Cephalometric Variables Prediction from Lateral Photographs Between Different Skeletal Patterns Using Regression Artificial Neural Networks.

IF 0.8 Q4 DENTISTRY, ORAL SURGERY & MEDICINE
Saif Mauwafak Ali, Hayder Fadhil Saloom, Mohammed Ali Tawfeeq
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引用次数: 1

Abstract

Objective: This study aimed to design an artificial neural network for the prediction of cephalometric variables via a lateral photo- graph in skeletal Class I, II, and III patterns.

Methods: A total of 94 patients were recruited for this prospective study, with an age range of 15-20 years (41 boys and 53 girls) seek- ing orthodontic treatment. According to cephalometric analysis, using AutoCAD 21.0, they were allocated into three groups. Thirty with skeletal Class I (14 boys and 16 girls), 34 with skeletal Class II (14 boys and 20 girls), and 30 with skeletal Class III malocclusion (13 boys and 17 girls) according to SNA, SNB, and ANB angles measured from cephalometric radiographs. The study includes (1) finding the correlation of the skeletal measurements between lateral profile photographs and cephalometric radiographs for the recruited patients and (2) designing a specific artificial neural networks for the assessment of skeletal factors via lateral photographs, these artificial neural networks are trained and tested with the total of 94 standard lateral cephalograms.

Results: This novel Network provided models of regression that can forecast the cephalometric variables through analogous photo- graphic measurements with excellent predictive power R = 0.99 and limited estimation error for each malocclusion (Class I, II, and III).

Conclusion: This study suggests that artificial intelligence would be useful as an accurate method in orthodontics for the prediction of cephalometric variables and its performance was achieved by several factors such as proper selection of the input data, preferable generalization, and organization.

Abstract Image

基于回归人工神经网络的不同骨骼模式侧照头颅测量变量预测。
目的:本研究旨在设计一个人工神经网络,通过骨骼I、II和III类的侧位照片预测头位测量变量。方法:本前瞻性研究共招募94例患者,年龄15-20岁(男孩41例,女孩53例),寻求正畸治疗。根据头颅测量分析,使用AutoCAD 21.0将其分为三组。根据头颅x线片测量的SNA、SNB和ANB角度,30例为骨骼I级(14名男孩和16名女孩),34例为骨骼II级(14名男孩和20名女孩),30例为骨骼III级错合(13名男孩和17名女孩)。本研究包括:(1)寻找所招募患者侧位侧位照片与头颅x线片之间骨骼测量的相关性;(2)设计一个特定的人工神经网络,通过侧位照片评估骨骼因素,这些人工神经网络用94张标准侧位头片进行训练和测试。结果:这个新颖的网络提供了回归模型,可以通过类似的照片测量来预测头部测量变量,预测能力R = 0.99,对每种错牙合(I类,II类和III类)的估计误差有限。本研究表明,人工智能可以作为一种准确的方法来预测正畸学中的颅面测量变量,其性能取决于输入数据的正确选择、良好的泛化和组织等几个因素。
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来源期刊
Turkish Journal of Orthodontics
Turkish Journal of Orthodontics Dentistry-Orthodontics
CiteScore
2.10
自引率
9.10%
发文量
34
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