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FemurTumorNet: Bone tumor classification in the proximal femur using DenseNet model based on radiographs
15
Zitationen
4
Autoren
2023
Jahr
Abstract
The developed DenseNet model demonstrated remarkable accuracy in classifying bone tumors in the proximal femur using plain radiographs. This technology has the potential to reduce misdiagnosis, particularly among non-specialists in musculoskeletal oncology. The utilization of advanced deep learning models provides a promising approach for improved classification and enhanced clinical decision-making in bone tumor detection.
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