Deep learning trends for focal brain pathology segmentation in MRI
July 18, 2016 Β· Declared Dead Β· π Machine Learning for Health Informatics
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Authors
Mohammad Havaei, Nicolas Guizard, Hugo Larochelle, Pierre-Marc Jodoin
arXiv ID
1607.05258
Category
cs.CV: Computer Vision
Citations
87
Venue
Machine Learning for Health Informatics
Last Checked
3 months ago
Abstract
Segmentation of focal (localized) brain pathologies such as brain tumors and brain lesions caused by multiple sclerosis and ischemic strokes are necessary for medical diagnosis, surgical planning and disease development as well as other applications such as tractography. Over the years, attempts have been made to automate this process for both clinical and research reasons. In this regard, machine learning methods have long been a focus of attention. Over the past two years, the medical imaging field has seen a rise in the use of a particular branch of machine learning commonly known as deep learning. In the non-medical computer vision world, deep learning based methods have obtained state-of-the-art results on many datasets. Recent studies in computer aided diagnostics have shown deep learning methods (and especially convolutional neural networks - CNN) to yield promising results. In this chapter, we provide a survey of CNN methods applied to medical imaging with a focus on brain pathology segmentation. In particular, we discuss their characteristic peculiarities and their specific configuration and adjustments that are best suited to segment medical images. We also underline the intrinsic differences deep learning methods have with other machine learning methods.
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