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Optimizing Ridge Augmentation With <scp>AI</scp> ‐Generated Models: A Case Report With Technical Note
0
Zitationen
5
Autoren
2025
Jahr
Abstract
AI-generated 3D models in ridge augmentation improve surgical accuracy, reduce bone exposure, and enhance patient understanding through visual planning. They support, but do not replace, clinical expertise. Ongoing validation, staff training, and ethical oversight are essential to ensure safe, effective, and equitable implementation in daily practice.
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