학술논문

A Computer-Aided Type-II Fuzzy Image Processing for Diagnosis of Meniscus Tear
Document Type
Original Paper
Source
Journal of Digital Imaging: The Journal of the Society for Computer Applications in Radiology. December 2016 29(6):677-695
Subject
Expert system
Computer-aided diagnosis (CAD)
Interval type-2 fuzzy set theory
Knee
Meniscus tear
Medical image processing
Language
English
ISSN
0897-1889
1618-727X
Abstract
Meniscal tear is one of the prevalent knee disorders among young athletes and the aging population, and requires correct diagnosis and surgical intervention, if necessary. Not only the errors followed by human intervention but also the obstacles of manual meniscal tear detection highlight the need for automatic detection techniques. This paper presents a type-2 fuzzy expert system for meniscal tear diagnosis using PD magnetic resonance images (MRI). The scheme of the proposed type-2 fuzzy image processing model is composed of three distinct modules: Pre-processing, Segmentation, and Classification. λ-nhancement algorithm is used to perform the pre-processing step. For the segmentation step, first, Interval Type-2 Fuzzy C-Means (IT2FCM) is applied to the images, outputs of which are then employed by Interval Type-2 Possibilistic C-Means (IT2PCM) to perform post-processes. Second stage concludes with re-estimation of “η” value to enhance IT2PCM. Finally, a Perceptron neural network with two hidden layers is used for Classification stage. The results of the proposed type-2 expert system have been compared with a well-known segmentation algorithm, approving the superiority of the proposed system in meniscal tear recognition.