Hernan Inojosa, Isabel Voigt, Judith Wenk, Dyke Ferber, Isabella Wiest, Dario Antweiler, Eva Weicken, Stephen Gilbert, Jakob Nikolas Kather, Katja Akgün, Tjalf Ziemssen
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引用次数: 0
Abstract
Use of techniques derived from generative artificial intelligence (AI), specifically large language models (LLMs), offer a transformative potential on the management of multiple sclerosis (MS). Recent LLMs have exhibited remarkable skills in producing and understanding human-like texts. The integration of AI in imaging applications and the deployment of foundation models for the classification and prognosis of disease course, including disability progression and even therapy response, have received considerable attention. However, the use of LLMs within the context of MS remains relatively underexplored. LLMs have the potential to support several activities related to MS management. Clinical decision support systems could help selecting proper disease-modifying therapies; AI-based tools could leverage unstructured real-world data for research or virtual tutors may provide adaptive education materials for neurologists and people with MS in the foreseeable future. In this focused review, we explore practical applications of LLMs across the continuum of MS management as an initial scope for future analyses, reflecting on regulatory hurdles and the indispensable role of human supervision.
期刊介绍:
Multiple Sclerosis Journal is a peer-reviewed international journal that focuses on all aspects of multiple sclerosis, neuromyelitis optica and other related autoimmune diseases of the central nervous system.
The journal for your research in the following areas:
* __Biologic basis:__ pathology, myelin biology, pathophysiology of the blood/brain barrier, axo-glial pathobiology, remyelination, virology and microbiome, immunology, proteomics
* __Epidemology and genetics:__ genetics epigenetics, epidemiology
* __Clinical and Neuroimaging:__ clinical neurology, biomarkers, neuroimaging and clinical outcome measures
* __Therapeutics and rehabilitation:__ therapeutics, rehabilitation, psychology, neuroplasticity, neuroprotection, and systematic management
Print ISSN: 1352-4585