Discipline of Oral Radiology, Department of Stomatology, School of Dentistry, University of São Paulo, São Paulo, SP, Brazil.
Department of Applied Bioengineering, Graduate School of Convergence Science and Technology, Seoul National University, Seoul, 08826, South Korea.
Sci Rep. 2024 May 23;14(1):11750. doi: 10.1038/s41598-024-62211-y.
Sex determination is essential for identifying unidentified individuals, particularly in forensic contexts. Traditional methods for sex determination involve manual measurements of skeletal features on CBCT scans. However, these manual measurements are labor-intensive, time-consuming, and error-prone. The purpose of this study was to automatically and accurately determine sex on a CBCT scan using a two-stage anatomy-guided attention network (SDetNet). SDetNet consisted of a 2D frontal sinus segmentation network (FSNet) and a 3D anatomy-guided attention network (SDNet). FSNet segmented frontal sinus regions in the CBCT images and extracted regions of interest (ROIs) near them. Then, the ROIs were fed into SDNet to predict sex accurately. To improve sex determination performance, we proposed multi-channel inputs (MSIs) and an anatomy-guided attention module (AGAM), which encouraged SDetNet to learn differences in the anatomical context of the frontal sinus between males and females. SDetNet showed superior sex determination performance in the area under the receiver operating characteristic curve, accuracy, Brier score, and specificity compared with the other 3D CNNs. Moreover, the results of ablation studies showed a notable improvement in sex determination with the embedding of both MSI and AGAM. Consequently, SDetNet demonstrated automatic and accurate sex determination by learning the anatomical context information of the frontal sinus on CBCT scans.
性别鉴定对于识别身份不明的个体至关重要,尤其是在法医学领域。传统的性别鉴定方法涉及对 CBCT 扫描图像中的骨骼特征进行手动测量。然而,这些手动测量既费力、耗时,又容易出错。本研究旨在使用两阶段解剖引导注意网络(SDetNet)自动、准确地在 CBCT 扫描上确定性别。SDetNet 由二维额窦分割网络(FSNet)和三维解剖引导注意网络(SDNet)组成。FSNet 在 CBCT 图像中分割额窦区域,并提取附近的感兴趣区域(ROI)。然后,将 ROI 输入到 SDNet 中,以准确预测性别。为了提高性别鉴定性能,我们提出了多通道输入(MSI)和解剖引导注意模块(AGAM),鼓励 SDetNet 学习男性和女性额窦解剖结构差异的知识。与其他 3D CNN 相比,SDetNet 在受试者工作特征曲线下面积、准确性、Brier 得分和特异性方面表现出更好的性别鉴定性能。此外,消融研究的结果表明,通过学习 CBCT 扫描中额窦的解剖结构信息,性别鉴定的效果显著提高。因此,SDetNet 通过学习 CBCT 扫描中额窦的解剖结构信息,实现了自动、准确的性别鉴定。