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跨模态医学图像预测综述
Review of Cross-Modality Medical Image Prediction

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周沛 1   陈后金 1 *   于泽宽 2   彭亚辉 1   李艳凤 1   杨帆 1  
文摘 医学影像技术与设备的进步在生物医学领域的各项研究中发挥着重要作用.跨模态医学图像预测旨在由一种模态图像预测另一种模态图像.本文详细综述了由MRI预测CT图像、7T-Like图像重构、PET预测及其他医学模态预测研究,阐述了各类模态预测的必要性及存在的挑战,说明各类预测方法的特点并进行性能比较,最终得出结论:基于深度学习的跨模态预测在预测精度和预测时间两方面更具优势.
其他语种文摘 Advances in medical imaging technologies and equipment play an important role in the biomedical researches. Cross-modality image-prediction technology predicts one modal image from that of another modal. This paper presents an overview of the literatures on medical imaging prediction technology and its applications, such as predicting Computed Tomography images from Magnetic Resonance (MR) images,7T-like MR image reconstruction, and predicting positron emission tomography images. The aim is twofold: the necessity and challenge for different modality medical image prediction technology; the overview and comparison of various methods in the field. We conclude that the cross-modality image prediction based on the deep learning technology has superiority in both predicting time and precision.
来源 电子学报 ,2019,47(1):220-226 【核心库】
DOI 10.3969/j.issn.0372-2112.2019.01.029
关键词 深度学习 ; CT预测 ; 7T-Like图像重构 ; PET预测
地址

1. 北京交通大学, 北京, 100044  

2. 北京大学, 北京, 100871

语种 中文
文献类型 综述型
ISSN 0372-2112
学科 自动化技术、计算机技术
基金 国家自然科学基金 ;  国家自然科学基金
文献收藏号 CSCD:6437293

参考文献 共 48 共3页

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引证文献 7

1 周涛 医学影像疾病诊断的残差神经网络优化算法研究进展 中国图象图形学报,2020,25(10):2079-2092
CSCD被引 1

2 董国亚 基于深度学习的跨模态医学图像转换 中国医学物理学杂志,2020,37(10):1335-1339
CSCD被引 0 次

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