Journal article

AFFnet - a deep convolutional neural network for the detection of atypical femur fractures from anteriorposterior radiographs

HH Nguyen, DT Le, C Shore-Lorenti, C Chen, J Schilcher, A Eklund, R Zebaze, F Milat, S Sztal-Mazer, CM Girgis, R Clifton-Bligh, J Cai, PR Ebeling

Bone | Published : 2024

Abstract

Despite well-defined criteria for radiographic diagnosis of atypical femur fractures (AFFs), missed and delayed diagnosis is common. An AFF diagnostic software could provide timely AFF detection to prevent progression of incomplete or development of contralateral AFFs. In this study, we investigated the ability for an artificial intelligence (AI)-based application, using deep learning models (DLMs), particularly convolutional neural networks (CNNs), to detect AFFs from femoral radiographs. A labelled Australian dataset of pre-operative complete AFF (cAFF), incomplete AFF (iAFF), typical femoral shaft fracture (TFF), and non-fractured femoral (NFF) X-ray images in anterior-posterior view were..

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University of Melbourne Researchers