14 November 2023 Automated aortic segmentation and quantification of hemodynamic parameters from 4D flow MRI using deep learning techniques
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Abstract

Purpose

To develop an automated method for aortic segmentation using deep learning techniques and further analyze the hemodynamic parameters in patients with bicuspid aortic valve (BAV). Since four-dimensional (4D) flow magnetic resonance imaging (MRI) imaging helps in analyzing and quantifying the blood flow changes that occur in aortic valve-related problems, such as BAV, 4D flow MRI images are considered.

Approach

Our dataset consisted of 91 patients who had referral indications of BAV and 30 healthy volunteers who had no known cardiovascular disease. A U-Net++ with pretrained ResNet-34 encoders was trained for aortic segmentation using manual segmentation by an expert as the ground truth. In the first stage, the model was evaluated on 21 test cohorts using overlay and distance-based metrics, such as Dice score, Hausdorff distance, and absolute volume difference. In the second stage, the hemodynamic parameters, such as wall shear stress (WSS), viscous energy loss, and vorticity, were calculated to quantify the blood flow irregularities that occur in BAV patients. The segmentation and the flow parameters generated by the algorithm were compared with those generated using the manual segmentations. Paired t-test with alpha value of 0.05 was used for statistical significance testing.

Results

As for overlap and distance-based metrics, the developed algorithm reported a Dice score coefficient of 0.90 ± 0.03, absolute volume difference of 1683 ± 1139 mm3, and Hausdorff distance of 3.2 ± 1.18 mm on test cohorts. The hemodynamic parameters calculated between automated and manual methods resulted in a mean difference of 6.62% for WSS with p-value of 0.94, 17.35% for mean viscous energy loss with p-value of 0.78, and 7.59% for vorticity with p-value of 0.97.

Conclusions

A fast and accurate segmentation tool was developed for aortic segmentation using a dataset taken at clinical and blood flow parameters that were calculated based on the segmented aorta. These results will assist the clinicians to analyze the blood flow patterns and commence distinguished treatment in BAV patients.

© 2023 Society of Photo-Optical Instrumentation Engineers (SPIE)
Jenita Manokaran, Julio Garcia Flores, and Eranga Ukwatta "Automated aortic segmentation and quantification of hemodynamic parameters from 4D flow MRI using deep learning techniques," Journal of Medical Imaging 10(6), 066001 (14 November 2023). https://doi.org/10.1117/1.JMI.10.6.066001
Received: 26 May 2023; Accepted: 30 October 2023; Published: 14 November 2023
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KEYWORDS
Image segmentation

Aorta

Magnetic resonance imaging

3D modeling

Hemodynamics

Electroluminescence

Blood circulation

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