可扩展性
计算机科学
深度学习
人工智能
合成数据
数据科学
领域(数学)
信号(编程语言)
机器学习
医学影像学
物理
人机交互
数学
数据库
程序设计语言
纯数学
作者
Qinqin Yang,Zi Wang,Kunyuan Guo,Congbo Cai,Xiaobo Qu
标识
DOI:10.1109/msp.2022.3183809
摘要
Deep learning (DL) has driven innovation in the field of computational imaging. One of its bottlenecks is unavailable or insufficient training data. This article reviews an emerging paradigm, imaging physics-based data synthesis (IPADS), that can provide huge training data in biomedical magnetic resonance (MR) without or with few real data. Following the physical law of MR, IPADS generates signals from differential equations or analytical solution models, making learning more scalable and explainable and better protecting privacy. Key components of IPADS learning, including signal generation models, basic DL network structures, enhanced data generation, and learning methods, are discussed. Great IPADS potential has been demonstrated by representative applications in fast imaging, ultrafast signal reconstruction, and accurate parameter quantification. Finally, open questions and future work are discussed.
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