Tackling the Problem of Data Imbalancing for Melanoma Classification
dc.contributor.author
dc.date.accessioned
2020-02-11T12:39:42Z
dc.date.available
2020-02-11T12:39:42Z
dc.date.issued
2016-02-21
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dc.description
Comunicació de congrés presentada a: 3rd International Conference on Bioimaging, BIOIMAGING 2016 - Part of 9th International Joint Conference on Biomedical Engineering Systems and Technologies, BIOSTEC 2016, Roma, Italy
dc.description.abstract
Malignant melanoma is the most dangerous type of skin cancer, yet melanoma is the most treatable kind of
cancer when diagnosed at an early stage. In this regard, Computer-Aided Diagnosis systems based on machine
learning have been developed to discern melanoma lesions from benign and dysplastic nevi in dermoscopic
images. Similar to a large range of real world applications encountered in machine learning, melanoma classification
faces the challenge of imbalanced data, where the percentage of melanoma cases in comparison
with benign and dysplastic cases is far less. This article analyzes the impact of data balancing strategies at
the training step. Subsequently, Over-Sampling (OS) and Under-Sampling (US) are extensively compared in
both feature and data space, revealing that NearMiss-2 (NM2) outperform other methods achieving Sensitivity
(SE) and Specificity (SP) of 91.2% and 81.7%, respectively. More generally, the reported results highlight that
methods based on US or combination of OS and US in feature space outperform the others
dc.format.mimetype
application/pdf
dc.language.iso
eng
dc.relation.ispartofseries
Contribucions a Congressos (D-ATC)
dc.rights
Tots els drets reservats
dc.subject
dc.title
Tackling the Problem of Data Imbalancing for Melanoma Classification
dc.type
info:eu-repo/semantics/conferenceObject
dc.rights.accessRights
info:eu-repo/semantics/openAccess