» Articles » PMID: 35966247

Application of Clustering-Based Analysis in MRI Brain Tissue Segmentation

Overview
Publisher Hindawi
Date 2022 Aug 15
PMID 35966247
Authors
Affiliations
Soon will be listed here.
Abstract

The segmentation of brain tissue by MRI not only contributes to the study of the function and anatomical structure of the brain, but it also offers a theoretical foundation for the diagnosis and treatment of brain illnesses. When discussing the anatomy of the brain in a clinical setting, the terms "white matter," "gray matter," and "cerebrospinal fluid" are the ones most frequently used (CSF). However, due to the fact that the human brain is highly complicated in its structure and that there are many different types of brain tissues, the human brain structure of each individual has its own set of distinctive qualities. Because of these several circumstances, the process of segmenting brain tissue will be challenging. In this article, several different clustering algorithms will be discussed, and their performance and effects will be compared to one another. The goal of this comparison is to determine which algorithm is most suited for segmenting MRI brain tissue. Based on the clustering method, the primary emphasis of this research is placed on the segmentation approach that is appropriate for medical brain imaging. The qualitative and quantitative findings of the experiment reveal that the FCM algorithm has more steady performance and better universality, but it is necessary to include the additional auxiliary conditions in order to achieve more ideal outcomes.

Citing Articles

Conditional spatial biased intuitionistic clustering technique for brain MRI image segmentation.

Arora J, Altuwaijri G, Nauman A, Tushir M, Sharma T, Gupta D Front Comput Neurosci. 2024; 18:1425008.

PMID: 39006238 PMC: 11240844. DOI: 10.3389/fncom.2024.1425008.


Clustering Functional Magnetic Resonance Imaging Time Series in Glioblastoma Characterization: A Review of the Evolution, Applications, and Potentials.

De Simone M, Iaconetta G, Palermo G, Fiorindi A, Schaller K, De Maria L Brain Sci. 2024; 14(3).

PMID: 38539683 PMC: 10968478. DOI: 10.3390/brainsci14030296.


Comparative Analysis of the Performance of Complex Texture Clustering Driven by Computational Intelligence Methods Using Multiple Clustering Models.

Zhou J, Wang D, Ling L, Li M, Lai K Comput Intell Neurosci. 2022; 2022:8449491.

PMID: 36210982 PMC: 9536955. DOI: 10.1155/2022/8449491.


Comparison and Analysis of Several Clustering Algorithms for Pavement Crack Segmentation Guided by Computational Intelligence.

Wang D, Zhang Z, Zhou J, Zhang B, Li M Comput Intell Neurosci. 2022; 2022:8965842.

PMID: 36097558 PMC: 9464106. DOI: 10.1155/2022/8965842.

References
1.
Choi U, Kawaguchi H, Matsuoka Y, Kober T, Kida I . Brain tissue segmentation based on MP2RAGE multi-contrast images in 7 T MRI. PLoS One. 2019; 14(2):e0210803. PMC: 6394968. DOI: 10.1371/journal.pone.0210803. View

2.
Irmakci I, Hussein S, Savran A, Kalyani R, Reiter D, Chia C . A Novel Extension to Fuzzy Connectivity for Body Composition Analysis: Applications in Thigh, Brain, and Whole Body Tissue Segmentation. IEEE Trans Biomed Eng. 2018; 66(4):1069-1081. PMC: 6511985. DOI: 10.1109/TBME.2018.2866764. View

3.
Wang Y, Adaly T, Kung S, Szabo Z . Quantification and Segmentation of Brain Tissues from MR Images: A Probabilistic Neural Network Approach. IEEE Trans Image Process. 2008; 7(8):1165-1181. PMC: 2171050. DOI: 10.1109/83.704309. View

4.
Mishro P, Agrawal S, Panda R, Abraham A . A Novel Type-2 Fuzzy C-Means Clustering for Brain MR Image Segmentation. IEEE Trans Cybern. 2020; 51(8):3901-3912. DOI: 10.1109/TCYB.2020.2994235. View

5.
Somasundaram K, Kalavathi P . Contour-based brain segmentation method for magnetic resonance imaging human head scans. J Comput Assist Tomogr. 2013; 37(3):353-68. DOI: 10.1097/RCT.0b013e3182888256. View