Automatic Segmentation of Myocardial Infarction in Rats Subjected to Regional Ischemia

Roman Jakubícek, Jiří Chmelík, J. Neckář, R. Kolář
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Abstract

The experimental and preclinical studies of ischemia and reperfusion on animal models usually evaluate the sizes of area at risk (AR) of infarction and infarct area (IA) as fundamental parameters. The authors usually don't provide any detailed information about the image processing of their data, though the IA or AR segmentation is often challenging and prone to be expert-depending. Here, we describe a new approach for automatic IA and AR segmentation based on combination of Random Forest classifier and two-step pixel-wise k-means classification of image pixels. The evaluation has been performed on the set of 16 images from 8 rat hearts. We compared sizes of normal perfused tissues, viable area and IA (normalized to percentage of total area) obtained by our method with manually segmentation by biologist. We achieved mean absolute error of 2.59% with mean standard deviation of 1.61%.
局部缺血大鼠心肌梗死的自动分割
动物模型缺血再灌注的实验和临床前研究通常以梗死危险面积(AR)和梗死面积(IA)的大小作为基本参数进行评价。作者通常不会提供有关其数据的图像处理的任何详细信息,尽管IA或AR分割通常具有挑战性,并且容易依赖于专家。本文描述了一种基于随机森林分类器和两步逐像素k-means图像像素分类相结合的自动IA和AR分割新方法。对来自8个大鼠心脏的16幅图像进行了评估。我们比较了正常灌注组织的大小、存活面积和IA(归一化为总面积的百分比),并由生物学家手工分割。平均绝对误差为2.59%,平均标准差为1.61%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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