Imaging Sciences, University of Manchester, Manchester Academic Health Science Centre, Manchester, UK.
J Magn Reson Imaging. 2012 Jan;35(1):196-203. doi: 10.1002/jmri.22692. Epub 2011 Oct 10.
To evaluate the Akaike information criterion (AIC) model selection technique as a method for detecting differences in microvascular characteristics between tumorous and non-tumor liver tissue.
The AIC was applied to six patient datasets with liver metastases to determine, on a per voxel basis, which of two physiologically plausible candidate models gave a more appropriate description of the data. The dual-input single-compartment Materne model, extended to incorporate a novel portal input function estimation method, was chosen to represent liver tissue and the single-input dual-compartment extended Kety model was used for tumor.
Median AIC probabilities when comparing tumor versus liver and tumor versus tumor-margins were significantly different (P ≤ 0.01) in five of the six patient datasets. Comparisons between tumor margins and liver regions were significantly different in four datasets. Median AIC probabilities selected for the extended Kety model in all tumor regions, with the Materne model being progressively more probable through tumor margins into liver.
We present a viable method for assessing the spatially varying microvascular characteristics of tumor-bearing livers, with possible applications in lesion detection, assessment of tumor invasion, and measurement of drug efficacy.
评估赤池信息量准则(AIC)模型选择技术作为检测肿瘤和非肿瘤肝组织微血管特征差异的方法。
将 AIC 应用于六个具有肝转移的患者数据集,以确定在每个体素基础上,两个生理上合理的候选模型中的哪一个更能恰当地描述数据。选择双输入单室 Materne 模型来表示肝组织,并使用单输入双室扩展 Kety 模型来表示肿瘤。
在六个患者数据集的五个中,肿瘤与肝组织以及肿瘤与肿瘤边缘之间的中位数 AIC 概率差异具有统计学意义(P ≤ 0.01)。在四个数据集,肿瘤边缘与肝区之间的比较差异也具有统计学意义。在所有肿瘤区域,扩展 Kety 模型的中位数 AIC 概率被选择,而 Materne 模型在肿瘤边缘到肝区逐渐变得更加可能。
我们提出了一种可行的方法来评估肿瘤性肝脏的空间变化微血管特征,可能应用于病灶检测、肿瘤侵袭评估和药物疗效测量。