Improving Classification Performance of Spatial Filters in Mammographic Microcalcifications Images Using Persistent Homology

Noise and artefacts in mammogram images can obscure important indicators of microcalcifications, complicating accurate diagnosis. While traditional spatial filters can reduce noise and are effective to some extent, they often fail to enhance features crucial for classification. This study uses persi...

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Published in:Malaysian Journal of Fundamental and Applied Sciences
Main Author: Malek A.A.; Alias M.A.; Razak F.A.; Norani M.S.M.
Format: Article
Language:English
Published: Penerbit UTM Press 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85212403701&doi=10.11113%2fmjfas.v20n6.3714&partnerID=40&md5=0e7243b4065c392750caa5468f4d394b
id 2-s2.0-85212403701
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Malek A.A.; Alias M.A.; Razak F.A.; Norani M.S.M.
Improving Classification Performance of Spatial Filters in Mammographic Microcalcifications Images Using Persistent Homology
2024
Malaysian Journal of Fundamental and Applied Sciences
20
6
10.11113/mjfas.v20n6.3714
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85212403701&doi=10.11113%2fmjfas.v20n6.3714&partnerID=40&md5=0e7243b4065c392750caa5468f4d394b
Noise and artefacts in mammogram images can obscure important indicators of microcalcifications, complicating accurate diagnosis. While traditional spatial filters can reduce noise and are effective to some extent, they often fail to enhance features crucial for classification. This study uses persistent homology (PH) to evaluate and improve the classification performance of various spatial filters on mammogram images. The evaluation process involves converting filtered images into persistence diagrams (PDs) to capture topological features. These diagrams are then vectorised into PH features for classification using a neural network classifier. This study also examines further filtering of PDs from filtered images to enhance classification performance. Using the Digital Database for Screening Mammography (DDSM) and Mammographic Image Analysis Society (MIAS) datasets, we evaluate Median, Wiener, Gaussian, and Bilateral filters alone and integrate them with PH-based filtering. Results show significant classification improvements, with Wiener filters achieving 96.33% accuracy on the DDSM dataset (up from 57.38%) and Gaussian filters reaching 85.33% on the MIAS dataset (up from 73.33%). These findings demonstrate the potential of PH-based filters to enhance diagnostic accuracy in breast cancer detection by refining topological features and effectively reducing noise. ©Copyright Abdul Malek.
Penerbit UTM Press
2289599X
English
Article

author Malek A.A.; Alias M.A.; Razak F.A.; Norani M.S.M.
spellingShingle Malek A.A.; Alias M.A.; Razak F.A.; Norani M.S.M.
Improving Classification Performance of Spatial Filters in Mammographic Microcalcifications Images Using Persistent Homology
author_facet Malek A.A.; Alias M.A.; Razak F.A.; Norani M.S.M.
author_sort Malek A.A.; Alias M.A.; Razak F.A.; Norani M.S.M.
title Improving Classification Performance of Spatial Filters in Mammographic Microcalcifications Images Using Persistent Homology
title_short Improving Classification Performance of Spatial Filters in Mammographic Microcalcifications Images Using Persistent Homology
title_full Improving Classification Performance of Spatial Filters in Mammographic Microcalcifications Images Using Persistent Homology
title_fullStr Improving Classification Performance of Spatial Filters in Mammographic Microcalcifications Images Using Persistent Homology
title_full_unstemmed Improving Classification Performance of Spatial Filters in Mammographic Microcalcifications Images Using Persistent Homology
title_sort Improving Classification Performance of Spatial Filters in Mammographic Microcalcifications Images Using Persistent Homology
publishDate 2024
container_title Malaysian Journal of Fundamental and Applied Sciences
container_volume 20
container_issue 6
doi_str_mv 10.11113/mjfas.v20n6.3714
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85212403701&doi=10.11113%2fmjfas.v20n6.3714&partnerID=40&md5=0e7243b4065c392750caa5468f4d394b
description Noise and artefacts in mammogram images can obscure important indicators of microcalcifications, complicating accurate diagnosis. While traditional spatial filters can reduce noise and are effective to some extent, they often fail to enhance features crucial for classification. This study uses persistent homology (PH) to evaluate and improve the classification performance of various spatial filters on mammogram images. The evaluation process involves converting filtered images into persistence diagrams (PDs) to capture topological features. These diagrams are then vectorised into PH features for classification using a neural network classifier. This study also examines further filtering of PDs from filtered images to enhance classification performance. Using the Digital Database for Screening Mammography (DDSM) and Mammographic Image Analysis Society (MIAS) datasets, we evaluate Median, Wiener, Gaussian, and Bilateral filters alone and integrate them with PH-based filtering. Results show significant classification improvements, with Wiener filters achieving 96.33% accuracy on the DDSM dataset (up from 57.38%) and Gaussian filters reaching 85.33% on the MIAS dataset (up from 73.33%). These findings demonstrate the potential of PH-based filters to enhance diagnostic accuracy in breast cancer detection by refining topological features and effectively reducing noise. ©Copyright Abdul Malek.
publisher Penerbit UTM Press
issn 2289599X
language English
format Article
accesstype
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