Minimizing false negative rate in melanoma detection and providing
insight into the causes of classification
- URL: http://arxiv.org/abs/2102.09199v1
- Date: Thu, 18 Feb 2021 07:46:34 GMT
- Title: Minimizing false negative rate in melanoma detection and providing
insight into the causes of classification
- Authors: Ell\'ak Somfai, Benj\'amin Baffy, Kristian Fenech, Changlu Guo, Rita
Hossz\'u, Dorina Kor\'ozs, Marcell P\'olik, Attila Ulbert, Andr\'as
L\H{o}rincz
- Abstract summary: Our goal is to bridge human and machine intelligence in melanoma detection.
We develop a classification system exploiting a combination of visual pre-processing, deep learning, and ensembling for providing explanations to experts.
- Score: 0.5621251909851629
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Our goal is to bridge human and machine intelligence in melanoma detection.
We develop a classification system exploiting a combination of visual
pre-processing, deep learning, and ensembling for providing explanations to
experts and to minimize false negative rate while maintaining high accuracy in
melanoma detection. Source images are first automatically segmented using a
U-net CNN. The result of the segmentation is then used to extract image
sub-areas and specific parameters relevant in human evaluation, namely center,
border, and asymmetry measures. These data are then processed by tailored
neural networks which include structure searching algorithms. Partial results
are then ensembled by a committee machine. Our evaluation on the largest skin
lesion dataset which is publicly available today, ISIC-2019, shows improvement
in all evaluated metrics over a baseline using the original images only. We
also showed that indicative scores computed by the feature classifiers can
provide useful insight into the various features on which the decision can be
based.
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