Automatic Segmentation of Myocardial Infarction in Rats Subjected to Regional Ischemia

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 dat...

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Bibliographic Details
Published in2018 Computing in Cardiology Conference (CinC) Vol. 45; pp. 1 - 4
Main Authors Jakubicek, R, Chmelik, J, Neckar, J, Kolar, R
Format Conference Proceeding
LanguageEnglish
Published Creative Commons Attribution 01.09.2018
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Summary: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%.
ISSN:2325-887X
DOI:10.22489/CinC.2018.128