DocumentCode :
713343
Title :
Towards the automated segmentation of epicardial and mediastinal fats: A multi-manufacturer approach using intersubject registration and random forest
Author :
Rodrigues, E.O. ; Conci, A. ; Morais, F.F.C. ; Perez, M.G.
Author_Institution :
Inst. of Comput., Univ. Fed. Fluminense, Niteroi, Brazil
fYear :
2015
fDate :
17-19 March 2015
Firstpage :
1779
Lastpage :
1785
Abstract :
The amount of fat on the surroundings of the heart is correlated to several health risk factors such as carotid stiffness, coronary artery calcification, atrial fibrillation, atherosclerosis, cancer incidence and others. Furthermore, the cardiac fat varies unrelated to the overall fat of the subject, and, therefore, it reinforces the quantitative analysis of these adipose tissues as being essential. Clinical decision support systems are computer programs capable of evaluating information and providing a corresponding diagnosis or data to complement the physicists´ analyses. The aim of this work is to propose a method capable of fully automatically segmenting two types of cardiac adipose tissues that stand apart from each other by the pericardium on CT images obtained by the standard acquisition protocol used for coronary calcium scoring. Much effort was devoted to promote minimal user intervention and ease of reproducibility. The methodology proposed in this work consists of a registration, which will roughly adjust input images to a standard, an extraction of features related to pixels and their surrounding area and a segmentation step based on data mining classification algorithms that define if an incoming pixel is of a certain type. Experimentations showed that the achieved mean accuracy for the epicardial and mediastinal fats was 98.4% with a mean true positive rate of 96.2%. In average, the Dice similarity index was equal to 96.8%.
Keywords :
biological tissues; cardiology; data mining; decision support systems; fats; feature extraction; health care; image registration; image resolution; image segmentation; learning (artificial intelligence); medical image processing; CT images; Dice similarity index; acquisition protocol; atherosclerosis; atrial fibrillation; automated epicardial fat segmentation; automated mediastinal fat segmentation; cancer incidence; cardiac adipose tissues; cardiac fat; carotid stiffness; clinical decision support systems; computer programs; coronary artery calcification; coronary calcium scoring; data mining classification algorithms; feature extraction; health risk factors; heart; intersubject registration; minimal user intervention; multimanufacturer approach; random forest; Arteries; Classification algorithms; Computed tomography; Feature extraction; Heart; Image segmentation; Predictive models; adipose tissue; automatic; cardiac; classification; epicardial; fat; heart; intersubject; mediastinal; multi-manufacturer; random forest; registration; segmentation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Industrial Technology (ICIT), 2015 IEEE International Conference on
Conference_Location :
Seville
Type :
conf
DOI :
10.1109/ICIT.2015.7125355
Filename :
7125355
Link To Document :
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