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基于深度学习的对比后 T1 加权 MRI 合成用于神经肿瘤学中的肿瘤反应评估:一项多中心、回顾性队列研究。

Deep-learning-based synthesis of post-contrast T1-weighted MRI for tumour response assessment in neuro-oncology: a multicentre, retrospective cohort study.

机构信息

Department of Neuroradiology, Heidelberg University Hospital, Heidelberg, Germany.

Medical Image Computing, German Cancer Research Center, Heidelberg, Germany.

出版信息

Lancet Digit Health. 2021 Dec;3(12):e784-e794. doi: 10.1016/S2589-7500(21)00205-3. Epub 2021 Oct 20.

DOI:10.1016/S2589-7500(21)00205-3
PMID:34688602
Abstract

BACKGROUND

Gadolinium-based contrast agents (GBCAs) are widely used to enhance tissue contrast during MRI scans and play a crucial role in the management of patients with cancer. However, studies have shown gadolinium deposition in the brain after repeated GBCA administration with yet unknown clinical significance. We aimed to assess the feasibility and diagnostic value of synthetic post-contrast T1-weighted MRI generated from pre-contrast MRI sequences through deep convolutional neural networks (dCNN) for tumour response assessment in neuro-oncology.

METHODS

In this multicentre, retrospective cohort study, we used MRI examinations to train and validate a dCNN for synthesising post-contrast T1-weighted sequences from pre-contrast T1-weighted, T2-weighted, and fluid-attenuated inversion recovery sequences. We used MRI scans with availability of these sequences from 775 patients with glioblastoma treated at Heidelberg University Hospital, Heidelberg, Germany (775 MRI examinations); 260 patients who participated in the phase 2 CORE trial (1083 MRI examinations, 59 institutions); and 505 patients who participated in the phase 3 CENTRIC trial (3147 MRI examinations, 149 institutions). Separate training runs to rank the importance of individual sequences and (for a subset) diffusion-weighted imaging were conducted. Independent testing was performed on MRI data from the phase 2 and phase 3 EORTC-26101 trial (521 patients, 1924 MRI examinations, 32 institutions). The similarity between synthetic and true contrast enhancement on post-contrast T1-weighted MRI was quantified using the structural similarity index measure (SSIM). Automated tumour segmentation and volumetric tumour response assessment based on synthetic versus true post-contrast T1-weighted sequences was performed in the EORTC-26101 trial and agreement was assessed with Kaplan-Meier plots.

FINDINGS

The median SSIM score for predicting contrast enhancement on synthetic post-contrast T1-weighted sequences in the EORTC-26101 test set was 0·818 (95% CI 0·817-0·820). Segmentation of the contrast-enhancing tumour from synthetic post-contrast T1-weighted sequences yielded a median tumour volume of 6·31 cm (5·60 to 7·14), thereby underestimating the true tumour volume by a median of -0·48 cm (-0·37 to -0·76) with the concordance correlation coefficient suggesting a strong linear association between tumour volumes derived from synthetic versus true post-contrast T1-weighted sequences (0·782, 0·751-0·807, p<0·0001). Volumetric tumour response assessment in the EORTC-26101 trial showed a median time to progression of 4·2 months (95% CI 4·1-5·2) with synthetic post-contrast T1-weighted and 4·3 months (4·1-5·5) with true post-contrast T1-weighted sequences (p=0·33). The strength of the association between the time to progression as a surrogate endpoint for predicting the patients' overall survival in the EORTC-26101 cohort was similar when derived from synthetic post-contrast T1-weighted sequences (hazard ratio of 1·749, 95% CI 1·282-2·387, p=0·0004) and model C-index (0·667, 0·622-0·708) versus true post-contrast T1-weighted MRI (1·799, 95% CI 1·314-2·464, p=0·0003) and model C-index (0·673, 95% CI 0·626-0·711).

