CNN-based Automatic Detection of Bone Conditions via Diagnostic CT Images for Osteoporosis Screening
Chao Tang, Wenkun Zhang, Haiting Li, Lei Li, Ziheng Li, Ailong Cai,, Linyuan Wang, Dapeng Shi, Bin Yan

TL;DR
This paper introduces a CNN-based two-step method for automatic osteoporosis detection from diagnostic CT images, aiming to improve screening efficiency and reduce radiologist workload.
Contribution
The study develops a novel two-module CNN framework combining segmentation and classification for bone condition detection in CT images, enhancing accuracy and clinical applicability.
Findings
Segmentation accuracy with shape preservation > 0.998
Classification accuracy of 76.65% on clinical images
AUC of 0.9167 indicating high diagnostic performance
Abstract
Purpose: The purpose is to design a novelty automatic diagnostic method for osteoporosis screening by using the potential capability of convolutional neural network (CNN) in feature representation and extraction, which can be incorporated into the procedure of routine CT diagnostic in physical examination thereby improving the osteoporosis diagnosis and reducing the patient burden. Methods: The proposed convolutional neural network-based method mainly comprises two functional modules to perform automatic detection of bone condition by analyzing the diagnostic CT image. The first functional module aims to locate and segment the ROI of diagnostic CT image, called Mark-Segmentation-Network (MS-Net). The second functional module is used to determine the category of bone condition by the features of ROI, called Bone-Conditions-Classification-Network (BCC-Net). The trained MS-Net can get the…
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Taxonomy
TopicsMedical Imaging and Analysis · Dental Radiography and Imaging · Advanced X-ray and CT Imaging
