Osteoporosis Prescreening using Panoramic Radiographs through a Deep Convolutional Neural Network with Attention Mechanism
Heng Fan, Jiaxiang Ren, Jie Yang, Yi-Xian Qin, and Haibin Ling

TL;DR
This study develops a deep CNN with an attention mechanism to detect osteoporosis from panoramic radiographs, achieving promising accuracy improvements over baseline models.
Contribution
The paper introduces an attention-augmented deep CNN for osteoporosis prescreening on panoramic radiographs, demonstrating enhanced classification performance.
Findings
Attention module improved accuracy metrics
Achieved 71.4% osteoporosis detection accuracy
Demonstrated potential for clinical prescreening
Abstract
Objectives. The aim of this study was to investigate whether a deep convolutional neural network (CNN) with an attention module can detect osteoporosis on panoramic radiographs. Study Design. A dataset of 70 panoramic radiographs (PRs) from 70 different subjects of age between 49 to 60 was used, including 49 subjects with osteoporosis and 21 normal subjects. We utilized the leave-one-out cross-validation approach to generate 70 training and test splits. Specifically, for each split, one image was used for testing and the remaining 69 images were used for training. A deep convolutional neural network (CNN) using the Siamese architecture was implemented through a fine-tuning process to classify an PR image using patches extracted from eight representative trabecula bone areas (Figure 1). In order to automatically learn the importance of different PR patches, an attention module was…
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Taxonomy
TopicsDental Radiography and Imaging · Medical Imaging and Analysis · Forensic Anthropology and Bioarchaeology Studies
MethodsTest
