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Development of machine learning-based models for vault prediction in implantable collamer lens surgery according to implant orientation

Autores

Gonzalez-Cruces, Timoteo , Aguilar-Salazar, Francisco Javier , Marfany Tort, Jordi , Sanchez-Ventosa, Alvaro , Villarrubia, Alberto , Mateu, Jose Lamarca , Barraquer, Rafael I. , Pardina, Sergio , Cerdan Palacios, David , Cano-Ortiz, Antonio

Publicación externa

No

Medio

J Cataract Refract Surg

Alcance

Article

Naturaleza

Científica

Cuartil JCR

Cuartil SJR

Fecha de publicacion

01/05/2025

ISI

001569141600006

Scopus Id

2-s2.0-85217263212

Abstract

Purpose: To develop a prediction model based on machine learning to calculate the postoperative vault and the ideal implantable collamer lens (ICL) size, considering for the first time the implantation orientation in a White population. Setting: Arruzafa Ophthalmological Hospital (Cordoba, Spain) and Barraquer Ophthalmology Center (Barcelona, Spain). Design:Multicenter, randomized, retrospective study. Methods: Anterior segment biometric data from 235 eyes of patients who underwent ICL lens implantation surgery were collected using the anterior segment optical coherence tomography CASIA II to train and validate 5 types of multiple regression models based on advanced machine learning techniques. To perform an external validation, a dataset of 45 observations was used. Results: The Pearson correlation coefficient between observed and predicted values was similar in the 5 models in the external validation, with least absolute shrinkage and selection operator regression being the highest (r = 0.62, P < .001), followed by random forest regression model (r = 0.60, P < .001) and backward stepwise regression (r = 0.58, rho < 0.001). In addition, the predictions generated by the different models showed closer agreement with the actual vault compared with the Nakamura formulas. Using the new methods, about 70% of the observations had a prediction error below 150 mu m. Conclusions: Advanced forms of regressions models based on machine learning allow satisfactory calculation of the ideal lens size, offering greater precision to surgeons customizing surgery according to implant orientation.

Palabras clave

adult; anterior eye chamber depth; anterior eye segment; Article; astigmatism; Caucasian; controlled study; corneal diameter; corneal tomography; decision tree; female; follow up; human; intraocular pressure; keratometry; least absolute shrinkage and selection operator; lens implantation; machine learning; major clinical study; male; myopia; optical coherence tomography; prediction; prediction error; preoperative evaluation; pupillometry; random forest; retrospective study; spherical equivalent; trabecular-iris angle; biometry; clinical trial; diagnostic imaging; middle aged; multicenter study; pathology; phakic intraocular lens; procedures; randomized controlled trial; surgery; visual acuity; young adult; Adult; Anterior Eye Segment; Biometry; Female; Humans; Lens Implantation, Intraocular; Machine Learning; Male; Middle Aged; Myopia; Phakic Intraocular Lenses; Retrospective Studies; Tomography, Optical Coherence; Visual Acuity; Young Adult