Classifying histopathology images on a pixel-level requires sets of features able to capture the complex characteristics of the images, like the irregular cell morphology and the color heterogeneity on the tissue aspect. In this context, feature selection becomes a crucial step in the classification process such that it reduces model complexity and computational costs, avoids overfitting, and thereby it improves the model performance. In this study, we propose a new ensemble feature selection method by combining a set of base selectors, classifiers, and rank aggregation methods, aiming to determine from any initial set of handcrafted features, a smaller set of relevant color and texture pixel-level features, subsequently used for segmenting...
To improve the performance of the computer-aided systems for breast cancer diagnosis, t...
Breast cancer prediction datasets are usually class imbalanced, where the number of data samples in ...
The extended utilization of digitized Whole Slide Images is transforming the workflow of traditional...
Breast Cancer (BC) is among women’s most lethal health concerns. Early diagnosis can alleviat...
Background: Breast cancer, behind skin cancer, is the second most frequent malignancy among women, i...
One of the major challenges in the development of early diagnosis to assess HER2 status is recognize...
This paper presents novel feature descriptors and classification algorithms for the automated scorin...
Background: Breast cancer is one of the most encountered cancers in women. Detection and classificat...
The evaluation of breast cancer grades in immunohistochemistry (IHC) slides takes into account vario...
Breast Cancer (BC) is among women's most lethal health concerns. Early diagnosis can alleviate the m...
Ensemble learning is an effective machine learning approach to improve the prediction performance by...
Classification of histology sections in large cohorts, in terms of distinct regions of microanatomy ...
AbstractReduce the feature space in classification is a critical, although sensitive, task since it ...
International audienceIn preclinical research, histology images are produced using powerful optical ...
This paper presents a novel feature descriptor and classification algorithms for automated scoring ...
To improve the performance of the computer-aided systems for breast cancer diagnosis, t...
Breast cancer prediction datasets are usually class imbalanced, where the number of data samples in ...
The extended utilization of digitized Whole Slide Images is transforming the workflow of traditional...
Breast Cancer (BC) is among women’s most lethal health concerns. Early diagnosis can alleviat...
Background: Breast cancer, behind skin cancer, is the second most frequent malignancy among women, i...
One of the major challenges in the development of early diagnosis to assess HER2 status is recognize...
This paper presents novel feature descriptors and classification algorithms for the automated scorin...
Background: Breast cancer is one of the most encountered cancers in women. Detection and classificat...
The evaluation of breast cancer grades in immunohistochemistry (IHC) slides takes into account vario...
Breast Cancer (BC) is among women's most lethal health concerns. Early diagnosis can alleviate the m...
Ensemble learning is an effective machine learning approach to improve the prediction performance by...
Classification of histology sections in large cohorts, in terms of distinct regions of microanatomy ...
AbstractReduce the feature space in classification is a critical, although sensitive, task since it ...
International audienceIn preclinical research, histology images are produced using powerful optical ...
This paper presents a novel feature descriptor and classification algorithms for automated scoring ...
To improve the performance of the computer-aided systems for breast cancer diagnosis, t...
Breast cancer prediction datasets are usually class imbalanced, where the number of data samples in ...
The extended utilization of digitized Whole Slide Images is transforming the workflow of traditional...