Àá½Ã¸¸ ±â´Ù·Á ÁÖ¼¼¿ä. ·ÎµùÁßÀÔ´Ï´Ù.
KMID : 1037020230120040243
Medical Lasers; Engineering, Basic Research, and Clinical Application
2023 Volume.12 No. 4 p.243 ~ p.250
An improved machine learning model for calculation of intraocular lens power during cataract surgery in Republic of Korea: development
Kang Jae-Ku

Choi Seung-Yong
Oh Se-Jong
Cho Kyong-Jin
Abstract
Background: To assess an improved machine learning model for calculation of intraocular lens (IOL) power during cataract surgery.

Methods: We reviewed 346 medical records of cataract surgery patients from the Dankook University Hospital and developed a machine regression model to calculate IOL power. Well-known machine learning algorithms such as random forest, gradient boosting machine, support vector machine (SVM), and eXtreme Gradient Boosting were tested to develop the best prediction model. The model accuracy was judged by comparing the difference between the predicted refractory powers and the actual postoperative refractory ones based on ¡¾0.25, ¡¾0.5, ¡¾0.75, and ¡¾1 D. The prediction error was also evaluated by statistical measures. The proposed model was compared with existing formulas, such as SRK/T, Barrett Universal II, Hill-RBF, and Kane.

Results: The proposed SVM model produced an accuracy of 43.3%, 77.2%, 87.0%, and 95.4% for refraction powers based on ¡¾0.25, ¡¾0.5, ¡¾0.75, and ¡¾1 D, respectively. In contrast, the Barrett Universal II formula produced an accuracy of 34.3%, 60.8%, 83.2%, and 93.0% for refraction powers.

Conclusion: The proposed machine learning prediction model showed better performance than the current formulas. This improved machine learning model using machine learning calculations could thus be used in IOL power calculations.
KEYWORD
Cataract, Lens, Machine learning
FullTexts / Linksout information
Listed journal information