文献检索文档翻译深度研究
Suppr Zotero 插件Zotero 插件
邀请有礼套餐&价格历史记录

新学期,新优惠

限时优惠:9月1日-9月22日

30天高级会员仅需29元

1天体验卡首发特惠仅需5.99元

了解详情
不再提醒
插件&应用
Suppr Zotero 插件Zotero 插件浏览器插件Mac 客户端Windows 客户端微信小程序
高级版
套餐订阅购买积分包
AI 工具
文献检索文档翻译深度研究
关于我们
关于 Suppr公司介绍联系我们用户协议隐私条款
关注我们

Suppr 超能文献

核心技术专利:CN118964589B侵权必究
粤ICP备2023148730 号-1Suppr @ 2025

Feasibility of Simulated Postcontrast MRI of Glioblastomas and Lower-Grade Gliomas by Using Three-dimensional Fully Convolutional Neural Networks.

作者信息

Calabrese Evan, Rudie Jeffrey D, Rauschecker Andreas M, Villanueva-Meyer Javier E, Cha Soonmee

机构信息

Department of Radiology and Biomedical Imaging (E.C., J.D.R., A.M.R., J.E.V.M., S.C.) and Center for Intelligent Imaging (E.C.), University of California at San Francisco, 350 Parnassus Ave, Suite 307H, San Francisco, CA 94143-0628.

出版信息

Radiol Artif Intell. 2021 May 19;3(5):e200276. doi: 10.1148/ryai.2021200276. eCollection 2021 Sep.


DOI:10.1148/ryai.2021200276
PMID:34617027
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8489450/
Abstract

PURPOSE: To evaluate the feasibility and accuracy of simulated postcontrast T1-weighted brain MR images generated by using precontrast MR images in patients with brain glioma. MATERIALS AND METHODS: In this retrospective study, a three-dimensional deep convolutional neural network was developed to simulate T1-weighted postcontrast images from eight precontrast sequences in 400 patients (mean age, 57 years; 239 men; from 2015 to 2020), including 332 with glioblastoma and 68 with lower-grade gliomas. Performance was evaluated by using quantitative image similarity and error metrics and enhancing tumor overlap analysis. Performance was also assessed on a multicenter external dataset ( = 286 from the 2019 Multimodal Brain Tumor Segmentation Challenge; mean age, 60 years; ratio of men to women unknown) by using transfer learning. A subset of cases was reviewed by neuroradiologist readers to assess whether simulated images affected the ability to determine the tumor grade. RESULTS: Simulated whole-brain postcontrast images were both qualitatively and quantitatively similar to the real postcontrast images in terms of quantitative image similarity (structural similarity index of 0.84 ± 0.05), pixelwise error (symmetric mean absolute percent error of 3.65%), and enhancing tumor compartment overlap (Dice coefficient, 0.65 ± 0.25). Similar results were achieved with the external dataset (Dice coefficient, 0.62 ± 0.27). There was no difference in the ability of the neuroradiologist readers to determine the tumor grade in real versus simulated images (accuracy, 87.7% vs 90.6%; = .87). CONCLUSION: The developed model was capable of producing simulated postcontrast T1-weighted MR images that were similar to real acquired images as determined by both quantitative analysis and radiologist assessment. MR-Contrast Agent, MR-Imaging, CNS, Brain/Brain Stem, Contrast Agents-Intravenous, Neoplasms-Primary, Experimental Investigations, Technology Assessment, Supervised Learning, Transfer Learning, Convolutional Neural Network, Deep Learning Algorithms, Machine Learning Algorithms © RSNA, 2021.

摘要

相似文献

[1]
Feasibility of Simulated Postcontrast MRI of Glioblastomas and Lower-Grade Gliomas by Using Three-dimensional Fully Convolutional Neural Networks.

Radiol Artif Intell. 2021-5-19

[2]
MRI-based Identification and Classification of Major Intracranial Tumor Types by Using a 3D Convolutional Neural Network: A Retrospective Multi-institutional Analysis.

Radiol Artif Intell. 2021-8-11

[3]
Deep Learning to Simulate Contrast-enhanced Breast MRI of Invasive Breast Cancer.

Radiology. 2023-3

[4]
Deep Learning-based Identification of Brain MRI Sequences Using a Model Trained on Large Multicentric Study Cohorts.

