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Convex-Optimization-Based Compartmental Pharmacokinetic Analysis for Prostate Tumor Characterization Using DCE-MRI

机译:基于凸优化的区室药代动力学分析,使用DCE-MRI进行前列腺肿瘤表征

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摘要

Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is a powerful imaging modality to study the pharmacokinetics in a suspected cancer/tumor tissue. The pharmacokinetic (PK) analysis of prostate cancer includes the estimation of time activity curves (TACs), and thereby, the corresponding kinetic parameters (KPs), and plays a pivotal role in diagnosis and prognosis of prostate cancer. In this paper, we endeavor to develop a blind source separation algorithm, namely convex-optimization-based KPs estimation (COKE) algorithm for PK analysis based on compartmental modeling of DCE-MRI data, for effective prostate tumor detection and its quantification. The COKE algorithm first identifies the best three representative pixels in the DCE-MRI data, corresponding to the plasma, fast-flow, and slow-flow TACs, respectively. The estimation accuracy of the flux rate constants (FRCs) of the fast-flow and slow-flow TACs directly affects the estimation accuracy of the KPs that provide the cancer and normal tissue distribution maps in the prostate region. The COKE algorithm wisely exploits the matrix structure (Toeplitz, lower triangular, and exponential decay) of the original nonconvex FRCs estimation problem, and reformulates it into two convex optimization problems that can reliably estimate the FRCs. After estimation of the FRCs, the KPs can be effectively estimated by solving a pixel-wise constrained curve-fitting (convex) problem. Simulation results demonstrate the efficacy of the proposed COKE algorithm. The COKE algorithm is also evaluated with DCE-MRI data of four different patients with prostate cancer and the obtained results are consistent with clinical observations.
机译:动态对比增强磁共振成像(DCE-MRI)是一种强大的成像方式,可用于研究可疑癌症/肿瘤组织中的药代动力学。前列腺癌的药代动力学(PK)分析包括时间活动曲线(TAC)的估计,以及相应的动力学参数(KPs)的估计,在前列腺癌的诊断和预后中起着关键作用。在本文中,我们致力于开发一种盲源分离算法,即基于DCE-MRI数据的分区模型进行PK分析的基于凸优化的KPs估计(COKE)算法,以进行有效的前列腺肿瘤检测及其量化。 COKE算法首先在DCE-MRI数据中识别出最佳的三个代表性像素,分别对应于血浆TAC,快流TAC和慢流TAC。快流和慢流TAC的通量速率常数(FRC)的估计精度直接影响提供前列腺区域中的癌症和正常组织分布图的KP的估计精度。 COKE算法明智地利用了原始非凸FRC估计问题的矩阵结构(Toeplitz,下部三角形和指数衰减),并将其重新构造为可以可靠地估计FRC的两个凸优化问题。在估计了FRC之后,可以通过解决像素级约束曲线拟合(凸)问题来有效地估计KP。仿真结果证明了该算法的有效性。还使用4位不同前列腺癌患者的DCE-MRI数据评估了COKE算法,获得的结果与临床观察结果一致。

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