使用自监督学习和物理启发的U-net变压器架构的动态非对比计算机断层扫描灌注估计。

IF 2.3 3区 医学 Q3 ENGINEERING, BIOMEDICAL
Yi-Kuan Liu, Jorge Cisneros, Girish Nair, Craig Stevens, Richard Castillo, Yevgeniy Vinogradskiy, Edward Castillo
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引用次数: 0

摘要

目的:肺灌注显像是一项重要的肺健康指标,可作为临床诊断和治疗计划的工具。然而,目前的核医学模式面临着诸如低空间分辨率和长采集时间等挑战,这些挑战限制了非紧急情况下的临床应用,并往往给患者带来额外的经济负担。本研究引入了一种新的深度学习方法来预测非对比吸气和呼气计算机断层扫描(IE-CT)的灌注成像。方法:我们开发了一种针对Siamese IE-CT输入进行修改的U-Net Transformer架构,整合了来自物理模型的见解,并利用了为肺功能预测量身定制的自监督学习策略。我们收集了来自9个不同的4DCT成像数据集的523张IE-CT图像进行自监督训练,旨在通过随机数据增强重建图像体来学习低维IE-CT特征空间。对44名同时进行IE-CT和单光子发射CT (SPECT/CT)灌注扫描的患者进行灌注预测的监督训练,使用该特征空间和迁移学习。结果:随机自适应检验,我们估计我们的预测与地面真相(SPECT灌注)之间的空间Spearman相关性的平均值和标准差为0.742±0.037,平均中位数相关性为0.792±0.036。这些结果代表了一个新的国家的最先进的准确性预测灌注成像从非对比CT。结论:我们的方法将吸气和呼气图像的低维特征表示结合到一个深度学习模型中,与先前用于表征IE-CT灌注的物理建模方法保持一致。这可能有助于与地面真值的高空间相关性。随着进一步的发展,我们的方法可以提供更快、更准确的肺功能成像,有可能扩大其临床应用范围,超越目前核医学的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Perfusion estimation from dynamic non-contrast computed tomography using self-supervised learning and a physics-inspired U-net transformer architecture.

Purpose: Pulmonary perfusion imaging is a key lung health indicator with clinical utility as a diagnostic and treatment planning tool. However, current nuclear medicine modalities face challenges like low spatial resolution and long acquisition times which limit clinical utility to non-emergency settings and often placing extra financial burden on the patient. This study introduces a novel deep learning approach to predict perfusion imaging from non-contrast inhale and exhale computed tomography scans (IE-CT).

Methods: We developed a U-Net Transformer architecture modified for Siamese IE-CT inputs, integrating insights from physical models and utilizing a self-supervised learning strategy tailored for lung function prediction. We aggregated 523 IE-CT images from nine different 4DCT imaging datasets for self-supervised training, aiming to learn a low-dimensional IE-CT feature space by reconstructing image volumes from random data augmentations. Supervised training for perfusion prediction used this feature space and transfer learning on a cohort of 44 patients who had both IE-CT and single-photon emission CT (SPECT/CT) perfusion scans.

Results: Testing with random bootstrapping, we estimated the mean and standard deviation of the spatial Spearman correlation between our predictions and the ground truth (SPECT perfusion) to be 0.742 ± 0.037, with a mean median correlation of 0.792 ± 0.036. These results represent a new state-of-the-art accuracy for predicting perfusion imaging from non-contrast CT.

Conclusion: Our approach combines low-dimensional feature representations of both inhale and exhale images into a deep learning model, aligning with previous physical modeling methods for characterizing perfusion from IE-CT. This likely contributes to the high spatial correlation with ground truth. With further development, our method could provide faster and more accurate lung function imaging, potentially expanding its clinical applications beyond what is currently possible with nuclear medicine.

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来源期刊
International Journal of Computer Assisted Radiology and Surgery
International Journal of Computer Assisted Radiology and Surgery ENGINEERING, BIOMEDICAL-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
5.90
自引率
6.70%
发文量
243
审稿时长
6-12 weeks
期刊介绍: The International Journal for Computer Assisted Radiology and Surgery (IJCARS) is a peer-reviewed journal that provides a platform for closing the gap between medical and technical disciplines, and encourages interdisciplinary research and development activities in an international environment.
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