Martín-Noguerol Teodoro, Díaz-Angulo Carolina, Luna Antonio, Segovia Fermín, Gómez-Río Manuel, Górriz Juan M
MRI Unit, Radiology Department. HT Medica. Carmelo Torres n°2, 23007 Jaén, Spain.
Department of Radiology, Hospital Covadonga, HT medica, C. Gral. Suárez Valdés 40, 33204 Gijón, Spain.
Eur J Radiol. 2025 Sep;190:112255. doi: 10.1016/j.ejrad.2025.112255. Epub 2025 Jun 18.
Peripheral Nerves (PNs) are traditionally evaluated using US or MRI, allowing radiologists to identify and classify them as normal or pathological based on imaging findings, symptoms, and electrophysiological tests. However, the anatomical complexity of PNs, coupled with their proximity to surrounding structures like vessels and muscles, presents significant challenges. Advanced imaging techniques, including MR-neurography and Diffusion-Weighted Imaging (DWI) neurography, have shown promise but are hindered by steep learning curves, operator dependency, and limited accessibility. Discrepancies between imaging findings and patient symptoms further complicate the evaluation of PNs, particularly in cases where imaging appears normal despite clinical indications of pathology. Additionally, demographic and clinical factors such as age, sex, comorbidities, and physical activity influence PN health but remain unquantifiable with current imaging methods. Artificial Intelligence (AI) solutions have emerged as a transformative tool in PN evaluation. AI-based algorithms offer the potential to transition from qualitative to quantitative assessments, enabling precise segmentation, characterization, and threshold determination to distinguish healthy from pathological nerves. These advances could improve diagnostic accuracy and treatment monitoring. This review highlights the latest advances in AI applications for PN imaging, discussing their potential to overcome the current limitations and opportunities to improve their integration into routine radiological practice.
传统上,外周神经(PNs)通过超声(US)或磁共振成像(MRI)进行评估,这使放射科医生能够根据影像学表现、症状和电生理检查结果来识别外周神经并将其分类为正常或病理性。然而,外周神经的解剖结构复杂,再加上它们与血管和肌肉等周围结构相邻,带来了重大挑战。包括磁共振神经成像和扩散加权成像(DWI)神经成像在内的先进成像技术已显示出前景,但受到学习曲线陡峭、操作人员依赖性和可及性有限的阻碍。影像学表现与患者症状之间的差异进一步使外周神经的评估复杂化,特别是在尽管有病理学临床指征但影像学显示正常的情况下。此外,年龄、性别、合并症和身体活动等人口统计学和临床因素会影响外周神经健康,但目前的成像方法仍无法对其进行量化。人工智能(AI)解决方案已成为外周神经评估中的一种变革性工具。基于AI的算法有潜力从定性评估转变为定量评估,能够进行精确的分割、特征描述和阈值确定,以区分健康神经和病理性神经。这些进展可以提高诊断准确性和治疗监测水平。本综述重点介绍了AI在外周神经成像应用中的最新进展,讨论了其克服当前局限性的潜力以及改善其融入常规放射学实践的机会。