New approaches to lesion assessment in multiple sclerosis.

IF 4.1 2区 医学 Q1 CLINICAL NEUROLOGY
Paolo Preziosa, Massimo Filippi, Maria A Rocca
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引用次数: 0

Abstract

Purpose of review: To summarize recent advancements in artificial intelligence-driven lesion segmentation and novel neuroimaging modalities that enhance the identification and characterization of multiple sclerosis (MS) lesions, emphasizing their implications for clinical use and research.

Recent findings: Artificial intelligence, particularly deep learning approaches, are revolutionizing MS lesion assessment and segmentation, improving accuracy, reproducibility, and efficiency. Artificial intelligence-based tools now enable automated detection not only of T2-hyperintense white matter lesions, but also of specific lesion subtypes, including gadolinium-enhancing, central vein sign-positive, paramagnetic rim, cortical, and spinal cord lesions, which hold diagnostic and prognostic value. Novel neuroimaging techniques such as quantitative susceptibility mapping (QSM), χ-separation imaging, and soma and neurite density imaging (SANDI), together with PET, are providing deeper insights into lesion pathology, better disentangling their heterogeneities and clinical relevance.

Summary: Artificial intelligence-powered lesion segmentation tools hold great potential for improving fast, accurate and reproducible lesional assessment in the clinical scenario, thus improving MS diagnosis, monitoring, and treatment response assessment. Emerging neuroimaging modalities may contribute to advance the understanding MS pathophysiology, provide more specific markers of disease progression, and novel potential therapeutic targets.

多发性硬化症病变评估的新方法。
综述目的:总结人工智能驱动的病变分割和新的神经影像学方法的最新进展,这些方法增强了多发性硬化症(MS)病变的识别和表征,强调了它们对临床应用和研究的意义。最近的发现:人工智能,特别是深度学习方法,正在彻底改变MS病变评估和分割,提高准确性、可重复性和效率。基于人工智能的工具现在不仅可以自动检测t2高强度白质病变,还可以自动检测特定的病变亚型,包括钆增强、中央静脉征阳性、顺磁边缘、皮质和脊髓病变,这些都具有诊断和预后价值。新的神经影像学技术,如定量易感性成像(QSM)、χ-分离成像、体细胞和神经突密度成像(SANDI),以及PET,正在为病变病理提供更深入的了解,更好地解开它们的异质性和临床相关性。摘要:人工智能驱动的病变分割工具在提高临床场景中快速、准确和可重复的病变评估方面具有巨大潜力,从而改善MS的诊断、监测和治疗反应评估。新兴的神经影像学模式可能有助于促进对多发性硬化症病理生理学的理解,提供更具体的疾病进展标志物,以及新的潜在治疗靶点。
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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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