Regularized siamese neural network for unsupervised outlier detection on brain multiparametric magnetic resonance imaging: Application to epilepsy lesion screening

被引:46
作者
Alaverdyan, Zaruhi [1 ]
Jung, Julien [2 ]
Bouet, Romain [2 ]
Lartizien, Carole [1 ]
机构
[1] Univ Claude Bernard Lyon 1, Univ Lyon, INSA Lyon, UJM St Etienne,INSERM,CREATIS,UMR 5220,U1206,CNRS, F-69621 Lyon, France
[2] Univ Lyon 1, CNRS, INSERM U1028, Lyon Neurosci Res Ctr,CRNL,UMR5292, Lyon, France
关键词
Regularized siamese network; Wasserstein autoencoder; Unsupervised representation learning; Brain lesions; Anomaly detection; Deep learning; FOCAL CORTICAL DYSPLASIA; IMPROVES DETECTION; MRI; SURGERY; MALFORMATIONS; SEGMENTATION; OUTCOMES; ATLAS;
D O I
10.1016/j.media.2019.101618
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In this study, we propose a novel anomaly detection model targeting subtle brain lesions in multiparametric MRI. To compensate for the lack of annotated data adequately sampling the heterogeneity of such pathologies, we cast this problem as an outlier detection problem and introduce a novel configuration of unsupervised deep siamese networks to learn normal brain representations using a series of non-pathological brain scans. The proposed siamese network, composed of stacked convolutional autoencoders as subnetworks is designed to map patches extracted from healthy control scans only and centered at the same spatial localization to 'close' representations with respect to the chosen metric in a latent space. It is based on a novel loss function combining a similarity term and a regularization term compensating for the lack of dissimilar pairs. These latent representations are then fed into oc-SVM models at voxel-level to produce anomaly score maps. We evaluate the performance of our brain anomaly detection model to detect subtle epilepsy lesions in multiparametric (T1-weighted, FLAIR) MRI exams considered as normal (MRI-negative). Our detection model trained on 75 healthy subjects and validated on 21 epilepsy patients (with 18 MRI-negatives) achieves a maximum sensitivity of 61% on the MRI-negative lesions, identified among the 5 most suspicious detections on average. It is shown to outperform detection models based on the same architecture but with stacked convolutional or Wasserstein autoencoders as unsupervised feature extraction mechanisms. (C) 2019 Elsevier B.V. All rights reserved.
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页数:14
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