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面向全三维左心室分割的心脏电影磁共振成像切片错位校正

Cine Cardiac MRI Slice Misalignment Correction Towards Full 3D Left Ventricle Segmentation.

作者信息

Dangi Shusil, Linte Cristian A, Yaniv Ziv

机构信息

Center for Imaging Science, Rochester Institute of Technology, Rochester NY USA.

Biomedical Engineering, Rochester Institute of Technology, Rochester NY USA.

出版信息

Proc SPIE Int Soc Opt Eng. 2018 Feb;10576. doi: 10.1117/12.2294936. Epub 2018 Mar 12.

DOI:10.1117/12.2294936
PMID:30294064
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6168009/
Abstract

Accurate segmentation of the left ventricle (LV) blood-pool and myocardium is required to compute cardiac function assessment parameters or generate personalized cardiac models for pre-operative planning of minimally invasive therapy. Cardiac Cine Magnetic Resonance Imaging (MRI) is the preferred modality for high resolution cardiac imaging thanks to its capability of imaging the heart throughout the cardiac cycle, while providing tissue contrast superior to other imaging modalities without ionizing radiation. However, there exists an inevitable misalignment between the slices in cine MRI due to the 2D + time acquisition, rendering 3D segmentation methods ineffective. A large part of published work on cardiac MR image segmentation focuses on 2D segmentation methods that yield good results in mid-slices, however with less accurate results for the apical and basal slices. Here, we propose an algorithm to correct for the slice misalignment using a Convolutional Neural Network (CNN)-based regression method, and then perform a 3D graph-cut based segmentation of the LV using atlas shape prior. Our algorithm is able to reduce the median slice misalignment error from 3.13 to 2.07 pixels, and obtain the blood-pool segmentation with an accuracy characterized by a 0.904 mean dice overlap and 0.56 mm mean surface distance with respect to the gold-standard blood-pool segmentation for 9 test cine MR datasets.

摘要

为了计算心功能评估参数或生成用于微创治疗术前规划的个性化心脏模型,需要对左心室(LV)血池和心肌进行准确分割。心脏电影磁共振成像(MRI)是高分辨率心脏成像的首选方式,这得益于其能够在整个心动周期对心脏进行成像,同时提供优于其他成像方式的组织对比度,且无需电离辐射。然而,由于二维加时间采集方式,电影MRI中的切片之间存在不可避免的错位,使得三维分割方法无效。已发表的关于心脏磁共振图像分割的大部分工作都集中在二维分割方法上,这些方法在中层切片中能产生较好的结果,但在心尖和基底切片中的结果准确性较低。在此,我们提出一种算法,使用基于卷积神经网络(CNN)的回归方法校正切片错位,然后使用图谱形状先验对LV进行基于三维图割的分割。对于9个测试电影MR数据集,我们的算法能够将切片错位误差中位数从3.13像素降低到2.07像素,并获得血池分割结果,其准确性以相对于金标准血池分割的0.904平均骰子重叠率和0.56毫米平均表面距离为特征。