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Understanding the learned behavior of customized convolutional neural networks toward malaria parasite detection in thin blood smear images

Author Affiliations
National Center for Biotechnology Information, Mahidol Oxford Tropical Medicine Research Unit, Mahidol University, Chittagong Medical College, ...
Published InJournal of Medical Imaging
Year2018
Citations66

Abstract

Convolutional neural networks (CNNs) have become the architecture of choice for visual recognition tasks. However, these models are perceived as black boxes since there is a lack of understanding of the learned behavior from the underlying task of interest. This lack of transparency is a serious drawback, particularly in applications involving medical screening and diagnosis since poorly understood model behavior could adversely impact subsequent clinical decision-making. Recently, researchers have begun working on this issue and several methods have been proposed to visualize and understand the behavior of these models. We highlight the advantages offered through visualizing and understanding the weights, saliencies, class activation maps, and region of interest localizations in customized CNNs applied to the challenge of classifying parasitized and…
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