Paper
27 April 2015 Performance assessment of automated tissue characterization for prostate H and E stained histopathology
Matthew D. DiFranco, Hayley M. Reynolds, Catherine Mitchell, Scott Williams, Prue Allan, Annette Haworth
Author Affiliations +
Abstract
Reliable automated prostate tumor detection and characterization in whole-mount histology images is sought in many applications, including post-resection tumor staging and as ground-truth data for multi-parametric MRI interpretation. In this study, an ensemble-based supervised classification algorithm for high-resolution histology images was trained on tile-based image features including histogram and gray-level co-occurrence statistics. The algorithm was assessed using different combinations of H and E prostate slides from two separate medical centers and at two different magnifications (400x and 200x), with the aim of applying tumor classification models to new data. Slides from both datasets were annotated by expert pathologists in order to identify homogeneous cancerous and non-cancerous tissue regions of interest, which were then categorized as (1) low-grade tumor (LG-PCa), including Gleason 3 and high-grade prostatic intraepithelial neoplasia (HG-PIN), (2) high-grade tumor (HG-PCa), including various Gleason 4 and 5 patterns, or (3) non-cancerous, including benign stroma and benign prostatic hyperplasia (BPH). Classification models for both LG-PCa and HG-PCa were separately trained using a support vector machine (SVM) approach, and per-tile tumor prediction maps were generated from the resulting ensembles. Results showed high sensitivity for predicting HG-PCa with an AUC up to 0.822 using training data from both medical centres, while LG-PCa showed a lower sensitivity of 0.763 with the same training data. Visual inspection of cancer probability heatmaps from 9 patients showed that 17/19 tumors were detected, and HG-PCa generally reported less false positives than LG-PCa.
© (2015) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Matthew D. DiFranco, Hayley M. Reynolds, Catherine Mitchell, Scott Williams, Prue Allan, and Annette Haworth "Performance assessment of automated tissue characterization for prostate H and E stained histopathology", Proc. SPIE 9420, Medical Imaging 2015: Digital Pathology, 94200M (27 April 2015); https://doi.org/10.1117/12.2081787
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Cited by 4 scholarly publications.
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KEYWORDS
Tumors

Prostate

Tissues

Data modeling

Tumor growth modeling

RGB color model

Cancer

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