Title
Unsupervised Identification of Clinically Relevant Clusters in Routine Imaging Data.
Abstract
A key question in learning from clinical routine imaging data is whether we can identify coherent patterns that re-occur across a population, and at the same time are linked to clinically relevant patient parameters. Here, we present a feature learning and clustering approach that groups 3D imaging data based on visual features at corresponding anatomical regions extracted from clinical routine imaging data without any supervision. On a set of 7812 routine lung computed tomography volumes, we show that the clustering results in a grouping linked to terms in radiology reports which were not used for clustering. We evaluate different visual features in light of their ability to identify groups of images with consistent reported findings.
Year
Venue
Field
2016
MICCAI
Population,Latent Dirichlet allocation,Pattern recognition,Computer science,Computed tomography,Artificial intelligence,Cluster analysis,Feature learning,Radiology report
DocType
Citations 
PageRank 
Conference
1
0.43
References 
Authors
7
6
Name
Order
Citations
PageRank
Johannes Hofmanninger110.77
Markus Krenn260.92
Markus Holzer3272.48
Thomas Schlegl4805.44
Helmut Prosch520.82
Georg Langs664857.73