Anomaly Detection in Echocardiograms with Dynamic Variational Trajectory
Models
- URL: http://arxiv.org/abs/2206.15316v3
- Date: Tue, 24 Oct 2023 08:26:50 GMT
- Title: Anomaly Detection in Echocardiograms with Dynamic Variational Trajectory
Models
- Authors: Alain Ryser, Laura Manduchi, Fabian Laumer, Holger Michel, Sven
Wellmann, Julia E. Vogt
- Abstract summary: We propose a novel anomaly detection method for echocardiogram videos.
The method takes advantage of the periodic nature of the heart cycle to learn three variants of a variational latent trajectory model (TVAE)
It reliably identifies severe congenital heart defects, such as Ebstein's Anomaly or Shone-complex.
- Score: 14.784158889077313
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We propose a novel anomaly detection method for echocardiogram videos. The
introduced method takes advantage of the periodic nature of the heart cycle to
learn three variants of a variational latent trajectory model (TVAE). While the
first two variants (TVAE-C and TVAE-R) model strict periodic movements of the
heart, the third (TVAE-S) is more general and allows shifts in the spatial
representation throughout the video. All models are trained on the healthy
samples of a novel in-house dataset of infant echocardiogram videos consisting
of multiple chamber views to learn a normative prior of the healthy population.
During inference, maximum a posteriori (MAP) based anomaly detection is
performed to detect out-of-distribution samples in our dataset. The proposed
method reliably identifies severe congenital heart defects, such as Ebstein's
Anomaly or Shone-complex. Moreover, it achieves superior performance over
MAP-based anomaly detection with standard variational autoencoders when
detecting pulmonary hypertension and right ventricular dilation. Finally, we
demonstrate that the proposed method enables interpretable explanations of its
output through heatmaps highlighting the regions corresponding to anomalous
heart structures.
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