Breast Cancer Diagnosis in Mammograms Using Wavelet Analysis, Haralick Descriptors, and Autoencoder

Breast Cancer Diagnosis in Mammograms Using Wavelet Analysis, Haralick Descriptors, and Autoencoder

Maira Araujo de Santana, Jessiane Mônica Silva Pereira, Washington Wagner Azevedo da Silva, Wellington Pinheiro dos Santos
Copyright: © 2021 |Pages: 16
DOI: 10.4018/978-1-7998-3092-4.ch004
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Abstract

In this chapter, the authors used autoencoder in data preprocessing step in an attempt to improve image representation, consequently increasing classification performance. The authors applied autoencoder to the task of breast lesion classification in mammographic images. Image Retrieval in Medical Applications (IRMA) database was used. This database has a total of 2,796 ROI (regions of interest) images from mammograms. The images are from patients in one of the three conditions: with a benign lesion, a malignant lesion, or presenting healthy breast. In this study, images were from mostly fatty breasts and authors assessed different intelligent algorithms performance in grouping the images in their respective diagnosis.
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In this session, authors provide some related works and a broad definition of some topics they used along the experiments.

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