Axons wrapped around the myelin sheath enable fast transmission of neuronal signals in the Central Nervous System (CNS). Unfortunately, myelin can be damaged by injury, viral infection, and inflammatory and neurodegenerative diseases. Remyelination is a spontaneous process that can restore nerve conductivity and thus movement and cognition after a demyelination event. Cumulative evidence indicates that remyelination can be pharmacologically stimulated, either by targeting natural inhibitors of Oligodendrocyte Precursor Cells (OPCs) differentiation or by reactivating quiescent Neural Stem Cells (qNSCs) proliferation and differentiation in myelinating Oligodendrocytes (OLs). Although promising results were obtained in animal models for demyelination diseases, none of the compounds identified have passed all the clinical stages. The significant number of patients who could benefit from remyelination therapies reinforces the urgent need to reassess drug selection approaches and develop strategies that effectively promote remyelination. Integrating Artificial Intelligence (AI)-driven technologies with patient-derived cell-based assays and organoid models is expected to lead to novel strategies and drug screening pipelines to achieve this goal. In this review, we explore the current literature on these technologies and their potential to enhance the identification of more effective drugs for clinical use in CNS remyelination therapies.

AL JAF, A., Peria, S., Fabiano, T., Ragnini, A. (2024). Remyelinating Drugs at a Crossroad: How to Improve Clinical Efficacy and Drug Screenings. CELLS, 13(16) [10.3390/cells13161326].

Remyelinating Drugs at a Crossroad: How to Improve Clinical Efficacy and Drug Screenings

Aland Ibrahim Ahmed Al Jaf;Tommaso Fabiano;Antonella Ragnini
2024-01-01

Abstract

Axons wrapped around the myelin sheath enable fast transmission of neuronal signals in the Central Nervous System (CNS). Unfortunately, myelin can be damaged by injury, viral infection, and inflammatory and neurodegenerative diseases. Remyelination is a spontaneous process that can restore nerve conductivity and thus movement and cognition after a demyelination event. Cumulative evidence indicates that remyelination can be pharmacologically stimulated, either by targeting natural inhibitors of Oligodendrocyte Precursor Cells (OPCs) differentiation or by reactivating quiescent Neural Stem Cells (qNSCs) proliferation and differentiation in myelinating Oligodendrocytes (OLs). Although promising results were obtained in animal models for demyelination diseases, none of the compounds identified have passed all the clinical stages. The significant number of patients who could benefit from remyelination therapies reinforces the urgent need to reassess drug selection approaches and develop strategies that effectively promote remyelination. Integrating Artificial Intelligence (AI)-driven technologies with patient-derived cell-based assays and organoid models is expected to lead to novel strategies and drug screening pipelines to achieve this goal. In this review, we explore the current literature on these technologies and their potential to enhance the identification of more effective drugs for clinical use in CNS remyelination therapies.
2024
Pubblicato
Rilevanza internazionale
Review
Esperti non anonimi
Settore BIO/10
Settore BIOS-09/A - Biochimica clinica e biologia molecolare clinica
English
Con Impact Factor ISI
artificial Intelligence
central nervous system
drug discovery
iPSCs
multiple sclerosis
myelin
neurodegeneration
oligodendrocytes
organoids
remyelination
AL JAF, A., Peria, S., Fabiano, T., Ragnini, A. (2024). Remyelinating Drugs at a Crossroad: How to Improve Clinical Efficacy and Drug Screenings. CELLS, 13(16) [10.3390/cells13161326].
AL JAF, Aia; Peria, S; Fabiano, T; Ragnini, A
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/396782
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