Comparative analysis of semantic localization accuracies between adult and pediatric DICOM CT images
2012
Existing literature describes a variety of techniques for semantic annotation of DICOM CT images, i.e. the
automatic detection and localization of anatomical structures. Semantic annotation facilitates enhanced image
navigation, linkage of DICOM image content and non-image clinical data, content-based image retrieval, and
image registration. A key challenge for semantic annotation algorithms is inter-patient variability. However,
while the algorithms described in published literature have been shown to cope adequately with the variability in
test sets comprising adult CT scans, the problem presented by the even greater variability in pediatric anatomy
has received very little attention. Most existing semantic annotation algorithms can only be extended to work
on scans of both adult and pediatric patients by adapting parameters heuristically in light of patient size. In
contrast, our approach, which uses random regression forests ('RRF'), learns an implicit model of scale variation
automatically using training data. In consequence, anatomical structures can be localized accurately in both
adult and pediatric CT studies without the need for parameter adaptation or additional information about
patient scale. We show how the RRF algorithm is able to learn scale invariance from a combined training set
containing a mixture of pediatric and adult scans. Resulting localization accuracy for both adult and pediatric
data remains comparable with that obtained using RRFs trained and tested using only adult data.
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