Open Access Peer-Reviewed
Artigo Original

Intraocular lens calculation formula developed using artificial intelligence for ultrasonic biometry

Intraocular lens calculation formula developed using artificial intelligence for ultrasonic biometry

Victor Antonio Kuiava1; Eliseu Luiz Kuiava2; Eduardo Ottobeli Chielli3; Diane Marinho Ruschel1; Samara Bárbara Marafon1

DOI: 10.5935/0004-2749.2024-0083

ABSTRACT

PURPOSE: We developed an artificial intelligence program for calculating intraocular lenses and analyzed its accuracy rate via ultrasonic biometry. This endeavor is aimed at enhancing precision and efficacy in the selection of intraocular lenses, particularly in cases where optical biometry is unavailable.
METHODS: Data was collected from the Hospital de Clínicas de Porto Alegre, which included cases of phacoemulsification with intraocular lens implantation, in which the lens selection was based on ultrasonic biometry. The program, implemented in Python, Java, and PHP, employs the ridge regression method. Two design options were developed: a basic model, which uses only keratometry variables (K1 and K2), axial size and final target refraction in the spherical equivalent, and an advanced model, which incorporates preoperative refraction and the patient's age. The Universal Barrett II formula was used to compare both models.
RESULTS: The sample consisted of 486 eyes from 313 patients, with 350 eyes used for program training and 136 for program validation. The spherical equivalent hit rates, with a variation of ±0.5 D, were 86% and 87.5% for the basic and advanced models, respectively, with no statistically significant difference between them. With the Barret Universal II formula, the success rate was 69%, which was significantly different from the values of the two aforementioned models (p<0.0001). The system was better for medium and long eyes but worse for short eyes (<=22.00 mm).
CONCLUSION: The developed artificial intelligence program was superior to the Barrett formula in terms of performance, in the general context and within the subgroup of patients with longer eyes. This innovation can considerably contribute to the selection of intraocular lenses, particularly in cases where optical biometry is unavailable.

Keywords: Biometry; Intraocular lens; Cataract; Artificial intelligence


THE CONTENT OF THIS ARTICLE IS NOT AVAILABLE FOR THIS LANGUAGE.


Dimension

© 2025 - All rights reserved - Conselho Brasileiro de Oftalmologia