使用药代动力学信息深度学习对临床腹部DCE-MRI进行回顾性量化:一项概念验证研究。

Frontiers in radiology Pub Date : 2023-09-04 eCollection Date: 2023-01-01 DOI:10.3389/fradi.2023.1168901
Chaowei Wu, Nan Wang, Srinivas Gaddam, Lixia Wang, Hui Han, Kyunghyun Sung, Anthony G Christodoulou, Yibin Xie, Stephen Pandol, Debiao Li
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引用次数: 0

摘要

引言:动态增强(DCE)MRI对癌症的早期发现、准确分期和治疗监测具有重要的临床价值。然而,传统的多相腹部DCE-MRI具有有限的时间分辨率,并且提供了对组织血管性的定性或半定量评估。在本研究中,研究了通过药代动力学知情深度学习来提高时间分辨率来回顾性量化多相腹部DCE-MRI的可行性。方法:45名受试者,包括健康对照组、胰腺导管腺癌(PDAC)和慢性胰腺炎(CP),采用2-s时间分辨率定量DCE序列进行成像,根据临床方案合成30-s时间分辨率多相DCE-MRI。在量化药代动力学参数之前,训练药代动力学知情神经网络以提高多相DCE的时间分辨率。通过十倍交叉验证,将深度学习推断后合成的多相DCE估计的药代动力学参数与相应定量DCE-MRI图像的参考参数之间的一致性进行了评估。还评估了深度学习估计参数区分异常组织和正常组织的能力。结果:深度学习后估计的药代动力学参数与参考值高度一致。在交叉验证中,所有三个药代动力学参数(转移常数Ktrans、血管外细胞外体积分数ve和速率常数kep)实现了组内相关系数,R2在0.84-0.94之间,相对于参考值的变异系数较低(分别为10.1%、12.3%和5.6%)。健康胰腺、PDAC肿瘤和非肿瘤胰腺以及CP胰腺之间存在显著差异。讨论:通过深度学习可以对临床多阶段DCE-MRI进行回顾性量化(RoQ)。该技术有可能从临床多相DCE数据中获得定量药代动力学参数,以更客观、更准确地评估癌症。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Retrospective quantification of clinical abdominal DCE-MRI using pharmacokinetics-informed deep learning: a proof-of-concept study.

Retrospective quantification of clinical abdominal DCE-MRI using pharmacokinetics-informed deep learning: a proof-of-concept study.

Retrospective quantification of clinical abdominal DCE-MRI using pharmacokinetics-informed deep learning: a proof-of-concept study.

Retrospective quantification of clinical abdominal DCE-MRI using pharmacokinetics-informed deep learning: a proof-of-concept study.

Introduction: Dynamic contrast-enhanced (DCE) MRI has important clinical value for early detection, accurate staging, and therapeutic monitoring of cancers. However, conventional multi-phasic abdominal DCE-MRI has limited temporal resolution and provides qualitative or semi-quantitative assessments of tissue vascularity. In this study, the feasibility of retrospectively quantifying multi-phasic abdominal DCE-MRI by using pharmacokinetics-informed deep learning to improve temporal resolution was investigated.

Method: Forty-five subjects consisting of healthy controls, pancreatic ductal adenocarcinoma (PDAC), and chronic pancreatitis (CP) were imaged with a 2-s temporal-resolution quantitative DCE sequence, from which 30-s temporal-resolution multi-phasic DCE-MRI was synthesized based on clinical protocol. A pharmacokinetics-informed neural network was trained to improve the temporal resolution of the multi-phasic DCE before the quantification of pharmacokinetic parameters. Through ten-fold cross-validation, the agreement between pharmacokinetic parameters estimated from synthesized multi-phasic DCE after deep learning inference was assessed against reference parameters from the corresponding quantitative DCE-MRI images. The ability of the deep learning estimated parameters to differentiate abnormal from normal tissues was assessed as well.

Results: The pharmacokinetic parameters estimated after deep learning have a high level of agreement with the reference values. In the cross-validation, all three pharmacokinetic parameters (transfer constant Ktrans, fractional extravascular extracellular volume ve, and rate constant kep) achieved intraclass correlation coefficient and R2 between 0.84-0.94, and low coefficients of variation (10.1%, 12.3%, and 5.6%, respectively) relative to the reference values. Significant differences were found between healthy pancreas, PDAC tumor and non-tumor, and CP pancreas.

Discussion: Retrospective quantification (RoQ) of clinical multi-phasic DCE-MRI is possible by deep learning. This technique has the potential to derive quantitative pharmacokinetic parameters from clinical multi-phasic DCE data for a more objective and precise assessment of cancer.

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