Ensemble learning is an effective machine learning approach to improve the prediction performance by fusing several single classifier models. In computer-aided diagnosis system (CAD), machine learning has become one of the dominant solutions for tissue images diagnosis and grading. One problem in a single classifier model for multi-components of the tissue images combination to construct dense feature vectors is the overfitting. In this paper, an ensemble learning for multi-component tissue images classification approach is proposed. The prostate cancer Hematoxylin and Eosin (H&E) histopathology images from HUKM were used to test the proposed ensemble approach for diagnosing and Gleason grading. The experiments results of several prosta...
Histological tissue type classification is a profound research topic. However, most of the research ...
Robust detection of prostatic cancer is a challenge due to the multitude of variants and their repre...
Robust detection of prostatic cancer is a challenge due to the multitude of variants and their repre...
Ensemble learning is an effective machine learning approach to improve the prediction performance by...
strong and weak, based on the power of the samples in each binary task. Conversely, the strong sampl...
Automated classification of prostate histopathology images includes the identification of multiple c...
Abstract Background Automated classification of histopathology involves identification of multiple c...
The extended utilization of digitized Whole Slide Images is transforming the workflow of traditional...
Automatically detecting and grading cancerous regions on radical prostatectomy (RP) sections facilit...
Abstract—Radical prostatectomy is performed on approxi-mately 40 % of men with organ-confined prosta...
Prostate cancer is a significant cause of morbidity and mortality in the USA. In this paper, we deve...
Ensemble classification is a classifier applied to improve the performance of the single classifiers...
Prostate cancer diagnosis by biopsy images of human tissue requires experienced trained pathologists...
Aims: A methodology for quantitative comparison of histological stains based on their classification...
In this work, we introduced an automated diagnostic system for Gleason system grading and grade grou...
Histological tissue type classification is a profound research topic. However, most of the research ...
Robust detection of prostatic cancer is a challenge due to the multitude of variants and their repre...
Robust detection of prostatic cancer is a challenge due to the multitude of variants and their repre...
Ensemble learning is an effective machine learning approach to improve the prediction performance by...
strong and weak, based on the power of the samples in each binary task. Conversely, the strong sampl...
Automated classification of prostate histopathology images includes the identification of multiple c...
Abstract Background Automated classification of histopathology involves identification of multiple c...
The extended utilization of digitized Whole Slide Images is transforming the workflow of traditional...
Automatically detecting and grading cancerous regions on radical prostatectomy (RP) sections facilit...
Abstract—Radical prostatectomy is performed on approxi-mately 40 % of men with organ-confined prosta...
Prostate cancer is a significant cause of morbidity and mortality in the USA. In this paper, we deve...
Ensemble classification is a classifier applied to improve the performance of the single classifiers...
Prostate cancer diagnosis by biopsy images of human tissue requires experienced trained pathologists...
Aims: A methodology for quantitative comparison of histological stains based on their classification...
In this work, we introduced an automated diagnostic system for Gleason system grading and grade grou...
Histological tissue type classification is a profound research topic. However, most of the research ...
Robust detection of prostatic cancer is a challenge due to the multitude of variants and their repre...
Robust detection of prostatic cancer is a challenge due to the multitude of variants and their repre...