Purpose: To accelerate radially sampled diffusion weighted spin-echo (Rad-DW-SE) acquisition method for generating high quality of apparent diffusion coefficient (ADC) maps. Methods: A deep learning method was developed to generate accurate ADC map reconstruction from undersampled DWI data acquired with the Rad-DW-SE method. The deep learning method integrates convolutional neural networks (CNNs) with vison transformers to generate high quality ADC maps from undersampled DWI data, regularized by a monoexponential ADC model fitting term. A model was trained on DWI data of 147 mice and evaluated on DWI data of 36 mice, with undersampling rates of 4x and 8x. Results: Ablation studies and experimental results have demonstrated that the proposed deep learning model can generate high quality ADC maps from undersampled DWI data, better than alternative deep learning methods under comparison, with their performance quantified on different levels of images, tumors, kidneys, and muscles. Conclusions: The deep learning method with integrated CNNs and transformers provides an effective means to accurately compute ADC maps from undersampled DWI data acquired with the Rad-DW-SE method.
翻译:· 方法:开发了一种深层学习方法,以便从Rad-DW-SE方法获得的DWI低印数据中产生准确的ADC地图重建。结果:减缩研究和实验结果表明,拟议的深层学习模型可以产生高质量的ADC地图,取自未标出DWI数据的DWI数据,比正在比较的替代深层学习方法更好,而其性能则根据不同层次的图像、肿瘤、肾脏和肌肉加以量化。