Department of Information Engineering, University of Padova, via Gradenigo 6/b, 35131, Padova, Italy.
Neuroimage. 2013 Feb 15;67:344-53. doi: 10.1016/j.neuroimage.2012.11.045. Epub 2012 Dec 5.
This paper investigates a new hierarchical method to apply basis function to mono- and multi-compartmental models (Hierarchical-Basis Function Method, H-BFM) at a voxel level. This method identifies the parameters of the compartmental model in its nonlinearized version, integrating information derived at the region of interest (ROI) level by segmenting the cerebral volume based on anatomical definition or functional clustering. We present the results obtained by using a two tissue-four rate constant model with two different tracers ([(11)C]FLB457 and [carbonyl-(11)C]WAY100635), one of the most complex models used in receptor studies, especially at the voxel level. H-BFM is robust and its application on both [(11)C]FLB457 and [carbonyl-(11)C]WAY100635 allows accurate and precise parameter estimates, good quality parametric maps and a low percentage of voxels out of physiological bound (<8%). The computational time depends on the number of basis functions selected and can be compatible with clinical use (~6h for a single subject analysis). The novel method is a robust approach for PET quantification by using compartmental modeling at the voxel level. In particular, different from other proposed approaches, this method can also be used when the linearization of the model is not appropriate. We expect that applying it to clinical data will generate reliable parametric maps.
本文研究了一种新的层次化方法,用于在体素水平上将基函数应用于单室和多室模型(层次化基函数方法,H-BFM)。该方法在其非线性化版本中确定了房室模型的参数,通过基于解剖定义或功能聚类对大脑体积进行分割,整合了在感兴趣区域(ROI)水平上获得的信息。我们展示了使用两种示踪剂([(11)C]FLB457 和 [羰基-(11)C]WAY100635)的两种组织四速率常数模型获得的结果,这是受体研究中使用的最复杂的模型之一,尤其是在体素水平上。H-BFM 具有鲁棒性,其在 [(11)C]FLB457 和 [羰基-(11)C]WAY100635 上的应用可实现准确、精确的参数估计、良好的参数图质量和低于生理范围的体素比例(<8%)。计算时间取决于所选基函数的数量,并且可以与临床使用兼容(单个受试者分析约 6 小时)。该新方法是一种在体素水平上使用房室建模进行 PET 定量的稳健方法。特别是,与其他提出的方法不同,当模型的线性化不合适时,也可以使用该方法。我们预计将其应用于临床数据将生成可靠的参数图。