Intelligently Quantifying the Entire Irregular Dental Structure.

Journal of dental research Pub Date : 2024-04-01 Epub Date: 2024-02-19 DOI:10.1177/00220345241226871
H Liu, J Duan, P Zeng, M Shi, J Zeng, S Chen, Z Gong, Z Chen, J Qin, Z Chen
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Abstract

Quantitative analysis of irregular anatomical structures is crucial in oral medicine, but clinicians often typically measure only several representative indicators within the structure as references. Deep learning semantic segmentation offers the potential for entire quantitative analysis. However, challenges persist, including segmentation difficulties due to unclear boundaries and acquiring measurement landmarks for clinical needs in entire quantitative analysis. Taking the palatal alveolar bone as an example, we proposed an artificial intelligence measurement tool for the entire quantitative analysis of irregular dental structures. To expand the applicability, we have included lightweight networks with fewer parameters and lower computational demands. Our approach finally used the lightweight model LU-Net, addressing segmentation challenges caused by unclear boundaries through a compensation module. Additional enamel segmentation was conducted to establish a measurement coordinate system. Ultimately, we presented the entire quantitative information within the structure in a manner that meets clinical needs. The tool achieved excellent segmentation results, manifested by high Dice coefficients (0.934 and 0.949), intersection over union (0.888 and 0.907), and area under the curve (0.943 and 0.949) for palatal alveolar bone and enamel in the test set. In subsequent measurements, the tool visualizes the quantitative information within the target structure by scatter plots. When comparing the measurements against representative indicators, the tool's measurement results show no statistically significant difference from the ground truth, with small mean absolute error, root mean squared error, and errors interval. Bland-Altman plots and intraclass correlation coefficients indicate the satisfactory agreement compared with manual measurements. We proposed a novel intelligent approach to address the entire quantitative analysis of irregular image structures in the clinical setting. This contributes to enabling clinicians to swiftly and comprehensively grasp structural features, facilitating the design of more personalized treatment plans for different patients, enhancing clinical efficiency and treatment success rates in turn.

智能量化整个不规则牙齿结构
不规则解剖结构的定量分析在口腔医学中至关重要,但临床医生通常只测量结构内的几个代表性指标作为参考。深度学习语义分割为整个定量分析提供了可能。然而,挑战依然存在,包括边界不清导致的分割困难,以及在整个定量分析中获取临床所需的测量地标。以腭齿槽骨为例,我们提出了一种人工智能测量工具,用于不规则牙齿结构的整体定量分析。为了扩大适用范围,我们加入了参数更少、计算要求更低的轻量级网络。我们的方法最终使用了轻量级模型 LU-Net,通过补偿模块解决了边界不清晰造成的分割难题。我们还进行了额外的釉质分割,以建立测量坐标系。最终,我们以符合临床需求的方式呈现了结构内的全部定量信息。该工具取得了出色的分割结果,在测试集中,腭齿槽骨和釉质的狄斯系数(0.934 和 0.949)、相交大于结合(0.888 和 0.907)和曲线下面积(0.943 和 0.949)都很高。在随后的测量中,该工具通过散点图将目标结构内的定量信息可视化。在将测量结果与代表性指标进行比较时,该工具的测量结果显示与基本真实值没有显著的统计学差异,平均绝对误差、均方根误差和误差间隔都很小。布兰德-阿尔特曼图和类内相关系数表明,与人工测量结果相比,两者的一致性令人满意。我们提出了一种新颖的智能方法来解决临床环境中不规则图像结构的整个定量分析问题。这有助于临床医生快速、全面地掌握结构特征,为不同患者设计更个性化的治疗方案,从而提高临床效率和治疗成功率。
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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