Artificial intelligence application and performance in forensic age estimation with mandibular third molars on panoramıc radiographs

Ali Altindağ, Büşra Öztürk, Buse Tekin, Adem Pekince
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Abstract

Background/Aim: Age estimation is of great importance due to legal requirements. Although there are many methods used, most of them are based on age related dental changes. Artificial intelligence based programs, one of the most current and popular topics in recent years, are becoming more and more important in dental studies. This study aims to measure the performance of deep learning in forensic age estimation from mandibular third molars using panoramic radiographs. Material and Methods: In our study, panoramic radiographs of male and female patients between the ages of 16-26 years who applied to our department for various reasons were used. The pixel-based Convolutional Neural Networks (CNN) method, one of the types of artificial neural networks, was applied. The high performance ResNeXt-101 model and Adamax algorithm were selected. The learning rate was set to 0.001. The dataset was labeled with the DentiAssist platform and randomly divided into 80% training and 20% testing. 1296 data under 18 and 1036 data over 18 were used. Dropout method was applied in case of over memorization. In the last step of the hidden layer, a linear two-class prediction was obtained using a structured fully connected layer. Results: The performance metrics for the ResNeXt neural network were 4.36% accuracy, 83.95% precision, 84.56% recall, 84.56% F1-score and 84.14% F1-score (80% confidence interval) when adequate training was provided. Conclusions: Artificial intelligence, which eliminates the subjective margin of error compared to conventional methods and rapidly processes a large amount of data, has achieved promising results in forensic age determination.
人工智能在下颌第三磨牙panoramıc影像学年龄鉴定中的应用与表现
背景/目的:由于法律要求,年龄估计非常重要。虽然有很多方法可以使用,但大多数都是基于与年龄相关的牙齿变化。基于人工智能的程序是近年来最热门的课题之一,在牙科研究中越来越重要。本研究旨在利用全景x线照片测量深度学习在下颌第三磨牙法医年龄估计中的性能。材料与方法:我们的研究使用了16-26岁因各种原因向我科申请的男女患者的全景x线片。采用人工神经网络的一种基于像素的卷积神经网络(CNN)方法。选择高性能的ResNeXt-101模型和Adamax算法。学习率设为0.001。数据集使用DentiAssist平台进行标记,随机分为80%的训练和20%的测试。18岁以下数据1296份,18岁以上数据1036份。记忆过度时采用退学法。在隐层的最后一步,使用结构化的全连通层得到线性两类预测。结果:在训练充分的情况下,ResNeXt神经网络的准确率为4.36%,准确率为83.95%,召回率为84.56%,f1得分为84.56%,f1得分为84.14%(80%置信区间)。结论:人工智能与传统方法相比,消除了主观误差范围,快速处理大量数据,在法医年龄鉴定中取得了可喜的成果。
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