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📄 Abstract
Abstract: Patient-specific bone models are essential for designing surgical guides and
preoperative planning, as they enable the visualization of intricate anatomical
structures. However, traditional CT-based approaches for creating bone models
are limited to preoperative use due to the low flexibility and high radiation
exposure of CT and time-consuming manual delineation. Here, we introduce
Semi-Supervised Reconstruction with Knowledge Distillation (SSR-KD), a fast and
accurate AI framework to reconstruct high-quality bone models from biplanar
X-rays in 30 seconds, with an average error under 1.0 mm, eliminating the
dependence on CT and manual work. Additionally, high tibial osteotomy
simulation was performed by experts on reconstructed bone models, demonstrating
that bone models reconstructed from biplanar X-rays have comparable clinical
applicability to those annotated from CT. Overall, our approach accelerates the
process, reduces radiation exposure, enables intraoperative guidance, and
significantly improves the practicality of bone models, offering transformative
applications in orthopedics.