Explainable deep learning models in medical image analysis

Deep learning methods have been very effective for a variety of medical diagnostic tasks and has even beaten human experts on some of those. However, the black-box nature of the algorithms has restricted clinical use. Recent explainability studies aim to show the features that influence the decision...

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Veröffentlicht in:arXiv.org 2020-05
Hauptverfasser: Singh, Amitojdeep, Sengupta, Sourya, Vasudevan Lakshminarayanan
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description Deep learning methods have been very effective for a variety of medical diagnostic tasks and has even beaten human experts on some of those. However, the black-box nature of the algorithms has restricted clinical use. Recent explainability studies aim to show the features that influence the decision of a model the most. The majority of literature reviews of this area have focused on taxonomy, ethics, and the need for explanations. A review of the current applications of explainable deep learning for different medical imaging tasks is presented here. The various approaches, challenges for clinical deployment, and the areas requiring further research are discussed here from a practical standpoint of a deep learning researcher designing a system for the clinical end-users.
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subjects Algorithms
Deep learning
Diagnostic systems
Image analysis
Literature reviews
Machine learning
Medical imaging
Taxonomy
title Explainable deep learning models in medical image analysis
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