Natural Language Processing-Driven Artificial Intelligence Models for the Diagnosis of Lumbar Disc Herniation with L5 and S1 Radiculopathy: A Preliminary Evaluation
-
Published:2024-09
Issue:
Volume:189
Page:e300-e309
-
ISSN:1878-8750
-
Container-title:World Neurosurgery
-
language:en
-
Short-container-title:World Neurosurgery
Author:
Wang PeiYangORCID,
Zhang Zhe,
Xie ZhiYang,
Liu Lei,
Ren GuanRuiORCID,
Guo ZongJie,
Xu Li,
Yin XiangJie,
Hu YiLi,
Wang YunTao,
Wu XiaoTao
Reference50 articles.
1. Global, regional, and national burden of low back pain, 1990-2020, its attributable risk factors, and projections to 2050: a systematic analysis of the Global Burden of Disease Study 2021;Lancet Rheumatol,2023
2. Diagnosis and treatment of sciatica;Jensen;BMJ,2019
3. An evidence-based clinical guideline for the diagnosis and treatment of lumbar disc herniation with radiculopathy;Kreiner;Spine J,2014
4. Prognostic implications of the Quebec Task Force classification of back-related leg pain: an analysis of longitudinal routine clinical data;Kongsted;BMC Musculoskelet Disord,2013
5. The efficacy of therapeutic selective nerve block in treating lumbar radiculopathy and avoiding surgery;Kanaan;J Pain Res,2020