利用多参数术前磁共振成像推断胶质母细胞瘤的治疗生存期

Xiaofeng Liu, Nadya Shusharina, Helen A Shih, C-C Jay Kuo, Georges El Fakhri, Jonghye Woo
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引用次数: 0

摘要

在这项研究中,我们旨在根据术前磁共振(MR)扫描结果预测接受不同治疗的胶质母细胞瘤(GBM)患者的生存时间(ST)。通过比较不同治疗方法的存活时间,可以实现个性化和精确的治疗规划。患者目前的状况(由磁共振扫描显示)和治疗方法的选择都是导致 ST 的原因,这一点已得到公认。以往基于磁共振成像的相关胶质母细胞瘤ST研究只关注磁共振扫描与ST的直接映射,而没有包括治疗与ST之间的内在因果关系。为了解决这一局限性,我们提出了一种以治疗为条件的胶质母细胞瘤ST回归模型,该模型除了包含磁共振扫描信息外,还包含了治疗信息。我们的方法使我们能够以统一的方式有效利用所有治疗方法的数据,而不必为每种治疗方法训练单独的模型。此外,通过我们采用的自适应实例归一化,治疗可以有效地注入到每个卷积层中。我们在 BraTS20 ST 预测任务中对我们的框架进行了评估。我们考虑了三种治疗方案:全切除术(GTR)、次全切除术(STR)和不切除术。评估结果表明,注入治疗方案对估计 GBM 存活率非常有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Treatment-wise Glioblastoma Survival Inference with Multi-parametric Preoperative MRI.

In this work, we aim to predict the survival time (ST) of glioblastoma (GBM) patients undergoing different treatments based on preoperative magnetic resonance (MR) scans. The personalized and precise treatment planning can be achieved by comparing the ST of different treatments. It is well established that both the current status of the patient (as represented by the MR scans) and the choice of treatment are the cause of ST. While previous related MR-based glioblastoma ST studies have focused only on the direct mapping of MR scans to ST, they have not included the underlying causal relationship between treatments and ST. To address this limitation, we propose a treatment-conditioned regression model for glioblastoma ST that incorporates treatment information in addition to MR scans. Our approach allows us to effectively utilize the data from all of the treatments in a unified manner, rather than having to train separate models for each of the treatments. Furthermore, treatment can be effectively injected into each convolutional layer through the adaptive instance normalization we employ. We evaluate our framework on the BraTS20 ST prediction task. Three treatment options are considered: Gross Total Resection (GTR), Subtotal Resection (STR), and no resection. The evaluation results demonstrate the effectiveness of injecting the treatment for estimating GBM survival.

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