Palkovics Daniel, Hegyi Alexandra, Molnar Balint, Frater Mark, Pinter Csaba, García-Mato David, Diaz-Pinto Andres, Windisch Peter
Department of Periodontology, Semmelweis University, Budapest, Hungary.
Dent.AI Medical Imaging Ltd, Budapest, Hungary.
Clin Oral Investig. 2025 Jan 13;29(1):59. doi: 10.1007/s00784-024-06136-w.
To investigate the performance of a deep learning (DL) model for segmenting cone-beam computed tomography (CBCT) scans taken before and after mandibular horizontal guided bone regeneration (GBR) to evaluate hard tissue changes.
The proposed SegResNet-based DL model was trained on 70 CBCT scans. It was tested on 10 pairs of pre- and post-operative CBCT scans of patients who underwent mandibular horizontal GBR. DL segmentations were compared to semi-automated (SA) segmentations of the same scans. Augmented hard tissue segmentation performance was evaluated by spatially aligning pre- and post-operative CBCT scans and subtracting preoperative segmentations obtained by DL and SA segmentations from the respective postoperative segmentations. The performance of DL compared to SA segmentation was evaluated based on the Dice similarity coefficient (DSC), intersection over the union (IoU), Hausdorff distance (HD95), and volume comparison.
The mean DSC and IoU between DL and SA segmentations were 0.96 ± 0.01 and 0.92 ± 0.02 in both pre- and post-operative CBCT scans. While HD95 values between DL and SA segmentations were 0.62 mm ± 0.16 mm and 0.77 mm ± 0.31 mm for pre- and post-operative CBCTs respectively. The DSC, IoU and HD95 averaged 0.85 ± 0.08; 0.78 ± 0.07 and 0.91 ± 0.92 mm for augmented hard tissue models respectively. Volumes mandible- and augmented hard tissue segmentations did not differ significantly between the DL and SA methods.
The SegResNet-based DL model accurately segmented CBCT scans acquired before and after mandibular horizontal GBR. However, the training database must be further increased to increase the model's robustness.
Automated DL segmentation could aid treatment planning for GBR and subsequent implant placement procedures and in evaluating hard tissue changes.
研究一种深度学习(DL)模型在分割下颌水平引导骨再生(GBR)前后的锥形束计算机断层扫描(CBCT)图像以评估硬组织变化方面的性能。
所提出的基于SegResNet的DL模型在70例CBCT扫描图像上进行训练。对10例接受下颌水平GBR手术患者的术前和术后CBCT扫描图像对进行测试。将DL分割结果与相同扫描图像的半自动(SA)分割结果进行比较。通过将术前和术后CBCT扫描图像进行空间对齐,并从各自的术后分割结果中减去通过DL和SA分割获得的术前分割结果,来评估增强的硬组织分割性能。基于Dice相似系数(DSC)、交并比(IoU)、豪斯多夫距离(HD95)和体积比较来评估DL与SA分割相比的性能。
在术前和术后CBCT扫描中,DL与SA分割之间的平均DSC和IoU分别为0.96±0.01和0.92±0.02。术前和术后CBCT中,DL与SA分割之间的HD95值分别为0.62mm±0.16mm和0.77mm±0.31mm。增强硬组织模型的DSC、IoU和HD95平均值分别为0.85±0.08;0.78±0.07和0.91±0.92mm。DL和SA方法在下颌骨和增强硬组织分割的体积上没有显著差异。
基于SegResNet的DL模型能够准确分割下颌水平GBR前后获取的CBCT扫描图像。然而,必须进一步增加训练数据库以提高模型的鲁棒性。
自动化的DL分割有助于GBR治疗计划及后续种植体植入手术,并可用于评估硬组织变化。