Texture Characterization of Histopathologic Images Using Ecological Diversity Measures and Discrete Wavelet Transform
Steve Tsham Mpinda Ataky, Alessandro Lameiras Koerich

TL;DR
This paper introduces a novel approach combining ecological diversity measures and discrete wavelet transform to improve texture characterization in histopathologic images, aiding early breast cancer detection.
Contribution
It presents a new method that effectively captures texture features in histopathologic images, addressing variability due to staining differences and outperforming existing techniques.
Findings
Achieved high accuracy on two histopathologic image datasets.
Outperformed state-of-the-art texture analysis methods.
Demonstrated robustness to staining variability.
Abstract
Breast cancer is a health problem that affects mainly the female population. An early detection increases the chances of effective treatment, improving the prognosis of the disease. In this regard, computational tools have been proposed to assist the specialist in interpreting the breast digital image exam, providing features for detecting and diagnosing tumors and cancerous cells. Nonetheless, detecting tumors with a high sensitivity rate and reducing the false positives rate is still challenging. Texture descriptors have been quite popular in medical image analysis, particularly in histopathologic images (HI), due to the variability of both the texture found in such images and the tissue appearance due to irregularity in the staining process. Such variability may exist depending on differences in staining protocol such as fixation, inconsistency in the staining condition, and…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Generative Adversarial Networks and Image Synthesis
