Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:2700-2703. doi: 10.1109/EMBC46164.2021.9630183.
Recent studies have shown that Dental Panoramic Radiograph (DPR) images have great potential for prescreening of osteoporosis given the high degree of correlation between the bone density and trabecular bone structure. Most of the research works in these area had used pretrained models for feature extraction and classification with good success. However, when the size of the data set is limited it becomes difficult to use these pretrained networks and gain high confidence scores. In this paper, we evaluated the diagnostic performance of deep convolutional neural networks (DCNN)based computer-assisted diagnosis (CAD) system in the detection of osteoporosis on panoramic radiographs, through a comparison with diagnoses made by oral and maxillofacial radiologists. With the available labelled dataset of 70 images, results were reproduced for the preliminary study model. Furthermore, the model performance was enhanced using different computer vision techniques. Specifically, the age meta data available for each patient was leveraged to obtain more accurate predictions. Lastly, we tried to leverage these images, ages and osteoporotic labels to create a neural network based regression model and predict the Bone Mineral Density (BMD) value for each patient. Experimental results showed that the proposed CAD system was in high accord with experienced oral and maxillofacial radiologists in detecting osteoporosis and achieved 87.86% accuracy.Clinical relevance- This paper presents a method to detect osteoporosis using DPR images and age data with multi-column DCNN and then leverage this data to predict Bone Mineral Density for each patient.
最近的研究表明,鉴于骨密度和小梁骨结构之间的高度相关性,口腔全景 X 光片(DPR)图像在骨质疏松症的初筛方面具有巨大的潜力。这些领域的大多数研究工作都使用了经过预训练的模型进行特征提取和分类,取得了很好的效果。然而,当数据集的规模有限时,使用这些预训练网络并获得高置信度分数就变得困难了。在本文中,我们通过与口腔颌面放射科医生的诊断进行比较,评估了基于深度卷积神经网络(DCNN)的计算机辅助诊断(CAD)系统在全景 X 光片中检测骨质疏松症的诊断性能。使用现有的 70 张标注数据集,对初步研究模型进行了结果重现。此外,还使用不同的计算机视觉技术来增强模型性能。具体来说,利用每个患者的可用年龄元数据来获得更准确的预测。最后,我们尝试利用这些图像、年龄和骨质疏松症标签来创建一个基于神经网络的回归模型,并预测每个患者的骨密度(BMD)值。实验结果表明,所提出的 CAD 系统在检测骨质疏松症方面与经验丰富的口腔颌面放射科医生高度一致,准确率达到 87.86%。临床意义——本文提出了一种使用 DPR 图像和年龄数据的方法,通过多列 DCNN 进行检测,然后利用这些数据预测每个患者的骨密度。