Light-weight spatio-temporal graphs for segmentation and ejection fraction prediction in cardiac ultrasound

6 Jul 2022  ·  Sarina Thomas, Andrew Gilbert, Guy Ben-Yosef ·

Accurate and consistent predictions of echocardiography parameters are important for cardiovascular diagnosis and treatment. In particular, segmentations of the left ventricle can be used to derive ventricular volume, ejection fraction (EF) and other relevant measurements. In this paper we propose a new automated method called EchoGraphs for predicting ejection fraction and segmenting the left ventricle by detecting anatomical keypoints. Models for direct coordinate regression based on Graph Convolutional Networks (GCNs) are used to detect the keypoints. GCNs can learn to represent the cardiac shape based on local appearance of each keypoint, as well as global spatial and temporal structures of all keypoints combined. We evaluate our EchoGraphs model on the EchoNet benchmark dataset. Compared to semantic segmentation, GCNs show accurate segmentation and improvements in robustness and inference runtime. EF is computed simultaneously to segmentations and our method also obtains state-of-the-art ejection fraction estimation. Source code is available online: https://github.com/guybenyosef/EchoGraphs.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Echonet-Dynamic EchoGrap R2 Score 0.81 # 2
RMSE 5.36 # 3
MAE 4.01 # 2
LV Segmentation Echonet-Dynamic EchoGraph Test DSC 92.1 # 3

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