A Deep Learning-Based Method for Automatic Segmentation of Proximal Femur from Quantitative Computed Tomography Images
Chen Zhao, Joyce H. Keyak, Jinshan Tang, Tadashi S. Kaneko, Sundeep, Khosla, Shreyasee Amin, Elizabeth J. Atkinson, Lan-Juan Zhao, Michael J., Serou, Chaoyang Zhang, Hui Shen, Hong-Wen Deng, Weihua Zhou

TL;DR
This paper introduces a deep learning method using V-Net for automatic segmentation of the proximal femur in QCT images, achieving high accuracy and promising clinical utility for osteoporosis assessment.
Contribution
The study develops a novel 3D CNN-based segmentation approach with a compound loss function, demonstrating high accuracy on a large QCT dataset.
Findings
Achieved Dice score of 0.9815 indicating high segmentation accuracy.
High correlation (R2=0.9956) between predicted and ground truth volumes.
Model shows potential for clinical application in osteoporosis evaluation.
Abstract
Purpose: Proximal femur image analyses based on quantitative computed tomography (QCT) provide a method to quantify the bone density and evaluate osteoporosis and risk of fracture. We aim to develop a deep-learning-based method for automatic proximal femur segmentation. Methods and Materials: We developed a 3D image segmentation method based on V-Net, an end-to-end fully convolutional neural network (CNN), to extract the proximal femur QCT images automatically. The proposed V-net methodology adopts a compound loss function, which includes a Dice loss and a L2 regularizer. We performed experiments to evaluate the effectiveness of the proposed segmentation method. In the experiments, a QCT dataset which included 397 QCT subjects was used. For the QCT image of each subject, the ground truth for the proximal femur was delineated by a well-trained scientist. During the experiments for the…
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Taxonomy
TopicsBone health and osteoporosis research · Medical Imaging and Analysis · Advanced X-ray and CT Imaging
MethodsDice Loss
