Qiao Yanqiang, Qin Yue, Xiao Gang, Zhang Lijun, Shi Jite, Ma Shaohui, Zhang Ming, Gu Wen
Department of Medical Imaging, The First Affiliated Hospital of Xi'an Jiaotong University, Xi'an, Shaanxi, China.
Department of Radiology, Xi'an Daxing Hospital, Xi'an, Shaanxi, China.
Pain Res Manag. 2025 Sep 11;2025:9211904. doi: 10.1155/prm/9211904. eCollection 2025.
Longus colli tendinitis (LCT) is a rare, self-limiting disease primarily characterized by neck pain. This study is to investigate and analyze the imaging and clinical features of LCT and to develop a predictive model for pain risk in LCT based on these features. This study included 35 patients with LCT enrolled between January 2017 and December 2024. Radiological features, laboratory indicators, and clinical profiles were systematically analyzed. We stratified LCT patients into high-risk ( = 20) and low-risk ( = 15) groups based on pain intensity and duration. Nomograms were developed using logistic regression models, with feature selection performed via the least absolute shrinkage and selection operator method. Model performance was evaluated through discrimination (Harrell's C-index) and calibration (calibration plots), with internal validation conducted via bootstrapping. A clinical impact curve was used to assess the model's clinical usefulness. MRI features of LCT included average lesion width of 6.13 mm, length of 64.00 mm, circumference of 134.52 mm, and area of 230.64 mm. Clinically, LCT patients exhibited elevated white blood cell counts, neutrophil counts, hsCRP levels, and IL-6 levels. Feature selection revealed that the lesion area could predict pain risk in LCT patients, which was used to construct a predictive model. The model demonstrated a C-index of 0.93 (95% CI 0.84-0.99). Internal validation confirmed the model's robust performance, with a C-index of 0.93 (95% CI 0.83-0.99). LCT possesses distinct imaging and clinical features. Utilizing these features enables effective prediction of pain risk, thereby assisting clinical decision-making.
颈长肌肌腱炎(LCT)是一种罕见的自限性疾病,主要特征为颈部疼痛。本研究旨在调查和分析LCT的影像学及临床特征,并基于这些特征建立LCT疼痛风险预测模型。本研究纳入了2017年1月至2024年12月期间收治的35例LCT患者。对其放射学特征、实验室指标及临床资料进行了系统分析。我们根据疼痛强度和持续时间将LCT患者分为高风险组(n = 20)和低风险组(n = 15)。使用逻辑回归模型构建列线图,通过最小绝对收缩和选择算子方法进行特征选择。通过辨别力(Harrell氏C指数)和校准(校准图)评估模型性能,通过自抽样法进行内部验证。使用临床影响曲线评估模型的临床实用性。LCT的MRI特征包括平均病变宽度6.13mm、长度64.00mm、周长134.52mm及面积230.64mm²。临床上,LCT患者的白细胞计数、中性粒细胞计数、hsCRP水平及IL-6水平升高。特征选择显示病变面积可预测LCT患者的疼痛风险,并据此构建了预测模型。该模型的C指数为0.93(95%CI 0.84 - 0.99)。内部验证证实该模型性能稳健,C指数为0.93(95%CI 0.83 - 0.99)。LCT具有独特的影像学和临床特征。利用这些特征能够有效预测疼痛风险,从而辅助临床决策。