Department of Mechanical Engineering, National Taiwan University, Taipei.
Department of Biomedical Engineering, National Taiwan University, Taipei.
J Int Med Res. 2022 Jun;50(6):3000605221108100. doi: 10.1177/03000605221108100.
To investigate the correlation between corneal biomechanical properties and topographic parameters using machine learning networks for automatic severity diagnosis and reference benchmark construction.
This was a retrospective study involving 31 eyes from 31 patients with keratonus. Two clustering approaches were used (i.e., shape-based and feature-based). The shape-based method used a keratoconus benchmark validated for indicating the severity of keratoconus. The feature-based method extracted imperative features for clustering analysis.
There were strong correlations between the symmetric modes and the keratoconus severity and between the asymmetric modes and the location of the weak centroid. The Pearson product-moment correlation coefficient (PPMC) between the symmetric mode and normality was 0.92 and between the asymmetric mode and the weak centroid value was 0.75.
This study confirmed that there is a relationship between the keratoconus signs obtained from topography and the corneal dynamic behaviour captured by the Corvis ST device. Further studies are required to gather more patient data to establish a more extensive database for validation.
利用机器学习网络自动进行严重程度诊断和构建参考基准,研究角膜生物力学特性与地形参数之间的相关性。
这是一项回顾性研究,涉及 31 名圆锥角膜患者的 31 只眼睛。采用了两种聚类方法(基于形状和基于特征)。基于形状的方法使用了一个经过验证的圆锥角膜基准,用于指示圆锥角膜的严重程度。基于特征的方法提取了用于聚类分析的重要特征。
对称模式与圆锥角膜严重程度之间以及非对称模式与弱质心位置之间存在很强的相关性。对称模式与正态性之间的皮尔逊积矩相关系数(PPMC)为 0.92,非对称模式与弱质心值之间的 PPMC 为 0.75。
本研究证实了从地形获得的圆锥角膜特征与 Corvis ST 设备捕获的角膜动态行为之间存在关系。需要进一步研究以收集更多患者数据,为验证建立更广泛的数据库。