通过术后早期自动分割对胶质母细胞瘤的切除范围进行标准化评估

Lidia Luque, Karoline Skogen, Bradley J. MacIntosh, Kyrre E. Emblem, Christopher Larsson, David Bouget, Ragnhild Holden Helland, Ingerid Reinertsen, Ole Solheim, Till Schellhorn, Jonas Vardal, Eduardo E. M. Mireles, Einar O. Vik-Mo, Atle Bjørnerud
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摘要

胶质母细胞瘤患者的标准治疗方法包括手术切除肿瘤。手术切除范围(EOR)对预后有重大影响,在临床试验中用于对患者进行分层。在这项研究中,我们开发了一种基于 U-Net 的深度学习模型,用于分割切除手术后 72 小时内进行的术后 MRI 检查中对比度增强的肿瘤,并利用这些分割将切除范围分为最大或亚最大。该模型在本机构的 122 张多参数 MRI 扫描图像上进行了训练,并在外部数据集(n = 248)上获得了 0.52 ± 0.03 的平均 Dice 分数,与文献报道的专家注释者之间的交互一致性相当。我们在内部测试数据集(n = 462)和外部数据集上分别获得了 0.72/0.78 和 0.90/0.87 的 EOR 分类精度/召回率。此外,我们还使用卡普兰-梅耶尔曲线比较了内部测试数据集中最大切除和次最大切除患者的总生存率,这是由临床医生或模型决定的。使用模型和临床 EOR 分类预测的生存率没有明显差异。我们发现,所提出的分割模型能够可靠地对胶质母细胞瘤肿瘤术后早期磁共振扫描的 EOR 进行分类。此外,我们还发现,根据模型的预测对患者进行分层至少与临床医生进行分层具有相同的预后价值。
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Standardized evaluation of the extent of resection in glioblastoma with automated early post-operative segmentation
Standard treatment of patients with glioblastoma includes surgical resection of the tumor. The extent of resection (EOR) achieved during surgery significantly impacts prognosis and is used to stratify patients in clinical trials. In this study, we developed a U-Net-based deep-learning model to segment contrast-enhancing tumor on post-operative MRI exams taken within 72 h of resection surgery and used these segmentations to classify the EOR as either maximal or submaximal. The model was trained on 122 multiparametric MRI scans from our institution and achieved a mean Dice score of 0.52 ± 0.03 on an external dataset (n = 248), a performance ­on par with the interrater agreement between expert annotators as reported in literature. We obtained an EOR classification precision/recall of 0.72/0.78 on the internal test dataset (n = 462) and 0.90/0.87 on the external dataset. Furthermore, Kaplan-Meier curves were used to compare the overall survival between patients with maximal and submaximal resection in the internal test dataset, as determined by either clinicians or the model. There was no significant difference between the survival predictions using the model's and clinical EOR classification. We find that the proposed segmentation model is capable of reliably classifying the EOR of glioblastoma tumors on early post-operative MRI scans. Moreover, we show that stratification of patients based on the model's predictions offers at least the same prognostic value as when done by clinicians.
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