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Meta-SVDD: Probabilistic Meta-Learning for One-Class Classification in Cancer Histology Images

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arxiv 2003.03109 v1 pith:TEH6BTCB submitted 2020-03-06 eess.IV cs.CVcs.LG

Meta-SVDD: Probabilistic Meta-Learning for One-Class Classification in Cancer Histology Images

classification eess.IV cs.CVcs.LG
keywords classificationdomainhistologymodelone-classdataexpertsmedical
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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To train a robust deep learning model, one usually needs a balanced set of categories in the training data. The data acquired in a medical domain, however, frequently contains an abundance of healthy patients, versus a small variety of positive, abnormal cases. Moreover, the annotation of a positive sample requires time consuming input from medical domain experts. This scenario would suggest a promise for one-class classification type approaches. In this work we propose a general one-class classification model for histology, that is meta-trained on multiple histology datasets simultaneously, and can be applied to new tasks without expensive re-training. This model could be easily used by pathology domain experts, and potentially be used for screening purposes.

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