Department of Electrical and Computer Engineering, Sungkyunkwan University, Suwon, 16419, South Korea; Center for Neuroscience Imaging Research, Institute for Basic Science, Suwon, 16419, South Korea.
Department of Electrical and Computer Engineering, Sungkyunkwan University, Suwon, 16419, South Korea.
Comput Methods Programs Biomed. 2024 Oct;255:108338. doi: 10.1016/j.cmpb.2024.108338. Epub 2024 Jul 18.
Patients with glioblastoma have a five-year relative survival rate of less than 5 %. Thus, accurately predicting the overall survival (OS) of patients with glioblastoma is crucial for effective treatment planning.
To fully leverage the imaging characteristics of glioblastomas, we propose a segmentation-guided regression method for predicting OS of patients with brain tumors using multimodal magnetic resonance imaging. Specifically, a brain tumor segmentation network was first pre-trained without leveraging survival information. Subsequently, the survival regression network was jointly trained with the guidance of brain tumor segmentation, focusing on tumor voxels and suppressing irrelevant backgrounds.
Our proposed framework, based on the well-known backbone of UNETR++, achieved a Dice score of 0.7910, Spearman correlation of 0.4112, and Harrell's concordance index of 0.6488. The model consistently showed promising results compared with baseline methods on two different datasets (BraTS and UCSF-PDGM). Furthermore, ablation studies on our training configurations demonstrated that both the pre-training segmentation network and contrastive loss significantly improved all metrics for OS prediction.
In this study, we propose a joint learning framework based on a pre-trained segmentation backbone for OS prediction by leveraging a brain tumor segmentation map. By utilizing a spatial feature map, our model can operate using a sliding-window approach, which can be adopted by varying the matrix sizes and resolutions of the input images.
胶质母细胞瘤患者的五年相对生存率低于 5%。因此,准确预测胶质母细胞瘤患者的总生存期(OS)对于有效的治疗计划至关重要。
为了充分利用胶质母细胞瘤的影像学特征,我们提出了一种基于多模态磁共振成像的分割引导回归方法,用于预测脑肿瘤患者的 OS。具体来说,首先在不利用生存信息的情况下对脑肿瘤分割网络进行预训练。随后,在脑肿瘤分割的指导下,联合训练生存回归网络,重点关注肿瘤体素并抑制无关背景。
我们提出的基于 UNETR++的框架在两个不同数据集(BraTS 和 UCSF-PDGM)上的 Dice 评分达到了 0.7910,Spearman 相关系数为 0.4112,Harrell 一致性指数为 0.6488。与基线方法相比,该模型在两个数据集上均表现出了有希望的结果。此外,对我们的训练配置进行的消融研究表明,预训练分割网络和对比损失都显著提高了所有 OS 预测指标。
在这项研究中,我们提出了一种基于预训练分割骨干的联合学习框架,通过利用脑肿瘤分割图来预测 OS。通过使用空间特征图,我们的模型可以使用滑动窗口方法进行操作,通过改变输入图像的矩阵大小和分辨率来采用这种方法。