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通过小鼠峰值时间分析实现胎盘灌注区室的自动区分

Automatic differentiation of placental perfusion compartments by time-to-peak analysis in mice.

作者信息

Kording F, Forkert N D, Sedlacik J, Adam G, Hecher K, Arck P, Remus C C

机构信息

Department of Diagnostic and Interventional Radiology, Centre for Radiology and Endoscopy, University Medical Centre Hamburg-Eppendorf, Germany.

Department of Radiology and Hotchkiss Brain, University of Calgary, Canada.

出版信息

Placenta. 2015 Mar;36(3):255-61. doi: 10.1016/j.placenta.2014.12.010. Epub 2014 Dec 23.

Abstract

INTRODUCTION

The aim of this study was to develop an automatic differentiation of two perfusion compartments within the mouse placenta based on times of maximal contrast enhancement for a detailed and reproducible perfusion assessment.

METHODS

Placentas (n = 17) from pregnant BALB/c mice (n = 10) were examined in vivo at 7T on gestation day 16.5. Coronal dual-echo 3D T1-weighted gradient-echo sequences were acquired after application of contrast agent for dynamic MRI. An adapted gamma variate function was fitted to the discrete concentration time curves to evaluate the effect of noise on perfusion and segmentation results. Time-to-peak maps based on fitted and discrete curves of each placenta were used to classify each voxel into the high- or low-blood flow compartment using k-means clustering. Perfusion analysis was performed using the steepest slope model and also applied to fitted and discrete curves. Results were compared to manually defined compartments from two independent observers using the Dice coefficient D.

RESULTS

Manually defined placental areas of high-flow and low-flow were similar to the automatic segmentation for discrete (D = 0.76/0.75; D = 0.76/0.79) and fitted (D = 0.80/0.80; D = 0.81/0.82) concentration time curves. Mean perfusion values of discrete and fitted curves ranged in the high-flow compartment from 134 to 142 ml/min/100 ml (discrete) vs. 138-143 ml/min/100 ml (fitted) and in the low-flow compartment from 91 to 94 ml/min/100 ml (discrete) vs. 74-82 ml/min/100 ml (fitted).

DISCUSSION

Our novel approach allows the automatic differentiation of perfusion compartments of the mouse placenta. The approach may overcome limitations of placental perfusion analyses caused by tissue heterogeneity and a potentially biased selection of regions of interest.

摘要

引言

本研究的目的是基于最大对比增强时间,开发一种对小鼠胎盘内两个灌注区室进行自动区分的方法,以实现详细且可重复的灌注评估。

方法

在妊娠第16.5天,对10只怀孕的BALB/c小鼠的17个胎盘进行7T场强的活体检查。在注射造影剂后,采集冠状面双回波3D T1加权梯度回波序列用于动态磁共振成像。将一个适配的伽马变异函数拟合到离散的浓度-时间曲线,以评估噪声对灌注和分割结果的影响。基于每个胎盘的拟合曲线和离散曲线生成的达峰时间图,使用k均值聚类将每个体素分类为高血流或低血流区室。使用最陡斜率模型进行灌注分析,并将其应用于拟合曲线和离散曲线。使用Dice系数D将结果与两名独立观察者手动定义的区室进行比较。

结果

手动定义的高血流和低血流胎盘区域与离散浓度-时间曲线(D = 0.76/0.75;D = 0.76/0.79)和拟合浓度-时间曲线(D = 0.80/0.80;D = 0.81/0.82)的自动分割结果相似。离散曲线和拟合曲线的平均灌注值在高血流区室为134至142毫升/分钟/100毫升(离散)对138 - 143毫升/分钟/100毫升(拟合),在低血流区室为91至94毫升/分钟/100毫升(离散)对74 - 82毫升/分钟/100毫升(拟合)。

讨论

我们的新方法能够对小鼠胎盘的灌注区室进行自动区分。该方法可能克服因组织异质性和潜在的感兴趣区域选择偏差导致的胎盘灌注分析的局限性。

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