Selective segmentation of brain abnormalities in colour MRI images using variational model / Akmal Shafiq Badarul Azam ... [et al.]

Badarul Azam, Akmal Shafiq and Jumaat, Abdul Kadir and Ibrahim, Shafaf and Azman, Nor Farihah and Zamalik, Sarah Farhana and Zakariah, Muhammad Zulkhairi (2024) Selective segmentation of brain abnormalities in colour MRI images using variational model / Akmal Shafiq Badarul Azam ... [et al.]. ESTEEM Academic Journal, 20. pp. 117-134. ISSN 2289-4934

Abstract

Early detection of brain abnormalities is vital for enhancing patient outcomes and survival rates. However, accurately identifying and segmenting these abnormalities from MRI images remains a persistent challenge. This study assesses the efficacy of the Selective Local Image Fitting (SLIF) model in segmenting brain abnormalities from colour MRI images and compares its performance with converted greyscale counterparts. The rationale behind this comparison stems from standard practice in image segmentation, where colour images are often converted to greyscale before the segmentation task. Converting the image might degrade data by diminishing its dimensions, potentially affecting segmentation computations. This study intends to evaluate the influence of colour information on segmentation accuracy and efficiency by directly assessing the SLIF model on both colour and converted greyscale images. Segmentation accuracy was evaluated using metrics such as the Dice Similarity Coefficient (DSC), Matthews Correlation Coefficient (MCC), and Intersection-over-Union (IoU). Efficiency was determined by measuring the average elapsed processing time. Experimental results demonstrate that colour MRI brain images outperform their converted greyscale counterparts in segmentation accuracy, as colour providing essential supplementary information for precise abnormality delineation. Despite a slight increase in average elapsed processing time for colour images, the enhanced accuracy justifies this trade-off. These findings emphasize the importance of colour MRI in enhancing diagnostic accuracy, especially in detecting brain abnormalities. This study can be extended in future work to evaluate the segmentation accuracy and efficiency of brain abnormalities in 3D colour and greyscale MRI images.

Metadata

Item Type: Article
Creators:
Creators
Email / ID Num.
Badarul Azam, Akmal Shafiq
UNSPECIFIED
Jumaat, Abdul Kadir
abdulkadir@tmsk.uitm.edu.my
Ibrahim, Shafaf
UNSPECIFIED
Azman, Nor Farihah
UNSPECIFIED
Zamalik, Sarah Farhana
UNSPECIFIED
Zakariah, Muhammad Zulkhairi
UNSPECIFIED
Contributors:
Contribution
Name
Email / ID Num.
Chief Editor
Damanhuri, Nor Salwa
UNSPECIFIED
Subjects: L Education > LG Individual institutions > Asia > Malaysia > Universiti Teknologi MARA > Pulau Pinang
L Education > LG Individual institutions > Asia > Malaysia > Universiti Teknologi MARA
Divisions: Universiti Teknologi MARA, Pulau Pinang > Permatang Pauh Campus
Journal or Publication Title: ESTEEM Academic Journal
UiTM Journal Collections: UiTM Journal > ESTEEM Academic Journal (EAJ)
ISSN: 2289-4934
Volume: 20
Page Range: pp. 117-134
Keywords: Active Contour Model, Brain Abnormalities, Colour MRI, Images, Level Set Model, Selective Variational Segmentation, Local Image Fitting
Date: September 2024
URI: https://ir.uitm.edu.my/id/eprint/105071
Edit Item
Edit Item

Download

[thumbnail of 105071.pdf] Text
105071.pdf

Download (829kB)

ID Number

105071

Indexing

Statistic

Statistic details