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基于 DCE-MRI 和 OE-MRI 的缺氧相关肿瘤异质性数据驱动图谱绘制。

Data-driven mapping of hypoxia-related tumor heterogeneity using DCE-MRI and OE-MRI.

机构信息

Division of Informatics, Imaging & Data Sciences, The University of Manchester, Manchester, UK.

CRUK & EPSRC Cancer Imaging Centre in Cambridge and Manchester, Cambridge and Manchester, UK.

出版信息

Magn Reson Med. 2018 Apr;79(4):2236-2245. doi: 10.1002/mrm.26860. Epub 2017 Aug 30.

Abstract

PURPOSE

Previous work has shown that combining dynamic contrast-enhanced (DCE)-MRI and oxygen-enhanced (OE)-MRI binary enhancement maps can identify tumor hypoxia. The current work proposes a novel, data-driven method for mapping tissue oxygenation and perfusion heterogeneity, based on clustering DCE/OE-MRI data.

METHODS

DCE-MRI and OE-MRI were performed on nine U87 (glioblastoma) and seven Calu6 (non-small cell lung cancer) murine xenograft tumors. Area under the curve and principal component analysis features were calculated and clustered separately using Gaussian mixture modelling. Evaluation metrics were calculated to determine the optimum feature set and cluster number. Outputs were quantitatively compared with a previous non data-driven approach.

RESULTS

The optimum method located six robustly identifiable clusters in the data, yielding tumor region maps with spatially contiguous regions in a rim-core structure, suggesting a biological basis. Mean within-cluster enhancement curves showed physiologically distinct, intuitive kinetics of enhancement. Regions of DCE/OE-MRI enhancement mismatch were located, and voxel categorization agreed well with the previous non data-driven approach (Cohen's kappa = 0.61, proportional agreement = 0.75).

CONCLUSION

The proposed method locates similar regions to the previous published method of binarization of DCE/OE-MRI enhancement, but renders a finer segmentation of intra-tumoral oxygenation and perfusion. This could aid in understanding the tumor microenvironment and its heterogeneity. Magn Reson Med 79:2236-2245, 2018. © 2017 The Authors Magnetic Resonance in Medicine published by Wiley Periodicals, Inc. on behalf of International Society for Magnetic Resonance in Medicine. This is an open access article under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.

摘要

目的

先前的研究表明,结合动态对比增强(DCE)-MRI 和氧增强(OE)-MRI 的双增强图可以识别肿瘤缺氧。目前的研究提出了一种基于聚类 DCE/OE-MRI 数据的新型、数据驱动的方法,用于绘制组织氧合和灌注异质性的图谱。

方法

对 9 个 U87(胶质母细胞瘤)和 7 个 Calu6(非小细胞肺癌)鼠异种移植肿瘤进行 DCE-MRI 和 OE-MRI 检查。分别使用高斯混合模型计算曲线下面积和主成分分析特征,并进行聚类。计算评估指标以确定最佳特征集和聚类数。输出结果与以前的非数据驱动方法进行定量比较。

结果

最佳方法在数据中定位了六个可识别的稳健聚类,生成了具有边缘-核心结构的空间上连续区域的肿瘤区域图谱,提示具有生物学基础。增强曲线的平均聚类内增强曲线显示出增强的生理上明显、直观的动力学。确定了 DCE/OE-MRI 增强不匹配区域,并且体素分类与先前的非数据驱动方法吻合良好(Cohen 的 kappa=0.61,比例一致性=0.75)。

结论

该方法定位到与先前发表的 DCE/OE-MRI 增强二进制化方法类似的区域,但对肿瘤内氧合和灌注进行了更精细的分割。这有助于了解肿瘤微环境及其异质性。磁共振医学 79:2236-2245, 2018。© 2017 作者。磁共振医学由 Wiley 期刊出版公司代表国际磁共振学会出版。这是在知识共享署名许可下的条款下允许使用、分发和复制任何媒介,只要原始作品正确引用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/07a8/5836865/53cb03845942/MRM-79-2236-g001.jpg

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