Comparative Analysis of Hand-Crafted and Machine-Driven Histopathological Features for Prostate Cancer Classification and Segmentation
Journal:
arXiv
Published Date:
Jan 19, 2025
Abstract
Histopathological image analysis is a reliable method for prostate cancer
identification. In this paper, we present a comparative analysis of two
approaches for segmenting glandular structures in prostate images to automate
Gleason grading. The first approach utilizes a hand-crafted learning technique,
combining Gray Level Co-Occurrence Matrix (GLCM) and Local Binary Pattern (LBP)
texture descriptors to highlight spatial dependencies and minimize information
loss at the pixel level. For machine driven feature extraction, we employ a
U-Net convolutional neural network to perform semantic segmentation of prostate
gland stroma tissue. Support vector machine-based learning of hand-crafted
features achieves impressive classification accuracies of 99.0% and 95.1% for
GLCM and LBP, respectively, while the U-Net-based machine-driven features
attain 94% accuracy. Furthermore, a comparative analysis demonstrates superior
segmentation quality for histopathological grades 1, 2, 3, and 4 using the
U-Net approach, as assessed by Jaccard and Dice metrics. This work underscores
the utility of machine-driven features in clinical applications that rely on
automated pixel-level segmentation in prostate tissue images.