Winther Hinrich B, Gutberlet Marcel, Hundt Christian, Kaireit Till F, Alsady Tawfik Moher, Schmidt Bertil, Wacker Frank, Sun Yanping, Dettmer Sabine, Maschke Sabine K, Hinrichs Jan B, Jambawalikar Sachin, Prince Martin R, Barr R Graham, Vogel-Claussen Jens
Department of Diagnostic and Interventional Radiology, Hannover Medical School, Hannover, Germany.
NVIDIA AI Technology Center, Luxembourg, Luxembourg.
J Magn Reson Imaging. 2020 Feb;51(2):571-579. doi: 10.1002/jmri.26853. Epub 2019 Jul 5.
Chronic obstructive pulmonary disease (COPD) is associated with high morbidity and mortality. Identification of imaging biomarkers for phenotyping is necessary for future treatment and therapy monitoring. However, translation of visual analytic pipelines into clinics or their use in large-scale studies is significantly slowed by time-consuming postprocessing steps.
To implement an automated tool chain for regional quantification of pulmonary microvascular blood flow in order to reduce analysis time and user variability.
Prospective.
In all, 90 MRI scans of 63 patients, of which 31 had a COPD with a mean Global Initiative for Chronic Obstructive Lung Disease status of 1.9 ± 0.64 (μ ± σ).
FIELD STRENGTH/SEQUENCE: 1.5T dynamic gadolinium-enhanced MRI measurement using 4D dynamic contrast material-enhanced (DCE) time-resolved angiography acquired in a single breath-hold in inspiration. [Correction added on August 20, 2019, after first online publication: The field strength in the preceding sentence was corrected.] ASSESSMENT: We built a 3D convolutional neural network for semantic segmentation using 29 manually segmented perfusion maps. All five lobes of the lung are denoted, including the middle lobe. Evaluation was performed on 61 independent cases from two sites of the Multi-Ethnic Study of Arteriosclerosis (MESA)-COPD study. We publish our implementation of a model-free deconvolution filter according to Sourbron et al for 4D DCE MRI scans as open source.
Cross-validation 29/61 (# training / # testing), intraclass correlation coefficient (ICC), Spearman ρ, Pearson r, Sørensen-Dice coefficient, and overlap.
Segmentations and derived clinical parameters were processed in ~90 seconds per case on a Xeon E5-2637v4 workstation with Tesla P40 GPUs. Clinical parameters and predicted segmentations exhibit high concordance with the ground truth regarding median perfusion for all lobes with an ICC of 0.99 and a Sørensen-Dice coefficient of 93.4 ± 2.8 (μ ± σ).
We present a robust end-to-end pipeline that allows for the extraction of perfusion-based biomarkers for all lung lobes in 4D DCE MRI scans by combining model-free deconvolution with deep learning.
3 Technical Efficacy: Stage 2 J. Magn. Reson. Imaging 2020;51:571-579.
慢性阻塞性肺疾病(COPD)具有较高的发病率和死亡率。识别用于表型分析的影像生物标志物对于未来的治疗和治疗监测至关重要。然而,视觉分析流程在临床中的应用或在大规模研究中的使用因耗时的后处理步骤而显著放缓。
实施一种用于肺微血管血流区域定量的自动化工具链,以减少分析时间和用户变异性。
前瞻性研究。
共纳入63例患者的90次MRI扫描,其中31例患有COPD,慢性阻塞性肺疾病全球倡议(Global Initiative for Chronic Obstructive Lung Disease)状态的平均值为1.9±0.64(μ±σ)。
场强/序列:使用1.5T动态钆增强MRI测量,在吸气时单次屏气采集4D动态对比剂增强(DCE)时间分辨血管造影。[2019年8月20日首次在线发表后添加的更正:前一句中的场强已更正。]评估:我们使用29个手动分割的灌注图构建了一个用于语义分割的3D卷积神经网络。标记了肺的所有五个叶,包括中叶。对来自动脉粥样硬化多民族研究(Multi-Ethnic Study of Arteriosclerosis,MESA)-COPD研究两个站点的61例独立病例进行了评估。我们将根据Sourbron等人的方法为4D DCE MRI扫描实现的无模型反卷积滤波器作为开源发布。
交叉验证29/61(#训练/#测试)、组内相关系数(ICC)、Spearman ρ、Pearson r、Sørensen-Dice系数和重叠率。
在配备Tesla P40 GPU的Xeon E5-2637v4工作站上,每个病例的分割和导出的临床参数处理时间约为90秒。临床参数和预测的分割与所有叶的灌注中位数的真实情况高度一致,ICC为0.99,Sørensen-Dice系数为93.4±2.8(μ±σ)。
我们提出了一种强大的端到端流程,通过将无模型反卷积与深度学习相结合,能够从4D DCE MRI扫描中提取所有肺叶基于灌注的生物标志物。
3级 技术效能:2期 《磁共振成像杂志》2020年;51:571-579。