Deep learning for the classification of cervical maturation degree and pubertal growth spurts: A pilot study.

IF 1.9 3区 医学 Q1 Dentistry Korean Journal of Orthodontics Pub Date : 2022-03-25 DOI:10.4041/kjod.2022.52.2.112
Hossein Mohammad-Rahimi, Saeed Reza Motamadian, Mohadeseh Nadimi, Sahel Hassanzadeh-Samani, Mohammad A S Minabi, Erfan Mahmoudinia, Victor Y Lee, Mohammad Hossein Rohban
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引用次数: 15

Abstract

Objective: This study aimed to present and evaluate a new deep learning model for determining cervical vertebral maturation (CVM) degree and growth spurts by analyzing lateral cephalometric radiographs.

Methods: The study sample included 890 cephalograms. The images were classified into six cervical stages independently by two orthodontists. The images were also categorized into three degrees on the basis of the growth spurt: pre-pubertal, growth spurt, and post-pubertal. Subsequently, the samples were fed to a transfer learning model implemented using the Python programming language and PyTorch library. In the last step, the test set of cephalograms was randomly coded and provided to two new orthodontists in order to compare their diagnosis to the artificial intelligence (AI) model's performance using weighted kappa and Cohen's kappa statistical analyses.

Results: The model's validation and test accuracy for the six-class CVM diagnosis were 62.63% and 61.62%, respectively. Moreover, the model's validation and test accuracy for the three-class classification were 75.76% and 82.83%, respectively. Furthermore, substantial agreements were observed between the two orthodontists as well as one of them and the AI model.

Conclusions: The newly developed AI model had reasonable accuracy in detecting the CVM stage and high reliability in detecting the pubertal stage. However, its accuracy was still less than that of human observers. With further improvements in data quality, this model should be able to provide practical assistance to practicing dentists in the future.

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深度学习用于宫颈成熟程度和青春期生长突跃的分类:一项试点研究。
目的:本研究旨在提出并评估一种新的深度学习模型,通过分析侧位头颅x线片来确定颈椎成熟程度和生长突跃。方法:研究样本包括890张脑电图。图像由两名正畸医生独立划分为六个颈椎阶段。这些图像也被分为三个程度的基础上的生长突:青春期前,生长突,青春期后。随后,将样本输入到使用Python编程语言和PyTorch库实现的迁移学习模型中。最后一步,随机编码脑图测试集,提供给两名新的正畸医生,通过加权kappa和Cohen's kappa统计分析,将他们的诊断结果与人工智能(AI)模型的表现进行比较。结果:该模型对CVM六类诊断的验证和检验准确率分别为62.63%和61.62%。模型对三类分类的验证和测试准确率分别为75.76%和82.83%。此外,两名正畸医生之间以及其中一名正畸医生与人工智能模型之间达成了实质性协议。结论:新建立的人工智能模型对CVM阶段的检测精度合理,对青春期阶段的检测可靠性较高。然而,它的准确性仍然低于人类观察者。随着数据质量的进一步提高,该模型应该能够在未来为执业牙医提供实际帮助。
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来源期刊
Korean Journal of Orthodontics
Korean Journal of Orthodontics Dentistry-Orthodontics
CiteScore
2.60
自引率
10.50%
发文量
48
审稿时长
3 months
期刊介绍: The Korean Journal of Orthodontics (KJO) is an international, open access, peer reviewed journal published in January, March, May, July, September, and November each year. It was first launched in 1970 and, as the official scientific publication of Korean Association of Orthodontists, KJO aims to publish high quality clinical and scientific original research papers in all areas related to orthodontics and dentofacial orthopedics. Specifically, its interest focuses on evidence-based investigations of contemporary diagnostic procedures and treatment techniques, expanding to significant clinical reports of diverse treatment approaches. The scope of KJO covers all areas of orthodontics and dentofacial orthopedics including successful diagnostic procedures and treatment planning, growth and development of the face and its clinical implications, appliance designs, biomechanics, TMJ disorders and adult treatment. Specifically, its latest interest focuses on skeletal anchorage devices, orthodontic appliance and biomaterials, 3 dimensional imaging techniques utilized for dentofacial diagnosis and treatment planning, and orthognathic surgery to correct skeletal disharmony in association of orthodontic treatment.
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