Automated Detection of Multiple Sclerosis Lesions Using Texture-based Features and a Hybrid Classifier

Background: Multiple Sclerosis (MS) is the most frequent non-traumatic neurological disease capable of causing disability in young adults. Detection of MS lesions with magnetic resonance imaging (MRI) is the most common technique. However, manual interpretation of vast amounts of data is often tedio...

Full description

Bibliographic Details
Main Author: Somayeh Raiesdana
Format: Article
Language:English
Published: Guilan University of Medical Sciences 2020-03-01
Series:Caspian Journal of Neurological Sciences
Subjects:
Online Access:http://cjns.gums.ac.ir/article-1-303-en.html
id doaj-da1f49c27ac04cb09f29dbc3fa75df65
record_format Article
spelling doaj-da1f49c27ac04cb09f29dbc3fa75df652020-11-25T02:32:06ZengGuilan University of Medical SciencesCaspian Journal of Neurological Sciences2423-48182020-03-01611630Automated Detection of Multiple Sclerosis Lesions Using Texture-based Features and a Hybrid ClassifierSomayeh Raiesdana0 Faculty of Electrical, Biomedical, and Mechatronics Engineering, Qazvin Branch, Islamic Azad University, Qazvin, Iran Background: Multiple Sclerosis (MS) is the most frequent non-traumatic neurological disease capable of causing disability in young adults. Detection of MS lesions with magnetic resonance imaging (MRI) is the most common technique. However, manual interpretation of vast amounts of data is often tedious and error-prone. Furthermore, changes in lesions are often subtle and extremely unrepresentative. Objectives: To develop an automated non-subjective method for the detection and quantification of MS lesions. Materials & Methods: This paper focuses on the automatic detection and classification of MS lesions in brain MRI images. Two datasets, one simulated and the other one recorded in hospital, are utilized in this work. A novel hybrid algorithm combining image processing and machine learning techniques is implemented. To this end, first, intricate morphological patterns are extracted from MRI images via texture analysis. Then, statistical textures-based features are extracted. Afterward, two supervised machine learning algorithms, i.e., the Hidden Markov Model (HMM) and Adaptive Neuro-Fuzzy Inference System (ANFIS) are employed within a hybrid platform. The hybrid system makes decisions based on ensemble learning. The stacking technique is used to apply predictions from both models o train a perceptron as a decisive model. Results: Experimental results on both datasets indicate that the proposed hybrid method outperforms HMM and ANFIS classifiers with reducing false positives. Furthermore, the performance of the proposed method compared with the state-of-the-art methods, was approved. Conclusion: Remarkable results of the proposed method motivate advanced detection systems employing other MRI sequences and their combination.http://cjns.gums.ac.ir/article-1-303-en.htmlmultiple sclerosismagnetic resonance imaging
collection DOAJ
language English
format Article
sources DOAJ
author Somayeh Raiesdana
spellingShingle Somayeh Raiesdana
Automated Detection of Multiple Sclerosis Lesions Using Texture-based Features and a Hybrid Classifier
Caspian Journal of Neurological Sciences
multiple sclerosis
magnetic resonance imaging
author_facet Somayeh Raiesdana
author_sort Somayeh Raiesdana
title Automated Detection of Multiple Sclerosis Lesions Using Texture-based Features and a Hybrid Classifier
title_short Automated Detection of Multiple Sclerosis Lesions Using Texture-based Features and a Hybrid Classifier
title_full Automated Detection of Multiple Sclerosis Lesions Using Texture-based Features and a Hybrid Classifier
title_fullStr Automated Detection of Multiple Sclerosis Lesions Using Texture-based Features and a Hybrid Classifier
title_full_unstemmed Automated Detection of Multiple Sclerosis Lesions Using Texture-based Features and a Hybrid Classifier
title_sort automated detection of multiple sclerosis lesions using texture-based features and a hybrid classifier
publisher Guilan University of Medical Sciences
series Caspian Journal of Neurological Sciences
issn 2423-4818
publishDate 2020-03-01
description Background: Multiple Sclerosis (MS) is the most frequent non-traumatic neurological disease capable of causing disability in young adults. Detection of MS lesions with magnetic resonance imaging (MRI) is the most common technique. However, manual interpretation of vast amounts of data is often tedious and error-prone. Furthermore, changes in lesions are often subtle and extremely unrepresentative. Objectives: To develop an automated non-subjective method for the detection and quantification of MS lesions. Materials & Methods: This paper focuses on the automatic detection and classification of MS lesions in brain MRI images. Two datasets, one simulated and the other one recorded in hospital, are utilized in this work. A novel hybrid algorithm combining image processing and machine learning techniques is implemented. To this end, first, intricate morphological patterns are extracted from MRI images via texture analysis. Then, statistical textures-based features are extracted. Afterward, two supervised machine learning algorithms, i.e., the Hidden Markov Model (HMM) and Adaptive Neuro-Fuzzy Inference System (ANFIS) are employed within a hybrid platform. The hybrid system makes decisions based on ensemble learning. The stacking technique is used to apply predictions from both models o train a perceptron as a decisive model. Results: Experimental results on both datasets indicate that the proposed hybrid method outperforms HMM and ANFIS classifiers with reducing false positives. Furthermore, the performance of the proposed method compared with the state-of-the-art methods, was approved. Conclusion: Remarkable results of the proposed method motivate advanced detection systems employing other MRI sequences and their combination.
topic multiple sclerosis
magnetic resonance imaging
url http://cjns.gums.ac.ir/article-1-303-en.html
work_keys_str_mv AT somayehraiesdana automateddetectionofmultiplesclerosislesionsusingtexturebasedfeaturesandahybridclassifier
_version_ 1724821488256679936