Please use this identifier to cite or link to this item: doi:10.22028/D291-44635
Title: The Homburg-Adelaide toric IOL nomogram: How to predict corneal power vectors from preoperative IOLMaster 700 keratometry and total corneal power in toric IOL implantation
Author(s): Langenbucher, Achim
Szentmáry, Nóra
Wendelstein, Jascha
Cayless, Alan
Hoffmann, Peter
Goggin, Michael
Language: English
Title: Acta Ophthalmologica
Volume: 103 (2025)
Issue: 1
Pages: e19-e30
Publisher/Platform: Wiley
Year of Publication: 2024
Free key words: feedforward neural network
keratometric power
multilinear regression
statistical correction models
toric intraocular lenses
total corneal power
vector analysis
DDC notations: 610 Medicine and health
Publikation type: Journal Article
Abstract: Purpose: The purpose of this study is to compare the reconstructed corneal power (RCP) by working backwards from the post-implantation spectacle refraction and toric intraocular lens power and to develop the models for mapping preoperative keratometry and total corneal power to RCP. Methods: Retrospective single-centre study involving 442 eyes treated with a monofocal and trifocal toric IOL (Zeiss TORBI and LISA). Keratometry and total corneal power were measured preoperatively and postoperatively using IOLMaster 700. Feedforward neural network and multilinear regression models were derived to map keratometry and total corneal power vector components (equivalent power EQ and astigmatism components C0 and C45) to the respective RCP components. Results: Mean preoperative/postoperative C0 for keratometry and total corneal power was −0.14/−0.08 dioptres and −0.30/−0.24 dioptres. All mean C45 components ranged between −0.11 and −0.20 dioptres. With crossvalidation, the neural network and regression models showed comparable results on the test data with a mean squared prediction error of 0.20/0.18 and 0.22/0.22 dioptres2 and on the training data the neural network models outperformed the regression models with 0.11/0.12 and 0.22/0.22 dioptres2 for predicting RCP from preoperative keratometry/total corneal power. Conclusions: Based on our dataset, both the feedforward neural network and multilinear regression models showed good precision in predicting the power vector components of RCP from preoperative keratometry or total corneal power. With a similar performance in crossvalidation and a simple implementation in consumer software, we recommend implementation of regression models in clinical practice.
DOI of the first publication: 10.1111/aos.16742
URL of the first publication: https://doi.org/10.1111/aos.16742
Link to this record: urn:nbn:de:bsz:291--ds-446359
hdl:20.500.11880/39786
http://dx.doi.org/10.22028/D291-44635
ISSN: 1755-3768
1755-375X
Date of registration: 13-Mar-2025
Faculty: M - Medizinische Fakultät
Department: M - Augenheilkunde
Professorship: M - Univ.-Prof. Dr. Dipl.-Ing. Achim Langenbucher
M - Prof. Dr. med. Nóra Szentmáry
Collections:SciDok - Der Wissenschaftsserver der Universität des Saarlandes



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