A Deep Learning-Based Approach to Extracting Periosteal and Endosteal Contours of Proximal Femur in Quantitative CT Images
Yu Deng, Ling Wang, Chen Zhao, Shaojie Tang, Xiaoguang Cheng, Hong-Wen, Deng, Weihua Zhou

TL;DR
This paper presents a deep learning model that automatically segments the proximal femur in CT images, accurately distinguishing cortical and trabecular bone, which could improve clinical diagnosis and treatment planning.
Contribution
A novel 3D fully convolutional neural network for automatic femur segmentation, achieving high accuracy and reproducibility over manual methods.
Findings
Achieved Dice similarity coefficients of 97.87% and 96.49% for periosteal and endosteal contours.
Volume measurement errors were less than 5% compared to ground truth.
Demonstrated potential for clinical applications like fracture risk prediction.
Abstract
Automatic CT segmentation of proximal femur is crucial for the diagnosis and risk stratification of orthopedic diseases; however, current methods for the femur CT segmentation mainly rely on manual interactive segmentation, which is time-consuming and has limitations in both accuracy and reproducibility. In this study, we proposed an approach based on deep learning for the automatic extraction of the periosteal and endosteal contours of proximal femur in order to differentiate cortical and trabecular bone compartments. A three-dimensional (3D) end-to-end fully convolutional neural network, which can better combine the information between neighbor slices and get more accurate segmentation results, was developed for our segmentation task. 100 subjects aged from 50 to 87 years with 24,399 slices of proximal femur CT images were enrolled in this study. The separation of cortical and…
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Taxonomy
TopicsHip disorders and treatments · Orthopaedic implants and arthroplasty · Hip and Femur Fractures
