An improved bone age assessment using advanced image processing and deep learning approach / Liang Kim Meng

Pediatricians often apply bone age assessment to measure the skeletal maturity of children and to predict the future height. These discrepancies are good indicators for diagnosing growth disorders. Normally, left hand skeletal is employed in this assessment. The low quality of ossification sites of...

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Main Author: Liang , Kim Meng
Format: Thesis
Published: 2020
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spelling my.um.stud.123602023-01-08T22:36:43Z An improved bone age assessment using advanced image processing and deep learning approach / Liang Kim Meng Liang , Kim Meng TA Engineering (General). Civil engineering (General) Pediatricians often apply bone age assessment to measure the skeletal maturity of children and to predict the future height. These discrepancies are good indicators for diagnosing growth disorders. Normally, left hand skeletal is employed in this assessment. The low quality of ossification sites of carpals deteriorates the pediatrician’s visibility in inspecting the pertinent radiographic manifestations. This in turn affects the bone age assessment. Therefore, we have to enhance the quality before assessing them. Histogram equalization is one of the contrast enhancement techniques that suit this type of enhancement. Existing histogram equalizations, however, are confronting with problems in preserving the brightness and details as well as preventing the contrast from being over-enhanced or under-enhanced simultaneously. The comprehensive histogram equalization was proposed by considering all criteria of the desired histogram-equalized image to produce moderately contrast enhanced carpals’ ossification sites. Qualitative results show that the determining features of maturity stages have been emphasized in some of the Pareto optimized image. The improvement for Pareto optimized image by bi-histogram equalization is significant for five stages from stage D to stage H with improvement accuracy of 7.16%, 12.47%, 16.03%, 21.21% and 18.51%, respectively. Findings concluded that the Pareto optimized images able to improve the classifier accuracy that estimate the maturity stage of the carpal bones. 2020-07 Thesis NonPeerReviewed application/pdf http://studentsrepo.um.edu.my/12360/3/Liang_Kim_Meng.pdf application/pdf http://studentsrepo.um.edu.my/12360/2/Liang_Kim_Meng.pdf Liang , Kim Meng (2020) An improved bone age assessment using advanced image processing and deep learning approach / Liang Kim Meng. PhD thesis, Universiti Malaya. http://studentsrepo.um.edu.my/12360/
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Student Repository
url_provider http://studentsrepo.um.edu.my/
topic TA Engineering (General). Civil engineering (General)
spellingShingle TA Engineering (General). Civil engineering (General)
Liang , Kim Meng
An improved bone age assessment using advanced image processing and deep learning approach / Liang Kim Meng
description Pediatricians often apply bone age assessment to measure the skeletal maturity of children and to predict the future height. These discrepancies are good indicators for diagnosing growth disorders. Normally, left hand skeletal is employed in this assessment. The low quality of ossification sites of carpals deteriorates the pediatrician’s visibility in inspecting the pertinent radiographic manifestations. This in turn affects the bone age assessment. Therefore, we have to enhance the quality before assessing them. Histogram equalization is one of the contrast enhancement techniques that suit this type of enhancement. Existing histogram equalizations, however, are confronting with problems in preserving the brightness and details as well as preventing the contrast from being over-enhanced or under-enhanced simultaneously. The comprehensive histogram equalization was proposed by considering all criteria of the desired histogram-equalized image to produce moderately contrast enhanced carpals’ ossification sites. Qualitative results show that the determining features of maturity stages have been emphasized in some of the Pareto optimized image. The improvement for Pareto optimized image by bi-histogram equalization is significant for five stages from stage D to stage H with improvement accuracy of 7.16%, 12.47%, 16.03%, 21.21% and 18.51%, respectively. Findings concluded that the Pareto optimized images able to improve the classifier accuracy that estimate the maturity stage of the carpal bones.
format Thesis
author Liang , Kim Meng
author_facet Liang , Kim Meng
author_sort Liang , Kim Meng
title An improved bone age assessment using advanced image processing and deep learning approach / Liang Kim Meng
title_short An improved bone age assessment using advanced image processing and deep learning approach / Liang Kim Meng
title_full An improved bone age assessment using advanced image processing and deep learning approach / Liang Kim Meng
title_fullStr An improved bone age assessment using advanced image processing and deep learning approach / Liang Kim Meng
title_full_unstemmed An improved bone age assessment using advanced image processing and deep learning approach / Liang Kim Meng
title_sort improved bone age assessment using advanced image processing and deep learning approach / liang kim meng
publishDate 2020
url http://studentsrepo.um.edu.my/12360/3/Liang_Kim_Meng.pdf
http://studentsrepo.um.edu.my/12360/2/Liang_Kim_Meng.pdf
http://studentsrepo.um.edu.my/12360/
_version_ 1755872831965495296
score 13.160551