TopoResNet: A hybrid deep learning architecture and its application to skin lesion classification
Skin cancer is one of the most common cancers in the United States. As technological advancements are made, algorithmic diagnosis of skin lesions is becoming more important. In this paper, we develop algorithms for segmenting the actual diseased area of skin in a given image of a skin lesion, and fo...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
13.05.2019
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Subjects | |
Online Access | Get full text |
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Summary: | Skin cancer is one of the most common cancers in the United States. As
technological advancements are made, algorithmic diagnosis of skin lesions is
becoming more important. In this paper, we develop algorithms for segmenting
the actual diseased area of skin in a given image of a skin lesion, and for
classifying different types of skin lesions pictured in a given image. The
cores of the algorithms used were based in persistent homology, an algebraic
topology technique that is part of the rising field of Topological Data
Analysis (TDA). The segmentation algorithm utilizes a similar concept to
persistent homology that captures the robustness of segmented regions. For
classification, we design two families of topological features from persistence
diagrams---which we refer to as {\em persistence statistics} (PS) and {\em
persistence curves} (PC), and use linear support vector machine as classifiers.
We also combined those topological features, PS and PC, into ResNet-101 model,
which we call {\em TopoResNet-101}, the results show that PS and PC are
effective in two folds---improving classification performances and stabilizing
the training process. Although convolutional features are the most important
learning targets in CNN models, global information of images may be lost in the
training process. Because topological features were extracted globally, our
results show that the global property of topological features provide
additional information to machine learning models. |
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DOI: | 10.48550/arxiv.1905.08607 |