Salimi Yazdan, Shiri Isaac, Mansouri Zahra, Zaidi Habib
Division of Nuclear Medicine and Molecular Imaging, Geneva University Hospital CH-1211 Geneva, Switzerland.
Division of Nuclear Medicine and Molecular Imaging, Geneva University Hospital CH-1211 Geneva, Switzerland; Department of Cardiology, Inselspital, Bern University Hospital, University of Bern, Switzerland.
Phys Med. 2025 Feb;130:104911. doi: 10.1016/j.ejmp.2025.104911. Epub 2025 Feb 2.
This study aimed to develop a deep-learning framework to generate multi-organ masks from CT images in adult and pediatric patients.
A dataset consisting of 4082 CT images and ground-truth manual segmentation from various databases, including 300 pediatric cases, were collected. In strategy#1, the manual segmentation masks provided by public databases were split into training (90%) and testing (10% of each database named subset #1) cohort. The training set was used to train multiple nnU-Net networks in five-fold cross-validation (CV) for 26 separate organs. In the next step, the trained models from strategy #1 were used to generate missing organs for the entire dataset. This generated data was then used to train a multi-organ nnU-Net segmentation model in a five-fold CV (strategy#2). Models' performance were evaluated in terms of Dice coefficient (DSC) and other well-established image segmentation metrics.
The lowest CV DSC for strategy#1 was 0.804 ± 0.094 for adrenal glands while average DSC > 0.90 were achieved for 17/26 organs. The lowest DSC for strategy#2 (0.833 ± 0.177) was obtained for the pancreas, whereas DSC > 0.90 was achieved for 13/19 of the organs. For all mutual organs included in subset #1 and subset #2, our model outperformed the TotalSegmentator models in both strategies. In addition, our models outperformed the TotalSegmentator models on subset #3.
Our model was trained on images with significant variability from different databases, producing acceptable results on both pediatric and adult cases, making it well-suited for implementation in clinical setting.
本研究旨在开发一种深度学习框架,以从成人和儿科患者的CT图像中生成多器官掩码。
收集了一个由4082张CT图像和来自各种数据库的真实手动分割组成的数据集,其中包括300例儿科病例。在策略#1中,将公共数据库提供的手动分割掩码分为训练集(90%)和测试集(每个数据库的10%,称为子集#1)。训练集用于在五折交叉验证(CV)中训练26个不同器官的多个nnU-Net网络。下一步,使用策略#1中训练的模型为整个数据集生成缺失的器官。然后,将生成的数据用于在五折CV中训练多器官nnU-Net分割模型(策略#2)。根据骰子系数(DSC)和其他成熟的图像分割指标评估模型的性能。
策略#1的最低CV DSC,肾上腺为0.804±0.094,而26个器官中有17个的平均DSC>0.90。策略#2的最低DSC(0.833±0.177)出现在胰腺,而19个器官中有13个的DSC>0.90。对于子集#1和子集#2中包含的所有共同器官,我们的模型在两种策略中均优于TotalSegmentator模型。此外,我们的模型在子集#3上也优于TotalSegmentator模型。
我们的模型在来自不同数据库的具有显著变异性的图像上进行训练,在儿科和成人病例中均产生了可接受的结果,非常适合在临床环境中实施。