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基于有限元分析的应力应变气压计作为角膜塑形术中角膜屈光力变化的预测指标

FEA-Based Stress-Strain Barometers as Forecasters for Corneal Refractive Power Change in Orthokeratology.

作者信息

Wu Lo-Yu, Lin Wen-Pin, Wu Richard, White Lynn, Abass Ahmed

机构信息

Department of Power Mechanical Engineering, Nation Tsing Hua University, Hsinchu 300, Taiwan.

Research and Development Center, Brighten Optix Corporation, Taipei 111, Taiwan.

出版信息

Bioengineering (Basel). 2024 Feb 9;11(2):166. doi: 10.3390/bioengineering11020166.

Abstract

PURPOSE

To improve the effectivity of patient-specific finite element analysis (FEA) to predict refractive power change (RPC) in rigid Ortho-K contact lens fitting. Novel eyelid boundary detection is introduced to the FEA model to better model the effects of the lid on lens performance, and stress and strain outcomes are investigated to identify the most effective FEA components to use in modelling.

METHODS

The current study utilises fully anonymised records of 249 eyes, 132 right eyes, and 117 left eyes from subjects aged 14.1 ± 4.0 years on average (range 9 to 38 years), which were selected for secondary analysis processing. A set of custom-built MATLAB codes was built to automate the process from reading Medmont E300 height and distance files to processing and displaying FEA stress and strain outcomes. Measurements from before and after contact lens wear were handled to obtain the corneal surface change in shape and power. Tangential refractive power maps were constructed from which changes in refractive power pre- and post-Ortho-K wear were determined as the refractive power change (RPC). A total of 249 patient-specific FEA with innovative eyelid boundary detection and 3D construction analyses were automatically built and run for every anterior eye and lens combination while the lens was located in its clinically detected position. Maps of four stress components: contact pressure, Mises stress, pressure, and maximum principal stress were created in addition to maximum principal logarithmic strain maps. Stress and strain components were compared to the clinical RPC maps using the two-dimensional (2D) normalised cross-correlation and structural similarity (SSIM) index measure.

RESULTS

On the one hand, the maximum principal logarithmic strain recorded the highest moderate 2D cross-correlation area of 8.6 ± 10.3%, and contact pressure recorded the lowest area of 6.6 ± 9%. Mises stress recorded the second highest moderate 2D cross-correlation area with 8.3 ± 10.4%. On the other hand, when the SSIM index was used to compare the areas that were most similar to the clinical RPC, maximum principal stress was the most similar, with an average strong similarity percentage area of 26.5 ± 3.3%, and contact pressure was the least strong similarity area of 10.3 ± 7.3%. Regarding the moderate similarity areas, all components were recorded at around 34.4% similarity area except the contact pressure, which was down to 32.7 ± 5.8%.

CONCLUSIONS

FEA is an increasingly effective tool in being able to predict the refractive outcome of Ortho-K treatment. Its accuracy depends on identifying which clinical and modelling metrics contribute to the most accurate prediction of RPC with minimal ocular complications. In terms of clinical metrics, age, Intra-ocular pressure (IOP), central corneal thickness (CCT), surface topography, lens decentration and the 3D eyelid effect are all important for effective modelling. In terms of FEA components, maximum principal stress was found to be the best FEA barometer that can be used to predict the performance of Ortho-K lenses. In contrast, contact pressure provided the worst stress performance. In terms of strain, the maximum principal logarithmic strain was an effective strain barometer.

摘要

目的

提高个性化有限元分析(FEA)预测硬性角膜塑形术(Ortho-K)隐形眼镜验配中屈光力变化(RPC)的有效性。将新型眼睑边界检测引入FEA模型,以更好地模拟眼睑对镜片性能的影响,并研究应力和应变结果,以确定建模中最有效的FEA组件。

方法

本研究利用了249只眼睛(132只右眼和117只左眼)的完全匿名记录,受试者平均年龄为14.1±4.0岁(范围9至38岁),这些记录被选用于二次分析处理。构建了一组定制的MATLAB代码,以自动化从读取Medmont E300高度和距离文件到处理和显示FEA应力和应变结果的过程。处理隐形眼镜佩戴前后的测量数据,以获得角膜形状和屈光力的变化。构建切向屈光力图,从中确定角膜塑形术佩戴前后的屈光力变化作为屈光力变化(RPC)。在镜片位于临床检测位置时,为每个眼前部和镜片组合自动构建并运行总共249个具有创新眼睑边界检测和3D结构分析的个性化FEA。除了最大主对数应变图外,还创建了四个应力分量图:接触压力、米塞斯应力、压力和最大主应力。使用二维(2D)归一化互相关和结构相似性(SSIM)指数测量将应力和应变分量与临床RPC图进行比较。

结果

一方面,最大主对数应变记录的中等2D互相关面积最高,为8.6±10.3%,接触压力记录的面积最低,为6.6±9%。米塞斯应力记录的中等2D互相关面积第二高,为8.3±10.4%。另一方面,当使用SSIM指数比较与临床RPC最相似的区域时,最大主应力最相似,平均强相似性百分比面积为26.5±3.3%,接触压力的强相似性面积最小,为10.3±7.3%。关于中等相似性区域,除接触压力降至32.7±5.8%外,所有组件的相似性区域均记录在34.4%左右。

结论

FEA是一种越来越有效的工具,能够预测角膜塑形术治疗的屈光结果。其准确性取决于确定哪些临床和建模指标有助于在最小化眼部并发症的情况下最准确地预测RPC。就临床指标而言,年龄、眼压(IOP)、中央角膜厚度(CCT)、表面地形图、镜片偏心和3D眼睑效应对于有效的建模都很重要。就FEA组件而言,发现最大主应力是可用于预测角膜塑形术镜片性能的最佳FEA指标。相比之下,接触压力提供的应力性能最差。就应变而言,最大主对数应变是一种有效的应变指标。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c5f9/10886155/fd0a313288c5/bioengineering-11-00166-g001.jpg

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