Department of Radiology, Chinese PLA General Hospital, Beijing, 100853, People's Republic of China.
Department of Neurosurgery, Chinese PLA General Hospital, 28 Fuxing Road, Beijing, 100853, People's Republic of China.
Eur Radiol. 2022 Aug;32(8):5679-5687. doi: 10.1007/s00330-022-08638-1. Epub 2022 Feb 19.
Susceptibility-weighted imaging (SWI) is crucial for the characterization of intracranial hemorrhage and mineralization, but has the drawback of long acquisition times. We aimed to propose a deep learning model to accelerate SWI, and evaluate the clinical feasibility of this approach.
A complex-valued convolutional neural network (ComplexNet) was developed to reconstruct high-quality SWI from highly accelerated k-space data. ComplexNet can leverage the inherently complex-valued nature of SWI data and learn richer representations by using complex-valued network. SWI data were acquired from 117 participants who underwent clinical brain MRI examination between 2019 and 2021, including patients with tumor, stroke, hemorrhage, traumatic brain injury, etc. Reconstruction quality was evaluated using quantitative image metrics and image quality scores, including overall image quality, signal-to-noise ratio, sharpness, and artifacts.
The average reconstruction time of ComplexNet was 19 ms per section (1.33 s per participant). ComplexNet achieved significantly improved quantitative image metrics compared to a conventional compressed sensing method and a real-valued network with acceleration rates of 5 and 8 (p < 0.001). Meanwhile, there was no significant difference between fully sampled and ComplexNet approaches in terms of overall image quality and artifacts (p > 0.05) at both acceleration rates. Furthermore, ComplexNet showed comparable diagnostic performance to the fully sampled SWI for visualizing a wide range of pathology, including hemorrhage, cerebral microbleeds, and brain tumor.
ComplexNet can effectively accelerate SWI while providing superior performance in terms of overall image quality and visualization of pathology for routine clinical brain imaging.
• The complex-valued convolutional neural network (ComplexNet) allowed fast and high-quality reconstruction of highly accelerated SWI data, with an average reconstruction time of 19 ms per section. • ComplexNet achieved significantly improved quantitative image metrics compared to a conventional compressed sensing method and a real-valued network with acceleration rates of 5 and 8 (p < 0.001). • ComplexNet showed comparable diagnostic performance to the fully sampled SWI for visualizing a wide range of pathology, including hemorrhage, cerebral microbleeds, and brain tumor.
磁敏感加权成像(SWI)对颅内出血和矿化的特征具有重要意义,但采集时间较长。本研究旨在提出一种深度学习模型来加速 SWI,并评估该方法的临床可行性。
开发了一种复值卷积神经网络(ComplexNet),以从高度加速的 k 空间数据中重建高质量的 SWI。ComplexNet 可以利用 SWI 数据固有的复数值性质,并通过使用复数值网络来学习更丰富的表示。2019 年至 2021 年间,对 117 名接受临床脑部 MRI 检查的参与者进行了 SWI 数据采集,包括肿瘤、中风、出血、创伤性脑损伤等患者。使用定量图像指标和图像质量评分(包括整体图像质量、信噪比、锐度和伪影)评估重建质量。
ComplexNet 的平均重建时间为每个切片 19 毫秒(每位参与者 1.33 秒)。与传统的压缩感知方法和加速率为 5 和 8 的实值网络相比,ComplexNet 实现了显著改善的定量图像指标(p < 0.001)。同时,在这两种加速率下,完全采样和 ComplexNet 方法在整体图像质量和伪影方面没有显著差异(p > 0.05)。此外,ComplexNet 在可视化广泛的病理方面,包括出血、脑微出血和脑肿瘤,与完全采样的 SWI 具有相当的诊断性能。
ComplexNet 可以有效地加速 SWI,同时在整体图像质量和病理可视化方面提供卓越的性能,适用于常规临床脑部成像。
复值卷积神经网络(ComplexNet)允许快速、高质量地重建高度加速的 SWI 数据,每个切片的平均重建时间为 19 毫秒。
与传统的压缩感知方法和加速率为 5 和 8 的实值网络相比,ComplexNet 实现了显著改善的定量图像指标(p < 0.001)。
与完全采样的 SWI 相比,ComplexNet 对可视化广泛的病理,包括出血、脑微出血和脑肿瘤,具有相当的诊断性能。