Sex estimation from Thai hand radiographs using convolutional neural networks

Pawaree Nonthasaen, Wiriya Mahikul, Thanapon Chobpenthai, Paniti Achararit
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引用次数: 1

Abstract

Manual analysis of hand radiographs for sex estimation is prone to biases and errors. This study addresses the need for automated methods by exploring the potential of Convolutional Neural Networks (CNNs) to accurately identify individual sex from Thai hand radiographs, overcoming limitations in data availability and variable quality. To improve dataset quality, we applied contrast limited adaptive histogram equalization (CLAHE) and Gaussian blur filter techniques to Thai hand radiographs from 385 male and 788 female individuals. We split these images into training, validation, and test sets. We also applied image augmentation techniques to increase the number of radiographs in the training dataset. Seven CNN models were trained, validated, and evaluated on 100 unseen male and female radiographs each. Among these models, the InceptionResNetV2 architecture demonstrated superior performance, achieving an accuracy of 87.50 % and an F1-Score of 86.91 %. Notably, this model utilized information from the 2nd to the 5th metacarpal bone and proximal phalanges in males, and from the 2nd metacarpal bone in females. Our findings provide a solid foundation for sex estimation from Thai hand radiographs, highlighting the power of CNNs in mitigating challenges associated with data quantity and quality. By automating the sex estimation process using CNNs, forensic analysis can benefit from enhanced accuracy and objectivity, enabling faster and more reliable sex assessment. We envisage that future research will build upon these findings to further improve the performance of sex estimation, contributing to advancements in forensic analysis and facilitating more effective utilization of Thai hand radiographs for sex estimation.

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使用卷积神经网络对泰国手部x光片进行性别估计
手工分析手x光片的性别估计容易产生偏差和错误。本研究通过探索卷积神经网络(cnn)的潜力来解决自动化方法的需求,从泰式手部x光片中准确识别个体性别,克服数据可用性和可变质量的限制。为了提高数据集质量,我们将对比度有限的自适应直方图均衡化(CLAHE)和高斯模糊滤波技术应用于385名男性和788名女性的泰国手x线照片。我们将这些图像分成训练集、验证集和测试集。我们还应用了图像增强技术来增加训练数据集中的x光片数量。七个CNN模型分别在100张未见过的男性和女性x光片上进行了训练、验证和评估。在这些模型中,InceptionResNetV2架构表现出优异的性能,达到了87.50%的准确率和86.91%的F1-Score。值得注意的是,该模型利用了男性第2至第5掌骨和近端指骨的信息,以及女性第2掌骨的信息。我们的研究结果为泰国手部x光片的性别估计提供了坚实的基础,突出了cnn在缓解数据数量和质量相关挑战方面的力量。通过使用cnn自动化性别估计过程,法医分析可以从提高准确性和客观性中受益,从而实现更快、更可靠的性别评估。我们设想未来的研究将建立在这些发现的基础上,进一步提高性别估计的性能,促进法医分析的进步,并促进更有效地利用泰国手x光片进行性别估计。
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来源期刊
Forensic Science International: Reports
Forensic Science International: Reports Medicine-Pathology and Forensic Medicine
CiteScore
2.40
自引率
0.00%
发文量
47
审稿时长
57 days
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