2024
DOI: 10.1002/rcs.70006
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Automatic Landmark Detection for Preoperative Planning of High Tibial Osteotomy Using Traditional Feature Extraction and Deep Learning Methods

Jiaqi Han,
Xinlong Ma,
Yiou Lyu
et al.

Abstract: BackgroundAutomatic High Tibial Osteotomy (HTO) landmark detection methods promise to improve the effectiveness and standardisation of HTO preoperative planning. Unfortunately, due to the limited number of HTO datasets, existing methods are less robust when dealing with patients with varied deformities than traditional manual planning, severely limiting their clinical viability and application in practical surgical settings.MethodsHere, we present a new HTO landmark detection framework using an integration of … Show more

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