Unsupervised Anomaly Detection in MR Images using Multi-Contrast
Information
- URL: http://arxiv.org/abs/2105.00463v1
- Date: Sun, 2 May 2021 13:05:36 GMT
- Title: Unsupervised Anomaly Detection in MR Images using Multi-Contrast
Information
- Authors: Byungjai Kim, Kinam Kwon, Changheun Oh, and Hyunwook Park
- Abstract summary: Anomaly detection in medical imaging is to distinguish the relevant biomarkers of diseases from those of normal tissues.
Deep supervised learning methods have shown potentials in various detection tasks, but its performances would be limited in medical imaging fields.
In this paper, we developed an unsupervised learning framework for pixel-wise anomaly detection in multi-contrast MRI.
- Score: 3.7273619690170796
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Anomaly detection in medical imaging is to distinguish the relevant
biomarkers of diseases from those of normal tissues. Deep supervised learning
methods have shown potentials in various detection tasks, but its performances
would be limited in medical imaging fields where collecting annotated anomaly
data is limited and labor-intensive. Therefore, unsupervised anomaly detection
can be an effective tool for clinical practices, which uses only unlabeled
normal images as training data. In this paper, we developed an unsupervised
learning framework for pixel-wise anomaly detection in multi-contrast magnetic
resonance imaging (MRI). The framework has two steps of feature generation and
density estimation with Gaussian mixture model (GMM). A feature is derived
through the learning of contrast-to-contrast translation that effectively
captures the normal tissue characteristics in multi-contrast MRI. The feature
is collaboratively used with another feature that is the low-dimensional
representation of multi-contrast images. In density estimation using GMM, a
simple but efficient way is introduced to handle the singularity problem which
interrupts the joint learning process. The proposed method outperforms previous
anomaly detection approaches. Quantitative and qualitative analyses demonstrate
the effectiveness of the proposed method in anomaly detection for
multi-contrast MRI.
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