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Differentiation of relapsing-remitting and secondary progressive multiple sclerosis: a magnetic resonance spectroscopy study based on machine learning. | LitMetric

AI Article Synopsis

  • MRI is crucial for diagnosing and monitoring multiple sclerosis (MS), but distinguishing between its forms, especially RRMS and SPMS, remains challenging.
  • The study utilized MR spectroscopy and machine learning to automatically classify participants into healthy controls, RRMS, and SPMS, focusing on the metabolite N-acetylaspartate (NAA) for differentiation.
  • Results showed high accuracy in classifying RRMS from healthy controls (85%) and between RRMS and SPMS (83.33%), suggesting that combining MRS with machine learning could enhance MS diagnosis.

Article Abstract

Introduction: Magnetic resonance imaging (MRI) is the most important tool for diagnosis and follow-up in multiple sclerosis (MS). The discrimination of relapsing-remitting MS (RRMS) from secondary progressive MS (SPMS) is clinically difficult, and developing the proposal presented in this study would contribute to the process.

Objective: This study aimed to ensure the automatic classification of healthy controls, RRMS, and SPMS by using MR spectroscopy and machine learning methods.

Methods: MR spectroscopy (MRS) was performed on a total of 91 participants, distributed into healthy controls (n=30), RRMS (n=36), and SPMS (n=25). Firstly, MRS metabolites were identified using signal processing techniques. Secondly, feature extraction was performed based on MRS Spectra. N-acetylaspartate (NAA) was the most significant metabolite in differentiating MS types. Lastly, binary classifications (healthy controls-RRMS and RRMS-SPMS) were carried out according to features obtained by the Support Vector Machine algorithm.

Results: RRMS cases were differentiated from healthy controls with 85% accuracy, 90.91% sensitivity, and 77.78% specificity. RRMS and SPMS were classified with 83.33% accuracy, 81.81% sensitivity, and 85.71% specificity.

Conclusions: A combined analysis of MRS and computer-aided diagnosis may be useful as a complementary imaging technique to determine MS types.

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Source
http://dx.doi.org/10.1590/0004-282X20200094DOI Listing

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