Inbrain Lab, Department of Physics, Faculty of Philosophy, Sciences and Letters, University of São Paulo, Ribeirão Preto, SP, Brazil.
Medical Signals and Imaging Computing Lab, Department of Computing and Mathematics, Faculty of Philosophy, Sciences and Letters, University of São Paulo, Ribeirão Preto, SP, Brazil.
Magn Reson Imaging. 2024 Sep;111:217-228. doi: 10.1016/j.mri.2024.05.009. Epub 2024 May 14.
Accurately studying structural connectivity requires precise tract segmentation strategies. The U-Net network has been widely recognized for its exceptional capacity in image segmentation tasks and provides remarkable results in large tract segmentation when high-quality diffusion-weighted imaging (DWI) data are used. However, short tracts, which are associated with various neurological diseases, pose specific challenges, particularly when high-quality DWI data acquisition within clinical settings is concerned. Here, we aimed to evaluate the U-Net network ability to segment short tracts by using DWI data acquired in different experimental conditions. To this end, we conducted three types of training experiments involving 350 healthy subjects and 11 white matter tracts, including the anterior, posterior, and hippocampal commissure, fornix, and uncinated fasciculus. In the first experiment, the model was exclusively trained with high-quality data of the Human Connectome Project (HCP) dataset. The second experiment focused on images of healthy subjects acquired from a local hospital dataset, representing a typical clinical routine acquisition. In the third experiment, a hybrid training approach was employed, combining data of the HCP and local hospital datasets. Then, the best model was also tested in unseen DWIs of 10 epilepsy patients of the local hospital and 10 healthy subjects acquired on a scanner from another company. The outcomes of the third experiment demonstrated a notable enhancement in performance when contrasted with the preceding trials. Specifically, the short tracts within the local hospital dataset achieved Dice scores ranging between 0.60 and 0.65. Similar intervals were obtained with HCP data in the first experiment, and a substantial improvement compared to the scores between 0.37 and 0.50 obtained with the local hospital dataset at the same experiment. This improvement persisted when the method was applied to diverse scenarios, including different scanner acquisitions and epilepsy patients. These results indicate that combining datasets from different sources, coupled with resolution standardization strengthens the neural network ability to generalize predictions across a spectrum of datasets. Nevertheless, short tract segmentation performance is intricately linked to the training composition, to validation, and to testing data. Moreover, curved tracts have intricate structural nature, which adds complexities to their segmenting. Although the network training approach tested herein has provided promising results, caution must be taken when extrapolating its application to datasets acquired under distinct experimental conditions, even in the case of higher-quality data or analysis of long or short tracts.
准确研究结构连接需要精确的束分割策略。U-Net 网络在图像分割任务中具有出色的能力,并且在使用高质量弥散加权成像 (DWI) 数据时,在大束分割方面具有出色的结果。然而,与各种神经疾病相关的短束存在特定的挑战,特别是在临床环境中获取高质量 DWI 数据时。在这里,我们旨在评估 U-Net 网络通过使用不同实验条件下获取的 DWI 数据分割短束的能力。为此,我们进行了三种类型的训练实验,涉及 350 名健康受试者和 11 条白质束,包括前束、后束和海马连合、穹窿和钩束。在第一个实验中,该模型仅使用 HCP 数据集的高质量数据进行训练。第二个实验侧重于从当地医院数据集获取的健康受试者的图像,代表典型的临床常规采集。在第三个实验中,采用了混合训练方法,结合了 HCP 和当地医院数据集的数据。然后,该最佳模型还在当地医院的 10 名癫痫患者和另一家公司扫描仪上获取的 10 名健康受试者的未见过 DWIs 中进行了测试。第三个实验的结果表明,与前两个实验相比,性能有了显著提高。具体来说,当地医院数据集内的短束的 Dice 评分在 0.60 到 0.65 之间。在第一个实验中,HCP 数据获得了类似的区间,与同一实验中来自当地医院数据集的 0.37 到 0.50 之间的分数相比,有了显著的提高。当该方法应用于不同的场景,包括不同的扫描仪采集和癫痫患者时,这种改进仍然存在。这些结果表明,结合来自不同来源的数据集,再加上分辨率标准化,增强了神经网络在一系列数据集之间进行泛化预测的能力。然而,短束分割性能与训练组成、验证和测试数据密切相关。此外,弯曲束具有复杂的结构性质,这增加了它们分割的复杂性。虽然本文测试的网络训练方法提供了有希望的结果,但在将其应用于不同实验条件下获取的数据集时,即使在使用更高质量的数据或分析长束或短束的情况下,也必须谨慎。