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Dynamic PET of Human Liver Inflammation: Impact of Kinetic Modeling with Optimization-Derived Dual-Blood Input Function

机译:人肝炎症的动态PET:动力学模型对优化衍生双血输入功能的影响

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摘要

The hallmark of nonalcoholic steatohepatitis is hepatocellular inflammation and injury in the setting of hepatic steatosis. Recent work has indicated that dynamic 18F-FDG PET with kinetic modeling has the potential to assess hepatic inflammation noninvasively, while static FDG-PET is less promising. Because the liver has dual blood supplies, kinetic modeling of dynamic liver PET data is challenging in human studies. This paper aims to identify the optimal dual-input kinetic modeling approach for dynamic FDG-PET of human liver inflammation. Fourteen patients with nonalcoholic fatty liver disease were included. Each patient underwent 1-hour dynamic FDG- PET/CT scan and had liver biopsy within six weeks. Three models were tested for kinetic analysis: the traditional two-tissue compartmental model with an image-derived single-blood input function (SBIF), a model with population-based dual-blood input function (DBIF), and a new model with optimization-derived DBIF through a joint estimation framework. The three models were compared using Akaike information criterion (AIC), F test and histopathologic inflammation score. Results showed that the optimization-derived DBIF model improved liver time activity curve fitting and achieved lower AIC values and higher F values than the SBIF and population-based DBIF models in all patients. The optimization-derived model significantly increased FDG K1 estimates by 101% and 27% as compared with traditional SBIF and population-based DBIF. K1 by the optimization-derived model was significantly associated with histopathologic grades of liver inflammation while the other two models did not provide a statistical significance. In conclusion, modeling of DBIF is critical for dynamic liver FDG-PET kinetic analysis in human studies. The optimization-derived DBIF model is more appropriate than SBIF and population- based DBIF for dynamic FDG-PET of liver inflammation.
机译:非酒精性脂肪性肝炎的标志是肝脂肪变性时的肝细胞炎症和损伤。最近的研究表明,动态 18 F-FDG PET具有动力学模型可以无创地评估肝炎,而静态FDG-PET则前景不佳。由于肝脏具有双重血液供应,因此在人体研究中动态肝脏PET数据的动力学建模具有挑战性。本文旨在确定人肝炎症动态FDG-PET的最佳双输入动力学建模方法。包括十四名非酒精性脂肪肝患者。每名患者接受1小时动态FDG-PET / CT扫描,并在六周内进行肝活检。对三种模型进行了动力学分析测试:具有图像来源的单血输入功能(SBIF)的传统两组织隔室模型,基于人群的双血输入功能(DBIF)的模型以及经过优化的新模型通过联合估算框架得出的DBIF。使用Akaike信息标准(AIC),F检验和组织病理学炎症评分比较这三个模型。结果表明,在所有患者中,与SBIF和基于人群的DBIF模型相比,优化衍生的DBIF模型改善了肝脏时间活动曲线拟合,并实现了较低的AIC值和较高的F值。与传统的SBIF和基于人口的DBIF相比,优化得出的模型将FDG K1估计值显着提高了101%和27%。优化衍生模型的K1与肝脏炎症的组织病理学分级显着相关,而其他两个模型没有统计学意义。总之,在人体研究中,DBIF建模对于动态肝脏FDG-PET动力学分析至关重要。对于肝炎症的动态FDG-PET,优化得出的DBIF模型比SBIF和基于人群的DBIF模型更合适。

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