Image-based AI tools in peripheral nerves assessment: Current status and integration strategies - A narrative review.
Authors
Affiliations (6)
Affiliations (6)
- MRI Unit, Radiology Department. HT Medica. Carmelo Torres n°2, 23007 Jaén, Spain. Electronic address: [email protected].
- Department of Radiology, Hospital Covadonga, HT medica, C. Gral. Suárez Valdés 40, 33204 Gijón, Spain. Electronic address: [email protected].
- MRI Unit, Radiology Department. HT Medica. Carmelo Torres n°2, 23007 Jaén, Spain. Electronic address: [email protected].
- Data Science & Computational Intelligence Institute. University of Granada, Avenida de Fuente Nueva, s/n, 18071 Granada, Spain.
- Department of Nuclear Medicine, Virgen de las Nieves University Hospital, Av. de las Fuerzas Armadas, 2, 18014 Granada, Spain; IBS Granada Bio-Health Research Institute, Av. de Madrid, 15, 18012 Granada, Spain. Electronic address: [email protected].
- Data Science & Computational Intelligence Institute. University of Granada, Avenida de Fuente Nueva, s/n, 18071 Granada, Spain. Electronic address: [email protected].
Abstract
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.