人口
标准差
数学
集合(抽象数据类型)
半径
计算机科学
试验装置
曲率半径
算法
珍珠
曲率
医学
统计
几何学
平均曲率
环境卫生
流量平均曲率
哲学
计算机安全
神学
程序设计语言
作者
Guillaume Debellemanière,Mathieu Dubois,Mathieu Gauvin,Avi Wallerstein,Luis F. Brenner,Radhika Rampat,Alain Saad,Damien Gatinel
标识
DOI:10.1016/j.ajo.2021.05.004
摘要
To describe an open-source, reproducible, step-by-step method to design sum-of-segments thick intraocular lens (IOL) calculation formulas, and to evaluate a formula built using this methodology.Retrospective, multicenter case series METHODS: A set of 4242 eyes implanted with Finevision IOLs (PhysIOL, Liège, Belgium) was used to devise the formula design process and build the formula. A different set of 677 eyes from the same center was kept separate to serve as a test set. The resulting formula was evaluated on the test set as well as another independent data set of 262 eyes.The lowest standard deviation (SD) of prediction errors on Set 1 were obtained with the PEARL-DGS formula (±0.382 D), followed by K6 and Olsen (±0.394 D), EVO 2.0 (±0.398 D), RBF 3.0, and BUII (±0.402 D). The formula yielding the lowest SD on Set 2 was the PEARL-DGS (±0.269 D), followed by Olsen (±0.272 D), K6 (±0.276 D), EVO 2.0 (±0.277 D), and BUII (±0.301 D).Our methodology achieved an accuracy comparable to other state-of-the-art IOL formulas. The open-source tools provided in this article could allow other researchers to reproduce our results using their own data sets, with other IOL models, population settings, biometric devices, and measured, rather than calculated, posterior corneal radius of curvature or sum-of-segments axial lengths.
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