MADGAN: unsupervised Medical Anomaly Detection GAN using multiple
adjacent brain MRI slice reconstruction
- URL: http://arxiv.org/abs/2007.13559v2
- Date: Mon, 12 Oct 2020 10:43:15 GMT
- Title: MADGAN: unsupervised Medical Anomaly Detection GAN using multiple
adjacent brain MRI slice reconstruction
- Authors: Changhee Han, Leonardo Rundo, Kohei Murao, Tomoyuki Noguchi, Yuki
Shimahara, Zoltan Adam Milacski, Saori Koshino, Evis Sala, Hideki Nakayama,
Shinichi Satoh
- Abstract summary: unsupervised Medical Anomaly Detection Generative Adversarial Network (MADGAN) is a novel two-step method using GAN-based multiple adjacent brain MRI slice reconstruction.
For training, we use two different datasets composed of 1,133 healthy T1-weighted (T1) and 135 healthy contrast-enhanced T1 (T1c) brain MRI scans for detecting Alzheimer's Disease (AD) and brain metastases/various diseases.
- Score: 24.423056428713718
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Unsupervised learning can discover various unseen abnormalities, relying on
large-scale unannotated medical images of healthy subjects. Towards this,
unsupervised methods reconstruct a 2D/3D single medical image to detect
outliers either in the learned feature space or from high reconstruction loss.
However, without considering continuity between multiple adjacent slices, they
cannot directly discriminate diseases composed of the accumulation of subtle
anatomical anomalies, such as Alzheimer's Disease (AD). Moreover, no study has
shown how unsupervised anomaly detection is associated with either disease
stages, various (i.e., more than two types of) diseases, or multi-sequence
Magnetic Resonance Imaging (MRI) scans. Therefore, we propose unsupervised
Medical Anomaly Detection Generative Adversarial Network (MADGAN), a novel
two-step method using GAN-based multiple adjacent brain MRI slice
reconstruction to detect brain anomalies at different stages on multi-sequence
structural MRI: (Reconstruction) Wasserstein loss with Gradient Penalty + 100
L1 loss-trained on 3 healthy brain axial MRI slices to reconstruct the next 3
ones-reconstructs unseen healthy/abnormal scans; (Diagnosis) Average L2 loss
per scan discriminates them, comparing the ground truth/reconstructed slices.
For training, we use two different datasets composed of 1,133 healthy
T1-weighted (T1) and 135 healthy contrast-enhanced T1 (T1c) brain MRI scans for
detecting AD and brain metastases/various diseases, respectively. Our
Self-Attention MADGAN can detect AD on T1 scans at a very early stage, Mild
Cognitive Impairment (MCI), with Area Under the Curve (AUC) 0.727, and AD at a
late stage with AUC 0.894, while detecting brain metastases on T1c scans with
AUC 0.921.
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