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使用多种机器学习技术对头颅侧位片进行颈椎成熟度评估:一项系统文献综述

Cervical Vertebral Maturation Assessment using various Machine Learning techniques on Lateral cephalogram: A systematic literature review.

作者信息

Rana Shailendra Singh, Nath Bhola, Chaudhari Prabhat Kumar, Vichare Sharvari

机构信息

Department of Dentistry, All India Institute of Medical Sciences, Bhatinda, Punjab, India.

Department of Community Medicine, All India Institute of Medical Sciences, Bhatinda, Punjab, India.

出版信息

J Oral Biol Craniofac Res. 2023 Sep-Oct;13(5):642-651. doi: 10.1016/j.jobcr.2023.08.005. Epub 2023 Aug 24.

Abstract

IMPORTANCE

For the assessment of optimum treatment timing in dentofacial orthopedics, understanding the growth process is of paramount importance. The evaluation of skeletal maturity based on study of the morphology of the cervical vertebrae has been devised to minimize radiation exposure of a patient due to hand wrist radiography. Cervical vertebral maturation assessment (CVMA) predictions have been examined in the state-of-the-art machine learning techniques in the recent past which require more attention and validation by clinicians and practitioners.

OBJECTIVES

This paper aimed to answer the question "How are machine learning techniques being employed in studies concerning cervical vertebral maturation assessment using lateral cephalograms?"

METHOD

A systematic search through the available literature was performed for this work based upon the Population, Intervention, Comparison and Outcome (PICO) framework.

DATA SOURCES STUDY SELECTION DATA EXTRACTION AND SYNTHESIS

The searches were performed in Ovid Medline, Embase, PubMed and Cochrane Central Register of Controlled Trials (CENTRAL) and Cochrane Database of Systematic Reviews (CDSR). A search of the grey literature was also performed in Google Scholar and OpenGrey. We also did a hand-searching in the Angle Orthodontist, Journal of Orthodontics and Craniofacial Research, Progress in Orthodontics, and the American Journal of Orthodontics and Dentofacial Orthopedics. References from the included articles were also searched.

MAIN OUTCOMES AND MEASURES RESULTS

A total of 25 papers which were assessed for full text, and 13 papers were included for the systematic review. The machine learning methods used were scrutinized according to their performance and comparison to human observers/experts. The accuracy of the models ranged between 60 and 90% or above, and satisfactory agreement and correlation with the human observers.

CONCLUSIONS AND RELEVANCE

Machine learning models can be used for detection and classification of the cervical vertebrae maturation. In this systematic review (SR), the studies were summarized in terms of ML techniques applied, sample data, age range of sample and conventional method for CVMA, which showed that further studies with a uniform distribution of samples equally in stages of maturation and according to the gender is required for better training of the models in order to generalize the outputs for prolific use to target population.

摘要

重要性

对于牙颌面正畸中最佳治疗时机的评估而言,了解生长过程至关重要。基于颈椎形态学研究的骨骼成熟度评估方法已被设计出来,以尽量减少因手部腕部X线摄影给患者带来的辐射暴露。颈椎成熟度评估(CVMA)预测在最近的先进机器学习技术中已得到检验,这需要临床医生和从业者给予更多关注并进行验证。

目的

本文旨在回答“在使用头颅侧位片进行颈椎成熟度评估的研究中,机器学习技术是如何被应用的?”这一问题。

方法

基于人群、干预措施、对照和结局(PICO)框架,对现有文献进行了系统检索以开展此项工作。

数据来源、研究选择、数据提取与综合:检索在Ovid Medline、Embase、PubMed以及Cochrane对照试验中央注册库(CENTRAL)和Cochrane系统评价数据库(CDSR)中进行。还在谷歌学术和OpenGrey中检索了灰色文献。我们还对《Angle正畸医师》《正畸与颅面研究杂志》《正畸进展》以及《美国正畸与牙颌面正畸杂志》进行了手工检索。对纳入文章的参考文献也进行了检索。

主要结局和测量结果

总共评估了25篇全文论文,13篇论文被纳入系统评价。根据其性能以及与人类观察者/专家的比较,对所使用的机器学习方法进行了审查。模型的准确率在60%至90%或更高之间,并且与人类观察者具有令人满意的一致性和相关性。

结论与相关性

机器学习模型可用于颈椎成熟度的检测和分类。在本系统评价(SR)中,对研究按照所应用的机器学习技术、样本数据、样本年龄范围以及CVMA的传统方法进行了总结,结果表明,为了更好地训练模型以便将输出结果推广应用于目标人群,需要进一步开展样本在成熟阶段均匀分布且按性别分类的研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b10f/10470275/fe0b534b2aa4/gr1.jpg

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