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基于合成 MRI 的影像组学能改善胶质母细胞瘤患者的生存预测。

Synthetic MRI improves radiomics-based glioblastoma survival prediction.

机构信息

Laboratorio de Procesado de Imagen, Universidad de Valladolid, Valladolid.

Departamento de Neurocirugía, Hospital Universitario Río Hortega, Valladolid, Spain.

出版信息

NMR Biomed. 2022 Sep;35(9):e4754. doi: 10.1002/nbm.4754. Epub 2022 May 21.

DOI:10.1002/nbm.4754
PMID:35485596
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9542221/
Abstract

Glioblastoma is an aggressive and fast-growing brain tumor with poor prognosis. Predicting the expected survival of patients with glioblastoma is a key task for efficient treatment and surgery planning. Survival predictions could be enhanced by means of a radiomic system. However, these systems demand high numbers of multicontrast images, the acquisitions of which are time consuming, giving rise to patient discomfort and low healthcare system efficiency. Synthetic MRI could favor deployment of radiomic systems in the clinic by allowing practitioners not only to reduce acquisition time, but also to retrospectively complete databases or to replace artifacted images. In this work we analyze the replacement of an actually acquired MR weighted image by a synthesized version to predict survival of glioblastoma patients with a radiomic system. Each synthesized version was realistically generated from two acquired images with a deep learning synthetic MRI approach based on a convolutional neural network. Specifically, two weighted images were considered for the replacement one at a time, a T2w and a FLAIR, which were synthesized from the pairs T1w and FLAIR, and T1w and T2w, respectively. Furthermore, a radiomic system for survival prediction, which can classify patients into two groups (survival >480 days and 480 days), was built. Results show that the radiomic system fed with the synthesized image achieves similar performance compared with using the acquired one, and better performance than a model that does not include this image. Hence, our results confirm that synthetic MRI does add to glioblastoma survival prediction within a radiomics-based approach.

摘要

胶质母细胞瘤是一种侵袭性和快速生长的脑肿瘤,预后不良。预测胶质母细胞瘤患者的预期生存时间是有效治疗和手术规划的关键任务。通过放射组学系统可以提高生存预测的准确性。然而,这些系统需要大量的多对比度图像,采集这些图像既耗时又费力,会导致患者不适和医疗系统效率低下。合成 MRI 可以通过允许医生不仅减少采集时间,还可以回顾性地完成数据库或替换伪影图像,从而有利于放射组学系统在临床中的应用。在这项工作中,我们分析了通过放射组学系统用合成版本替代实际采集的磁共振加权图像来预测胶质母细胞瘤患者的生存情况。每个合成版本都是通过基于卷积神经网络的深度学习合成 MRI 方法从两幅采集图像中真实生成的。具体来说,每次替换时只考虑一幅加权图像,即 T2w 和 FLAIR,它们分别是从 T1w 和 FLAIR 以及 T1w 和 T2w 对中合成的。此外,构建了用于生存预测的放射组学系统,该系统可以将患者分为两组(生存时间>480 天和 480 天)。结果表明,使用合成图像的放射组学系统的性能与使用采集图像的系统相似,并且优于不包含该图像的模型的性能。因此,我们的结果证实,在基于放射组学的方法中,合成 MRI 确实可以提高胶质母细胞瘤的生存预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/460790f6a31c/NBM-35-e4754-g006.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/af2a83ab19f0/NBM-35-e4754-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/7b0d87913a5e/NBM-35-e4754-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/75f9861860d4/NBM-35-e4754-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/6252368ebb9c/NBM-35-e4754-g008.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/460790f6a31c/NBM-35-e4754-g006.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/af2a83ab19f0/NBM-35-e4754-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/7b0d87913a5e/NBM-35-e4754-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/75f9861860d4/NBM-35-e4754-g004.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/6252368ebb9c/NBM-35-e4754-g008.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/57d8/9542221/460790f6a31c/NBM-35-e4754-g006.jpg

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