Automated dermatoscopic pattern discovery by clustering neural network output for human‐computer interaction

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dc.contributor.author Talavera Martinez, Lidia
dc.contributor.author Tschandl, Philipp
dc.date.accessioned 2025-01-15T08:39:11Z
dc.date.available 2025-01-15T08:39:11Z
dc.identifier.uri http://hdl.handle.net/11201/167708
dc.description.abstract [eng] As available medical image datasets increase in size, it becomes infeasible for clinicians to review content manually for knowledge extraction. The objective of this study was to create an automated clustering resulting in human-interpretable pattern discovery. Methods: Images from the public HAM10000 dataset, including 7 common pigmented skin lesion diagnoses, were tiled into 29420 tiles and clustered via k-means using neural network-extracted image features. The final number of clusters per diagnosis was chosen by either the elbow method or a compactness metric balancing intra-lesion variance and cluster numbers. The amount of resulting non-informative clusters, defined as those containing less than six image tiles, was compared between the two methods. Results: Applying k-means, the optimal elbow cutoff resulted in a mean of 24.7 (95%-CI: 16.4-33) clusters for every included diagnosis, including 14.9% (95% CI: 0.8-29.0) non-informative clusters. The optimal cutoff, as estimated by the compactness metric, resulted in significantly fewer clusters (13.4; 95%-CI 11.8-15.1; p=0.03) and less non-informative ones (7.5%; 95% CI: 0-19.5; p=0.017). The majority of clusters (93.6%) from the compactness metric could be manually mapped to previously described dermatoscopic diagnostic patterns. Conclusions: Automatically constraining unsupervised clustering can produce an automated extraction of diagnostically relevant and human-interpretable clusters of visual patterns from a large image dataset.
dc.format application/pdf
dc.relation.ispartof Journal of the European Academy of Dermatology and Venereology, 2023
dc.subject.classification 004 - Informàtica
dc.subject.classification 61 - Medicina
dc.subject.other 004 - Computer Science and Technology. Computing. Data processing
dc.subject.other 61 - Medical sciences
dc.title Automated dermatoscopic pattern discovery by clustering neural network output for human‐computer interaction
dc.type info:eu-repo/semantics/article
dc.type info:eu-repo/semantics/acceptedVersion
dc.date.updated 2025-01-15T08:39:12Z
dc.rights.accessRights info:eu-repo/semantics/openAccess


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