Joint Application of Magnetic Resonance Imaging and Biochemical Biomarkers in Diagnosis of Multiple Sclerosis

Author(s): Fatemeh Momeni, Amir B. Ghaemmaghami, Majid Nejati, Mohammad Hossein Pourhanifeh, Laleh Shiri Sichani, Omid Reza Tamtaji, Mohammad Momeni, Alireza Khosravi*, Masoud Etemadifar*, Hamed Mirzaei*

Journal Name: Current Medicinal Chemistry

Volume 27 , Issue 39 , 2020


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Abstract:

Multiple Sclerosis (MS), an autoimmune disorder associated with spinal cord and brain, chiefly affects the white matter. Regarding the complexity as well as heterogenic etiology of this disease, the treatment of MS has been a challenging issue up to now. Researchers are working to develop new therapeutic strategies and drugs as complementary therapies. MS diagnosis significantly depends on the findings of Magnetic Resonance Imaging (MRI) examination. In this imaging technique, gadolinium is used as a contrast agent to reveal active plaques intending to destroy the bloodbrain barrier. It also detects plaques that are not correlated with the neurological symptoms. It has been attempted to determine biomarkers related to different dimensions of MS in various organizational hierarchy levels of the human anatomy (i.e., cells, proteins, RNA, and DNA). These biomarkers are appropriate diagnostic tools for MS diagnosis. In this review, we summarized the application of MRI and biochemical biomarkers to monitor MS patients. Moreover, we highlighted the joint application of MRI and biomarkers for the diagnosis of MS subjects.

Keywords: Multiple sclerosis, magnetic resonance imaging, biomarker, autoimmune disorder, RNA, DNA.

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VOLUME: 27
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Year: 2020
Published on: 14 October, 2019
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