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A comparison of Bayesian and non-linear regression methods for robust estimation of pharmacokinetics in DCE-MRI and how it affects cancer diagnosis

机译:贝叶斯和非线性回归方法在DCE-MRI中药代动力学的可靠估计及其对癌症诊断的影响的比较

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摘要

The aim of this work is to compare Bayesian Inference for nonlinear models with commonly used traditional non-linear regression (NR) algorithms for estimating tracer kinetics in Dynamic Contrast Enhanced Magnetic Resonance Imaging (DCE-MRI). The algorithms are compared in terms of accuracy, and reproducibility under different initialization settings. Further it is investigated how a more robust estimation of tracer kinetics affects cancer diagnosis. The derived tracer kinetics from the Bayesian algorithm were validated against traditional NR algorithms (i.e. Levenberg-Marquardt, simplex) in terms of accuracy on a digital DCE phantom and in terms of goodness-of-fit (Kolmogorov-Smirnov test) on ROI-based concentration time courses from two different patient cohorts. The first cohort consisted of 76 men, 20 of whom had significant peripheral zone prostate cancer (any cancer-core-length (CCL) with Gleason > 3 + 3 or any-grade with CCL > = 4 mm) following transperineal template prostate mapping biopsy. The second cohort consisted of 9 healthy volunteers and 24 patients with head and neck squamous cell carcinoma. The diagnostic ability of the derived tracer kinetics was assessed with receiver operating characteristic area under curve (ROC AUC) analysis. The Bayesian algorithm accurately recovered the ground-truth tracer kinetics for the digital DCE phantom consistently improving the Structural Similarity Index (SSIM) across the 50 different initializations compared to NR. For optimized initialization, Bayesian did not improve significantly the fitting accuracy on both patient cohorts, and it only significantly improved the ve ROC AUC on the HN population from ROC AUC = 0.56 for the simplex to ROC AUC = 0.76. For both cohorts, the values and the diagnostic ability of tracer kinetic parameters estimated with the Bayesian algorithm weren’t affected by their initialization. To conclude, the Bayesian algorithm led to a more accurate and reproducible quantification of tracer kinetic parameters in DCE-MRI, improving their ROC-AUC and decreasing their dependence on initialization settings.
机译:这项工作的目的是将非线性模型的贝叶斯推断与常用的传统非线性回归(NR)算法进行比较,以估计动态对比度增强磁共振成像(DCE-MRI)中的示踪动力学。比较算法在不同初始化设置下的准确性和可重复性。进一步研究了示踪剂动力学更可靠的估计如何影响癌症诊断。从贝叶斯算法得出的示踪动力学已针对传统NR算法(即Levenberg-Marquardt,单纯形)在数字DCE体模上的准确性以及在基于ROI的拟合优度(Kolmogorov-Smirnov检验)方面进行了验证。来自两个不同患者队列的集中时间课程。第一组由76名男性组成,其中20名在经会阴模板前列腺癌标本活检后患有显着的外周区前列腺癌(格里森> 3 + 3的任何癌症核心长度(CCL)或CCL> = 4 mm的任何等级) 。第二组包括9名健康志愿者和24例头颈部鳞状细胞癌患者。通过曲线下的接收器工作特征区域(ROC AUC)分析评估衍生示踪动力学的诊断能力。贝叶斯算法为数字DCE体模准确地恢复了地面真相示踪动力学,与NR相比,在50个不同的初始化过程中持续改善了结构相似性指数(SSIM)。对于优化的初始化,贝叶斯算法并没有显着提高两个患者队列的拟合精度,而仅显着提高了HN人口的ve ROC AUC,从单纯形的ROC AUC = 0.56到ROC AUC = 0.76。对于这两个队列,使用贝叶斯算法估算的示踪动力学参数的值和诊断能力均不受其初始化的影响。总而言之,贝叶斯算法导致了DCE-MRI中示踪动力学参数的更准确和可再现的量化,从而改善了ROC-AUC并降低了对初始化设置的依赖性。

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