Is Contrastive Learning Suitable for Left Ventricular Segmentation in
Echocardiographic Images?
- URL: http://arxiv.org/abs/2201.07219v1
- Date: Sun, 16 Jan 2022 13:09:47 GMT
- Title: Is Contrastive Learning Suitable for Left Ventricular Segmentation in
Echocardiographic Images?
- Authors: Mohamed Saeed, Rand Muhtaseb, Mohammad Yaqub
- Abstract summary: We argue whether or not contrastive pretraining is helpful for the segmentation of the left ventricle in echocardiography images.
We show how to achieve comparable results to state-of-the-art fully supervised algorithms when we train our models in a self-supervised fashion followed by fine-tuning on just 5% of the data.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Contrastive learning has proven useful in many applications where access to
labelled data is limited. The lack of annotated data is particularly
problematic in medical image segmentation as it is difficult to have clinical
experts manually annotate large volumes of data. One such task is the
segmentation of cardiac structures in ultrasound images of the heart. In this
paper, we argue whether or not contrastive pretraining is helpful for the
segmentation of the left ventricle in echocardiography images. Furthermore, we
study the effect of this on two segmentation networks, DeepLabV3, as well as
the commonly used segmentation network, UNet. Our results show that contrastive
pretraining helps improve the performance on left ventricle segmentation,
particularly when annotated data is scarce. We show how to achieve comparable
results to state-of-the-art fully supervised algorithms when we train our
models in a self-supervised fashion followed by fine-tuning on just 5% of the
data. We also show that our solution achieves better results than what is
currently published on a large public dataset (EchoNet-Dynamic) and we compare
the performance of our solution on another smaller dataset (CAMUS) as well.
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