INTERPRETATION

Generating synthetic post-contrast T1-weighted MRI from pre-contrast MRI using dCNN is feasible and quantification of the contrast-enhancing tumour burden from synthetic post-contrast T1-weighted MRI allows assessment of the patient's response to treatment with no significant difference by comparison with true post-contrast T1-weighted sequences with administration of GBCAs. This finding could guide the application of dCNN in radiology to potentially reduce the necessity of GBCA administration.

FUNDING

Deutsche Forschungsgemeinschaft.

摘要

背景

钆基造影剂(GBCAs)在 MRI 扫描中被广泛用于增强组织对比度,并在癌症患者的管理中发挥着关键作用。然而,研究表明,在重复使用 GBCA 后,大脑中会出现钆沉积,但其临床意义尚不清楚。我们旨在评估通过深度卷积神经网络(dCNN)从对比前 MRI 序列生成合成对比后 T1 加权 MRI 来评估神经肿瘤学中肿瘤反应的可行性和诊断价值。

方法

在这项多中心、回顾性队列研究中,我们使用 MRI 检查来训练和验证 dCNN,以从对比前 T1 加权、T2 加权和液体衰减反转恢复序列生成合成对比后 T1 加权序列。我们使用来自德国海德堡大学医院治疗的胶质母细胞瘤患者的 MRI 检查(775 名患者,775 次 MRI 检查)、参加 CORE 试验 2 期(260 名患者,1083 次 MRI 检查,59 个机构)和参加 CENTRIC 试验 3 期(505 名患者,3147 次 MRI 检查,149 个机构)的患者的这些序列的 MRI 检查。进行了单独的训练运行,以对单个序列的重要性进行排名(对于子集)和扩散加权成像。在 EORTC-26101 试验的 2 期和 3 期(521 名患者,1924 次 MRI 检查,32 个机构)中进行了独立的测试。使用结构相似性指数测量(SSIM)来量化合成和真实对比增强之间的相似性。在 EORTC-26101 试验中进行了基于合成与真实对比后 T1 加权序列的肿瘤自动分割和容积肿瘤反应评估,并通过 Kaplan-Meier 图评估了一致性。

结果

EORTC-26101 测试集中,预测合成对比后 T1 加权序列中对比增强的中位数 SSIM 评分为 0.818(95%CI 0.817-0.820)。从合成对比后 T1 加权序列中分割增强的肿瘤,得到的肿瘤体积中位数为 6.31cm(5.60-7.14),因此,与真实肿瘤体积相比,肿瘤体积低估了中位数-0.48cm(-0.37-0.76),而肿瘤体积来源于合成与真实对比后 T1 加权序列之间的一致性相关系数表明存在强烈的线性关联(0.782,0.751-0.807,p<0.0001)。EORTC-26101 试验中的容积肿瘤反应评估显示,中位无进展生存期为 4.2 个月(95%CI 4.1-5.2),合成对比后 T1 加权组为 4.3 个月(4.1-5.5),真实对比后 T1 加权组为 4.3 个月(4.1-5.5)(p=0.33)。EORTC-26101 队列中,作为预测患者总生存期的替代终点,进展时间的关联强度与从合成对比后 T1 加权序列(危险比为 1.749,95%CI 1.282-2.387,p=0.0004)和模型 C 指数(0.667,0.622-0.708)相比,真实对比后 T1 加权 MRI(1.799,95%CI 1.314-2.464,p=0.0003)和模型 C 指数(0.673,95%CI 0.626-0.711)相似。

解释

使用 dCNN 从对比前 MRI 生成合成对比后 T1 加权 MRI 是可行的,从合成对比后 T1 加权 MRI 中量化对比增强的肿瘤负担,可以评估患者对 GBCA 给药治疗的反应,与真实对比后 T1 加权 MRI 无显著差异。这一发现可能指导放射学中 dCNN 的应用,有可能减少 GBCA 给药的必要性。

资助

德国研究基金会。

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