MRI for the diagnosis of limb girdle muscular dystrophies.

IF 4.1 2区 医学 Q1 CLINICAL NEUROLOGY Current Opinion in Neurology Pub Date : 2024-10-01 Epub Date: 2024-08-12 DOI:10.1097/WCO.0000000000001305
Carla Bolano-Díaz, José Verdú-Díaz, Jordi Díaz-Manera
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Abstract

Purpose of review: In the last 30 years, there have many publications describing the pattern of muscle involvement of different neuromuscular diseases leading to an increase in the information available for diagnosis. A high degree of expertise is needed to remember all the patterns described. Some attempts to use artificial intelligence or analysing muscle MRIs have been developed. We review the main patterns of involvement in limb girdle muscular dystrophies (LGMDs) and summarize the strategies for using artificial intelligence tools in this field.

Recent findings: The most frequent LGMDs have a widely described pattern of muscle involvement; however, for those rarer diseases, there is still not too much information available. patients. Most of the articles still include only pelvic and lower limbs muscles, which provide an incomplete picture of the diseases. AI tools have efficiently demonstrated to predict diagnosis of a limited number of disease with high accuracy.

Summary: Muscle MRI continues being a useful tool supporting the diagnosis of patients with LGMD and other neuromuscular diseases. However, the huge variety of patterns described makes their use in clinics a complicated task. Artificial intelligence tools are helping in that regard and there are already some accessible machine learning algorithms that can be used by the global medical community.

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磁共振成像用于诊断肢腰肌营养不良症。
综述的目的:在过去的 30 年中,有许多出版物描述了不同神经肌肉疾病的肌肉受累模式,从而增加了可用于诊断的信息。要记住所有描述的模式需要高度的专业知识。已经有人尝试使用人工智能或对肌肉核磁共振成像进行分析。我们回顾了肢腰肌营养不良症(LGMDs)的主要受累模式,并总结了在这一领域使用人工智能工具的策略:最近的发现:最常见的肢腰肌营养不良症都有广泛的肌肉受累模式描述;然而,对于那些罕见的疾病,可获得的信息仍然不多。大多数文章仍然只涉及骨盆和下肢肌肉,对疾病的描述不够全面。摘要:肌肉 MRI 仍然是辅助诊断 LGMD 和其他神经肌肉疾病患者的有用工具。然而,由于所描述的模式种类繁多,因此在临床中使用它们是一项复杂的任务。人工智能工具正在这方面提供帮助,目前已有一些可供全球医学界使用的机器学习算法。
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来源期刊
Current Opinion in Neurology
Current Opinion in Neurology 医学-临床神经学
CiteScore
8.60
自引率
0.00%
发文量
174
审稿时长
6-12 weeks
期刊介绍: ​​​​​​​​Current Opinion in Neurology is a highly regarded journal offering insightful editorials and on-the-mark invited reviews; covering key subjects such as cerebrovascular disease, developmental disorders, neuroimaging and demyelinating diseases. Published bimonthly, each issue of Current Opinion in Neurology introduces world renowned guest editors and internationally recognized academics within the neurology field, delivering a widespread selection of expert assessments on the latest developments from the most recent literature.
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