Geometric tree kernels: Classification of COPD from airway tree geometry
Aasa Feragen, Jens Petersen, Dominik Grimm, Asger Dirksen, Jesper, Holst Pedersen, Karsten Borgwardt, Marleen de Bruijne

TL;DR
This paper introduces a new family of geometric tree kernels that incorporate anatomical and geometric information for classifying COPD from airway tree structures, improving accuracy over existing methods.
Contribution
The paper presents novel geometric tree kernels that efficiently analyze anatomical trees with vector-valued attributes, enabling better disease classification and understanding.
Findings
Significant difference in airway tree geometry between COPD patients and healthy individuals.
Improved COPD classification accuracy using geometric tree kernels.
Software available for kernel computation and statistical testing.
Abstract
Methodological contributions: This paper introduces a family of kernels for analyzing (anatomical) trees endowed with vector valued measurements made along the tree. While state-of-the-art graph and tree kernels use combinatorial tree/graph structure with discrete node and edge labels, the kernels presented in this paper can include geometric information such as branch shape, branch radius or other vector valued properties. In addition to being flexible in their ability to model different types of attributes, the presented kernels are computationally efficient and some of them can easily be computed for large datasets (N of the order 10.000) of trees with 30-600 branches. Combining the kernels with standard machine learning tools enables us to analyze the relation between disease and anatomical tree structure and geometry. Experimental results: The kernels are used to compare airway…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Multidisciplinary Science and Engineering Research · Chronic Obstructive Pulmonary Disease (COPD) Research
