Deep Learning with Order-invariant Operator for Multi-instance Histopathology Classification

Open Access
Authors
Publication date 12-2017
Event Medical Imaging meets NIPS Workshop NIPS 2017
Number of pages 3
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
The computer-aided analysis of medical scans is a longstanding goal in the medical imaging field. Currently, deep learning has became a dominant methodology for supporting pathologists and radiologist. Deep learning algorithms have been successfully applied to digital pathology and radiology, nevertheless, there are still practical issues that prevent these tools to be widely used in practice. The main obstacles are low number of available cases and large size of images (a.k.a. the small n, large p problem in machine learning), and a very limited access to annotation at a pixel level that can lead to severe overfitting and large computational requirements. We propose to handle these issues by introducing a framework that
processes a medical image as a collection of small patches using a single, shared neural network. The final diagnosis is provided by combining scores of individual patches using a permutation-invariant operator (combination). In machine learning community such approach is called a multi-instance learning (MIL).
Document type Abstract
Note On ArXiv with title: Deep Learning with Permutation-invariant Operator for Multi-instance Histopathology Classification.
Language English
Published at https://doi.org/10.48550/arXiv.1712.00310
Other links https://sites.google.com/view/med-nips-2017/abstracts
Downloads
1712.00310 (Accepted author manuscript)
med-nips_2017_paper_10 (Final published version)
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