通过相位对比 MRI 和深度学习自动量化大脑总血流量

IF 2.9 2区 工程技术 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Jinwon Kim, Hyebin Lee, Sung Suk Oh, Jinhee Jang, Hyunyeol Lee
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引用次数: 0

摘要

大脑输入血液的知识,即脑总血流量(tCBF),对于评估大脑健康状况非常重要。相位对比(PC)磁共振成像(MRI)可以绘制血流速度图,从而对 tCBF 进行无创测量。在这一过程中,手动选择供脑动脉是必不可少的步骤,但这一步骤耗时且往往具有主观性。因此,这项工作的目的是开发和验证一种基于深度学习(DL)的自动 tCBF 定量技术。为了提高深度学习对动脉血管的分割性能,在预处理步骤中,将 PC MRI 的幅值和相位图像乘以数倍。之后,在 218 幅图像上训练 U-Net 进行三类分割。在 40 张测试图像和从外部获取的 20 个数据集上,根据 Dice 系数和交叉-过合(IoU)对网络性能进行了评估。最后,根据 DL 预测的血管分割图计算出 tCBF,并通过判定相关系数 (R2)、类内相关系数 (ICC)、配对 t 检验和 Bland-Altman 分析与人工得出的值进行比较,对其准确性进行统计评估。总体而言,DL分割网络能在内部(Dice=0.92,IoU=0.86)和外部(Dice=0.90,IoU=0.82)测试中准确标记动脉血管。此外,对 tCBF 估计值的统计分析显示,在内部(R2=0.85,ICC=0.91,p=0.52)和外部(R2=0.88,ICC=0.93,p=0.88)测试组中,自动量化与人工量化之间的一致性良好。结果表明,通过颈部 PC MRI 和深度学习量化 tCBF 的简单自动化方案是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automated Quantification of Total Cerebral Blood Flow from Phase-Contrast MRI and Deep Learning

Automated Quantification of Total Cerebral Blood Flow from Phase-Contrast MRI and Deep Learning

Knowledge of input blood to the brain, which is represented as total cerebral blood flow (tCBF), is important in evaluating brain health. Phase-contrast (PC) magnetic resonance imaging (MRI) enables blood velocity mapping, allowing for noninvasive measurements of tCBF. In the procedure, manual selection of brain-feeding arteries is an essential step, but is time-consuming and often subjective. Thus, the purpose of this work was to develop and validate a deep learning (DL)-based technique for automated tCBF quantifications. To enhance the DL segmentation performance on arterial blood vessels, in the preprocessing step magnitude and phase images of PC MRI were multiplied several times. Thereafter, a U-Net was trained on 218 images for three-class segmentation. Network performance was evaluated in terms of the Dice coefficient and the intersection-over-union (IoU) on 40 test images, and additionally, on externally acquired 20 datasets. Finally, tCBF was calculated from the DL-predicted vessel segmentation maps, and its accuracy was statistically assessed with the correlation of determination (R2), the intraclass correlation coefficient (ICC), paired t-tests, and Bland-Altman analysis, in comparison to manually derived values. Overall, the DL segmentation network provided accurate labeling of arterial blood vessels for both internal (Dice=0.92, IoU=0.86) and external (Dice=0.90, IoU=0.82) tests. Furthermore, statistical analyses for tCBF estimates revealed good agreement between automated versus manual quantifications in both internal (R2=0.85, ICC=0.91, p=0.52) and external (R2=0.88, ICC=0.93, p=0.88) test groups. The results suggest feasibility of a simple and automated protocol for quantifying tCBF from neck PC MRI and deep learning.

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来源期刊
Journal of Digital Imaging
Journal of Digital Imaging 医学-核医学
CiteScore
7.50
自引率
6.80%
发文量
192
审稿时长
6-12 weeks
期刊介绍: The Journal of Digital Imaging (JDI) is the official peer-reviewed journal of the Society for Imaging Informatics in Medicine (SIIM). JDI’s goal is to enhance the exchange of knowledge encompassed by the general topic of Imaging Informatics in Medicine such as research and practice in clinical, engineering, and information technologies and techniques in all medical imaging environments. JDI topics are of interest to researchers, developers, educators, physicians, and imaging informatics professionals. Suggested Topics PACS and component systems; imaging informatics for the enterprise; image-enabled electronic medical records; RIS and HIS; digital image acquisition; image processing; image data compression; 3D, visualization, and multimedia; speech recognition; computer-aided diagnosis; facilities design; imaging vocabularies and ontologies; Transforming the Radiological Interpretation Process (TRIP™); DICOM and other standards; workflow and process modeling and simulation; quality assurance; archive integrity and security; teleradiology; digital mammography; and radiological informatics education.
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