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Deep Learning for Automated Measurement of Patellofemoral Anatomic Landmarks.

Zelong LiuAlexander ZhouValentin FauveauJustine LeePhilip MarcadisZahi A FayadJimmy J ChanJames GladstoneXueyan MeiMingqian Huang
Published in: Bioengineering (Basel, Switzerland) (2023)
Our model accurately identifies key trochlear landmarks with ~0.20-0.26 cm accuracy and produces human-comparable measurements on both healthy and pathological knees. This work represents the first deep learning regression model for automated patellofemoral annotation trained on both physiologic and pathologic CT imaging at this scale. This novel model can enhance our ability to analyze the anatomy of the patellofemoral compartment at scale.
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