Investigating the feasibility of differentiating MS active lesions from inactive ones using texture analysis and machine learning methods in DWI images

(2024) Investigating the feasibility of differentiating MS active lesions from inactive ones using texture analysis and machine learning methods in DWI images. Multiple Sclerosis and Related Disorders. p. 105363. ISSN 2211-0356 (Electronic) 2211-0348 (Linking)

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Abstract

BACKGROUND: Magnetic resonance imaging (MRI) is commonly used in conjunction with a gadolinium-based contrast agent (GBCA) to distinguish active multiple sclerosis (MS) lesions. However, recent studies have raised concerns regarding the long-term effects of the accumulation of GBCA in the body. Thus, the purpose of this study is to investigate the possibility of using texture analysis in diffusion-weighted imaging (DWI) and machine learning algorithms to discriminate active from inactive MS lesions without the use of GBCA. METHODS: To achieve this purpose, we introduce an image processing pipeline. In the proposed pipeline, following registration and alignment of slices, MS lesions from DWI images are segmented and quantized. Next, different texture analysis methods are employed to extract texture features from the lesions. Then, a two-stage feature reduction method is applied, in which the first stage involves a statistical t-test and the second stage relies on principal component analysis (PCA), sequential forward selection (SFS), sequential backward selection (SBS), and ReliefF algorithms. Finally, we use five classifiers logistic regression (LR), support vector machine (SVM), decision tree (DT), K nearest neighbor (KNN), and linear discriminant analysis (LDA) in a 5-fold cross-validation procedure to determine active and inactive MS lesions. RESULTS: In this study, we collected and prepared 255 active/inactive MS lesions from MRI scans of 34 patients diagnosed with MS, with a mean age of 35.56+/-10.89. Among 89 texture features extracted, 63 features showed statistically significant differences between the means of active and inactive lesions (P<0.05). The SVM classifier with the PCA feature reduction algorithm demonstrated the best performance with an average accuracy of 0.960 (+/-0.024), specificity and precision of 1.0, sensitivity of 0.913 (+/-0.053), and AUC of 0.957 (+/-0.027). CONCLUSION: Our study indicates that DWI changes detected using texture analysis-based machine learning models can precisely differentiate active from inactive MS lesions. This finding provides valuable clinical information for the early diagnosis and effective monitoring of MS disease.

Item Type: Article
Keywords: Humans Young Adult Adult Middle Aged Feasibility Studies *Diffusion Magnetic Resonance Imaging Magnetic Resonance Imaging/methods *Multiple Sclerosis/diagnostic imaging Machine Learning Active lesion Multiple sclerosis Texture analysis
Page Range: p. 105363
Journal or Publication Title: Multiple Sclerosis and Related Disorders
Journal Index: Pubmed
Volume: 82
Identification Number: https://doi.org/10.1016/j.msard.2023.105363
ISSN: 2211-0356 (Electronic) 2211-0348 (Linking)
Depositing User: خانم ناهید ضیائی
URI: http://eprints.mui.ac.ir/id/eprint/30331

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