Estimation of the Left Ventricle Volume using Semantic Segmentation (CROSBI ID 682049)
Prilog sa skupa u zborniku | izvorni znanstveni rad | međunarodna recenzija
Podaci o odgovornosti
Habijan, Marija ; Leventić, Hrvoje ; Galić, Irena ; Babin, Danilo
engleski
Estimation of the Left Ventricle Volume using Semantic Segmentation
The left ventricle (LV) volume is a major indicator of heart disease.Current clinical procedure for volume estimation from magnetic resonance (MR) images include manual inspection by the experienced cardiologists, which is often a time-consuming process.This paper presents an automated method for LV volume estimation at two points in the time. The method consists of training a convolutional neural network (CNN) with the MR images from the Sunnybrook dataset. After that, the trained model is used to predict left ventricular segments in MR images from the Kaggle dataset. From predicted segments, the ventricular volumes at end-systole (ESV) and end-diastole (EDV) are calculated using numerical integration. The obtained results estimate the ESV and EDV with a mean absolute error of 14.688 and 19.222 mL, respectively.
CNN ; Cardiac Disease Indicators ; Left Ventricle ; MRI ; Volume Estimation
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Podaci o prilogu
39-44.
2019.
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objavljeno
Podaci o matičnoj publikaciji
ELMAR 2019
Zadar:
Podaci o skupu
61st International Symposium Electronics in Marine (ELMAR 2019)
predavanje
23.09.2019-25.09.2019
Zadar, Hrvatska