Title
Unsupervised Tissue Classification Of Brain Mr Images For Voxel-Based Morphometry Analysis
Abstract
In this article, a fully unsupervised method for brain tissue segmentation of T1-weighted MRI 3D volumes is proposed. The method uses the Fuzzy C-Means (FCM) clustering algorithm and a Fully Connected Cascade Neural Network (FCCNN) classifier. Traditional manual segmentation methods require neuro-radiological expertise and significant time while semiautomatic methods depend on parameter's setup and trial-and-error methodologies that may lead to high intraoperator/interoperator variability. The proposed method selects the most useful MRI data according to FCM fuzziness values and trains the FCCNN to learn to classify brain' tissues into White Matter, Gray Matter, and Cerebro-Spinal Fluid in an unsupervised way. The method has been tested on the IBSR dataset, on the BrainWeb Phantom, on the BrainWeb SBD dataset, and on the real dataset University of Palermo Policlinico Hospital (UPPH), Italy. Sensitivity, Specificity, Dice and F-Factor scores have been calculated on the IBSR and BrainWeb datasets segmented using the proposed method, the FCM algorithm, and two state-of-the-art brain segmentation software packages (FSL and SPM) to prove the effectiveness of the proposed approach. A qualitative evaluation involving a group of five expert radiologists has been performed segmenting the real dataset using the proposed approach and the comparison algorithms. Finally, a usability analysis on the proposed method and reference methods has been carried out from the same group of expert radiologists. The achieved results show that the segmentations of the proposed method are comparable or better than the reference methods with a better usability and degree of acceptance.
Year
DOI
Venue
2016
10.1002/ima.22168
INTERNATIONAL JOURNAL OF IMAGING SYSTEMS AND TECHNOLOGY
Keywords
Field
DocType
voxel-based morphometry, brain images segmentation, unsupervised tissues classification, fuzzy clustering, neural networks
Brain segmentation,Data mining,Fuzzy clustering,Computer science,Segmentation,Usability,Imaging phantom,Classifier (linguistics),Cluster analysis,Artificial neural network
Journal
Volume
Issue
ISSN
26
2
0899-9457
Citations 
PageRank 
References 
2
0.40
7
Authors
4
Name
Order
Citations
PageRank
Luca Agnello140.79
Albert Comelli284.95
Edoardo Ardizzone323940.79
Salvatore Vitabile444460.03