PERTANIKA JOURNAL OF SCIENCE AND TECHNOLOGY

 

e-ISSN 2231-8526
ISSN 0128-7680

Home / Regular Issue / JST Vol. 25 (S) Jun. 2017 / JST-S0374-2017

 

Lumen-Nuclei Ensemble Machine Learning System for Diagnosing Prostate Cancer in Histopathology Images

Dheeb Albashish, Shahnorbanun Sahran, Azizi Abdullah, Nordashima Abd Shukor and Suria Hayati Md Pauzi

Pertanika Journal of Science & Technology, Volume 25, Issue S, June 2017

Keywords: Ensemble machine learning, Gleason grading system, Lumen, Nuclei, Prostate cancer histological image, Tissue components

Published on: 12 Mac 2018

The Gleason grading system assists in evaluating the prognosis of men with prostate cancer. Cancers with a higher score are more aggressive and have a worse prognosis. The pathologists observe the tissue components (e.g. lumen, nuclei) of the histopathological image to grade it. The differentiation between Grade 3 and Grade 4 is the most challenging, and receives the most consideration from scholars. However, since the grading is subjective and time-consuming, a reliable computer-aided prostate cancer diagnosing techniques are in high demand. This study proposed an ensemble computer-added system (CAD) consisting of two single classifiers: a) a specialist, trained specifically for texture features of the lumen and the other for nuclei tissue component; b) a fusion method to aggregate the decision of the single classifiers. Experimental results show promising results that the proposed ensemble system (area under the ROC curve (Az) of 88.9% for Grade 3 versus Grad 4 classification task) impressively outperforms the single classifier of nuclei (Az=87.7) and lumen (Az=86.6).

ISSN 0128-7680

e-ISSN 2231-8526

Article ID

JST-S0374-2017

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