Enhanced Osteoporosis Detection Using Artificial Intelligence: A Deep Learning Approach to Panoramic Radiographs with an Emphasis on the Mental Foramen.

Q1 Medicine
Robert Gaudin, Wolfram Otto, Iman Ghanad, Stephan Kewenig, Carsten Rendenbach, Vasilios Alevizakos, Pascal Grün, Florian Kofler, Max Heiland, Constantin von See
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Abstract

Osteoporosis, a skeletal disorder, is expected to affect 60% of women aged over 50 years. Dual-energy X-ray absorptiometry (DXA) scans, the current gold standard, are typically used post-fracture, highlighting the need for early detection tools. Panoramic radiographs (PRs), common in annual dental evaluations, have been explored for osteoporosis detection using deep learning, but methodological flaws have cast doubt on otherwise optimistic results. This study aims to develop a robust artificial intelligence (AI) application for accurate osteoporosis identification in PRs, contributing to early and reliable diagnostics. A total of 250 PRs from three groups (A: osteoporosis group, B: non-osteoporosis group matching A in age and gender, C: non-osteoporosis group differing from A in age and gender) were cropped to the mental foramen region. A pretrained convolutional neural network (CNN) classifier was used for training, testing, and validation with a random split of the dataset into subsets (A vs. B, A vs. C). Detection accuracy and area under the curve (AUC) were calculated. The method achieved an F1 score of 0.74 and an AUC of 0.8401 (A vs. B). For young patients (A vs. C), it performed with 98% accuracy and an AUC of 0.9812. This study presents a proof-of-concept algorithm, demonstrating the potential of deep learning to identify osteoporosis in dental radiographs. It also highlights the importance of methodological rigor, as not all optimistic results are credible.

利用人工智能增强骨质疏松症检测:针对全景 X 光片的深度学习方法,重点关注椎间孔。
骨质疏松症是一种骨骼疾病,预计将影响 60% 的 50 岁以上女性。双能 X 射线吸收测量法(DXA)扫描是目前的黄金标准,但通常在骨折后使用,因此需要早期检测工具。在年度牙科评估中常见的全景X光片(PR)已被用于深度学习的骨质疏松症检测,但方法上的缺陷使人们对原本乐观的结果产生了怀疑。本研究旨在开发一种稳健的人工智能(AI)应用,用于准确识别PR中的骨质疏松症,为早期可靠的诊断做出贡献。研究人员将三组(A:骨质疏松症组;B:在年龄和性别上与 A 组一致的非骨质疏松症组;C:在年龄和性别上与 A 组不同的非骨质疏松症组)共 250 例 PR 剪切到精神孔区域。使用预先训练好的卷积神经网络(CNN)分类器进行训练、测试和验证,并将数据集随机分成若干子集(A 与 B、A 与 C)。计算了检测准确率和曲线下面积(AUC)。该方法的 F1 得分为 0.74,AUC 为 0.8401(A 与 B)。对于年轻患者(A 与 C),其准确率为 98%,AUC 为 0.9812。本研究提出了一种概念验证算法,展示了深度学习在牙科 X 光片中识别骨质疏松症的潜力。它还强调了方法论严谨性的重要性,因为并非所有乐观的结果都是可信的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
9.00
自引率
0.00%
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审稿时长
6 weeks
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