Title :
Prostate Histopathology: Learning Tissue Component Histograms for Cancer Detection and Classification
Author :
Gorelick, Lena ; Veksler, Olga ; Gaed, Mena ; Gomez, Jairo Alejandro ; Moussa, Madeleine ; Bauman, Glenn ; Fenster, Aaron ; Ward, Aaron D.
Author_Institution :
Depts. of Comput. Sci. & Med. Biophys., Univ. of Western Ontario, London, ON, Canada
Abstract :
Radical prostatectomy is performed on approximately 40% of men with organ-confined prostate cancer. Pathologic information obtained from the prostatectomy specimen provides important prognostic information and guides recommendations for adjuvant treatment. The current pathology protocol in most centers involves primarily qualitative assessment. In this paper, we describe and evaluate our system for automatic prostate cancer detection and grading on hematoxylin & eosin-stained tissue images. Our approach is intended to address the dual challenges of large data size and the need for high-level tissue information about the locations and grades of tumors. Our system uses two stages of AdaBoost-based classification. The first provides high-level tissue component labeling of a superpixel image partitioning. The second uses the tissue component labeling to provide a classification of cancer versus noncancer, and low-grade versus high-grade cancer. We evaluated our system using 991 sub-images extracted from digital pathology images of 50 whole-mount tissue sections from 15 prostatectomy patients. We measured accuracies of 90% and 85% for the cancer versus noncancer and high-grade versus low-grade classification tasks, respectively. This system represents a first step toward automated cancer quantification on prostate digital histopathology imaging, which could pave the way for more accurately informed postprostatectomy patient care.
Keywords :
cancer; image classification; learning (artificial intelligence); medical image processing; patient care; tumours; AdaBoost-based classification; adjuvant treatment; automatic prostate cancer detection; cancer classification; cancer quantification; digital histopathology imaging; digital pathology images; eosin-stained tissue images; hematoxylin; high-level tissue component labeling; high-level tissue information; learning tissue component histograms; organ-confined prostate cancer; postprostatectomy patient care; prostate histopathology; prostatectomy patients; prostatectomy specimen; radical prostatectomy; superpixel image partitioning; tumor grades; whole-mount tissue; Accuracy; Glands; Histograms; Labeling; Pathology; Prostate cancer; Automated prostate cancer detection; cancer grading; digital pathology image analysis; machine learning; quantitative pathology, superpixels; Artificial Intelligence; Histological Techniques; Humans; Image Interpretation, Computer-Assisted; Male; Prognosis; Prostate; Prostatectomy; Prostatic Neoplasms;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2013.2265334