利用人工智能,根据头颅侧位X光片中颈椎的成熟度估算下颌骨的生长阶段。

IF 4.8 2区 医学 Q1 Dentistry
Sajjad Alipour Shoari, Seyed Vahid Sadrolashrafi, Aydin Sohrabi, Reza Afrouzian, Pooya Ebrahimi, Maryam Kouhsoltani, Minou Kouh Soltani
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引用次数: 0

摘要

介绍:确定正确的正畸治疗时间是影响治疗计划及其结果的最重要因素之一。本研究的目的是利用人工智能技术,根据头颅侧位X光片中的颈椎成熟度(CVM)估算下颌生长阶段。与以往使用传统 CVM 阶段命名的研究不同,我们提出的方法直接将颈椎与下颌生长斜率相关联:为了开展这项研究,我们首先评估了在美国正畸协会基金会(AAOF)生长中心取得成绩的人的信息,在考虑了进入和退出标准后,共有 200 人被纳入研究,其中女性 108 人,男性 92 人。然后,计算患者连续拍摄的头颅侧位X光片中下颌骨的长度。根据下颌骨在青春期生长高峰前(青春期前)、青春期生长高峰中(青春期中)和青春期生长高峰后(青春期后)三个阶段的生长速度,对相应的图表进行了标注。共选择了 663 幅图像进行人工智能评估。考虑到敏感性、特异性、准确性、阳性预测值(PPV)和阴性预测值(NPV)等诊断指标,我们使用不同的基于深度学习的人工智能模型对这些图像进行了评估。我们还采用了加权卡帕统计:结果:与 ResNet-18 模型相比,本研究设计的卷积神经网络(CNN)在诊断青春期前期时具有更高的灵敏度和 NPV(分别为 0.84 和 0.91)。ResNet-18 模型在青春期前阶段的其他诊断指标以及青春期和青春期后阶段的所有指标上都有更好的表现。ResNet-18 模型的总体诊断准确率也最高,达到 87.5%,而设计的 CNN 为 81%:本研究中训练的人工智能模型可以接收颈椎图像并预测下颌骨的生长状况,将其分为三组:生长高峰前(青春期前)、生长高峰期(青春期)和生长高峰期后(青春期后)。使用所设计的网络,青春期后阶段的准确率最高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating mandibular growth stage based on cervical vertebral maturation in lateral cephalometric radiographs using artificial intelligence.

Introduction: Determining the right time for orthodontic treatment is one of the most important factors affecting the treatment plan and its outcome. The aim of this study is to estimate the mandibular growth stage based on cervical vertebral maturation (CVM) in lateral cephalometric radiographs using artificial intelligence. Unlike previous studies, which use conventional CVM stage naming, our proposed method directly correlates cervical vertebrae with mandibular growth slope.

Methods and materials: To conduct this study, first, information of people achieved in American Association of Orthodontics Foundation (AAOF) growth centers was assessed and after considering the entry and exit criteria, a total of 200 people, 108 women and 92 men, were included in the study. Then, the length of the mandible in the lateral cephalometric radiographs that were taken serially from the patients was calculated. The corresponding graphs were labeled based on the growth rate of the mandible in 3 stages; before the growth peak of puberty (pre-pubertal), during the growth peak of puberty (pubertal) and after the growth peak of puberty (post-pubertal). A total of 663 images were selected for evaluation using artificial intelligence. These images were evaluated with different deep learning-based artificial intelligence models considering the diagnostic measures of sensitivity, specificity, accuracy, positive predictive value (PPV), and negative predictive value (NPV). We also employed weighted kappa statistics.

Results: In the diagnosis of pre-pubertal stage, the convolutional neural network (CNN) designed for this study has the higher sensitivity and NPV (0.84, 0.91 respectively) compared to ResNet-18 model. The ResNet-18 model had better performance in other diagnostic measures of the pre-pubertal stage and all measures in the pubertal and post-pubertal stages. The highest overall diagnostic accuracy was also obtained using ResNet-18 model with the amount of 87.5% compared to 81% in designed CNN.

Conclusion: The artificial intelligence model trained in this study can receive images of cervical vertebrae and predict mandibular growth status by classifying it into one of three groups; before the growth spurt (pre-pubertal), during the growth spurt (pubertal), and after the growth spurt (post-pubertal). The highest accuracy is in post-pubertal stage with the designed networks.

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来源期刊
Progress in Orthodontics
Progress in Orthodontics Dentistry-Orthodontics
CiteScore
7.30
自引率
4.20%
发文量
45
审稿时长
13 weeks
期刊介绍: Progress in Orthodontics is a fully open access, international journal owned by the Italian Society of Orthodontics and published under the brand SpringerOpen. The Society is currently covering all publication costs so there are no article processing charges for authors. It is a premier journal of international scope that fosters orthodontic research, including both basic research and development of innovative clinical techniques, with an emphasis on the following areas: • Mechanisms to improve orthodontics • Clinical studies and control animal studies • Orthodontics and genetics, genomics • Temporomandibular joint (TMJ) control clinical trials • Efficacy of orthodontic appliances and animal models • Systematic reviews and meta analyses • Mechanisms to speed orthodontic treatment Progress in Orthodontics will consider for publication only meritorious and original contributions. These may be: • Original articles reporting the findings of clinical trials, clinically relevant basic scientific investigations, or novel therapeutic or diagnostic systems • Review articles on current topics • Articles on novel techniques and clinical tools • Articles of contemporary interest
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