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Semantic Reasoning with Image Annotations for Tumor Assessment
Conference Proceeding
Reference:
M. Levy, M. J. O'Connor, D. L. Rubin. AMIA Annual Symposium, San Francisco, CA. Published in 2009.
Abstract:

Identifying, tracking and reasoning about tumor
lesions is a central task in cancer research and
clinical practice that could potentially be automated.
However, information about tumor lesions in imaging
studies is not easily accessed by machines for
automated reasoning. The Annotation and Image
Markup (AIM) information model recently developed
for the cancer Biomedical Informatics Grid provides
a method for encoding the semantic information
related to imaging findings, enabling their storage
and transfer. However, it is currently not possible to
apply automated reasoning methods to image
information encoded in AIM. We have developed a
methodology and a suite of tools for transforming
AIM image annotations into OWL, and an ontology
for reasoning with the resulting image annotations
for tumor lesion assessment. Our methods enable
automated inference of semantic information about
cancer lesions in images.

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Information last updated: Wed Nov 18 2009
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Stanford School of Medicine