Qiao Qincheng, Cao Juan, Hou Xinguo
Department of Endocrinology and Metabolism, Qilu Hospital of Shandong University, Jinan, Shandong, People's Republic of China.
The First Clinical Medical College, Cheeloo College of Medicine, Shandong University, Jinan, People's Republic of China.
Transl Vis Sci Technol. 2025 Sep 2;14(9):29. doi: 10.1167/tvst.14.9.29.
Diabetic peripheral neuropathy (DPN), a common complication of type 2 diabetes mellitus (T2DM), lacks effective diagnostic tools. This study aimed to develop a nomogram that integrates corneal nerve parameters for individualized DPN risk prediction.
A total of 111 patients with T2DM and 110 healthy controls were enrolled. All participants underwent bilateral corneal confocal microscopy (CCM). High-quality images were selected by four blinded investigators. Corneal nerve fiber length (CNFL), corneal nerve branch density (CNBD), and corneal nerve fiber density (CNFD) were quantified using ACCMetrics and AiCCMetrics software. Diagnostic models-including single- and multi-parameter models-and a nomogram incorporating CNFL, CNBD, CNFD, and age were developed. Model performance was evaluated using receiver operating characteristic analysis with 500 bootstrap resamples, calibration curves, decision curve analysis, and clinical impact curves. Sensitivity analyses assessed robustness.
Patients with DPN were significantly older (P = 0.005). CNFL and CNFD were higher in the DPN- group (P < 0.05), whereas CNBD showed no group difference. Single-parameter models yielded area under the curve (AUC) values ranging from 0.495 to 0.727, whereas multivariate models demonstrated improved performance with AUCs between 0.737 and 0.782. In the nomogram, CNFL and CNFD were protective factors, whereas CNBD paradoxically increased DPN risk. The model demonstrated good discrimination, calibration, clinical utility, and robustness.
A nomogram combining multiple corneal nerve parameters may outperform single-parameter models, thereby representing a potential tool for DPN risk stratification in T2DM.
The corneal nerve-based nomogram may assist in personalized DPN risk prediction and holds potential translational value for individuals with T2DM.
糖尿病周围神经病变(DPN)是2型糖尿病(T2DM)的常见并发症,缺乏有效的诊断工具。本研究旨在开发一种整合角膜神经参数的列线图,用于个性化预测DPN风险。
共纳入111例T2DM患者和110例健康对照者。所有参与者均接受双侧角膜共焦显微镜检查(CCM)。由4名盲法研究者选择高质量图像。使用ACCMetrics和AiCCMetrics软件对角膜神经纤维长度(CNFL)、角膜神经分支密度(CNBD)和角膜神经纤维密度(CNFD)进行量化。开发了诊断模型,包括单参数模型和多参数模型,以及纳入CNFL、CNBD、CNFD和年龄的列线图。使用接受者操作特征分析、500次自抽样重采样、校准曲线、决策曲线分析和临床影响曲线评估模型性能。敏感性分析评估稳健性。
DPN患者年龄显著更大(P = 0.005)。DPN组的CNFL和CNFD更高(P < 0.05),而CNBD在两组间无差异。单参数模型的曲线下面积(AUC)值在0.495至0.727之间,而多变量模型的性能有所改善,AUC在0.737至0.782之间。在列线图中,CNFL和CNFD是保护因素,而CNBD反而增加了DPN风险。该模型具有良好的区分度、校准度、临床实用性和稳健性。
结合多个角膜神经参数的列线图可能优于单参数模型,从而成为T2DM中DPN风险分层的潜在工具。
基于角膜神经的列线图可能有助于个性化DPN风险预测,对T2DM患者具有潜在的转化价值。