Unsupervised Anomaly Detection in 3D Brain MRI using Deep Learning with
impured training data
- URL: http://arxiv.org/abs/2204.05778v1
- Date: Tue, 12 Apr 2022 13:05:18 GMT
- Title: Unsupervised Anomaly Detection in 3D Brain MRI using Deep Learning with
impured training data
- Authors: Finn Behrendt, Marcel Bengs, Frederik Rogge, Julia Kr\"uger, Roland
Opfer, Alexander Schlaefer
- Abstract summary: We study how unhealthy samples within the training data affect anomaly detection performance for brain MRI-scans.
We evaluate a method to identify falsely labeled samples directly during training based on the reconstruction error of the AE.
- Score: 53.122045119395594
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The detection of lesions in magnetic resonance imaging (MRI)-scans of human
brains remains challenging, time-consuming and error-prone. Recently,
unsupervised anomaly detection (UAD) methods have shown promising results for
this task. These methods rely on training data sets that solely contain healthy
samples. Compared to supervised approaches, this significantly reduces the need
for an extensive amount of labeled training data. However, data labelling
remains error-prone. We study how unhealthy samples within the training data
affect anomaly detection performance for brain MRI-scans. For our evaluations,
we consider three publicly available data sets and use autoencoders (AE) as a
well-established baseline method for UAD. We systematically evaluate the effect
of impured training data by injecting different quantities of unhealthy samples
to our training set of healthy samples from T1-weighted MRI-scans. We evaluate
a method to identify falsely labeled samples directly during training based on
the reconstruction error of the AE. Our results show that training with impured
data decreases the UAD performance notably even with few falsely labeled
samples. By performing outlier removal directly during training based on the
reconstruction-loss, we demonstrate that falsely labeled data can be detected
and removed to mitigate the effect of falsely labeled data. Overall, we
highlight the importance of clean data sets for UAD in brain MRI and
demonstrate an approach for detecting falsely labeled data directly during
training.
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