Radiol Artif Intell. 2024-1

[5]
Generative Adversarial Networks to Synthesize Missing T1 and FLAIR MRI Sequences for Use in a Multisequence Brain Tumor Segmentation Model.

Radiology. 2021-5

[6]
A Deep Learning Segmentation Pipeline for Cardiac T1 Mapping Using MRI Relaxation-based Synthetic Contrast Augmentation.

Radiol Artif Intell. 2022-11-2

[7]
Brain tumor segmentation and grading of lower-grade glioma using deep learning in MRI images.

Comput Biol Med. 2020-6

[8]
Postoperative glioma segmentation in CT image using deep feature fusion model guided by multi-sequence MRIs.

Eur Radiol. 2019-10-24

[9]
Longitudinal Assessment of Posttreatment Diffuse Glioma Tissue Volumes with Three-dimensional Convolutional Neural Networks.

Radiol Artif Intell. 2022-8-3

[10]
MR-based synthetic CT generation using a deep convolutional neural network method.

Med Phys. 2017-4

引用本文的文献

[1]
Value of artificial intelligence in neuro-oncology.

Lancet Digit Health. 2025-8-8

[2]
Recommendations on the use of gadolinium-based contrast agents in the diagnosis and monitoring of common adult intracranial tumours.

Eur Radiol. 2025-6-6

[3]
New ways to use imaging data in cardiovascular research: survey of opinions on federated learning and synthetic data.

Eur Heart J Imaging Methods Pract. 2025-1-24

[4]
Development of a deep learning-based model to evaluate changes during radiotherapy using cervical cancer digital pathology.

J Radiat Res. 2025-3-24

[5]
Comparison of intensity normalization methods in prostate, brain, and breast cancer multi-parametric magnetic resonance imaging.

Front Oncol. 2025-2-7

[6]
Brain tumor enhancement prediction from pre-contrast conventional weighted images using synthetic multiparametric mapping and generative artificial intelligence.

Quant Imaging Med Surg. 2025-1-2

[7]
Deep learning based apparent diffusion coefficient map generation from multi-parametric MR images for patients with diffuse gliomas.

Med Phys. 2025-2

[8]
Evaluation of an Image-based Classification Model to Identify Glioma Subtypes Using Arterial Spin Labeling Perfusion MRI On the Publicly Available UCSF Glioma Dataset.

Clin Neuroradiol. 2025-3

[9]
Synthesizing Contrast-Enhanced MR Images from Noncontrast MR Images Using Deep Learning.

AJNR Am J Neuroradiol. 2024-3-7

[10]
Synthetic Inflammation Imaging with PatchGAN Deep Learning Networks.

Bioengineering (Basel). 2023-4-25

本文引用的文献

[1]
A fully automated artificial intelligence method for non-invasive, imaging-based identification of genetic alterations in glioblastomas.

Sci Rep. 2020-7-16

[2]
Deep Learning for Predicting Enhancing Lesions in Multiple Sclerosis from Noncontrast MRI.

Radiology. 2019-12-17

[3]
Predicting O-Water PET cerebral blood flow maps from multi-contrast MRI using a deep convolutional neural network with evaluation of training cohort bias.

J Cereb Blood Flow Metab. 2020-11

[4]
Can Virtual Contrast Enhancement in Brain MRI Replace Gadolinium?: A Feasibility Study.

Invest Radiol. 2019-10

[5]
MRI-only based synthetic CT generation using dense cycle consistent generative adversarial networks.

Med Phys. 2019-6-12

[6]
Advancing The Cancer Genome Atlas glioma MRI collections with expert segmentation labels and radiomic features.

Sci Data. 2017-9-5

[7]
Gadolinium deposition in the brain: summary of evidence and recommendations.

Lancet Neurol. 2017-6-13

[8]
Synthetic MRI for Clinical Neuroimaging: Results of the Magnetic Resonance Image Compilation (MAGiC) Prospective, Multicenter, Multireader Trial.

AJNR Am J Neuroradiol. 2017-6

[9]
Variability of physiological brain perfusion in healthy subjects - A systematic review of modifiers. Considerations for multi-center ASL studies.

J Cereb Blood Flow Metab. 2017-4-10

[10]
MR-based synthetic CT generation using a deep convolutional neural network method.

Med Phys. 2017-4

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

推荐工具

医学文档翻译智能文献检索