Comparison of deep learned and texture features in mammographic mass classification

Research output: Chapter in Book/Report/Conference proceedingConference Proceeding (Non-Journal item)

1 Citation (Scopus)

Abstract

As deep learning models are increasingly applied in medical diagnostic assistance systems, this raises questions about ones ability to understand and interpret its decision-making process. In this work, using breast lesions from the Optimam Mammography Image Database (OMI-DB), we have explored whether deep learned features have similar predictive information as classical texture features. We trained a deep learning model for mass lesion classification and used Gradient-weighted Class Activation Mapping to produce a representation of deep learned features. Additional, classical texture features (e.g. energy) were extracted. Subsequently, we used the earth mover’s distance to investigate similarities between deep learned and texture features. The comparison identified that texture features such as mean, entropy and auto-correlation showed a strong similarity with the deep learned features and provided an indication of what the deep learning models might have used as information for its classification.
Original languageEnglish
Title of host publication16th International Workshop on Breast Imaging (IWBI2022)
Subtitle of host publicationProceedings Volume 12286 Sixteenth International Workshop on Breast Imaging
PublisherSPIE
Pages153-159
Number of pages7
Volume12286
DOIs
Publication statusPublished - 13 Jul 2022
Event16th International Workshop on Breast Imaging - Leuven, Belgium
Duration: 22 May 202225 May 2022

Conference

Conference16th International Workshop on Breast Imaging
Abbreviated titleIWBI2022
Country/TerritoryBelgium
CityLeuven
Period22 May 202225 May 2022

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