Automated dermatoscopic pattern discovery by clustering neural network output for human-computer interaction
Lidia Talavera-Martinez, Philipp Tschandl

TL;DR
This study presents an automated clustering method using neural network features to discover human-interpretable dermatoscopic patterns in large skin lesion datasets, aiding clinicians in knowledge extraction.
Contribution
It introduces a novel approach combining neural network features and clustering metrics to automatically identify diagnostically relevant skin lesion patterns.
Findings
Optimal clustering yields around 13-25 clusters per diagnosis.
Fewer non-informative clusters with the compactness metric.
Most clusters correspond to known dermatoscopic patterns.
Abstract
Background: 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…
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