Artificial Intelligence–Assisted Prescription Determination for Orthokeratology Lens Fitting: From Algorithm to Clinical Practice

Author:

Lan Wei-ZhongORCID,Tang He,Wen Long-Bo,Chen Zhao,Zhou Yong-li,Dai Wei-wei,Wang Mao,Li Xiao-ning,Wang Wei-Jia,Tang Fan,Yang Zhi-kuan,Tang Yong

Abstract

Objectives: To explore the potential of artificial intelligence (AI) to assist prescription determination for orthokeratology (OK) lenses. Methods: Artificial intelligence algorithm development followed by a real-world trial. A total of 11,502 OK lenses fitting records collected from seven clinical environments covering major brands. Records were randomly divided in a three-way data split. Cross-validation was used to identify the most accurate algorithm, followed by an evaluation using an independent test data set. An online AI-assisted system was implemented and assessed in a real-world trial involving four junior and three senior clinicians. Results: The primary outcome measure was the algorithm's accuracy (ACC). The ACC of the best performance of algorithms to predict the targeted reduction amplitude, lens diameter, and alignment curve of the prescription was 0.80, 0.82, and 0.83, respectively. With the assistance of the AI system, the number of trials required to determine the final prescription significantly decreased for six of the seven participating clinicians (all P<0.01). This reduction was more significant among junior clinicians compared with consultants (0.76±0.60 vs. 0.32±0.60, P<0.001). Junior clinicians achieved clinical outcomes comparable to their seniors, as 93.96% (140/149) and 94.44% (119/126), respectively, of the eyes fitted achieved unaided visual acuity no worse than 0.8 (P=0.864). Conclusions: AI can improve prescription efficiency and reduce discrepancies in clinical outcomes among clinicians with differing levels of experience. Embedment of AI in practice should ultimately help lessen the medical burden and improve service quality for myopia boom emerging worldwide.

Funder

Key Research and Development Program of Hunan Province of China

National Ministry of Science and Technology, China

Science and Technology Service Network Initiative, Chinese Academy of Sciences

Innovation Methodology Projectof the Ministry of Science and Technology, China

National Natural Science Foundation of China

Natural Science Foundation of Hunan Province

Publisher

Ovid Technologies (Wolters Kluwer Health)

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