches of colon tissue from 3 stainin...
Nucleus detection is a fundamental task in histological image analysis and an important tool for man...
Automated analysis of histopathology whole-slide images is impeded by the scannerdependent variance ...
The biggest fear when deploying machine learning models to the real world is their ability to handle...
Deep learning based analysis of histopathology images shows promise in advancing the understanding o...
Histological images present high appearance variability due to inconsistent latent parameters relate...
Preparing and scanning histopathology slides consists of several steps, each with a multitude of par...
Computational image analysis is one means for evaluating digitized histopathology specimens that can...
Domain shift is a significant problem in histopathology. There can be large differences in data char...
The high capacity of neural networks allows fitting models to data with high precision, but makes ge...
The application of supervised deep learning methods in digital pathology is limited due to their sen...
The effective localization of mitosis is a critical precursory task for deciding tumor prognosis and...
One of the main obstacles for the implementation of deep convolutional neural networks (DCNNs) in th...
The density of mitotic figures within tumor tissue is known to be highly correlated with tumor proli...
Histopathology relies on the analysis of microscopic tissue images to diagnose disease. A crucial pa...
A partially synthetic histopathology dataset containing image patches of colon tissue from 3 stainin...
Nucleus detection is a fundamental task in histological image analysis and an important tool for man...
Automated analysis of histopathology whole-slide images is impeded by the scannerdependent variance ...
The biggest fear when deploying machine learning models to the real world is their ability to handle...
Deep learning based analysis of histopathology images shows promise in advancing the understanding o...