使用自动深度学习卷积神经网络从侧位头颅x线片确定性别。

IF 1.7 Q3 DENTISTRY, ORAL SURGERY & MEDICINE Imaging Science in Dentistry Pub Date : 2022-09-01 Epub Date: 2022-07-05 DOI:10.5624/isd.20220016
Maryam Khazaei, Vahid Mollabashi, Hassan Khotanlou, Maryam Farhadian
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引用次数: 3

摘要

目的:尽管基于身体各个部位的线性、角度和区域测量的形态测量学和人体测量学方法在性别识别方面的应用越来越多,但由于观察者的知识和专业知识,这些方法容易出现误差。本研究旨在探索基于侧位头颅x线片的卷积神经网络(cnn)自动性别确定的可能性。材料和方法:纳入了1476名18至49岁的伊朗受试者(794名女性和682名男性)的侧位头颅x线片。侧位头颅x线片作为一个网络输入和输出层,包括2类(男性和女性)。80%的数据用作训练集,其余的用作测试集。经过预处理和数据增强步骤,对每个网络进行超参数调优。不同架构(DenseNet, ResNet和VGG)的预测性能基于它们在测试集中的准确性进行评估。结果:基于DenseNet121架构的CNN在性别判定中具有最佳的预测能力,总体准确率为90%。该模型对男性和女性的预测精度几乎相等。此外,在所有的体系结构中,迁移学习的使用都提高了预测性能。结论:研究结果证实,CNN可以高精度地预测一个人的性别。由于特征提取是自动完成的,因此该预测不受人为偏差的影响。然而,为了在更大的范围内更准确地确定性别,需要进一步研究更大的样本量。
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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Sex determination from lateral cephalometric radiographs using an automated deep learning convolutional neural network.

Purpose: Despite the proliferation of numerous morphometric and anthropometric methods for sex identification based on linear, angular, and regional measurements of various parts of the body, these methods are subject to error due to the observer's knowledge and expertise. This study aimed to explore the possibility of automated sex determination using convolutional neural networks (CNNs) based on lateral cephalometric radiographs.

Materials and methods: Lateral cephalometric radiographs of 1,476 Iranian subjects (794 women and 682 men) from 18 to 49 years of age were included. Lateral cephalometric radiographs were considered as a network input and output layer including 2 classes (male and female). Eighty percent of the data was used as a training set and the rest as a test set. Hyperparameter tuning of each network was done after preprocessing and data augmentation steps. The predictive performance of different architectures (DenseNet, ResNet, and VGG) was evaluated based on their accuracy in test sets.

Results: The CNN based on the DenseNet121 architecture, with an overall accuracy of 90%, had the best predictive power in sex determination. The prediction accuracy of this model was almost equal for men and women. Furthermore, with all architectures, the use of transfer learning improved predictive performance.

Conclusion: The results confirmed that a CNN could predict a person's sex with high accuracy. This prediction was independent of human bias because feature extraction was done automatically. However, for more accurate sex determination on a wider scale, further studies with larger sample sizes are desirable.

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来源期刊
Imaging Science in Dentistry
Imaging Science in Dentistry DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
2.90
自引率
11.10%
发文量
42
期刊最新文献
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