| Title |
|---|
| A Comparative Evaluation of Traditional and Novel Artificial Intelligence-Based Intraocular Lens Power Calculation Formulas in Eyes with Normal Axial Length |
| Authors |
|---|
| Zhiyun Xiao, Yannan Zhu, Xiaojian Yin |
| Presenting |
|---|
| Zhiyun Xiao |
| PURPOSE: |
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| Purpose: To compare the predictive accuracy of traditional and artificial intelligence (AI)-based intraocular lens (IOL) power calculation formulas in cataract surgery. |
| METHODS: |
|---|
| Methods: A retrospective study analyzed 97 eyes undergoing cataract surgery. Four formulas were evaluated: Barrett Universal II, Hill-RBF (data supplemented by literature review), Nallasamy, and Karmona. Prediction error (PE) and absolute PE were calculated by comparing predicted and actual postoperative refraction. |
| RESULTS: |
|---|
| Results: Barrett Universal II and Karmona showed the best overall performance, with mean numerical errors of 0.05±0.50D and 0.07±0.48D, and mean absolute errors of 0.36D each. Approximately 85% of eyes achieved a PE within ±0.50D with these formulas. Hill-RBF yielded the lowest mean absolute error (0.33D). Nallasamy exhibited a myopic bias and wider error dispersion (<50% within ±0.50D). Statistical analysis indicated significant differences among formulas (p<0.05). |
| CONCLUSIONS: |
|---|
| Conclusion: The Barrett Universal II and AI-based Karmona formulas demonstrated high and comparable accuracy, supporting the clinical integration of AI-driven IOL calculations. Further validation in diverse populations is warranted. |